Deep Learning for Integrated Analysis of Insulin Resistance with Multi-Omics Data.
Eunchong HuangSarah KimTaeJin AhnPublished in: Journal of personalized medicine (2021)
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.
Keyphrases
- deep learning
- insulin resistance
- type diabetes
- electronic health record
- machine learning
- neural network
- big data
- single cell
- metabolic syndrome
- adipose tissue
- high fat diet
- cardiovascular disease
- endothelial cells
- skeletal muscle
- polycystic ovary syndrome
- dna methylation
- gene expression
- data analysis
- convolutional neural network
- weight loss
- single molecule