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Expressive Analysis of Gut Microbiota in Pre- and Post- Solid Organ Transplantation Using Bayesian Topic Models

机译:使用贝叶斯主题模型预防固体器官移植肠道微生物的表达分析

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There is a growing evidence that variation in gut microbial communities has important associations with overall host health, and that the diversity and the richness of such communities is helpful in distinguishing patients at high risk of life-threatening post-transplantation conditions. The aim of our paper is to provide an expressive and highly interpretable characterization of microbiome alterations, with the goal of achieving more effective transplantations characterized by a rejection rate as low as possible, and to avoid more severe complications by treating patients at risk in a timely and effective way. For this purpose, we propose using topic models to identify those bacterial species that have the most important weight under the two different experimental conditions (healthy and transplanted patients, or patients whose fecal micro-biota has been sampled both in pre- and post-transplantation phases). Topic models are Bayesian statistical models that are not affected by data scarcity, because conclusions we can draw borrow strength across sparse gut microbiome samples. By exploiting this property, we show that topic models are expressive methods for dimensionality reduction which can help analyze variation and diversity in gut microbial communities. With topic models the analysis can be carried out at a level close to natural language, as the output can be easily interpreted by clinicians, since most abundant species are automatically selected and the microbial dynamics can be tracked and followed over time.
机译:有一种日益增长的证据表明肠道微生物社区的变化具有重要的宿主健康的重要协会,并且这些社区的多样性和丰富性具有有助于区分患者在危及生命的移植后危及生命后期的危险性患者。本文的目的是提供微生物组改变的表现力和高度可解释的表征,其目的是实现更有效的移植,其特征在于尽可能低的抑制率,并通过及时处理风险患者更严重的并发症有效的方式。为此目的,我们建议使用主题模型来鉴定这些细菌种类,这些细菌物种在两种不同的实验条件下具有最重要的重量(健康和移植的患者,或粪便微生在预移植后的患者中取样的患者阶段)。主题模型是贝叶斯统计模型,不受数据稀缺影响的影响,因为我们可以在稀疏的肠道微生物胺样本中吸取借用力量。通过利用此属性,我们表明主题模型是对维度减少的表现力的方法,这有助于分析肠道微生物社区中的变化和多样性。对于主题模型,分析可以在接近自然语言的级别进行分析,因为临床医生可以容易地解释输出,因为大多数大量物种都是自动选择的,并且可以跟踪微生物动态并随后进行微生物动态。

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