Deciphering the 'gut-brain axis' through microbiome diversity.

IF 5.3 3区 医学 Q1 PSYCHIATRY
General Psychiatry Pub Date : 2023-10-29 eCollection Date: 2023-01-01 DOI:10.1136/gpsych-2023-101090
Jinyuan Liu, Ke Xu, Tsungchin Wu, Lydia Yao, Tanya T Nguyen, Dilip Jeste, Xinlian Zhang
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引用次数: 0

Abstract

Incentivised by breakthroughs and data generated by the high-throughput sequencing technology, this paper proposes a distance-based framework to fulfil the emerging needs in elucidating insights from the high-dimensional microbiome data in psychiatric studies. By shifting focus from traditional methods that focus on the observations from each subject to the between-subject attributes that aggregate two or more subjects' entire feature vectors, the described approach revolutionises the conventional prescription for high-dimensional observations via microbiome diversity. To this end, we enrich the classical generalised linear models to articulate the multivariable regression relationship between distance-based variables. We also discuss a robust and computationally feasible semiparametric inference technique. Benefitting from the latest advances in the semiparametric efficiency theory for such attributes, the proposed estimators enjoy robustness and good asymptotic properties that guarantee sensitivity in detecting signals between clinical outcomes and microbiome diversity. It offers a readily implementable and easily interpretable solution for deciphering the gut-brain axis in mental health research.

通过微生物组多样性解读“肠脑轴”。
在高通量测序技术的突破和数据的激励下,本文提出了一个基于距离的框架,以满足在精神病研究中从高维微生物组数据中阐明见解的新需求。通过将重点从关注每个受试者观察结果的传统方法转移到聚合两个或多个受试者整个特征向量的受试者间属性,所描述的方法彻底改变了通过微生物组多样性进行高维观察的传统处方。为此,我们丰富了经典的广义线性模型,以阐明基于距离的变量之间的多变量回归关系。我们还讨论了一种稳健且计算可行的半参数推理技术。得益于此类属性的半参数效率理论的最新进展,所提出的估计量具有鲁棒性和良好的渐近性质,保证了检测临床结果和微生物组多样性之间信号的敏感性。它为解读心理健康研究中的肠脑轴提供了一个易于实施和解释的解决方案。
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
General Psychiatry
General Psychiatry 医学-精神病学
CiteScore
21.90
自引率
2.50%
发文量
848
期刊介绍: General Psychiatry (GPSYCH), an open-access journal established in 1959, has been a pioneer in disseminating leading psychiatry research. Addressing a global audience of psychiatrists and mental health professionals, the journal covers diverse topics and publishes original research, systematic reviews, meta-analyses, forums on topical issues, case reports, research methods in psychiatry, and a distinctive section on 'Biostatistics in Psychiatry'. The scope includes original articles on basic research, clinical research, community-based studies, and ecological studies, encompassing a broad spectrum of psychiatric interests.
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