Abstract Background The complement system, an innate immune system, may either play an antitumor role, or promote tumorigenesis and cancer progression in different kinds of cancer. The function of complement in hepatocellular carcinoma (HCC) is unclear. Methods The gene expressions of the complement system were based on data obtained from TCGA and GEO. We explored gene expressions, mutation, enrichment analysis, clinicopathology, patients' outcome, and immune infiltration via Gepia2, cBioPortal, Metascape, UALCAN, Kaplan–Meier Plotter, and TIMER 2. Results Five complement genes, including C1R, C6, C7, CFP, and CFHR3, were not only found to be significantly downregulated in HCC samples compared with normal liver samples, but also found to be significantly associated with overall survival, disease‐free survival, and progress‐free survival in HCC patients. In addition, lower mRNA expression of C1R, C6, C7, and CFHR3 were found correlated with advanced cancer stages and higher tumor grades in HCC patients. Also, the expression levels of CFP were correlated with many sets of immune markers of tumor immune cells, such as those of CD8+ T cells, CD4+ T cells, B cells, M2 macrophages, neutrophils, DCs, Th1 cells, Th2 cells, and T cell exhaustion in HCC. Based on that, we developed a prognostic model for HCC patients—Riskscore = (−0.0053)*C6+(−0.0498)*C7+(−0.1045)*CFHR3. Conclusion C1R, C6, C7, CFP, and CFHR3 could be prognostic biomarkers for patients with HCC. Keywords: complement, hepatocellular carcinoma, immune infiltration, Kaplan–Meier plotter, prognosis __________________________________________________________________ C1R, C6, C7, CFP, and CFHR3 could be prognostic biomarkers for patients with HCC. Based on that, we developed a prognostic model for HCC patients—Riskscore = (−0.0053)*C6+(−0.0498)*C7+(−0.1045)*CFHR3. graphic file with name IID3-10-e569-g002.jpg 1. INTRODUCTION The incidence of liver cancer has increased rapidly worldwide in recent years. Study shows that its morbidity has elevated to 6th in cancer, while it also ranks the third death cause of cancer.[32] ^1 Hepatocellular carcinoma (HCC) represents approximately 90% of primary liver cancer.[33] ^2 In the tides of immune therapy, patients with many other kinds of cancers are benefited from the novel therapy.[34] ^3 However, the prognosis of patients with HCC is not optimistic.[35] ^4 , [36]^5 , [37]^6 By deeper understanding the role of the immune system in hepatocellular carcinoma, we may discover novel prognostic biomarkers and advanced treatment. The complement system is a fundamental branch of innate immunity of human body, containing more than 50 inherent components and membrane binding receptors and regulators. Three main pathways of complement activation depending on C3[38] ^7 have been described: the classical pathway (CP), the alternative pathway (AP), and the lectin pathway. Other factors, such as proteases, kallikrein, plasmin, and factor XIIa, can generate complement activation products without C3.[39] ^8 Thrombin, a member of the coagulation pathway, can locally generate C5a in C3‐deficient mice which are unable to generate the conventional C5 convertase.[40] ^9 It is reported that the complement system has a complicated relationship with human cancer.[41] ^10 On one hand, the complement activation may act as antitumor defense mechanism because of its participation in immune surveillance and complement‐dependent cytotoxicity. Rituximab, an anti‐CD20 antibody against malignant B cells, acts its antitumor effect by activating the classical complement pathway in vitro and in vivo studies.[42] ^11 , [43]^12 On the other hand, it is now widely believed that the activation of the complement system may promote tumorigenesis and cancer progression by causing inflammation in the tumor microenvironment.[44] ^13 In this situation, complement activation may not strengthen immune surveillance but, instead, cause immunosuppression by upregulating cytokines such as IL‐10, PDL‐1, CD46 in tumor cells as reported.[45] ^14 Also, complement receptors, C3aR and C5aR, are considered to promote cancer cell proliferation in cancers, including, ovarian cancer,[46] ^15 colon cancer,[47] ^16 lung cancer,[48] ^17 , [49]^18 , [50]^19 and so on. The effects of complement on HCC have also been explored but remain unclear. It is reported that Aristolochic acid I, which is considered to be hepatotoxic, promotes the invasion and migration of HCC cells by activating the C3a/C3aR complement system.[51] ^20 Chen et al.[52] ^21 reported downregulation of C3aR/C5aR inhibits cell proliferation and epithelial–mesenchymal transition (EMT) in HCC. Complement factor H, a negative regulator of the alternative pathway of the complement system, has been reported that its deficiency in mice caused spontaneous hepatic tumors.[53] ^22 Recent studies show that enhanced CFH or CFHR (CFHR1 and CFHR3) levels either by gene therapies or by CFH reconstitution might lower tumor burden in HCC.[54] ^23 However, previous studies have focused on particular complement members' effect on HCC. The role of other complement members remained unknown in the development and progression of HCC. To address this, we thoroughly explored the expressions of the complement‐related genes and their correlation with prognosis and immune infiltration in patients with HCC via The Cancer Genome Atlas (TCGA) public and GEO database for the first time. 2. MATERIALS AND METHODS 2.1. Study patients TCGA is a comprehensive database containing information on more than 30 kinds of human cancers, including mRNA sequencing, DNA sequencing, pathological data, and clinical pathological information.[55] ^24 In this study, we downloaded clinic pathological information and mRNA expressions of 364 HCC patients from TCGA. Table [56]1 showed clinical data of all the 364 patients, including gender, age, weight, AFP, Child‐Pugh stage, adjacent tissue inflammation, cirrhosis, histologic grade, pathologic stage, and so on. Table 1. Basic characteristics of 364 HCC patients Variables HCC patients (N = 364) Gender (Male/female) 246/118 Age (years, mean ± SD) 59.67 ± 13.37 Weight (kg, median) 69 (40–172) PLT (10e9/L, median) 211 (4–499000) Albumin (g/L, median) 4 (0.2–5200) Creatinine (mg/dl, median) 0.9 (0.4–12.4) PT (s, median) 1.1 (0.8–36.4) TB (μmol/L, median) 1.2 (0.2–2.1) AFP (ng/ml, median) 15 (1–2035400) Child‐Pugh stage A N = 126 B N = 21 C N = 1 Adjacent tissue inflammation Non N = 117 Mild N = 97 Severe N = 17 Cirrhosis Non‐cirrhosis N = 74 Cirrhosis N = 134 Histologic grade 1 N = 55 2 N = 174 3 N = 118 4 N = 12 Pathologic stage 1 N = 170 2 N = 83 3 N = 83 4 N = 4 [57]Open in a new tab Abbreviations: AFP, alpha fetoprotein; HCC, hepatocellular carcinoma; PLT, platelet; PT, prothrombin time; SD, standard deviation; TB, total bilirubin. As there are only 50 normal liver samples in TCGA database, we also collected HCC data set [58]GSE25097 from Gene Expression Omnibus (GEO, [59]http://www.ncbi.nlm.nih.gov/geo/). This data set contains 268 HCC samples and 243 normal controlled samples from HCC patients.