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Author Notes:

Ni Zhao, nzhao10@jhu.edu

Xiang Zhan, zhanx@bjmu.edu.cn

ZJ developed the method, conducted the simulation studies and real data applications, wrote the manuscript and the R program. MH and JC preprocessed the real data. XZ and NZ conceived the study and critically reviewed the manuscript. All authors read and approved the final manuscript.

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Subjects:

Research Funding:

This study was supported in part by NIH for the Environmental Influences of Child Health Outcomes 531 (ECHO) Data Analysis Center (U24OD023382) and by Mayo Clinic Center for Individualized Medicine.

Keywords:

  • beta-diversity
  • longitudinal studies
  • microbiome association analysis
  • multi-categorical outcomes
  • kernel association test

MiRKAT-MC: A Distance-Based Microbiome Kernel Association Test With Multi-Categorical Outcomes

Journal Title:

Frontiers in Genetics

Volume:

Volume 13

Publisher:

Type of Work:

Article | Final Publisher PDF

Abstract:

Increasing evidence has elucidated that the microbiome plays a critical role in many human diseases. Apart from continuous and binary traits that measure the extent or presence of a disease, multi-categorical outcomes including variations/subtypes of a disease or ordinal levels of disease severity are commonly seen in clinical studies. On top of that, studies with clustered design (i.e., family-based and longitudinal studies) are popular alternatives to population-based ones as they are able to identify characteristics on both individual and population levels and to investigate the trajectory of traits of interest over time. However, existing methods for microbiome association analysis are inadequate to handle multi-categorical outcomes, neither independent nor clustered data. We propose a microbiome kernel association test with multi-categorical outcomes (MiRKAT-MC). Our method is versatile to deal with both nominal and ordinal outcomes for independent and clustered data. In addition, it incorporates multiple ecological distances to allow for different association patterns between outcomes and microbiome compositions to be incorporated. A computationally efficient pseudo-permutation strategy is used to evaluate the statistical significance. Comprehensive simulations show that MiRKAT-MC preserves the nominal type I error and increases statistical powers under various scenarios and data types. We also apply MiRKAT-MC to real data sets with nominal and ordinal outcomes to gain biological insights. MiRKAT-MC is easy to implement, and freely available via an R package at https://github.com/Zhiwen-Owen-Jiang/MiRKATMC with a Graphical User Interface through R Shinny also available.

Copyright information:

© 2022 Jiang, He, Chen, Zhao and Zhan.

This is an Open Access work distributed under the terms of the Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/rdf).
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