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Functional Categorization of Disease Genes Based on Spectral Graph Theory and Integrated Biological Knowledge

机译:基于光谱图理论和综合生物知识的疾病基因功能分类

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Interaction of multiple genetic variants is a major challenge in the development of effective treatment strategies for complex disorders. Identifying the most promising genes enhances the understanding of the underlying mechanisms of the disease, which, in turn leads to better diagnostic and therapeutic predictions. Categorizing the disease genes into meaningful groups even helps in analyzing the correlated phenotypes which will further improve the power of detecting disease-associated variants. Since experimental approaches are time consuming and expensive, computational methods offer an accurate and efficient alternative for analyzing gene-disease associations from vast amount of publicly available genomic information. Integration of biological knowledge encoded in genes are necessary for identifying significant groups of functionally similar genes and for the sufficient biological elucidation of patterns classified by these clusters. The aim of the work is to identify gene clusters by utilizing diverse genomic information instead of using a single class of biological data in isolation and using efficient feature selection methods and edge pruning techniques for performance improvement. An optimized and streamlined procedure is proposed based on spectral clustering for automatic detection of gene communities through a combination of weighted knowledge fusion, threshold-based edge detection and entropy-based eigenvector subset selection. The proposed approach is applied to produce communities of genes related to Autism Spectrum Disorder and is compared with standard clustering solutions.
机译:多种遗传变异的相互作用是对复杂疾病有效治疗策略的发展是一个重大挑战。鉴定最有前途的基因增强了对疾病的潜在机制的理解,又导致更好的诊断和治疗预测。将疾病基因分类为有意义的群体甚至有助于分析相关表型,这将进一步提高检测疾病相关变体的力量。由于实验方法是耗时和昂贵的,计算方法提供准确和有效的替代方案,用于分析来自大量公开可用的基因组信息的基因疾病关联。在基因中编码的生物知识的整合是鉴定有重要的功能相似基因的基因和用于这些簇分类的模式的足够的生物学阐明是必要的。该工作的目的是通过利用不同的基因组信息来识别基因集群,而不是使用单一类别的生物数据,并使用有效的特征选择方法和边缘修剪技术进行性能改进。基于用于通过加权知识融合,基于阈值的边缘检测和基于熵的特征向量选择来自动检测基因社区的光谱聚类,提出了优化和简化的过程。拟议的方法适用于产生与自闭症谱系障碍相关的基因的社区,并与标准聚类溶液进行比较。

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