[60] ^25 The data set was estimated thoroughly through the full text. 2.2. Inclusion and exclusion criteria The inclusion criterion was as follows: (1) patients in the TCGA and [61]GSE25097 databases were diagnosed with HCC. (2) There were clear criteria for the diagnosis and staging of HCC. (3) The study data provided OR (odds ratio)/HR (hazard ratio) and its 95% confidence interval (CI), or could be converted to OR and its 95% CI. The exclusion criterion was as follows: (1) Repeat recorded cases. (2) Data was incomplete. 2.3. Differential expression analysis First, differences in mRNA expressions of the whole complement system between cancer samples and normal controlled samples were analyzed by TIMER2.TIMER2 ([62]http://timer.cistrome.org/) is an online analysis tool that can not only analyze gene expression profiles in different kinds of cancers, but also provide an advanced algorithm to evaluate the abundance of tumor‐infiltrating immune cells by gene expression profiles based on TCGA database.[63] ^26 Then, we used the pair‐controlled samples for HCC samples in GEPIA database and datasets [64]GSE25097 to further verify the different mRNA expressions between HCC samples and their normal counterparts. Gene Expression Profiling Interactive Analysis (GEPIA, [65]www.gepia.cancer-pku.cn) is a web server analyzing RNA sequencing expression data of tumors and normal samples from both TCGA and Genotypic Tissue Expression (GTEx) projects using standard processing pipelines.[66] ^27 Next, UALCAN database was used to examine the relationship between mRNA expressions of the complement system and patients' clinicopathologic information, such as tumor stage and grade. UALCAN ([67]http://ualcan.path.uab.edu), a web tool based on level 3 RNA‐seq and clinical data of 31 cancer types from TCGA database, can be used to explore the association of the transcriptional expression of a specific gene with cancer patients' clinicopathologic parameters.[68] ^28 2.4. Survival analysis In this study, we evaluated the prognostic value of mRNA expressions of the complement system in patients with HCC by calculating overall survival (OS), disease‐free survival (DFS), and progress‐free survival (PFS) using the Kaplan–Meier plotter ([69]www.kmplot.com), which is a web tool for survival analysis by product‐limit method based on gene expression data and survival information of patients with different kinds of cancers based on TCGA database.[70] ^29 , [71]^30 Information can be found on the Kaplan–Meier plotter web page, including number of patients, best cutoff values of mRNA expression, 95% CI, HR, and p‐value. 2.5. Mutation analysis We used cBioPortal database to investigate the mutation rate of the whole complement system in HCC patients and to confirm its relation with the survival of HCC patients. cBioPortal, a database that includes data for putative copy‐number alterations (CNAs), mRNA expression z‐scores, and mutations, allows researchers to explore multidimensional cancer genomics data.[72] ^31 2.6. PPI and enrichment analysis We performed a protein–protein interaction (PPI) network analysis on the prognostic genes of the complement system to explore their interactions by STRINGS ([73]www.string-db.org), an online analysis tool that collects, scores and integrates all publicly available sources to predict PPI between various proteins.[74] ^32 LinkedOmics was used to evaluate both positively and negatively co‐expressed genes of the prognostic complement genes of the complement system in HCC patients. LinkedOmics database predicted co‐expressed genes of a specific gene by Spearman's correlation coefficient test using multi‐omics data for 32 cancer types and a total of 11,158 patients from TCGA project.[75] ^33 Next, we used the list of co‐expressed genes to conduct Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG) enrichment analysis to predict the function of these prognostic genes in HCC by Metascape ([76]http://metascape.org), a free and well‐maintained online bioinformatics database for GO and KEGG enrichment analysis.[77] ^34 In this study, we considered as significant only when p < .01, minimum count > 3, and enrichment factor > 1.5. 2.7. Immune infiltration analysis We first used TIMER2 to detect the relationship between the mRNA expression of the whole complement system and tumor immune cells infiltration, including CD8+ and CD4+ T cells, macrophages, neutrophils, and dendritic cells (DCs), by spearsmans' correlation coefficients. Then, we examined the relationships between the prognostic complement genes and immune gene marker sets in HCC sample from TCGA using TIMER2. The gene markers of tumor‐infiltrating immune cells, including T cells, monocytes, tumor‐associated macrophages (TAMs), M1 and M2 macrophages, neutrophils, DCs, Tregs, and T cell exhaustion, were referenced from prior studies.[78] ^24 , [79]^29 , [80]^30 2.8. Construction of the prognostic model A prognostic model was constructed based on our results of the complement expressions and OS prognostic information in the cluster. The method of the least absolute shrinkage and selection operator (LASSO) regression algorithm is applied to find a model that can best explain the data but contains the fewest free parameters. First, timeROC(v 0.4) analysis was performed to compare the predictive accuracy of each gene and score. Then, LASSO regression algorithm for feature selection, using tenfold cross‐validation. The K–M survival analysis with log‐rank test was also used to test the constructed model. All analytical methods above were performed using R software version 4.0.3. 2.9. Statistical analysis The differential expression of complements was explored using the Wilcoxon test in TIMER2, ANOVA in GEPIA, and Students' t‐test in UALCAN and [81]GSE25097. A fold change >2 or <0.5, or log2(FC) > 1 or <−1 with p‐values < .05 in both Gepia database and [82]GSE25097 were considered statistically significant in mRNA expression in this study. The K–M curve diagrams of patients' survival were displayed as HR and log‐rank p‐values. In Spearman's correlation coefficients, we defined the strength of correlation as follows: 0.00–0.1, negligible correlation; 0.10–0.39, weak correlation; 0.40–0.69, moderate correlation; 0.70–0.89, strong correlation; and 0.90–1.0, very strong correlation. In this study, p‐values < .05 were considered statistically significant. 