Deep learning for integrated analysis of insulin resistance with multi-omics data

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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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Huang, E., Kim, S., & Ahn, T. (2021). Deep learning for integrated analysis of insulin resistance with multi-omics data. Journal of Personalized Medicine, 11(2), 1–14. https://doi.org/10.3390/jpm11020128

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