Identifying the programmed cell death index of hepatocellular carcinoma for prognosis and therapy response improvement by machine learning: a bioinformatics analysis and experimental validation
BackgroundDespite advancements in hepatocellular carcinoma (HCC) treatments, the prognosis for patients remains suboptimal. Cumulative evidence suggests that programmed cell death (PCD) exerts crucial functions in HCC. PCD-related genes are potential predictors for prognosis and therapeutic responses.MethodsA systematic analysis of 14 PCD modes was conducted to determine the correlation between PCD and HCC. A novel machine learning-based integrative framework was utilized to construct the PCD Index (PCDI) for prognosis and therapeutic response prediction. A comprehensive analysis of PCDI genes was performed, leveraging data including single-cell sequencing and proteomics. GBA was selected, and its functions were investigated in HCC cell lines by in vitro experiments.ResultsTwo PCD clusters with different clinical and biological characteristics were identified in HCC. With the computational framework, the PCDI was constructed, demonstrating superior prognostic predictive efficacy and surpassing previously published prognostic models. An efficient clinical nomogram based on PCDI and clinicopathological factors was then developed. PCDI was intimately associated with immunological attributes, and PCDI could efficaciously predict immunotherapy response. Additionally, the PCDI could predict the chemotherapy sensitivity of HCC patients. A multilevel panorama of PCDI genes confirmed its stability and credibility. Finally, the knockdown of GBA could suppress both the proliferative and invasive capacities of HCC cells.ConclusionThis study systematically elucidated the association between PCD and HCC. A robust PCDI was constructed for prognosis and therapy response prediction, which would facilitate clinical management and personalized therapy for HCC.
基金:
National Natural Science Foundation of China10.13039/501100001809 [81874062, 82072730]; National Natural Science Foundation of China
第一作者单位:[1]Huazhong Univ Sci & Technol,Canc Res Ctr A,Tongji Med Coll,Dept Biliary & Pancreat Surg,ffiliated Tongji Hosp,Wuhan,Peoples R China
通讯作者:
通讯机构:[1]Huazhong Univ Sci & Technol,Canc Res Ctr A,Tongji Med Coll,Dept Biliary & Pancreat Surg,ffiliated Tongji Hosp,Wuhan,Peoples R China[3]Wuhan Univ Sci & Technol, Affiliated Tianyou Hosp, Wuhan, Peoples R China
推荐引用方式(GB/T 7714):
Shi Yuanxin,Feng Yunxiang,Qiu Peng,et al.Identifying the programmed cell death index of hepatocellular carcinoma for prognosis and therapy response improvement by machine learning: a bioinformatics analysis and experimental validation[J].FRONTIERS IN IMMUNOLOGY.2023,14:doi:10.3389/fimmu.2023.1298290.
APA:
Shi, Yuanxin,Feng, Yunxiang,Qiu, Peng,Zhao, Kai,Li, Xiangyu...&Wang, Jianming.(2023).Identifying the programmed cell death index of hepatocellular carcinoma for prognosis and therapy response improvement by machine learning: a bioinformatics analysis and experimental validation.FRONTIERS IN IMMUNOLOGY,14,
MLA:
Shi, Yuanxin,et al."Identifying the programmed cell death index of hepatocellular carcinoma for prognosis and therapy response improvement by machine learning: a bioinformatics analysis and experimental validation".FRONTIERS IN IMMUNOLOGY 14.(2023)