Charles Perkins Centre, The University of Sydney, Camperdown, Sydney, NSW, Australia.
School of Mathematics and Statistics, The University of Sydney, Camperdown, Sydney, NSW, Australia.
Microbiome. 2023 Mar 15;11(1):51. doi: 10.1186/s40168-023-01475-4.
Unrevealing the interplay between diet, the microbiome, and the health state could enable the design of personalized intervention strategies and improve the health and well-being of individuals. A common approach to this is to divide the study population into smaller cohorts based on dietary preferences in the hope of identifying specific microbial signatures. However, classification of patients based solely on diet is unlikely to reflect the microbiome-host health relationship or the taxonomic microbiome makeup.
We present a novel approach, the Nutrition-Ecotype Mixture of Experts (NEMoE) model, for establishing associations between gut microbiota and health state that accounts for diet-specific cohort variability using a regularized mixture of experts model framework with an integrated parameter sharing strategy to ensure data-driven diet-cohort identification consistency across taxonomic levels. The success of our approach was demonstrated through a series of simulation studies, in which NEMoE showed robustness with regard to parameter selection and varying degrees of data heterogeneity. Further application to real-world microbiome data from a Parkinson's disease cohort revealed that NEMoE is capable of not only improving predictive performance for Parkinson's Disease but also for identifying diet-specific microbial signatures of disease.
In summary, NEMoE can be used to uncover diet-specific relationships between nutritional-ecotype and patient health and to contextualize precision nutrition for different diseases. Video Abstract.
揭示饮食、微生物组和健康状态之间的相互作用,可以使我们能够设计出个性化的干预策略,从而提高个人的健康和幸福感。一种常见的方法是根据饮食偏好将研究人群分为更小的队列,希望能识别出特定的微生物特征。然而,仅根据饮食对患者进行分类不太可能反映微生物组与宿主健康的关系或分类微生物组的组成。
我们提出了一种新的方法,即营养-生态型混合专家(NEMoE)模型,该模型通过正则化混合专家模型框架和集成参数共享策略,利用饮食特定队列变异性来建立肠道微生物群与健康状态之间的关联,从而确保在分类水平上实现数据驱动的饮食队列识别一致性。我们通过一系列模拟研究证明了我们方法的成功,其中 NEMoE 在参数选择和不同程度的数据异质性方面表现出了稳健性。进一步将其应用于帕金森病队列的真实微生物组数据表明,NEMoE 不仅能够提高帕金森病的预测性能,还能够识别出疾病的特定饮食微生物特征。
总之,NEMoE 可用于揭示营养生态型和患者健康之间的特定饮食关系,并为不同疾病提供个性化的营养。视频摘要。