3. RESULTS 3.1. The differential expression of complement in hepatocellular carcinoma First, Table [83]S1 showed the complement members evaluated in this study and their classification. Then, mRNA expressions of complement genes were explored via TIMER2, which gave us a general idea of the differences in complement gene expressions between HCC (n = 371) and normal tissues (n = 50) in patients (Table [84]S2). Our results revealed that 27 complement genes, including C1QA, C1QB, C1QC, C1R, C1S, C3, C5, C6, C7, C8A, C8B, C9, CFB, CFD, CFI, CFP, CFHR3, CFHR4, C5AR1, SERPING1, MBL2, MASP1, C4BPA, CLU, CPN1, VSIG4, and CR1, were significantly downregulated in HCC tissues than in normal tissues (p < .05). In contrast, nine complement genes, including C2, C5AR2, C4BPB, CD46, CD59, ITGAM, ITGAX, C1QBP, and C1QR, were significantly upregulated in HCC tissues compared with normal samples (p < .05, Figure [85]1). Table 2. The significant changes of complement expression in transcription level between HCC and normal liver tissues Gene Fold change (HCC vs. Normal) p C1QA 0.52 [86]^** C1QB 0.80 [87]^** C1QC 0.55 [88]^** C1R 0.33 [89]^** C1S 0.80 [90]^** C2 1.07 [91]^** C3 0.94 [92]^** C5 0.82 [93]^** C6 0.35 [94]^** C7 0.15 [95]^** C8A 0.61 [96]^** C8B 0.62 [97]^** C9 0.39 [98]^** CFB 0.92 [99]^** CFD 0.62 [100]^** CFI 0.57 [101]^** CFP 0.10 [102]^** CFH 0.86 [103]^** CFHR3 0.45 [104]^** CFHR4 1.11 0.07 C5AR1 0.71 [105]^** SERPING1 0.80 [106]^** C5AR2 1.09 [107]^* MASP1 0.28 [108]^** MBL2 0.52 [109]^** C4BPA 0.78 [110]^** C4BPB 0.90 [111]^** CLU 0.89 0.11 CPN1 0.61 [112]^** VSIG4 0.78 [113]^** CR1 0.51 [114]^** ITGAM 1.10 0.22 ITGAX 1.16 0.06 CD93 1.09 0.09 CD46 1.24 [115]^** CD59 0.98 0.44 C1QBP 0.80 [116]^** [117]Open in a new tab Abbreviation: HCC, hepatocellular carcinoma. ^* p < .05 ^** p < .01. Figure 1. Figure 1 [118]Open in a new tab Transcriptional expression levels of complements in hepatocellular carcinoma in the TIMER2 database. ***p < .001, **p < .01, *p < .05 To further confirm the differential gene expressions between HCC samples and normal tissues, we used Gepia database and an independent data set ([119]GSE25097), since they contained more paired normal liver samples. According to the result from Gepia database (Figure [120]2), the mRNA expressions of C1R, C6, C7, C8A, C9, CFP, CFHR3, and MBL2 were still significantly lower in HCC samples (n = 368) than in normal samples (n = 160), while the mRNA expression of C1QA was significantly higher in HCC samples (n = 368) than in normal samples (n = 160). The expression of the other 27 complements showed no difference between HCC samples and normal tissues, with a log[2](FC) > 1 or <−1 and p‐value < .05. We then used data set ([121]GSE25097) to confirm the mRNA expression of all the complement genes. Our result revealed that the mRNA expressions of C1R, C6, C7, C9, CFP, CFHR3, and MASP1 were significantly downregulated in HCC tissues (n = 268) compared with normal liver tissues (n = 243), with a fold change >2 or <0.5 and p‐value < .05 (Table [122]2), while the expression of the rest complement genes showed no difference between HCC samples and normal tissues. Figure 2. Figure 2 [123]Open in a new tab The mRNA expressions of complements in HCC tissues (GEPIA). HCC, hepatocellular carcinoma. ***p < .001, **p < .01, *p < .05 To sum up, C1R, C6, C7, C9, CFP, and CFHR3 were significantly downregulated in all three HCC data sets. C8A, MASP1, and MBL2 were found downregulated in two HCC data sets. C1QA was found downregulated in TIMER2 database, but was found upregulated in Gepia database. In [124]GSE25097, mRNA expression of C1QA was not significantly altered in HCC samples. So, we considered that it need further validation. Other complement genes, including C1QB, C1QC, C1S, C2, C3, C5, CFB, CFD, CFI, CFHR4, C5AR1, SERPING1, C4BPA, C4BPB, CLU, CPN1, VSIG4, CR1, ITGAM, ITGAX, CD46, CD59, and C1QBP transcription levels were significantly down‐ or upregulated in HCC samples according to TIMER2, while no difference was found in their transcription level according to Gepia and [125]GSE25097 database. So, we considered the mRNA expression of these genes in HCC tissues and normal liver tissues was not clear and definite. In general, our result showed that the mRNA expression of six complement genes, including C1R, C6, C7, C9, CFP, and CFHR3, were significantly lower in HCC tissues than their normal counterparts. 3.2. Prognosis analysis of complements in HCC We analyzed the correlation between transcription levels of complement genes and patients' survival by Kaplan–Meier plotter database as survival analysis might indicate novel potential pathogenesis of HCC and promote further research. The results showed that higher mRNA expressions of 32 genes of the complements, namely C1R, C1S, C2, C3, C5, C6, C7, C8A, C8B, C8G, CFB, CFI, CFP, CFH, CFHR1, CFHR2, CFHR3, CFHR4, CFHR5, SERPING1, MASP2, MASP1, MBL2, C4BPA, C4BPB, VTN, CLU, CD59, CPN1, and CR2 were associated with longer OS in HCC patients while the higher mRNA expression of C5AR2 and ITGAM was associated with shorter OS in HCC patients (Table [126]3). To further evaluate the prognosis value of complement genes in HCC, we first explored the prognosis value of C1R, C6, C7, CFP, and CFHR3 via DFS and PFS, since their mRNA expressions were significantly downregulated in HCC tissues. We found that higher expressions of C1R, C6, C7, CFP, and CFHR3 were also associated with better DFS and PFS in HCC patients (Figure [127]3). Therefore, it was conceivable that higher mRNA expressions of C1R, C6, C7, CFP, and CFHR3 were independent biomarkers that predict a better prognosis in patients with HCC. Table 3. Correlation of complement gene expression and overall survival in HCC patients via Kaplan–Meier plotter Complement gene Medium survival months Hazard ratio p Low expression cohort (months) High expression cohort (months) C1QA 59.7 56.2 0.81 0.24 C1QB 46.6 70.5 0.77 0.15 C1QC 46.6 70.5 0.76 0.14 C1R 30 61.7 0.57 [128]^** C1S 31 70.5 0.55 [129]^** C2 37.8 70.5 0.56 [130]^** C3 33.5 71 0.48 [131]^** C4A 56.2 84.4 0.67 0.06 C5 33.5 70.5 0.49 [132]^** C6 31 61.7 0.54 [133]^** C7 28.3 70.5 0.52 [134]^** C8A 45.7 70.5 0.59 [135]^** C8B 45.7 84.4 0.47 [136]^** C8G 27.9 70.5 0.50 [137]^** C9 56.2 70.5 0.75 0.15 CFB 38.3 61.7 0.57 [138]^** CFD 52 56.5 0.74 0.10 CFI 31 61.7 0.64 [139]^* CFP 28.3 70.5 0.56 [140]^** CFH 30 70.5 0.49 [141]^** CFHR1 40.3 71 0.50 [142]^** CFHR2 37.8 70.5 0.54 [143]^** CFHR3 38.3 84.4 0.44 [144]^** CFHR4 25.6 71 0.41 [145]^** CFHR5 33.5 70.5 0.60 [146]^** C3AR1 84.7 47.4 1.22 0.28 C5AR1 59.7 47.4 1.24 0.25 C5AR2 108.6 49.7 1.55 [147]^* SERPING1 33.5 61.7 0.59 [148]^** MASP1 38.3 71 0.47 [149]^** MASP2 33.5 71 0.54 [150]^** MBL2 54.1 71 0.63 [151]^* C4BPA 33.5 81.9 0.53 [152]^** C4BPB 33.5 70.5 0.57 [153]^** VTN 33.5 71 0.49 [154]^** CLU 33.5 70.5 0.55 [155]^** CD46 54.1 61.7 0.76 0.13 CD55 82.9 52 1.22 0.31 CD59 33.5 61.7 0.65 [156]^* CPN1 45.7 61.7 0.64 [157]^* VSIG4 59.7 54.1 1.26 0.23 CR1 56.5 70.5 0.78 0.19 CR2 40.3 61.7 0.69 [158]^* ITGAM 56.5 54.1 1.40 [159]^* ITGAX 46.6 59.7 0.78 0.19 CD93 71 54.1 1.13 0.50 C1QBP 56.2 70.5 0.86 0.40 [160]Open in a new tab Abbreviation: HCC, hepatocellular carcinoma. ^* p < .05 ^** p < .01. Figure 3. Figure 3 [161]Open in a new tab Prognostic value of mRNA expression of complement genes in patients with HCC (Kaplan–Meier Plotter). DFS, disease‐free survival; HCC, hepatocellular carcinoma; OS, overall survival; PFS, progress‐free survival Then, we further evaluated the prognostic value of the rest complement genes, whose mRNA expressions were not altered in HCC tissues, including C1S, C2, C3, C5, C8A, C8B, C8G, CFB, CFI, CFH, CFHR1, CFHR2, CFHR4, CFHR5, SERPING1, MASP1, MASP2, MBL2, C5AR2, C4BPA, C4BPB, VTN, CLU, CD59, CPN1, CR2, and ITGAM. According to our results shown in Tables [162]4 and [163]5, we found that lower expressions of C1S, C2, C3, C5, C8B, CFB, CFI, CFH, CFHR1, CFHR2, CFHR4, SERPING1, MASP2, MASP1, MBL2, C4BPA, C4BPB, VTN, CLU, CPN1, and CR2 were associated with shorter DFS and PFS in patients with HCC. However, lower expressions of C8A, C8G, CFHR5, and CD59 were only associated