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首页> 外文期刊>Journal of proteome research >Human Metabolic, Mineral, and Microbiota Fluctuations Across Daily Nutritional Intake Visualized by a Data-Driven Approach
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Human Metabolic, Mineral, and Microbiota Fluctuations Across Daily Nutritional Intake Visualized by a Data-Driven Approach

机译:通过数据驱动的方法可视化人类日常营养摄入中的人体代谢,矿物质和微生物群波动

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摘要

Daily intake information is important for an understanding of the metabolic fluctuation of humans exposed to environmental stimuli. However, little investigation has been performed on the variations in dietary intake as an input and the relationship with human fecal, urinary, and salivary metabolic fluctuations as output information triggered by daily dietary intake. In the present study, we describe a data-driven approach for visualizing the daily intake information on a nutritional scale and for evaluating input-output responses under uncontrolled diets in a human study. For the input evaluation of nutritional intake, we collected information about daily dietary intake and converted this information to numeric data of nutritional elements. Furthermore, for the evaluation of output metabolic, mineral, and microbiota responses, we characterized the metabolic, mineral, and microbiota variations of noninvasive human samples of feces, urine, and saliva. The data-driven approach captured significant differences in the fluctuation of intestinal microbiota and some metabolites caused by a high-protein and a high-fat diet in daily life. This approach should contribute to the metabolic assessment of humans affected by environmental and nutritional factors under unlimited and uncontrolled diets.
机译:每日摄入量信息对于了解暴露于环境刺激下的人类的代谢波动非常重要。但是,很少有人进行饮食摄入量变化作为输入以及与人类粪便,尿液和唾液代谢波动之间的关系作为由日常饮食摄入量触发的输出信息的研究。在本研究中,我们描述了一种数据驱动的方法,用于在营养研究中可视化营养规模上的每日摄入量信息并评估在不受控制的饮食下的投入产出反应。为了评估营养摄入量,我们收集了有关日常饮食摄入量的信息,并将此信息转换为营养元素的数值数据。此外,为了评估输出代谢,矿物质和微生物群的反应,我们表征了粪便,尿液和唾液的非侵入性人类样品的代谢,矿物质和微生物群变异。数据驱动的方法捕获了日常生活中高蛋白和高脂肪饮食引起的肠道菌群和某些代谢产物波动的显着差异。这种方法应有助于在不受限制和不受控制的饮食下对受环境和营养因素影响的人类进行代谢评估。

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