Abstract

One of the main challenges in modern medicine is to stratify different patient groups in terms of underlying disease molecular mechanisms as to develop more personalized approach to therapy. Here we propose novel method for disease subtyping based on analysis of activated expression regulators on a sample-by-sample basis. Our approach relies on Sub-Network Enrichment Analysis algorithm (SNEA) which identifies gene subnetworks with significant concordant changes in expression between two conditions. Subnetwork consists of central regulator and downstream genes connected by relations extracted from global literature-extracted regulation database. Regulators found in each patient separately are clustered together and assigned activity scores which are used for final patients grouping. We show that our approach performs well compared to other related methods and at the same time provides researchers with complementary level of understanding of pathway-level biology behind a disease by identification of significant expression regulators. We have observed the reasonable grouping of neuromuscular disorders (triggered by structural damage vs triggered by unknown mechanisms), that was not revealed using standard expression profile clustering. For another experiment we were able to suggest the clusters of regulators, responsible for colorectal carcinoma vs adenoma discrimination and identify frequently genetically changed regulators that could be of specific importance for the individual characteristics of cancer development. Proposed approach can be regarded as biologically meaningful feature selection, reducing tens of thousands of genes down to dozens of clusters of regulators. Obtained clusters of regulators make possible to generate valuable biological hypotheses about molecular mechanisms related to a clinical outcome for individual patient.

Highlights

  • Patient stratification or personalized approach to therapy is one of the most perspective fields in the modern medicine

  • We show an example of biological interpretation of obtained results, suggesting regulators involved in colorectal adenoma-carcinoma sequence

  • Analysis starts from expression dataset which should contain control group of samples and samples from patients suffering from a disease

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Summary

Introduction

Patient stratification or personalized approach to therapy is one of the most perspective fields in the modern medicine. Finding different biological patterns within the group of patients with the same diagnosis could lead to more precise and effective prescriptions. To address this issue it is necessary to reveal different mechanisms within the same disease, find novel biomarkers and develop new diagnostic tests that would accurately classify patients into homogeneous diagnostic or prognostic subgroups. Gene expression studies stimulated the great progress in this field. In the past decade numerous papers were published claiming successful application of gene expression analysis to patients subtyping and prediction of survival. A typical study includes the application of statistical techniques based on supervised learning or cluster analysis to group samples based on their expression profiles

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