Cargando…

Predicting cancer immunotherapy response from gut microbiomes using machine learning models

Cancer immunotherapy has significantly improved patient survival. Yet, half of patients do not respond to immunotherapy. Gut microbiomes have been linked to clinical responsiveness of melanoma patients on immunotherapies; however, different taxa have been associated with response status with implica...

Descripción completa

Detalles Bibliográficos
Autores principales: Liang, Hai, Jo, Jay-Hyun, Zhang, Zhiwei, MacGibeny, Margaret A., Han, Jungmin, Proctor, Diana M., Taylor, Monica E., Che, You, Juneau, Paul, Apolo, Andrea B., McCulloch, John A., Davar, Diwakar, Zarour, Hassane M., Dzutsev, Amiran K., Brownell, Isaac, Trinchieri, Giorgio, Gulley, James L., Kong, Heidi H.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Impact Journals LLC 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9295706/
https://www.ncbi.nlm.nih.gov/pubmed/35875611
http://dx.doi.org/10.18632/oncotarget.28252
_version_ 1784750105691160576
author Liang, Hai
Jo, Jay-Hyun
Zhang, Zhiwei
MacGibeny, Margaret A.
Han, Jungmin
Proctor, Diana M.
Taylor, Monica E.
Che, You
Juneau, Paul
Apolo, Andrea B.
McCulloch, John A.
Davar, Diwakar
Zarour, Hassane M.
Dzutsev, Amiran K.
Brownell, Isaac
Trinchieri, Giorgio
Gulley, James L.
Kong, Heidi H.
author_facet Liang, Hai
Jo, Jay-Hyun
Zhang, Zhiwei
MacGibeny, Margaret A.
Han, Jungmin
Proctor, Diana M.
Taylor, Monica E.
Che, You
Juneau, Paul
Apolo, Andrea B.
McCulloch, John A.
Davar, Diwakar
Zarour, Hassane M.
Dzutsev, Amiran K.
Brownell, Isaac
Trinchieri, Giorgio
Gulley, James L.
Kong, Heidi H.
author_sort Liang, Hai
collection PubMed
description Cancer immunotherapy has significantly improved patient survival. Yet, half of patients do not respond to immunotherapy. Gut microbiomes have been linked to clinical responsiveness of melanoma patients on immunotherapies; however, different taxa have been associated with response status with implicated taxa inconsistent between studies. We used a tumor-agnostic approach to find common gut microbiome features of response among immunotherapy patients with different advanced stage cancers. A combined meta-analysis of 16S rRNA gene sequencing data from our mixed tumor cohort and three published immunotherapy gut microbiome datasets from different melanoma patient cohorts found certain gut bacterial taxa correlated with immunotherapy response status regardless of tumor type. Using multivariate selbal analysis, we identified two separate groups of bacterial genera associated with responders versus non-responders. Statistical models of gut microbiome community features showed robust prediction accuracy of immunotherapy response in amplicon sequencing datasets and in cross-sequencing platform validation with shotgun metagenomic datasets. Results suggest baseline gut microbiome features may be predictive of clinical outcomes in oncology patients on immunotherapies, and some of these features may be generalizable across different tumor types, patient cohorts, and sequencing platforms. Findings demonstrate how machine learning models can reveal microbiome-immunotherapy interactions that may ultimately improve cancer patient outcomes.
format Online
Article
Text
id pubmed-9295706
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Impact Journals LLC
record_format MEDLINE/PubMed
spelling pubmed-92957062022-07-21 Predicting cancer immunotherapy response from gut microbiomes using machine learning models Liang, Hai Jo, Jay-Hyun Zhang, Zhiwei MacGibeny, Margaret A. Han, Jungmin Proctor, Diana M. Taylor, Monica E. Che, You Juneau, Paul Apolo, Andrea B. McCulloch, John A. Davar, Diwakar Zarour, Hassane M. Dzutsev, Amiran K. Brownell, Isaac Trinchieri, Giorgio Gulley, James L. Kong, Heidi H. Oncotarget Research Paper Cancer immunotherapy has significantly improved patient survival. Yet, half of patients do not respond to immunotherapy. Gut microbiomes have been linked to clinical responsiveness of melanoma patients on immunotherapies; however, different taxa have been associated with response status with implicated taxa inconsistent between studies. We used a tumor-agnostic approach to find common gut microbiome features of response among immunotherapy patients with different advanced stage cancers. A