Machine Learning-Based Pathomics Model to Predict the Prognosis in Clear Cell Renal Cell Carcinoma.

IF 2.7 4区 医学 Q3 ONCOLOGY
Xiangyun Li, Xiaoqun Yang, Xianwei Yang, Xin Xie, Wenbin Rui, Hongchao He
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引用次数: 0

Abstract

Clear cell renal cell carcinoma (ccRCC) is a highly lethal urinary malignancy with poor overall survival (OS) rates. Integrating computer vision and machine learning in pathomics analysis offers potential for enhancing classification, prognosis, and treatment strategies for ccRCC. This study aims to create a pathomics model to predict OS in ccRCC patients. In this study, data from ccRCC patients in the TCGA database were used as a training set, with clinical data serving as a validation set. Pathological features were extracted from H&E-stained slides using PyRadiomics, and a pathomics model was constructed using the non-negative matrix factorization (NMF) algorithm. The model's predictive performance was assessed through Kaplan-Meier (KM) survival curves and Cox regression analysis. Additionally, differential gene expression, gene ontology (GO) enrichment analysis, immune infiltration, and mutational analysis were conducted to investigate the underlying biological mechanisms. A total of 368 pathomics features were extracted from H&E-stained slides of ccRCC patients, and a pathomics model comprising two subtypes (Cluster 1 and Cluster 2) was successfully constructed using the NMF algorithm. KM survival curves and Cox regression analysis revealed that Cluster 2 was associated with worse OS. A total of 76 differential genes were identified between the two subtypes, primarily involving extracellular matrix organization and structure. Immune-related genes, including CTLA4, CD80, and TIGIT, were highly expressed in Cluster 2, while the VHL and PBRM1 genes, along with mutations in the PI3K-Akt, HIF-1, and MAPK signaling pathways, exhibited mutation rates exceeding 40% in both subtypes. The machine learning-based pathomics model effectively predicts the OS of ccRCC patients and differentiates between subtypes. The critical roles of the immune-related gene CTLA4 and the PI3K-Akt, HIF-1, and MAPK signaling pathways offer new insights for further research on the molecular mechanisms, diagnosis, and treatment strategies for ccRCC.

基于机器学习的病理模型预测透明细胞肾细胞癌的预后。
透明细胞肾细胞癌(ccRCC)是一种高致死率的泌尿系统恶性肿瘤,总生存率较低。在病理分析中整合计算机视觉和机器学习为ccRCC的分类、预后和治疗策略提供了潜力。本研究旨在建立一个预测ccRCC患者OS的病理模型。本研究使用TCGA数据库中ccRCC患者的数据作为训练集,临床数据作为验证集。利用PyRadiomics从h&e染色的切片中提取病理特征,并利用非负矩阵分解(NMF)算法构建病理模型。通过Kaplan-Meier (KM)生存曲线和Cox回归分析评估模型的预测性能。此外,通过差异基因表达、基因本体(GO)富集分析、免疫浸润和突变分析来探讨潜在的生物学机制。从h&e染色的ccRCC患者载玻片中提取了368个病理特征,利用NMF算法成功构建了包含2个亚型(Cluster 1和Cluster 2)的病理模型。KM生存曲线和Cox回归分析显示,第2组与较差的OS相关。在两个亚型之间共鉴定出76个差异基因,主要涉及细胞外基质组织和结构。免疫相关基因,包括CTLA4、CD80和TIGIT,在集群2中高表达,而VHL和PBRM1基因,以及PI3K-Akt、HIF-1和MAPK信号通路的突变,在这两个亚型中均表现出超过40%的突变率。基于机器学习的病理模型有效地预测了ccRCC患者的OS并区分了亚型。免疫相关基因CTLA4和PI3K-Akt、HIF-1和MAPK信号通路的关键作用为进一步研究ccRCC的分子机制、诊断和治疗策略提供了新的见解。
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来源期刊
CiteScore
4.40
自引率
0.00%
发文量
202
审稿时长
2 months
期刊介绍: Technology in Cancer Research & Treatment (TCRT) is a JCR-ranked, broad-spectrum, open access, peer-reviewed publication whose aim is to provide researchers and clinicians with a platform to share and discuss developments in the prevention, diagnosis, treatment, and monitoring of cancer.
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