Abstract

Exploring gene networks is crucial for identifying significant biological interactions occurring in a disease condition. These interactions can be acknowledged by modeling the tie structure of networks. Such tie orientations are often detected within embedded community structures. However, most of the prevailing community detection modules are intended to capture information from nodes and its attributes, usually ignoring the ties. In this study, a modularity maximization algorithm is proposed based on nonlinear representation of local tangent space alignment (LTSA). Initially, the tangent coordinates are computed locally to identify k-nearest neighbors across the genes. These local neighbors are further optimized by generating a nonlinear network embedding function for detecting gene communities based on eigenvector decomposition. Experimental results suggest that this algorithm detects gene modules with a better modularity index of 0.9256, compared to other traditional community detection algorithms. Furthermore, co-expressed genes across these communities are identified by discovering the characteristic tie structures. These detected ties are known to have substantial biological influence in the progression of schizophrenia, thereby signifying the influence of tie patterns in biological networks. This technique can be extended logically on other diseases networks for detecting substantial gene “hotspots”.

Highlights

  • Schizophrenia is a multifaceted disorder characterized as a dysfunctional psychiatric illness.This condition occurs across 1.5% of world population prominently leading to cognitive impairment and thought delusions [1]

  • This study explores the importance of tie structure in gene networks, inspired from the findings

  • This study explores the importance of tie structure in gene networks, inspired from the findings of Granovetter [21]

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Summary

Introduction

Schizophrenia is a multifaceted disorder characterized as a dysfunctional psychiatric illness. This condition occurs across 1.5% of world population prominently leading to cognitive impairment and thought delusions [1]. Thereby, several studies in past have failed to identify the fundamental phenomenon responsible for a dysfunctional brain [5]. In this context, comparative analysis of numerous psychiatric conditions including schizophrenia, depressive, bipolar and treatment resistant schizophrenia (TRS) revealed that this subtype of schizophrenia, TRS, is associated with severe cognitive and psychopathological impairments requiring specialized treatment measures [6].

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