Perspective: Leveraging the Gut Microbiota to Predict Personalized Responses to Dietary, Prebiotic, and Probiotic Interventions
Humans often show variable responses to dietary, prebiotic, and probiotic interventions. Emerging evidence indicates that the gut microbiota is a key determinant for this population heterogeneity. Here, we provide an overview of some of the major computational and experimental tools being applied to critical questions of microbiota-mediated personalized nutrition and health. First, we discuss the latest advances in in silico modeling of the microbiota-nutrition-health axis, including the application of statistical, mechanistic, and hybrid artificial intelligence models. Second, we address high-throughput in vitro techniques for assessing interindividual heterogeneity, from ex vivo batch culturing of stool and continuous culturing in anaerobic bioreactors, to more sophisticated organ-on-a-chip models that integrate both host and microbial compartments. Third, we explore in vivo approaches for better understanding of personalized, microbiota-mediated responses to diet, prebiotics, and probiotics, from nonhuman animal models and human observational studies, to human feeding trials and crossover interventions. We highlight examples of existing, consumer-facing precision nutrition platforms that are currently leveraging the gut microbiota. Furthermore, we discuss how the integration of a broader set of the tools and techniques described in this piece can generate the data necessary to support a greater diversity of precision nutrition strategies. Finally, we present a vision of a precision nutrition and healthcare future, which leverages the gut microbiota to design effective, individual-specific interventions.
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Format: | Article/Letter to editor biblioteca |
Language: | English |
Subjects: | diet, microbiome, microbiota, personalized healthcare, personalized nutrition, prebiotic, precision healthcare, precision nutrition, probiotic, |
Online Access: | https://research.wur.nl/en/publications/perspective-leveraging-the-gut-microbiota-to-predict-personalized |
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dig-wur-nl-wurpubs-6034512025-01-14 Gibbons, Sean M. Gurry, Thomas Lampe, Johanna W. Chakrabarti, Anirikh Dam, Veerle Everard, Amandine Goas, Almudena Gross, Gabriele Kleerebezem, Michiel Lane, Jonathan Maukonen, Johanna Penna, Ana Lucia Barretto Pot, Bruno Valdes, Ana M. Walton, Gemma Weiss, Adrienne Zanzer, Yoghatama Cindya Venlet, Naomi V. Miani, Michela Article/Letter to editor Advances in nutrition (Bethesda, Md.) 13 (2022) 5 ISSN: 2161-8313 Perspective: Leveraging the Gut Microbiota to Predict Personalized Responses to Dietary, Prebiotic, and Probiotic Interventions 2022 Humans often show variable responses to dietary, prebiotic, and probiotic interventions. Emerging evidence indicates that the gut microbiota is a key determinant for this population heterogeneity. Here, we provide an overview of some of the major computational and experimental tools being applied to critical questions of microbiota-mediated personalized nutrition and health. First, we discuss the latest advances in in silico modeling of the microbiota-nutrition-health axis, including the application of statistical, mechanistic, and hybrid artificial intelligence models. Second, we address high-throughput in vitro techniques for assessing interindividual heterogeneity, from ex vivo batch culturing of stool and continuous culturing in anaerobic bioreactors, to more sophisticated organ-on-a-chip models that integrate both host and microbial compartments. Third, we explore in vivo approaches for better understanding of personalized, microbiota-mediated responses to diet, prebiotics, and probiotics, from nonhuman animal models and human observational studies, to human feeding trials and crossover interventions. We highlight examples of existing, consumer-facing precision nutrition platforms that are currently leveraging the gut microbiota. Furthermore, we discuss how the integration of a broader set of the tools and techniques described in this piece can generate the data necessary to support a greater diversity of precision nutrition strategies. Finally, we present a vision of a precision nutrition and healthcare future, which leverages the gut microbiota to design effective, individual-specific interventions. en application/pdf https://research.wur.nl/en/publications/perspective-leveraging-the-gut-microbiota-to-predict-personalized 10.1093/advances/nmac075 https://edepot.wur.nl/579519 diet microbiome microbiota personalized healthcare personalized nutrition prebiotic precision healthcare precision nutrition probiotic https://creativecommons.org/licenses/by-nc/4.0/ https://creativecommons.org/licenses/by-nc/4.0/ Wageningen University & Research |
