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DES-Mutation: System for Exploring Links of Mutations and Diseases

Overview
Journal Sci Rep
Specialty Science
Date 2018 Sep 8
PMID 30190574
Citations 4
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Abstract

During cellular division DNA replicates and this process is the basis for passing genetic information to the next generation. However, the DNA copy process sometimes produces a copy that is not perfect, that is, one with mutations. The collection of all such mutations in the DNA copy of an organism makes it unique and determines the organism's phenotype. However, mutations are often the cause of diseases. Thus, it is useful to have the capability to explore links between mutations and disease. We approached this problem by analyzing a vast amount of published information linking mutations to disease states. Based on such information, we developed the DES-Mutation knowledgebase which allows for exploration of not only mutation-disease links, but also links between mutations and concepts from 27 topic-specific dictionaries such as human genes/proteins, toxins, pathogens, etc. This allows for a more detailed insight into mutation-disease links and context. On a sample of 600 mutation-disease associations predicted and curated, our system achieves precision of 72.83%. To demonstrate the utility of DES-Mutation, we provide case studies related to known or potentially novel information involving disease mutations. To our knowledge, this is the first mutation-disease knowledgebase dedicated to the exploration of this topic through text-mining and data-mining of different mutation types and their associations with terms from multiple thematic dictionaries.

Citing Articles

DES-Tcell is a knowledgebase for exploring immunology-related literature.

Alsaieedi A, Salhi A, Tifratene F, Raies A, Hungler A, Uludag M Sci Rep. 2021; 11(1):14344.

PMID: 34253812 PMC: 8275784. DOI: 10.1038/s41598-021-93809-1.


DES-ROD: Exploring Literature to Develop New Links between RNA Oxidation and Human Diseases.

Essack M, Salhi A, Van Neste C, Raies A, Tifratene F, Uludag M Oxid Med Cell Longev. 2020; 2020:5904315.

PMID: 32308806 PMC: 7142358. DOI: 10.1155/2020/5904315.


Redox control of vascular biology.

Obradovic M, Essack M, Zafirovic S, Sudar-Milovanovic E, Bajic V, Van Neste C Biofactors. 2019; 46(2):246-262.

PMID: 31483915 PMC: 7187163. DOI: 10.1002/biof.1559.


Literature-Based Enrichment Insights into Redox Control of Vascular Biology.

Essack M, Salhi A, Stanimirovic J, Tifratene F, Raies A, Hungler A Oxid Med Cell Longev. 2019; 2019:1769437.

PMID: 31223421 PMC: 6542245. DOI: 10.1155/2019/1769437.

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