基于外显子跳越的结直肠癌亚型分析

IF 25.7 1区 医学 Q1 GASTROENTEROLOGY & HEPATOLOGY Gastroenterology Pub Date : 2024-12-01 Epub Date: 2024-08-23 DOI:10.1053/j.gastro.2024.08.016
Aslihan Ambeskovic, Matthew N McCall, Jonathan Woodsmith, Hartmut Juhl, Hartmut Land
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引用次数: 0

摘要

背景和目的:鉴定结直肠癌(CRC)分子亚型对患者具有预后和潜在诊断价值,但临床上仍无法进行可靠的亚型鉴定。目前共识的结直肠癌分子亚型(CMS)分类是基于基因水平量化的复杂 RNA 表达模式。然而,由于单个样本分类的高度不确定性和相关成本,这些方法的临床应用具有挑战性。替代剪接(AS)是转录组多样性的重要组成部分,但很少被用于组织类型分类。在此,我们提出了一个基于AS的CRC亚型分类框架,该框架对不同外显子的使用情况非常敏感,可用于临床应用:方法:使用无监督聚类来测量不同类别的AS和CMS之间的关联强度。为了建立分类器,CMS标签的基本事实来自基因水平量化的表达数据。特征选择是通过引导和 L1 惩罚估计实现的。由此产生的特征空间被用来构建一个适用于单个和多个样本的亚型预测框架。在两个独立来源(Indivumed,n=129;TCGA,n=99)的未见过的 CRC 上评估了模型的性能:结果:与基于基因表达的分类器相比,我们基于 29 个外显子跳转(ES)事件开发了结直肠癌亚型识别器(CRCi),它能准确地对未见肿瘤进行分类,并能更精确地区分具有不同生物学和预后特征的亚型:结论:我们在此证明,少量的 ES 事件就能以适合临床应用的方式,利用单个患者标本对结直肠癌亚型进行可靠的分类。
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Exon-Skipping-Based Subtyping of Colorectal Cancers.

Background & aims: The identification of colorectal cancer (CRC) molecular subtypes has prognostic and potentially diagnostic value for patients, yet reliable subtyping remains unavailable in the clinic. The current consensus molecular subtype (CMS) classification in CRCs is based on complex RNA expression patterns quantified at the gene level. The clinical application of these methods, however, is challenging due to high uncertainty of single-sample classification and associated costs. Alternative splicing, which strongly contributes to transcriptome diversity, has rarely been used for tissue type classification. Here, we present an AS-based CRC subtyping framework sensitive to differential exon use that can be adapted for clinical application.

Methods: Unsupervised clustering was used to measure the strength of association between different categories of alternative splicing and CMSs. To build a classifier, the ground truth for CMS labels was derived from expression data quantified at the gene level. Feature selection was achieved through bootstrapping and L1-penalized estimation. The resulting feature space was used to construct a subtype prediction framework applicable to single and multiple samples. The performance of the models was evaluated on unseen CRCs from 2 independent sources (Indivumed, n = 129; The Cancer Genome Atlas, n = 99).

Results: We developed a CRC subtype identifier based on 29 exon-skipping events that accurately classifies unseen tumors and enables more precise differentiation of subtypes characterized by distinct biological and prognostic features as compared to classifiers based on gene expression.

Conclusions: Here, we demonstrate that a small number of exon-skipping events can reliably classify CRC subtypes using individual patient specimens in a manner suitable to clinical application.

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来源期刊
Gastroenterology
Gastroenterology 医学-胃肠肝病学
CiteScore
45.60
自引率
2.40%
发文量
4366
审稿时长
26 days
期刊介绍: Gastroenterology is the most prominent journal in the field of gastrointestinal disease. It is the flagship journal of the American Gastroenterological Association and delivers authoritative coverage of clinical, translational, and basic studies of all aspects of the digestive system, including the liver and pancreas, as well as nutrition. Some regular features of Gastroenterology include original research studies by leading authorities, comprehensive reviews and perspectives on important topics in adult and pediatric gastroenterology and hepatology. The journal also includes features such as editorials, correspondence, and commentaries, as well as special sections like "Mentoring, Education and Training Corner," "Diversity, Equity and Inclusion in GI," "Gastro Digest," "Gastro Curbside Consult," and "Gastro Grand Rounds." Gastroenterology also provides digital media materials such as videos and "GI Rapid Reel" animations. It is abstracted and indexed in various databases including Scopus, Biological Abstracts, Current Contents, Embase, Nutrition Abstracts, Chemical Abstracts, Current Awareness in Biological Sciences, PubMed/Medline, and the Science Citation Index.
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