with shorter PFS in patients with HCC. Table 4. Correlation of complement gene expression and disease‐free survival in HCC patients via Kaplan–Meier plotter Complement gene Medium survival months Hazard ratio p Low expression cohort (months) high expression cohort (months) c1s 11.83 37.23 0.51 [164]^** c2 18.3 37.67 0.57 [165]^** c3 18.3 37.23 0.59 [166]^** c5 13.27 40.97 0.51 [167]^** C8A 21.23 30.1 0.74 0.09 C8B 16.6 36.1 0.63 [168]^** C8G 23.97 33 0.83 0.31 CFB 12.87 40.97 0.52 [169]^** CFI 23.97 37.23 0.67 [170]^* CFH 15.07 36.1 0.64 [171]^* CFHR1 21.3 55.87 0.48 [172]^** CFHR2 18.87 42.87 0.53 [173]^** CFHR4 10.5 37.67 0.51 [174]^** CFHR5 25.87 36.1 0.69 0.05 SERPING1 13.27 36.1 0.6 [175]^** MASP1 18.87 42.63 0.63 [176]^** MASP2 13.27 34.4 0.6 [177]^** C5AR2 37.67 25.13 1.33 0.10 MBL2 21.2 36.1 0.7 [178]^* C4BPA 13.27 37.23 0.58 [179]^** C4BPB 16.83 37.67 0.69 [180]^* VTN 21.87 37.67 0.71 [181]^* CLU 10.03 34.4 0.56 [182]^** CD59 21.3 33 0.86 0.37 CPN1 15.07 36.1 0.62 [183]^* CR2 21.47 37.67 0.7 [184]^* ITGAM 21.87 34.4 0.81 0.22 [185]Open in a new tab Abbreviation: HCC, hepatocellular carcinoma. ^* p < .05 ^** p < .01. Table 5. Correlation of complement gene expression and progress‐free survival in HCC patients via Kaplan–Meier plotter Complement gene Medium survival months Hazard ratio p Low expression cohort (months) high expression cohort (months) c1s 11.97 30.4 0.55 [186]^** c2 15.07 33 0.56 [187]^** c3 11.83 29.73 0.55 [188]^** c5 14.33 42.87 0.51 [189]^** C8A 11.9 25.87 0.68 [190]^* C8B 13.27 29.77 0.65 [191]^** C8G 13.13 29.3 0.68 [192]^* CFB 10.67 33 0.51 [193]^** CFI 15.07 30.4 0.64 [194]^** CFH 11.9 30.1 0.60 [195]^** CFHR1 12.87 30.1 0.57 [196]^** CFHR2 13.27 36.27 0.56 [197]^** CFHR4 9.77 29.77 0.48 [198]^** CFHR5 17.9 33 0.7 [199]^* SERPING1 11.83 30.4 0.58 [200]^** MASP1 15.97 36.1 0.61 [201]^** MASP2 11.83 29.77 0.58 [202]^** C5AR2 27.6 21.3 1.32 0.07 MBL2 14.33 29.3 0.72 [203]^* C4BPA 10.27 30.1 0.54 [204]^** C4BPB 15.07 33 0.66 [205]^** VTN 13.27 29.17 0.61 [206]^** CLU 13.13 30.4 0.57 [207]^** CD59 16.83 30.1 0.73 [208]^* CPN1 13.83 27.6 0.7 [209]^* CR2 13.83 25.87 0.71 [210]^* ITGAM 25.87 19.93 1.26 0.2 [211]Open in a new tab Abbreviation: HCC, hepatocellular carcinoma. ^* p < .05 ^** p < .01. 3.3. Relationship between mRNA levels of complement genes and the clinicopathological parameters of HCC patients We further studied the relationship between mRNA expression levels of C1R, C6, C7, CFP, CFHR3, and tumor stages in HCC patients by using the UALCAN database since these genes were considered to have prognostic value. The results showed that the expression levels of C1R, C6, and CFHR3 were correlated with the tumor stage of HCC patients, while the expression levels of C7 and CFP were not correlated with the tumor stage of HCC patients. As was shown in Figure [212]4A–E, patients who were in more advanced cancer stage tended to have less mRNA expression of C1R, C6, and CFHR3. Although the lowest mRNA expression of C1R, C6, and CFHR3 was found in stage 3, it might result from the fact that there were only six patients at stage 4. Figure 4. Figure 4 [213]Open in a new tab Relationship between mRNA expression of complement genes and individual cancer stages (A–E) and tumor grades (F–J) of HCC patients (Ualcan). HCC, hepatocellular carcinoma. ***p < .001, **p < .01, *p < .05 Similarly, we studied the relationship between mRNA expression levels of the five prognostic complement genes and tumor grade in HCC patients. The results showed that the mRNA expression levels of C1R, C6, C7, and CFHR3 were correlated with the tumor grade of HCC patients, while only CFP was not correlated with the tumor grade of HCC patients (Figure [214]4F–J). As tumor grades increased, the mRNA expressions of C1R, C6, C7, and CFHR3 tended to be lower. The lowest mRNA expressions level of C1R, C6, C7, and CFHR3 were all found in patients at grade 4. Next, we examined the mRNA expressions of C1S, C2, C3, C5, C8B, CFB, CFI, CFH, CFHR1, CFHR2, CFHR4, SERPING1, MASP2, MASP1, MBL2, C4BPA, C4BPB, VTN, CLU, CPN1, and CR2 as they were also associated with OS, DFS, and PFS with HCC patients though their mRNA expressions were not altered in HCC tissues according to our results. The result showed that the lower mRNA expressions of C3, C5, CFB, and CLU were correlated with more advanced cancer stage, while the lower mRNA expressions of C1S, C8B, CFI, MBL2, and C4BPA were correlated with higher tumor grade in HCC patients (Table [215]6). However, no gene was found correlated with both cancer stage and tumor grade in this set. Table 6. Relationship between mRNA expression of complement genes and cancer stages or tumor grades of HCC patients Cancer stage (medium expression) Tumor grade (medium expression) Gene Normal Stage 1 Stage 2 Stage 3 Stage 4 normal Grade 1 Grade 2 Grade 3 Grade 4 C1S 1581.2 809.9 771.9 815.5 653.1 1581.2 974.5 889.2 714.4 497.8 C2 418.9 463.3 503.9 393.8 636.4 418.9 443.6 465.9 474.7 385.8 C3 6491.2 5625.1 4859.5 4027.3 5877.9 6491.2 5568.3 5729.3 4393.1 3918.8 C5 134.6 102.3 91.5 83.7 90.4 134.6 116.2 91.1 90.3 49 C8B 384.2 179.8 145.4 152.2 152.2 384.2 245.3 186.9 104.1 70.8 CFB 1971.7 1668.2 1474.9 1322.1 1239.2 1971.7 1945.9 1615.5 1503.1 1146.5 CFI 339.4 183.6 181.6 173.4 159.5 339.4 266.6 194.4 140.4 134.9 CFH 604.3 564.4 544.5 459.6 646.9 604.3 583.7 563.2 463.7 306.6 CFHR1 794.1 721.2 672.5 457.9 785.2 794.1 710.2 723.4 590.9 262.3 CFHR2 558.5 554.2 566.2 335.6 464.5 558.5 600.4 582.5 400.5 299.9 CFHR4 33.2 14.1 11.4 3.1 12.2 33.2 29.5 13.7 6.6 1.2 SERPING1 2903.2 1736.6 1638.4 1136.1 2203.6 2903.2 2026.7 1980.8 1288.9 1030.9 MASP1 55.8 20.5 17.8 23.5 22.6 55.8 27.6 21.1 19.1 10.1 MASP2 264.8 262.3 255.3 156.5 265.9 264.8 298.9 280.2 184.6 175.7 MBL2 62.0 18.9 9.5 13.2 18.2 62.0 23.6 16.4 13.53 6.87 C4BPA 752.4 463 539.1 231.9 438.4 752.4 650.2 527.3 336.9 168.5 C4BPB 262.6 304.2 317.3 242.7 385.9 262.6 298.2 312.7 277.8 194.3 VTN 5040.8 5295.1 4398.8 4309.3 5178.3 5040.8 5099.9 5136.7 4237.9 2852.9 CLU 2302.5 1761.1 1415.5 1249.8 1259.2 2302.5 1668.8 1519.5 1543 1400.2 CPN1 44.4 32.9 28.4 29.3 32.2 44.4 32.7 31.6 28.2 41.7 CR2 0.0 0 0 0 0 0 0 0 0 0 [216]Open in a new tab Abbreviation: HCC, hepatocellular carcinoma. 