Gut microbiome-based machine learning model for early colorectal cancer and adenoma screening.

IF 4 3区 医学 Q1 GASTROENTEROLOGY & HEPATOLOGY
Yi-Jian Tsai, Wei-Ni Lyu, Nai-Shun Liao, Pei-Chun Chen, Mong-Hsun Tsai, Eric Y Chuang
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引用次数: 0

Abstract

Colorectal cancer (CRC) is a major source of cancer-related deaths, but early detection at the adenoma stage markedly improves outcomes. Existing tools such as colonoscopy and fecal immunochemical testing (FIT) are invasive or insensitive to early lesions. To develop a non-invasive screening strategy, we analyzed five publicly available 16 S rRNA sequencing datasets from North American and East Asia. Using Analysis of Compositions of Microbiome with Bias Correction (ANCOM-BC) and chi-square testing, we identified 109 discriminatory microbial taxa and trained random forest (RF) classification models to distinguish healthy controls, adenomas, and CRC. The models performed well in internal validation (AUC = 0.90, 95% CI: 0.869-0.931) and external validation (AUC = 0.82), indicating cross-population generalizability. We further developed a microbial risk score (MRS), inspired by polygenic risk score (PRS), methodology, which was significantly elevated in CRC across cohorts. Enrichment of CRC-associated pathogens such as Fusobacterium nucleatum and Porphyromonas gingivalis supports the biological relevance of the findings. These results demonstrate the potential of gut microbiome signatures combined with machine learning as scalable, non-invasive approach for early CRC and adenomas detection.

基于肠道微生物组的机器学习模型用于早期结直肠癌和腺瘤筛查。
结直肠癌(CRC)是癌症相关死亡的主要来源,但在腺瘤期早期发现可显著改善预后。现有的工具,如结肠镜检查和粪便免疫化学测试(FIT)是侵入性的或对早期病变不敏感。为了开发非侵入性筛查策略,我们分析了来自北美和东亚的5个公开可用的16s rRNA测序数据集。利用偏差校正微生物组组成分析(ANCOM-BC)和卡方检验,我们确定了109个具有区别性的微生物分类群,并训练了随机森林(RF)分类模型来区分健康对照、腺瘤和CRC。模型在内部验证(AUC = 0.90, 95% CI: 0.869-0.931)和外部验证(AUC = 0.82)中表现良好,表明了跨群体的普遍性。受多基因风险评分(PRS)方法的启发,我们进一步开发了微生物风险评分(MRS),该方法在CRC队列中显着升高。crc相关病原体如核梭杆菌和牙龈卟啉单胞菌的富集支持了该发现的生物学相关性。这些结果证明了肠道微生物组特征结合机器学习作为早期结直肠癌和腺瘤检测的可扩展、非侵入性方法的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Gut Pathogens
Gut Pathogens GASTROENTEROLOGY & HEPATOLOGY-MICROBIOLOGY
CiteScore
7.70
自引率
2.40%
发文量
43
期刊介绍: Gut Pathogens is a fast publishing, inclusive and prominent international journal which recognizes the need for a publishing platform uniquely tailored to reflect the full breadth of research in the biology and medicine of pathogens, commensals and functional microbiota of the gut. The journal publishes basic, clinical and cutting-edge research on all aspects of the above mentioned organisms including probiotic bacteria and yeasts and their products. The scope also covers the related ecology, molecular genetics, physiology and epidemiology of these microbes. The journal actively invites timely reports on the novel aspects of genomics, metagenomics, microbiota profiling and systems biology. Gut Pathogens will also consider, at the discretion of the editors, descriptive studies identifying a new genome sequence of a gut microbe or a series of related microbes (such as those obtained from new hosts, niches, settings, outbreaks and epidemics) and those obtained from single or multiple hosts at one or different time points (chronological evolution).
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