Cargando…

MarZIC: A Marginal Mediation Model for Zero-Inflated Compositional Mediators with Applications to Microbiome Data

Background: The human microbiome can contribute to pathogeneses of many complex diseases by mediating disease-leading causal pathways. However, standard mediation analysis methods are not adequate to analyze the microbiome as a mediator due to the excessive number of zero-valued sequencing reads in...

Descripción completa

Detalles Bibliográficos
Autores principales: Wu, Quran, O’Malley, James, Datta, Susmita, Gharaibeh, Raad Z., Jobin, Christian, Karagas, Margaret R., Coker, Modupe O., Hoen, Anne G., Christensen, Brock C., Madan, Juliette C., Li, Zhigang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9223163/
https://www.ncbi.nlm.nih.gov/pubmed/35741811
http://dx.doi.org/10.3390/genes13061049
_version_ 1784733058740518912
author Wu, Quran
O’Malley, James
Datta, Susmita
Gharaibeh, Raad Z.
Jobin, Christian
Karagas, Margaret R.
Coker, Modupe O.
Hoen, Anne G.
Christensen, Brock C.
Madan, Juliette C.
Li, Zhigang
author_facet Wu, Quran
O’Malley, James
Datta, Susmita
Gharaibeh, Raad Z.
Jobin, Christian
Karagas, Margaret R.
Coker, Modupe O.
Hoen, Anne G.
Christensen, Brock C.
Madan, Juliette C.
Li, Zhigang
author_sort Wu, Quran
collection PubMed
description Background: The human microbiome can contribute to pathogeneses of many complex diseases by mediating disease-leading causal pathways. However, standard mediation analysis methods are not adequate to analyze the microbiome as a mediator due to the excessive number of zero-valued sequencing reads in the data and that the relative abundances have to sum to one. The two main challenges raised by the zero-inflated data structure are: (a) disentangling the mediation effect induced by the point mass at zero; and (b) identifying the observed zero-valued data points that are not zero (i.e., false zeros). Methods: We develop a novel marginal mediation analysis method under the potential-outcomes framework to address the issues. We also show that the marginal model can account for the compositional structure of microbiome data. Results: The mediation effect can be decomposed into two components that are inherent to the two-part nature of zero-inflated distributions. With probabilistic models to account for observing zeros, we also address the challenge with false zeros. A comprehensive simulation study and the application in a real microbiome study showcase our approach in comparison with existing approaches. Conclusions: When analyzing the zero-inflated microbiome composition as the mediators, MarZIC approach has better performance than standard causal mediation analysis approaches and existing competing approach.
format Online
Article
Text
id pubmed-9223163
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-92231632022-06-24 MarZIC: A Marginal Mediation Model for Zero-Inflated Compositional Mediators with Applications to Microbiome Data Wu, Quran O’Malley, James Datta, Susmita Gharaibeh, Raad Z. Jobin, Christian Karagas, Margaret R. Coker, Modupe O. Hoen, Anne G. Christensen, Brock C. Madan, Juliette C. Li, Zhigang Genes (Basel) Article Background: The human microbiome can contribute to pathogeneses of many complex diseases by mediating disease-leading causal pathways. However, standard mediation analysis methods are not adequate to analyze the microbiome as a mediator due to the excessive number of zero-valued sequencing reads in the data and that the relative abundances have to sum to one. The two main challenges raised by the zero-inflated data structure are: (a) disentangling the mediation effect induced by the point mass at zero; and (b) identifying the observed zero-valued data points that are not zero (i.e., false zeros). Methods: We develop a novel marginal mediation analysis method under the potential-outcomes framework to address the issues. We also show that the marginal model can account for the compositional structure of microbiome data. Results: The mediation effect can be decomposed into two components that are inherent to the two-part nature of zero-inflated distributions. With probabilistic models to account for observing zeros, we also address the challenge with false zeros. A comprehensive simulation study and the application in a real microbiome study showcase our approach in comparison with existing approaches. Conclusions: When analyzing the zero-inflated microbiome composition as the mediators, MarZIC approach has better performance than standard causal mediation analysis approaches and existing competing approach. MDPI 2022-06-11 /pmc/articles/PMC9223163/ /pubmed/35741811 http://dx.doi.org/10.3390/genes13061049 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Wu, Quran
O’Malley, James
Datta, Susmita
Gharaibeh, Raad Z.
Jobin, Christian
Karagas, Margaret R.
Coker, Modupe O.
Hoen, Anne G.
Christensen, Brock C.
Madan, Juliette C.
Li, Zhigang
MarZIC: A Marginal Mediation Model for Zero-Inflated Compositional Mediators with Applications to Microbiome Data
title MarZIC: A Marginal Mediation Model for Zero-Inflated Compositional Mediators with Applications to Microbiome Data
title_full MarZIC: A Marginal Mediation Model for Zero-Inflated Compositional Mediators with Applications to Microbiome Data
title_fullStr MarZIC: A Marginal Mediation Model for Zero-Inflated Compositional Mediators with Applications to Microbiome Data
title_full_unstemmed MarZIC: A Marginal Mediation Model for Zero-Inflated Compositional Mediators with Applications to Microbiome Data
title_short MarZIC: A Marginal Mediation Model for Zero-Inflated Compositional Mediators with Applications to Microbiome Data
title_sort marzic: a marginal mediation model for zero-inflated compositional mediators with applications to microbiome data
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9223163/
https://www.ncbi.nlm.nih.gov/pubmed/35741811
http://dx.doi.org/10.3390/genes13061049
work_keys_str_mv AT wuquran marzicamarginalmediationmodelforzeroinflatedcompositionalmediatorswithapplicationstomicrobiomedata
AT omalleyjames marzicamarginalmediationmodelforzeroinflatedcompositionalmediatorswithapplicationstomicrobiomedata
AT dattasusmita marzicamarginalmediationmodelforzeroinflatedcompositionalmediatorswithapplicationstomicrobiomedata
AT gharaibehraadz marzicamarginalmediationmodelforzeroinflatedcompositionalmediatorswithapplicationstomicrobiomedata
AT jobinchristian marzicamarginalmediationmodelforzeroinflatedcompositionalmediatorswithapplicationstomicrobiomedata
AT karagasmargaretr marzicamarginalmediationmodelforzeroinflatedcompositionalmediatorswithapplicationstomicrobiomedata
AT cokermodupeo marzicamarginalmediationmodelforzeroinflatedcompositionalmediatorswithapplicationstomicrobiomedata
AT hoenanneg marzicamarginalmediationmodelforzeroinflatedcompositionalmediatorswithapplicationstomicrobiomedata
AT christensenbrockc marzicamarginalmediationmodelforzeroinflatedcompositionalmediatorswithapplicationstomicrobiomedata
AT madanjuliettec marzicamarginalmediationmodelforzeroinflatedcompositionalmediatorswithapplicationstomicrobiomedata
AT lizhigang marzicamarginalmediationmodelforzeroinflatedcompositionalmediatorswithapplicationstomicrobiomedata