The mining and construction of a knowledge base for gene-disease association in mitochondrial diseases

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作者
Wei Wang
Junying Song
Yunhai Chuai
Fu Chen
Chunlan Song
Mingming Shu
Yayun Wang
Yunfei Li
Xinyu Zhai
Shujie Han
Shun Yao
Kexin Shen
Wei Shang
Lei Zhang
机构
[1] The Seventh Medical Center of Chinese PLA General Hospital,Department of Obstetrics and Gynecology
[2] Chinese PLA General Hospital,Department of Obstetrics and Gynecology
[3] Harrison International Peace Hospital,Department of Histology and Embryology
[4] Hebei Medical University,Navy Clinical Medical School
[5] Anhui Medical University,undefined
[6] South China University of Technology,undefined
[7] Beijing Geneworks Technology Co.,undefined
[8] Ltd.,undefined
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摘要
Mitochondrial diseases are a group of heterogeneous genetic metabolic diseases caused by mitochondrial DNA (mtDNA) or nuclear DNA (nDNA) gene mutations. Mining the gene-disease association of mitochondrial diseases is helpful for understanding the pathogenesis of mitochondrial diseases, for carrying out early clinical diagnosis for related diseases, and for formulating better treatment strategies for mitochondrial diseases. This project researched the relationship between genes and mitochondrial diseases, combined the Malacards, Genecards, and MITOMAP disease databases to mine the knowledge on mitochondrial diseases and genes, used database integration and the sequencing method of the phenolyzer tool to integrate disease-related genes from different databases, and sorted the disease-related candidate genes. Finally, we screened 531 mitochondrial related diseases, extracted 26,723 genes directly or indirectly related to mitochondria, collected 24,602 variant sites on 1474 genes, and established a mitochondrial disease knowledge base (MitDisease) with a core of genes, diseases, and variants. This knowledge base is helpful for clinicians who want to combine the results of gene testing for diagnosis, to understand the occurrence and development of mitochondrial diseases, and to develop corresponding treatment methods.
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