3.4. Genetic mutation in complement system and their association with OS and DFS in patients with HCC As most of the complement components are produced in liver, we then analyzed the mutation of all the complement genes in HCC samples by cBioPortal database. As shown in Figure [217]5A, the mutation rate of each of the complement genes was relatively low in HCC patients. Among all the genes, CFH topped the mutation rate (13%), followed by CR1 (12%), CR2 (11%), C4BPA (11%), CFHR1 (11%), CFHR2 (11%), CFHR3 (11%), CFHR4 (11%), CFHR5 (11%), CD46 (11%), CD55 (11%), and C4BPB (10%). The mutation rate of the rest complement genes was less than 10%. In all the 364 HCC patients, no mutation was found in CD59 (0%). Furthermore, we found that the majority of the mutation was amplification. Then, we examined the association between genetic alteration in complement genes and the survival of HCC patients, including OS and DFS. According to the Kaplan–Meier plot (Figure [218]5B,C), the genetic alteration of the complement genes might have correlation with poorer DFS in HCC patients (p < .05) but did not affect OS in HCC patients. Figure 5. Figure 5 [219]Open in a new tab Genetic mutations of complement genes and their association with OS and DFS in patients with HCC (cBioPortal). (A) Mutation rate of complement genes in HCC samples. (B) The association between genetic alterations and OS in HCC patients. (C) The association between genetic alterations and DFS in HCC patients. DFS, disease‐free survival; HCC, hepatocellular carcinoma; OS, overall survival 3.5. PPI and functional enrichment analysis of complements in HCC patients Then, we used String database to build a PPI network between the five complements genes found above, including C1R, C6, C7, CFP, and CFHR3, as they were not only downregulated in HCC, but also correlated with the prognosis of patients with HCC. We found that these genes generally interacted with other complement genes to moderate the immune system and hormone system (Figure [220]6A). There were little information about these genes interact with other functions. Figure 6. Figure 6 [221]Open in a new tab Protein–protein interaction (PPI) and functional enrichment analysis of five prognostic complement genes in patients with HCC (STRING and Metascape). (A) PPI of C1R, C6, C7, CFP, and CFHR3. (B) gene ontology (GO) of positively co‐expressed genes of C1R, C6, C7, CFP, and CFHR3, colored by p‐value. (C) GO of negatively co‐expressed genes of C1R, C6, C7, CFP, and CFHR3, colored by p‐value. (D) Kyoto Encyclopedia of Genes and Genomes (KEGG) of positively co‐expressed genes of C1R, C6, C7, CFP, and CFHR3, colored by p‐value. (E) KEGG of negatively co‐expressed genes of C1R, C6, C7, CFP, and CFHR3, colored by p‐value. HCC, hepatocellular carcinoma So, we calculated co‐expressed genes of these five complement genes in HCC samples from TCGA database. Table [222]S3 showed each of 5 complement genes and their 50 most co‐expressed genes both negatively and positively by Spearman's analysis. Next, we conducted GO and KEGG pathway enrichment analysis by these co‐expressed genes to further predict the function of the five prognostic complement genes in HCC patients. As shown in Figure [223]6B,C, molecular function such as GO: 0005201 (extracellular matrix structural constituent), GO: 0016491 (oxidoreductase activity), GO: 0004252 (serine‐type endopeptidase activity), and GO: 0005539 (glycosaminoglycan binding) were positively correlated with the expression of these 5 complement genes, while GO: 0008016 (microtubule binding), GO: 0003682 (chromatin binding), GO: 0003712 (transcription coregulator activity), and GO: 0070182 (DNA polymerase binding) were negatively correlated with the expression of these genes. Furthermore, we conducted KEGG analysis (Figure [224]6D,E), 19 pathways including hsa 03320: PPAR signaling pathway, hsa 04064: NF‐kappa B signaling pathway, and hsa 04151: PI3K‐Akt signaling pathway, were associated with overexpression of the five complement genes, while nine pathways including KO 03460: Fanconi anemia pathway, KO 05206: MicroRNAs in cancer, and KO 04115: P53 signaling pathway were associated with down‐expression of these genes. All these findings showed these five complement genes might correlate with confirmed pathways of HCC according to previous studies. Also, the result also showed that these five complement genes might correlate with biological function in pathways other than the complement or the immune system, indicating further research would be needed. 3.6. Correlation between complement expression and immune marker sets Given the relationship of complements with the immune system, we further studied the correlations between complement genes and marker genes of tumor‐infiltrating immune cells, including T cells, TAMs, M1 and M2 macrophages, monocytes, T cell exhaustion, Tregs, and DCs, from HCC tissues. First, we examined C1R, C6, C7, CFP, and CFHR3 as they were considered to have prognosis values in HCC patients. Among them, we found only CFP had a statistical correlation with the immune cells in HCC samples. The mRNA expression of CFP had a weak positive correlation with CD8+ T cells and DCs (Figure [225]7). Figure 7. Figure 7 [226]Open in a new tab Correlation of C1R, C6, C7, CFP, and CFHR3 expression with immune infiltration levels in HCC. HCC, hepatocellular carcinoma Next, by correlation analysis adjusted by purity, we found that CFP expression was positively relevant to most sets of immune marker genes, such as those of CD8+ T cells (CD8A and CD8B), T cells (CD3E and CD2), B cells (CD79A), M2 macrophages (CD163), neutrophils (CCR7), DCs (CD1C, HLA‐DPA1, HLA‐DPB1, HLA‐DQB1, and HLA‐DRA), Th1 cells (IFNG and TBX21), Th2 cells (GATA3), and T cell exhaustion (GZMB, LAG3, and PDCD1; Table [227]7). In addition, the mRNA expression of C7 had a positive correlation with several sets of immune marker genes, such as TAMs (CCL2), M1 macrophages (NOS2 and PTGS2), and DCs (CD1C), while the mRNA expression of C6 had a negative correlation with TGFB1, an immune marker of Treg and PDCD1, an immune marker of T cell exhaustion. The rest two complement genes (C1R and CFHR3) had no correlation with the immune marker genes. Therefore, we believed the expression of CFP was correlated with tumor immune cells in HCC patients (Table [228]7). Table 7. Correlation analysis between C1R, C6, C7, CFP, CFHR3, and relate immune genes markers dependently in HCC via TIMER CFP C1R C6 C7 CFHR3 Cor p Cor p Cor p Cor p Cor p CD8+ T cell CD8A 0.45 [229]^** 0.11 [230]^* −0.10 0.07 0.08 0.13 −0.01 0.87 CD8B 0.42 [231]^** 0.07 0.21 −0.19 [232]^** −0.01 0.81 −0.09 0.10 T cell (general) CD3D 0.31 [233]^** −0.02 0.76 −0.28 [234]^** −0.09 0.11 −0.11 [235]^* CD3E 0.45 [236]^** 0.08 0.16 −0.18 [237]^** 0.08 0.16 0.00 0.96 CD2 0.43 [238]^** 0.07 0.20 −0.20 [239]^** 0.06 0.30 −0.00 0.99 B cell CD19 0.30 [240]^** −0.04 0.44 −0.20 [241]^** 0.07 0.19 −0.06 0.30 CD79A 0.48 [242]^** 0.00 0.98 −0.21 [243]^** 0.12 [244]^* −0.06 0.26 Monocyte CD86 0.30 [245]^** 0.07 0.23 −0.17 [246]^** 0.01 0.86 −0.10 0.06 CSF1R 0.33 [247]^** 0.16 [248]^** −0.08 0.13 0.09 0.11 −0.04 0.49 TAM CCL2 0.20 [249]^** 0.13 [250]^* 0.02 0.73 0.40 [251]^** 0.03 0.59 CD68 0.10 0.05 0.01 0.90 −0.12 [252]^* −0.05 0.36 −0.05 0.32 IL10 0.21 [253]^** 0.02 0.72 −0.11 [254]^* −0.06 0.29 −0.13 [255]^* M1 macrophage NOS2 0.10 0.07 0.13 [256]^* 0.12 [257]^* 0.47 [258]^** 0.28 [259]^** IRF5 −0.09 0.15 −0.12 [260]^* −0.15 [261]^** 0.11 [262]^* −0.14 [263]^** PTGS2 0.14 [264]^* 0.12 [265]^* 0.01 0.83 0.46 [266]^** 0.16 [267]^** M2 macrophage CD163 0.37 [268]^** 0.28 [269]^** 0.13 [270]^* 0.17 [271]^** 0.12 [272]^* VSIG4 0.17 [273]^** 0.29 [274]^** 0.08 0.14 0.16 [275]^** 0.09 0.09 MS4A4A 0.25 [276]^** 0.26 [277]^** 0.07 0.18 0.13 [278]^* 0.08 0.13 Netrophil CEACAM8 0.03 0.55 −0.03 0.55 −0.06 0.27 −0.05 0.38 −0.07 0.22 ITGAM −0.03 0.55 0.17 [279]^** −0.10 0.06 −0.04 0.42 −0.09 0.09 CCR7 0.42 [280]^** 0.10 0.06 −0.10 0.07 0.25 [281]^** 0.08 0.13 Natural killer cell KIR2DL1 0.08 0.13 0.12 [282]^* 0.06 0.28 −0.05 0.33 0.02 0.71 KIR2DL3 0.20 [283]^** 0.02 0.73 −0.04 0.49 −0.09 0.10 −0.10 0.06 KIR2DL4 0.21 [284]^** 0.16 [285]^** −0.10 0.07 −0.13 [286]^* −0.06 0.30 KIR2DS4 0.21 [287]^** 0.15 [288]^** 0.01 0.80 −0.01 0.80 0.03 0.60 KIR3DL1 0.20 [289]^** 0.11 [290]^* 0.12 [291]^* −0.00 0.98 0.01 0.81 KIR3DL2 0.30 [292]^** 0.05 0.38 −0.06 0.26 0.05 0.35 −0.03 0.53 KIR3DL3 0.09 0.08 −0.01 0.78 −0.08 0.16 −0.05 0.37 −0.03 0.59 Dendritic cell CD1C 0.45 [293]^** 0.01 0.89 −0.07 0.20 0.32 [294]^** 0.06 0.24 HLA‐DPA1 0.37 [295]^** 0.22 [296]^** −0.01 0.84 0.13 [297]^* 0.01 0.92 HLA‐DPB1 0.41 [298]^** 0.20 [299]^** −0.09 0.09 0.11 [300]^* −0.01 0.79 HLA‐DQB1 0.37 [301]^** 0.14 [302]^** −0.09 0.10 0.02 0.67 −0.02 0.72 HLA‐DRA 0.34 [303]^** 0.23 [304]^** −0.03 0.52 0.10 0.08 0.04 0.49 ITGAX 0.19 [305]^** 0.00 1 −0.19 [306]^** −0.02 0.67 −0.09 0.10 NRP1 0.11 [307]^* −0.04 0.42 −0.09 0.10 0.18 [308]^** −0.19 0.00 Th1 cell IFNG 0.30 [309]^** −0.01 0.87 −0.17 [310]^** −0.13 [311]^* −0.07 0.18 STAT1 0.22 [312]^** 0.04 0.44 −0.17 [313]^** 0.08 0.14 −0.13 [314]^* STAT4 0.18 [315]^** 0.13 [316]^* −0.07 0.22 0.16 [317]^** 0.06 0.29 TBX21 0.51 [318]^** 0.14 [319]^* −0.03 0.54 0.07 0.17 0.06 0.28 TNF 0.24 [320]^** 0.02 0.77 −0.16 [321]^** −0.04 0.44 −0.04 0.48 Th2 cell GATA3 0.31 [322]^** 0.08 0.14 −0.13 [323]^* 0.18 [324]^** −0.04 0.43 IL13 0.05 0.34 0.06 0.31 0.06 0.26 0.05 0.39 0.02 0.74 STAT5A 0.21 [325]^** 0.06 0.24 −0.15 [326]^** 0.08 0.13 −0.17 [327]^** STAT6 −0.01 0.83 0.14 [328]^* 0.08 0.13 0.17 [329]^** −0.02 0.78 Tfh cell BCL6 0.08 0.16 0.00 0.97 −0.05 0.33 −0.05 0.37 −0.14 [330]^* IL21 0.17 [331]^** 0.00 0.93 −0.14 [332]^* −0.15 [333]^** −0.11 0.05 Th17 cell IL17A 0.06 0.26 −0.05 0.40 −0.04 0.42 0.02 0.72 −0.02 0.68 STAT3 −0.13 [334]^* 0.29 [335]^** 0.16 [336]^** 0.18 [337]^** 0.04 0.51 Treg CCR8 0.11 [338]^* −0.01 0.82 −0.11 [339]^* 0.10 0.08 −0.02 0.77 FOXP3 0.13 [340]^* 0.19 [341]^** 0.16 [342]^** 0.07 0.19 0.10 0.07 STAT5B 0.06 0.31 0.04 0.51 0.05 0.33 0.19 [343]^** −0.07 0.17 TGFB1 0.17 [344]^** −0.17 [345]^** −0.36 [346]^** 0.19 [347]^** −0.21 [348]^** T cell exhaustion CTLA4 0.29 [349]^** −0.07 0.23 −0.36 [350]^** −0.21 [351]^** −0.12 [352]^* GZMB 0.50 [353]^** 0.06 0.23 −0.12 [354]^* −0.11 [355]^* −0.08 0.16 HAVCR2 0.19 [356]^** 0.05 0.34 −0.19 [357]^** −0.04 0.50 −0.11 [358]^* LAG3 0.39 [359]^** 0.02 0.67 −0.21 [360]^** −0.10 0.06 −0.12 [361]^* PDCD1 0.32 [362]^** −0.06 0.24 −0.35 [363]^** −0.10 0.08 −0.14 [364]^* [365]Open in a new tab Abbreviation: HCC, hepatocellular carcinoma. ^* p < .05 ^** p < .01. Also, we examined the correlation between mRNA expressions of the complement genes other than these five genes and marker genes of tumor‐infiltrating immune cells. We found that the mRNA expression of C1QA, C1QB, C1QC, C5AR1, C3AR1, C1QR (CD93), CR1, CR2, CR3 (ITGAM), and CR4 (ITGAX) were positively associated with almost all kinds of tumor immune cells, including CD8+ T cells, CD4+ T cells, B cells, macrophages, monocytes and DCs (Table [366]8). Moreover, CFD showed a positive correlation with B cells, CD8+ T cells, macrophages, and DCs. Meanwhile, MASP2 showed a negative correlation with B cells, macrophages, and DCs (Table [367]8). Although these genes did not present prognostic value, further studies would be needed since their mRNA expressions were correlated with tumor immune cells might affect HCC. Table 8. Correlation analysis between complement genes and relate immune cells in HCC via TIMER B cell CD8+ T cell CD4+ T cell Macrophage Netrophil Dendritic cell Gene names Cor p Cor p Cor p Cor p Cor p Cor p C1QA 0.52 [368]^** 0.62 [369]^** 0.20 [370]^** 0.58 [371]^** 0.42 [372]^** 0.68 [373]^** C1QB 0.57 [374]^** 0.63 [375]^** 0.25 [376]^** 0.58 [377]^** 0.48 [378]^** 0.73 [379]^** C1QC 0.59 [380]^** 0.61 [381]^** 0.33 [382]^** 0.64 [383]^** 0.64 [384]^** 0.75 [385]^** C1R −0.02 0.66 0.09 0.09 −0.05 0.33 −0.07 0.23 0.10 0.06 0.13 [386]^* C1S −0.06 0.25 −0.02 0.75 −0.07 0.21 −0.14 [387]^** 0.08 0.16 0.01 0.80 C2 0.03 0.56 −0.05 0.32 0.07 0.23 −0.03 0.54 −0.04 0.51 0.02 0.66 C3 −0.1 0.42 −0.16 [388]^** 0.01 0.91 −0.17 [389]^** −0.12 [390]^* −0.12 [391]^* C4A −0.09 0.10 −0.03 0.59 −0.08 0.12 −0.11 [392]^* −0.07 0.19 0.05 0.36 C5 0.10 0.08 0.07 0.19 0.14 [393]^* 0.07 0.18 0.16 [394]^** 0.15 [395]^** C6 −0.25 [396]^** −0.17 [397]^** −0.08 0.13 −0.27 [398]^** −0.12 [399]^* −0.13 [400]^* C7 −0.04 0.41 0.07 0.18 0.16 [401]^** 0.12 [402]^* 0.07 0.21 0.06 0.29 C8A −0.33 [403]^** −0.18 [404]^** −0.23 [405]^** −0.30 [406]^** −0.11 [407]^* −0.17 [408]^** C8B −0.19 [409]^** −0.08 0.13 −0.09 [410]^* −0.18 [411]^** −0.04 0.43 −0.05 0.33 C8G −0.21 [412]^** −0.19 [413]^** −0.25 [414]^** −0.30 [415]^** −0.17 [416]^** −0.27 [417]^** C9 −0.04 0.43 −0.02 0.72 −0.03 0.61 −0.08 0.13 −0.01 0.87 0.089 0.10 CFB −0.09 0.11 −0.06 0.25 −0.08 0.13 −0.21 [418]^** −0.07 0.22 0 0.99 CFD 0.39 [419]^** 0.37 [420]^** 0.28 [421]^** 0.43 [422]^** 0.29 [423]^** 0.44 [424]^** CFI −0.13 [425]^* −0.07 0.19 0.00 0.99 −0.12 [426]^* 0.04 0.49 0.01 0.81 CFP 0.30 [427]^** 0.35 [428]^** 0.09 8.08 0.14 [429]^** 0.16 [430]^** 0.30 [431]^** CFHR1 −0.15 [432]^** −0.14 [433]^* −0.07 0.22 −0.16 [434]^** −0.07 0.17 −0.17 [435]^** CFHR2 −0.21 [436]^** −0.17 [437]^** −0.15 [438]^** −0.29 [439]^** −0.19 [440]^** −0.22 [441]^** CFHR3 −0.11 [442]^* −0.13 [443]^* −0.06 0.31 −0.16 [444]^** −0.10 0.06 −0.10 0.06 CFHR4 −0.23 [445]^** −0.24 [446]^** −0.10 0.07 −0.33 [447]^** −0.21 [448]^** −0.22 [449]^** CFHR5 −0.15 [450]^** −0.17 [451]^** 0.01 0.83 −0.16 [452]^** −0.05 0.31 −0.13 [453]^* C5AR1 0.38 [454]^** 0.36 [455]^** 0.28 [456]^** 0.50 [457]^** 0.58 [458]^** 0.56 [459]^** C5AR2 0.02 0.66 0.01 0.93 0.15 [460]^** 0.17 [461]^** 0.26 [462]^** 0.04 0.52 C3AR1 0.53 [463]^** 0.56 [464]^** 0.38 [465]^** 0.70 [466]^** 0.57 [467]^** 0.74 [468]^** SERPING1 −0.04 [469]^** −0.10 0.06 −0.13 [470]^* −0.23 [471]^** −0.12 [472]^* −0.08 0.15 MASP2 −0.35 [473]^** −0.27 [474]^** −0.27 [475]^** −0.41 [476]^** −0.24 [477]^** −0.31 [478]^** MASP1 −0.12 [479]^* −0.12 [480]^* 0 1.00 0.01 0.93 0.07 0.18 −0.12 [481]^* MBL2 −0.20 [482]^** −0.22 [483]^** −0.06 0.29 −0.20 [484]^** −0.14 [485]^* −0.18 [486]^** C4BPA −0.16 [487]^** −0.21 [488]^** −0.07 0.18 −0.23 [489]^** −0.09 0.08 −0.16 [490]^** C4BPB −0.20 [491]^** −0.21 [492]^** −0.20 [493]^** −0.31 [494]^** −0.25 [495]^** −0.24 [496]^** VTN −0.03 0.64 −0.11 [497]^* 0.01 0.80 −0.11 0.04 −0.15 [498]^** −0.10 0.06 CLU −0.08 0.14 0.09 0.10 −0.07 0.21 −0.07 0.22 0.00 0.95 0.02 0.77 CD46 0.13 [499]^* 0.06 0.30 0.29 [500]^** 0.26 [501]^** 0.32 [502]^** 0.17 [503]^** CD55 −0.08 0.14 0.01 0.82 0.10 0.07 0.11 [504]^* 0.25 [505]^** 0.06 0.24 CD59 0.14 [506]^* 0.18 [507]^** 0.43 [508]^** 0.39 [509]^** 0.38 [510]^** 0.28 [511]^** CPN1 −0.02 0.69 −0.12 [512]^* −0.05 0.38 −0.1 0.06 −0.12 [513]^* −0.07 0.18 VSIG4 −0.02 0.69 −0.12 [514]^* −0.05 0.38 −0.1 0.06 −0.12 [515]^* −0.07 0.02 CR1 0.46 [516]^** 0.49 [517]^** 0.30 [518]^** 0.48 [519]^** 0.47 [520]^** 0.60 [521]^** CR2 0.34 [522]^** 0.28 [523]^** 0.36 [524]^** 0.32 [525]^** 0.29 [526]^** 0.33 [527]^** ITGAM 0.40 [528]^** 0.39 [529]^** 0.40 [530]^** 0.53 [531]^** 0.52 [532]^** 0.55 [533]^** ITGAX 0.59 [534]^** 0.46 [535]^** 0.50 [536]^** 0.60 [537]^** 0.55 [538]^** 0.67 [539]^** C1QR 0.25 [540]^** 0.30 [541]^** 0.47 [542]^** 0.50 [543]^** 0.53 [544]^** 0.48 [545]^** C1QBP 0.23 [546]^** 0.20 [547]^** 0.08 0.13 0.20 [548]^** 0.20 [549]^** 0.20 [550]^** [551]Open in a new tab Abbreviation: HCC, hepatocellular carcinoma. ^* p < .05 ^** p < .01. 