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Deep Learning for Integrated Analysis of Insulin Resistance with Multi-Omics Data. | LitMetric

Deep Learning for Integrated Analysis of Insulin Resistance with Multi-Omics Data.

J Pers Med

Department of Life Science, Handong Global University, Pohang-si, Gyeonbuk 37554, Korea.

Published: February 2021

AI Article Synopsis

  • Advances in next-generation sequencing (NGS) have enabled the exploration of complex molecular changes in both healthy and diseased states, particularly in type II diabetes.
  • The study utilizes a substantial dataset from the Integrative Human Microbiome Project, analyzing over 10,000 features to investigate the link between insulin resistance and various multi-omics elements, especially focusing on microbiome data.
  • A deep neural network interpretation algorithm was employed to clarify how different microbiome features contribute to predicting insulin resistance, enhancing understanding of their roles in this condition.

Article Abstract

Technological advances in next-generation sequencing (NGS) have made it possible to uncover extensive and dynamic alterations in diverse molecular components and biological pathways across healthy and diseased conditions. Large amounts of multi-omics data originating from emerging NGS experiments require feature engineering, which is a crucial step in the process of predictive modeling. The underlying relationship among multi-omics features in terms of insulin resistance is not well understood. In this study, using the multi-omics data of type II diabetes from the Integrative Human Microbiome Project, from 10,783 features, we conducted a data analytic approach to elucidate the relationship between insulin resistance and multi-omics features, including microbiome data. To better explain the impact of microbiome features on insulin classification, we used a developed deep neural network interpretation algorithm for each microbiome feature's contribution to the discriminative model output in the samples.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7918166PMC
http://dx.doi.org/10.3390/jpm11020128DOI Listing

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