基于机器学习的多模态放射组学和转录组学模型预测食管癌放疗敏感性和预后。

IF 4 2区 生物学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Chengyu Ye,Hao Zhang,Zhou Chi,Zhina Xu,Yujie Cai,Yajing Xu,Xiangmin Tong
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引用次数: 0

摘要

放疗在食管癌治疗中起着至关重要的作用,但个体反应差异很大,影响患者的预后。本研究将机器学习驱动的多模态放射组学和转录组学结合起来,建立食管癌放疗敏感性和预后的预测模型。我们将SEResNet101深度学习模型应用于UCSC Xena和TCGA数据库的成像和转录组学数据,确定预后相关基因,如STUB1、PEX12和HEXIM2。使用Lasso回归和Cox分析,我们构建了一个预后风险模型,根据生存概率准确地对患者进行分层。值得注意的是,E3泛素连接酶STUB1通过促进SRC(一种关键的致癌蛋白)的泛素化和降解来增强放疗敏感性。体外和体内实验证实,STUB1过表达或SRC沉默可显著改善食管癌模型的放疗反应。这些发现强调了多模式数据整合对个体化放疗计划的预测能力,并强调了STUB1作为提高食管癌放疗疗效的有希望的治疗靶点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning-Based Multimodal Radiomics and Transcriptomics Models for Predicting Radiotherapy Sensitivity and Prognosis in Esophageal Cancer.
Radiotherapy plays a critical role in treating esophageal cancer, but individual responses vary significantly, impacting patient outcomes. This study integrates machine learning-driven multimodal radiomics and transcriptomics to develop predictive models for radiotherapy sensitivity and prognosis in esophageal cancer. We applied the SEResNet101 deep learning model to imaging and transcriptomic data from the UCSC Xena and TCGA databases, identifying prognosis-associated genes such as STUB1, PEX12, and HEXIM2. Using Lasso regression and Cox analysis, we constructed a prognostic risk model that accurately stratifies patients based on survival probability. Notably, STUB1, an E3 ubiquitin ligase, enhances radiotherapy sensitivity by promoting the ubiquitination and degradation of SRC, a key oncogenic protein. In vitro and in vivo experiments confirmed that STUB1 overexpression or SRC silencing significantly improves radiotherapy response in esophageal cancer models. These findings highlight the predictive power of multimodal data integration for individualized radiotherapy planning and underscore STUB1 as a promising therapeutic target for enhancing radiotherapy efficacy in esophageal cancer.
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来源期刊
Journal of Biological Chemistry
Journal of Biological Chemistry Biochemistry, Genetics and Molecular Biology-Biochemistry
自引率
4.20%
发文量
1233
期刊介绍: The Journal of Biological Chemistry welcomes high-quality science that seeks to elucidate the molecular and cellular basis of biological processes. Papers published in JBC can therefore fall under the umbrellas of not only biological chemistry, chemical biology, or biochemistry, but also allied disciplines such as biophysics, systems biology, RNA biology, immunology, microbiology, neurobiology, epigenetics, computational biology, ’omics, and many more. The outcome of our focus on papers that contribute novel and important mechanistic insights, rather than on a particular topic area, is that JBC is truly a melting pot for scientists across disciplines. In addition, JBC welcomes papers that describe methods that will help scientists push their biochemical inquiries forward and resources that will be of use to the research community.
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