3.7. Constructing and evaluating prognostic model As we thought the gene expressions of C1R, C6, C7, CFP, and CFHR3 had prognostic value in HCC, we used LASSO Cox regression to build the model. Based on OS information of patients with HCC, we generated the prognostic model: Riskscore = (−0.0053)*C6+(−0.0498)*C7+(−0.1045)*CFHR3, with a lambda.min = 0.0296 (Figure [552]8). As higher scores related to poorer OS in this model (Figure [553]8C). Figure 8. Figure 8 [554]Open in a new tab Prognostic Model based on the expression of C1R, C6, C7, CFP, and CFHR3 in HCC patients. (A) Coefficients of selected genes. (B) Partial likelihood deviance. (C) Risk Score for all HCC patients in TCGA. (D) K–M survival curve for OS using the prognostic model. (E) Heatmap of the expression profiles of the prognostic genes in low‐ and high‐risk groups. (F) Time‐dependent ROC analysis of the model. HCC, hepatocellular carcinoma; OS, overall survival; TCGA, The Cancer Genome Atlas Next, we verified the model by K–M survival analysis and time‐dependent ROC analysis. We drew the K–M survival curve using the medium cutoff value of our Risk Score. As shown in Figure [555]8D, the medium survive months in the higher score group was significantly shorter than that in the lower score group (3.1 vs. 5.8 months, p < .01). Also, the time‐dependent ROC analysis showed that the 1‐year AUC of this model was 0.705 (95% CI = 0.642–0.768; Figure [556]8F). 4. DISCUSSION Recently, several studies have revealed the imbalance of the complement system may affect the human immune system.[557] ^35 , [558]^36 Its abnormal activation might be the cause of many human diseases, including different kinds of cancers.[559] ^37 As there was no prior study focusing on evaluating the relationship between the complement system and HCC, we examined the mRNA expressions of 47 complement genes in patients with HCC through the public database to draw a general landscape of the complement system in HCC in this study. We found that there were six complement genes, including C1R, C6, C7, C9, CFP, and CFHR3, whose mRNA expressions were significantly lower in HCC samples than in their normal tissue counterparts according to three data sets—TIMER2, GEPIA, and GEO with a fold change >2 or <0.5 and p < .05. Bao et al.[560] ^38 reported that many complement genes such as C3, C4R, C5aR1 were overexpressed in gastric and colon cancer compared with normal tissues. Mangogna et al.[561] ^39 reported that C1q was overexpressed in breast cancer and kidney cancer, while in lung cancer, a lower level of C1q expression was found. We suspected the low mRNA expressions of complement genes in HCC might result from the fact that liver is an organ with predominant innate immunity full of complement proteins.[562] ^40 As HCC cells are immature, they cannot synthesize complement proteins as normal hepatocytes. Morris et al.[563] ^41 examined the complement biosynthesis function of a well‐differentiated HCC cell line—HepG2 and found that HepG2 synthesized and secreted functional complement proteins C1r, C1s, C2, C3, C4, C5, factor B, C1 inhibitor, C3b inactivator, a small amount of C6, and trace amounts of C8; but failed to produce detectable C1q, C7, or C9,[564] ^42 which supported our hypothesis. Nwosu's study showed that poorly‐differentiated HCC cell lines are phenotypically more “cancer‐like” and possess more tumor molecular portraits than well‐differentiated HCC cell lines,[565] ^43 which might lead poorly‐differentiated HCC cells to preserve less normal liver cell functions than well‐differentiated HCC cells, for example, less complement biosynthesis. However, further studies are still needed to elucidate the relationship between HCC differentiation and complement biosynthesis function. In this study, only six complement genes were found downregulated in HCC and only five of them (C1R, C6, C7, CFP, and CFHR3) were considered to have prognostic value. We used KEGG analysis to further speculate the biological function of C1R, C6, C7, CFP, and CFHR3 in HCC. We found that the lower mRNA expressions of C1R, C6, C7, CFP, and CFHR3 were correlated with pathways like Fanconi anemia pathway, cell cycle, MicroRNAs in cancers, and so on. These pathways were reported to promote proliferation, migration, and invasion in HCC.[566] ^44 , [567]^45 According to these results, we suspected these five complement genes might participate in the regulation of HCC through these pathways. C1R, a complement protein, combined with C1q and C1S to activate the classical pathway of the complement system. Our study found its prognostic value in patients with HCC. A previous study had shown the serum concentration of C1R had prognostic value in non‐small cell lung cancer.[568] ^46 It is reported that the knockdown of C1r promotes apoptosis of cutaneous squamous cell carcinoma cells.[569] ^47 But its biological function in HCC is not very clear. So future study focusing on the biological mechanism of C1R in HCC is needed. C6 is a complement protein composing the membrane attack complex (MAC). Our study showed its prognostic value in HCC patients, which was consistent with other studies like Mu et al.[570] ^42 However, to our knowledge, little research has been done on the biological function of C6 in HCC.[571] ^48 It was reported that cell line HepG2—an HCC cell line, secreted only a small amount of C6, much lower than other complement proteins,[572] ^41 indicating it might interfere with the biological functions of HCC. C7 is also a complement protein composing MAC. Our study showed the prognostic value of mRNA expression of C7 in HCC. Lisha et al.[573] ^49 showed that C7 was not only a prognostic marker but also suppressed tumor growth in non‐small cell lung cancer. Chen et al.[574] ^50 showed C7 was a prognostic marker in prostate cancer. Also, Zhao et al.[575] ^51 showed C7 peptide inhibited HCC metastasis by targeting the HGF/c‐Met signaling pathway, which indicated its antitumor function in HCC. CFP, also known as properdin—activating the alternative pathway of the complement system by combining C3bBb, was also reported to have prognostic value in HCC, lung adenocarcinoma, and pancreatic adenocarcinoma.[576] ^52 The higher mRNA expression of CFP was associated with better OS in these cancers, which was also consistent with our results. Block et al.[577] ^53 reported that CFP could suppress breast cancer cell growth by upregulating the transcription factor DDIT3 in vitro and in vivo. Also, Al‐Rayahi et al.[578] ^54 showed that properdin (CFP) insufficiency promotes greater M2 skewing of macrophages, causing a tumor environment that helped the tumor evade the immune response. Our result also showed its mRNA expression had correlations with tumor immune cells, including M2 macrophages, which might indicate the possible mechanism of CFP in regulating tumor immune cells in hepatocellular carcinoma. CFHR3, a negative regulator of the complement system, was reported to have prognostic value in patients with HCC according to our study. Other studies, like Liu et al.