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An inference method from multi-layered structure of biomedical data

Biological system is a multi-layered structure of omics with genome, epigenome, transcriptome, metabolome, proteome, etc., and can be further stretched to clinical/medical layers such as diseasome, drugs, and symptoms. One advantage of omics is that we can figure out an unknown component or its trai...

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Published in:BMC medical informatics and decision making 2017-05, Vol.17 (Suppl 1), p.52-52, Article 52
Main Authors: Kim, Myungjun, Nam, Yonghyun, Shin, Hyunjung
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description Biological system is a multi-layered structure of omics with genome, epigenome, transcriptome, metabolome, proteome, etc., and can be further stretched to clinical/medical layers such as diseasome, drugs, and symptoms. One advantage of omics is that we can figure out an unknown component or its trait by inferring from known omics components. The component can be inferred by the ones in the same level of omics or the ones in different levels. To implement the inference process, an algorithm that can be applied to the multi-layered complex system is required. In this study, we develop a semi-supervised learning algorithm that can be applied to the multi-layered complex system. In order to verify the validity of the inference, it was applied to the prediction problem of disease co-occurrence with a two-layered network composed of symptom-layer and disease-layer. The symptom-disease layered network obtained a fairly high value of AUC, 0.74, which is regarded as noticeable improvement when comparing 0.59 AUC of single-layered disease network. If further stretched to whole layered structure of omics, the proposed method is expected to produce more promising results. This research has novelty in that it is a new integrative algorithm that incorporates the vertical structure of omics data, on contrary to other existing methods that integrate the data in parallel fashion. The results can provide enhanced guideline for disease co-occurrence prediction, thereby serve as a valuable tool for inference process of multi-layered biological system.
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subjects Algorithms
Artificial intelligence
Aversion learning
Bioinformatics
Biological activity
Biological Science Disciplines
Biomedical data
Cancer
Comorbidity
Computational Biology - methods
Diagnosis
Disease
Disease co-occurrence prediction
Drugs
Gene expression
Genomes
Humans
Inference
Integrative inference on biomedical data
Machine learning
Metabolism
Methods
Multilayers
Novelty
Propagation
Proteins
Proteomes
Semi-supervised learning
Semi-supervised learning for multiple networks
Serial learning
Supervised Machine Learning
Symptom-disease multi-layered network
title An inference method from multi-layered structure of biomedical data
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