TRANS-OMIC KNOWLEDGE TRANSFER MODELING INFERS GUT MICROBIOME BIOMARKERS OF ANTI-TNF RESISTANCE IN ULCERATIVE COLITIS.

Q2 Computer Science
Alan Trinh, Ran Ran, Douglas K Brubaker
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引用次数: 0

Abstract

A critical challenge in analyzing multi-omics data from clinical cohorts is the re-use of these valuable datasets to answer biological questions beyond the scope of the original study. Transfer Learning and Knowledge Transfer approaches are machine learning methods that leverage knowledge gained in one domain to solve a problem in another. Here, we address the challenge of developing Knowledge Transfer approaches to map trans-omic information from a multi-omic clinical cohort to another cohort in which a novel phenotype is measured. Our test case is that of predicting gut microbiome and gut metabolite biomarkers of resistance to anti-TNF therapy in Ulcerative Colitis patients. Three approaches are proposed for Trans-omic Knowledge Transfer, and the resulting performance and downstream inferred biomarkers are compared to identify efficacious methods. We find that multiple approaches reveal similar metabolite and microbial biomarkers of anti-TNF resistance and that these commonly implicated biomarkers can be validated in literature analysis. Overall, we demonstrate a promising approach to maximize the value of the investment in large clinical multi-omics studies by re-using these data to answer biological and clinical questions not posed in the original study.

反组知识转移模型推断溃疡性结肠炎中抗肿瘤坏死因子耐药的肠道微生物组生物标志物。
分析来自临床队列的多组学数据的一个关键挑战是重新使用这些有价值的数据集来回答超出原始研究范围的生物学问题。迁移学习和知识迁移方法是利用在一个领域获得的知识来解决另一个领域的问题的机器学习方法。在这里,我们解决了开发知识转移方法的挑战,将跨基因组信息从多组临床队列映射到另一个测量新表型的队列。我们的测试案例是预测溃疡性结肠炎患者对抗肿瘤坏死因子治疗耐药的肠道微生物组和肠道代谢物生物标志物。本文提出了三种跨组知识转移的方法,并比较了结果的性能和下游推断的生物标志物,以确定有效的方法。我们发现多种方法揭示了抗tnf耐药的相似代谢物和微生物生物标志物,这些通常涉及的生物标志物可以在文献分析中得到验证。总的来说,我们展示了一种有希望的方法,通过重新使用这些数据来回答原始研究中未提出的生物学和临床问题,从而最大化大型临床多组学研究的投资价值。
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
CiteScore
4.50
自引率
0.00%
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