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A deep learning and similarity-based hierarchical clustering approach for pathological stage prediction of papillary renal cell carcinoma

机译:基于深度学习和相似性的乳头肾细胞癌病理阶段预测的分层聚类方法

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摘要

Papillary renal cell carcinoma (pRCC), which accounts for 10–15% of renal cell carcinomas, is the second most frequent renal cell carcinoma. pRCC patient classification is difficult because of disease heterogeneity, histologic subtypes, and variations in both disease progression and patient outcomes. Nevertheless, symptom-based patient classification is indispensable in deciding treatment options. Here we introduce a prediction method for distinguishing pRCC pathological tumour stages using deep learning and similarity-based hierarchical clustering approaches. Differentially expressed genes (DEGs) were identified from gene expression data of pRCC patients retrieved from TCGA. Thirty-three of these genes were distinguished based on expression in early or late stage pRCC using the Wilcoxon rank sum test, confidence interval, and LASSO regression. Then, a deep learning model was constructed to predict tumour progression with an accuracy of 0.942 and area under curve of 0.933. Furthermore, pathological sub-stage information with an accuracy of 0.857 was obtained via similarity-based hierarchical clustering using 18 DEGs between stages I and II, and 11 DEGs between stages III and IV, identified through Wilcoxon rank sum test and quantile approach. Additionally, we offer this classification process as an R function. This is the first report of a model distinguishing the pathological tumour stages of pRCC using deep learning and similarity-based hierarchical clustering methods. Our findings are potentially applicable for improving early detection and treatment of pRCC and establishing a clearer classification of the pathological stages in other tumours.
机译:乳头肾细胞癌(PRCC),占肾细胞癌的10-15%,是第二次常见的肾细胞癌。由于疾病的异质性,组织学亚型和疾病进展和患者结果的变异,PRCC患者分类是困难的。尽管如此,症状的患者分类在决定治疗方案方面是必不可少的。在这里,我们介绍一种使用深度学习和相似性的分层聚类方法来区分PRCC病理肿瘤阶段的预测方法。从从TCGA检索的PRCC患者的基因表达数据中鉴定了差异表达的基因(DEGS)。基于PRCC的早期或晚期PRCC的表达,使用Wilcoxon等级测试,置信区间和套索回归来区分这些基因中的三十三个。然后,构建深度学习模型以预测肿瘤进展,精度为0.942和曲线下的面积为0.933。此外,通过在阶段I和II的阶段I和II之间的基于相似性的分层聚合物中获得了精度为0.857的病理副阶段信息,并且通过Wilcoxon等级测试和定量方法鉴定的阶段III和IV之间的11摄氏度。此外,我们将此分类过程提供为R功能。这是使用深度学习和相似性的分层聚类方法区分PRCC病理肿瘤阶段的模型的第一个报告。我们的研究结果可能适用于改善PRCC的早期检测和治疗,并在其他肿瘤中确定病理阶段的更清晰的分类。

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