通过 scRNA-seq 发现泛癌症基因组,优化基于深度学习的下游任务

Jong Hyun Kim, Jongseong Jang
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摘要

机器学习在转录组学数据中的应用使癌症研究取得了重大进展。然而,RNA 测序(RNA-seq)数据的高维度和复杂性给泛癌症研究带来了巨大挑战。本研究假设,在泛癌症下游任务中,从单细胞 RNA 测序(scRNA-seq)数据中获得的基因组将优于用大容量 RNA-seq 选出的基因组。我们分析了来自 13 种癌症类型的 181 例肿瘤活检的 scRNA-seq 数据。我们使用 TCGA 泛癌症 RNA-seq 数据将这些基因组应用于下游任务,并与用深度学习模型(包括多层感知器(MLP)和图神经网络(GNN))评估的六个参考基因组和来自 OncoKB 的癌基因进行比较。XGBoost 精炼的 hdWGCNA 基因集在大多数任务中都表现出更高的性能,包括肿瘤突变负担评估、微卫星不稳定性分类、突变预测、癌症亚型和分级。特别是,DPM1、BAD 和 FKBP4 等基因成为重要的泛癌症生物标记物,其中 DPM1 在各种任务中始终具有显著性。这项研究通过整合 scRNA-seq 数据和先进的分析技术,为癌症基因组学中的特征选择提供了一种稳健的方法,为提高癌症研究的预测准确性提供了一条前景广阔的途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pan-cancer gene set discovery via scRNA-seq for optimal deep learning based downstream tasks
The application of machine learning to transcriptomics data has led to significant advances in cancer research. However, the high dimensionality and complexity of RNA sequencing (RNA-seq) data pose significant challenges in pan-cancer studies. This study hypothesizes that gene sets derived from single-cell RNA sequencing (scRNA-seq) data will outperform those selected using bulk RNA-seq in pan-cancer downstream tasks. We analyzed scRNA-seq data from 181 tumor biopsies across 13 cancer types. High-dimensional weighted gene co-expression network analysis (hdWGCNA) was performed to identify relevant gene sets, which were further refined using XGBoost for feature selection. These gene sets were applied to downstream tasks using TCGA pan-cancer RNA-seq data and compared to six reference gene sets and oncogenes from OncoKB evaluated with deep learning models, including multilayer perceptrons (MLPs) and graph neural networks (GNNs). The XGBoost-refined hdWGCNA gene set demonstrated higher performance in most tasks, including tumor mutation burden assessment, microsatellite instability classification, mutation prediction, cancer subtyping, and grading. In particular, genes such as DPM1, BAD, and FKBP4 emerged as important pan-cancer biomarkers, with DPM1 consistently significant across tasks. This study presents a robust approach for feature selection in cancer genomics by integrating scRNA-seq data and advanced analysis techniques, offering a promising avenue for improving predictive accuracy in cancer research.
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