[579] ^55 also reported the prognostic value of CFHR3 in HCC. Previous studies have reported it could inhibit proliferation and introduce apoptosis in HCC via inhibiting the P13K/Akt pathway.[580] ^56 As our result showed higher mRNA expression of CFHR3 was associated with better outcomes in patients with HCC, it might be a therapy target for HCC. The mRNA expressions of MBL2 and C8A were significantly downregulated in HCC samples than in normal liver tissues in Gepia database with a fold change >2 or <0.5 and p < .05, but not according to [581]GSE25097 (although p < .05, fold change ranged from 0.5 to 2). Similarly, the mRNA expression of MASP1 was significantly downregulated in HCC samples than in normal liver tissues in [582]GSE25097 with a fold change >2 or <0.5 and p < .05, but not according to Gepia database (although p < .05, fold change ranged from 0.5 to 2). So, we did not consider their mRNA expressions were significantly different between HCC samples and normal liver tissues in this study, but we believed further research are needed to confirm the mRNA expressions of MBL2, C8A, and MASP1 in HCC as they might have an important biological function in HCC. Transcription levels of other complement genes, like CD46, CD59, and C1QBP, were found up‐ or downregulated in HCC samples only in one data set—TIMER2, without a fold change >0.5 and <2. So, we did not believe the expression of these genes was significantly altered in HCC. Here, we reported that five complement genes showed prognostic values in patients with HCC, including C1R, C6, C7, CFP, and CFHR3. As shown in our result, the mRNA expressions of these five genes were significantly lower in HCC samples than in normal controlled samples. Moreover, lower expression of C1R, C6, C7, CFP, and CFHR3 was associated with poorer OS, DFS, and PFS in HCC patients. Also, we found that the mRNA expression of C1R, C6, C7, and CFHR3 was associated with tumor grade, while the mRNA expression of C1R, C6, and CFHR3 was associated with the cancer stage. So, we thought C1R, C6, C7, and CFHR3 could be prognostic biomarkers for patients with HCC. Although CFP was not associated with tumor grade or cancer stage, it was associated with the mRNA expressions of many immune marker genes in HCC, including CD8+ T cells (CD8A, CD8B), CD4+ T cells (CD3E, CD2), B cells (CD79A), M2 macrophages (CD163), neutrophils (CCR7), DCs (CD1C, HLA‐DPA1, HLA‐DPB1, HLA‐DQB1, HLA‐DRA), Th1 cells (IFNG, TBX21), Th2 cells (GATA3) and T cell exhaustion (GZMB, LAG3, PDCD1), and so on. Thus, we thought CFP could also be a biomarker for HCC patients. As higher CFP expression was associated with better OS in HCC patients, we speculated it might be associated with the immune system regulating HCC and might be a new target or biomarker for immune therapy. Furthermore, we developed a prognostic model for HCC patients using these complement genes. Moreover, mRNA expressions of many complement genes were not altered or unclear according to our results. However, these genes were also found associated with OS, DFS, and PFS in HCC patients, like C2, C3, C5, and so on. Thus, we further examined these genes and found that the mRNA expressions of C3, C5, CFB, and CLU were correlated with cancer stage and prognosis in patients with HCC. In addition, the mRNA expressions of C1S, C8B, MBL2, CFI, and C4BPA were correlated with tumor grade and prognosis in HCC patients. Other studies, like Wang et al.[583] ^57 showed that CLU had prognostic value in HCC. Chen et al.[584] ^58 showed that C3 also had prognostic value in HCC. Thus, we considered these complement genes might also serve as prognostic biomarkers in clinic after further validation. Apart from complement genes mentioned above, the mRNA expressions of C2, CFH, CFHR1, CFHR2, CFHR4, SERPING1, MASP2, MASP1, C4BPB, VTN, CPN1, and CR2 were associated with OS, DFS, and PFS in patients with HCC. However, their mRNA expressions were neither altered in HCC, nor associated with cancer stage or tumor grade in HCC. As result, we did not consider these genes had prognostic value in HCC. Generally, it is believed that the activation of the complement system is associated with tumorigenesis, progression, and so on, by causing inflammation in the tumor microenvironment (TME).[585] ^37 Studies have shown the connection between C3/C3aR, C5/C5aR, and the development of HCC.[586] ^59 Other study has shown that complement suppresses various antitumor immune cells through C3aR and C5aR. Markiewski et al.[587] ^60 first showed that C5a/C5aR1 interaction promotes the migration of Myeloid‐derived suppressor cells (MDSCs) into tumors and enhances the suppressive capacity of tumor‐associated MDSCs. Janelle et al.[588] ^61 also revealed that CD4+ and CD8+ TILs are enhanced in the complement signaling deficient mice. According to our study, we did find that the mRNA expressions of C5AR1 and C3AR1 were positively correlated with almost all kinds of tumor immune cells, including CD8+ T cells, CD4+ T cells, B cells, macrophages, monocytes, and DCs (Table [589]3). Although the OS of HCC patients was not associated with the mRNA expression of C3aR and C5aR, the median survival months in C3aR and C5aR high expression group were shorter than that of the low expression group in our study (Table [590]1). Further study would be needed to confirm its function in patients with HCC. There were some limitations in our study. First, all the data was retrieved from online public databases (TCGA and GEO), further studies with larger sample sizes are required to validate and to explore the application of the five complement members in the prognosis and treatment of HCC. Second, we did not explore the possible mechanisms of these five complement genes in HCC via basic experiments. Finally, 27 complement genes other than C1R, C6, C7, CFP, and CFHR3 were also associated with better OS and might have an important biological function in HCC. We were intended to confirm their role in HCC and investigate the mechanism between these genes and HCC in further study. 5. CONCLUSION In summary, we assessed the gene expressions of the complement system in HCC. We have found C1R, C6, C7, CFP, and CFHR3 have prognostic value as they were not only significantly downregulated in HCC but also correlated with better OS, DFS, and PFS in HCC patients. Also, C1R, C6, C7, and CFHR3 presented correlations with tumor grades and cancer stage in HCC patients, while CFP presented correlations with the immune markers of tumor immune cells in HCC. Furthermore, we constructed a prognostic model based on our results: Riskscore = (−0.0053)*C6+(−0.0498)*C7+(−0.1045)*CFHR3. ETHICS STATEMENT The data of the patients in this study were obtained from the public database data sets. AUTHOR CONTRIBUTIONS Xinye Qian and Zhoujing Yang conceived and designed the study; Lu Gao and Yipiao Liu downloaded and organized The Cancer Genome Atlas data; Xinye Qian and Zhoujing Yang performed data analysis and wrote the paper; Jun Yan critically revised the article for essential intellectual content and administrative support. All authors read and approved the final manuscript. Supporting information Supporting information. [591]Click here for additional data file.^ (52.3KB, docx) ACKNOWLEDGMENTS