combined meta-analysis of 16S rRNA gene sequencing data from our mixed tumor cohort and three published immunotherapy gut microbiome datasets from different melanoma patient cohorts found certain gut bacterial taxa correlated with immunotherapy response status regardless of tumor type. Using multivariate selbal analysis, we identified two separate groups of bacterial genera associated with responders versus non-responders. Statistical models of gut microbiome community features showed robust prediction accuracy of immunotherapy response in amplicon sequencing datasets and in cross-sequencing platform validation with shotgun metagenomic datasets. Results suggest baseline gut microbiome features may be predictive of clinical outcomes in oncology patients on immunotherapies, and some of these features may be generalizable across different tumor types, patient cohorts, and sequencing platforms. Findings demonstrate how machine learning models can reveal microbiome-immunotherapy interactions that may ultimately improve cancer patient outcomes. Impact Journals LLC 2022-07-19 /pmc/articles/PMC9295706/ /pubmed/35875611 http://dx.doi.org/10.18632/oncotarget.28252 Text en Copyright: © 2022 Liang et al. https://creativecommons.org/licenses/by/3.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/3.0/) (CC BY 3.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Paper
Liang, Hai
Jo, Jay-Hyun
Zhang, Zhiwei
MacGibeny, Margaret A.
Han, Jungmin
Proctor, Diana M.
Taylor, Monica E.
Che, You
Juneau, Paul
Apolo, Andrea B.
McCulloch, John A.
Davar, Diwakar
Zarour, Hassane M.
Dzutsev, Amiran K.
Brownell, Isaac
Trinchieri, Giorgio
Gulley, James L.
Kong, Heidi H.
Predicting cancer immunotherapy response from gut microbiomes using machine learning models
title Predicting cancer immunotherapy response from gut microbiomes using machine learning models
title_full Predicting cancer immunotherapy response from gut microbiomes using machine learning models
title_fullStr Predicting cancer immunotherapy response from gut microbiomes using machine learning models
title_full_unstemmed Predicting cancer immunotherapy response from gut microbiomes using machine learning models
title_short Predicting cancer immunotherapy response from gut microbiomes using machine learning models
title_sort predicting cancer immunotherapy response from gut microbiomes using machine learning models
topic Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9295706/
https://www.ncbi.nlm.nih.gov/pubmed/35875611
http://dx.doi.org/10.18632/oncotarget.28252
work_keys_str_mv AT lianghai predictingcancerimmunotherapyresponsefromgutmicrobiomesusingmachinelearningmodels
AT jojayhyun predictingcancerimmunotherapyresponsefromgutmicrobiomesusingmachinelearningmodels
AT zhangzhiwei predictingcancerimmunotherapyresponsefromgutmicrobiomesusingmachinelearningmodels
AT macgibenymargareta predictingcancerimmunotherapyresponsefromgutmicrobiomesusingmachinelearningmodels
AT hanjungmin predictingcancerimmunotherapyresponsefromgutmicrobiomesusingmachinelearningmodels
AT proctordianam predictingcancerimmunotherapyresponsefromgutmicrobiomesusingmachinelearningmodels
AT taylormonicae predictingcancerimmunotherapyresponsefromgutmicrobiomesusingmachinelearningmodels
AT cheyou predictingcancerimmunotherapyresponsefromgutmicrobiomesusingmachinelearningmodels
AT juneaupaul predictingcancerimmunotherapyresponsefromgutmicrobiomesusingmachinelearningmodels
AT apoloandreab predictingcancerimmunotherapyresponsefromgutmicrobiomesusingmachinelearningmodels
AT mccullochjohna predictingcancerimmunotherapyresponsefromgutmicrobiomesusingmachinelearningmodels
AT davardiwakar predictingcancerimmunotherapyresponsefromgutmicrobiomesusingmachinelearningmodels
AT zarourhassanem predictingcancerimmunotherapyresponsefromgutmicrobiomesusingmachinelearningmodels
AT dzutsevamirank predictingcancerimmunotherapyresponsefromgutmicrobiomesusingmachinelearningmodels
AT brownellisaac predictingcancerimmunotherapyresponsefromgutmicrobiomesusingmachinelearningmodels
AT trinchierigiorgio predictingcancerimmunotherapyresponsefromgutmicrobiomesusingmachinelearningmodels
AT gulleyjamesl predictingcancerimmunotherapyresponsefromgutmicrobiomesusingmachinelearningmodels
AT kongheidih predictingcancerimmunotherapyresponsefromgutmicrobiomesusingmachinelearningmodels