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diet microbiome microbiota personalized healthcare personalized nutrition prebiotic precision healthcare precision nutrition probiotic diet microbiome microbiota personalized healthcare personalized nutrition prebiotic precision healthcare precision nutrition probiotic |
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diet microbiome microbiota personalized healthcare personalized nutrition prebiotic precision healthcare precision nutrition probiotic diet microbiome microbiota personalized healthcare personalized nutrition prebiotic precision healthcare precision nutrition probiotic Gibbons, Sean M. Gurry, Thomas Lampe, Johanna W. Chakrabarti, Anirikh Dam, Veerle Everard, Amandine Goas, Almudena Gross, Gabriele Kleerebezem, Michiel Lane, Jonathan Maukonen, Johanna Penna, Ana Lucia Barretto Pot, Bruno Valdes, Ana M. Walton, Gemma Weiss, Adrienne Zanzer, Yoghatama Cindya Venlet, Naomi V. Miani, Michela Perspective: Leveraging the Gut Microbiota to Predict Personalized Responses to Dietary, Prebiotic, and Probiotic Interventions |
description |
Humans often show variable responses to dietary, prebiotic, and probiotic interventions. Emerging evidence indicates that the gut microbiota is a key determinant for this population heterogeneity. Here, we provide an overview of some of the major computational and experimental tools being applied to critical questions of microbiota-mediated personalized nutrition and health. First, we discuss the latest advances in in silico modeling of the microbiota-nutrition-health axis, including the application of statistical, mechanistic, and hybrid artificial intelligence models. Second, we address high-throughput in vitro techniques for assessing interindividual heterogeneity, from ex vivo batch culturing of stool and continuous culturing in anaerobic bioreactors, to more sophisticated organ-on-a-chip models that integrate both host and microbial compartments. Third, we explore in vivo approaches for better understanding of personalized, microbiota-mediated responses to diet, prebiotics, and probiotics, from nonhuman animal models and human observational studies, to human feeding trials and crossover interventions. We highlight examples of existing, consumer-facing precision nutrition platforms that are currently leveraging the gut microbiota. Furthermore, we discuss how the integration of a broader set of the tools and techniques described in this piece can generate the data necessary to support a greater diversity of precision nutrition strategies. Finally, we present a vision of a precision nutrition and healthcare future, which leverages the gut microbiota to design effective, individual-specific interventions. |
format |
Article/Letter to editor |
topic_facet |
diet microbiome microbiota personalized healthcare personalized nutrition prebiotic precision healthcare precision nutrition probiotic |
author |
Gibbons, Sean M. Gurry, Thomas Lampe, Johanna W. Chakrabarti, Anirikh Dam, Veerle Everard, Amandine Goas, Almudena Gross, Gabriele Kleerebezem, Michiel Lane, Jonathan Maukonen, Johanna Penna, Ana Lucia Barretto Pot, Bruno Valdes, Ana M. Walton, Gemma Weiss, Adrienne Zanzer, Yoghatama Cindya Venlet, Naomi V. Miani, Michela |
author_facet |
Gibbons, Sean M. Gurry, Thomas Lampe, Johanna W. Chakrabarti, Anirikh Dam, Veerle Everard, Amandine Goas, Almudena Gross, Gabriele Kleerebezem, Michiel Lane, Jonathan Maukonen, Johanna Penna, Ana Lucia Barretto Pot, Bruno Valdes, Ana M. Walton, Gemma Weiss, Adrienne Zanzer, Yoghatama Cindya Venlet, Naomi V. Miani, Michela |
author_sort |
Gibbons, Sean M. |
title |
Perspective: Leveraging the Gut Microbiota to Predict Personalized Responses to Dietary, Prebiotic, and Probiotic Interventions |
title_short |
Perspective: Leveraging the Gut Microbiota to Predict Personalized Responses to Dietary, Prebiotic, and Probiotic Interventions |
title_full |
Perspective: Leveraging the Gut Microbiota to Predict Personalized Responses to Dietary, Prebiotic, and Probiotic Interventions |
title_fullStr |
Perspective: Leveraging the Gut Microbiota to Predict Personalized Responses to Dietary, Prebiotic, and Probiotic Interventions |
title_full_unstemmed |
Perspective: Leveraging the Gut Microbiota to Predict Personalized Responses to Dietary, Prebiotic, and Probiotic Interventions |
title_sort |
perspective: leveraging the gut microbiota to predict personalized responses to dietary, prebiotic, and probiotic interventions |
url |
https://research.wur.nl/en/publications/perspective-leveraging-the-gut-microbiota-to-predict-personalized |
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