DSEATM: drug set enrichment analysis uncovering disease mechanisms by biomedical text mining.

Brief Bioinform

Hubei Hongshan Laboratory, College of Biomedicine and Health, Huazhong Agricultural University, Wuhan, 430070, Hubei, PR China.

Published: July 2022

AI Article Synopsis

  • - Disease pathogenesis is a key focus in biomedical research, and analyzing drug effects on specific diseases shows potential for uncovering disease-related mechanisms, though it's been limited to few drugs.
  • - The study utilized text mining to gather extensive data on diseases, drugs, and their associations from over 29 million publications and developed a new analysis pipeline called 'DSEATM', which proved more effective than current methods.
  • - DSEATM's findings align well with established cancer pathways, demonstrating its reliability; the number of drugs analyzed is significantly linked to the method's performance, indicating DSEATM could be a valuable tool for disease research.

Article Abstract

Disease pathogenesis is always a major topic in biomedical research. With the exponential growth of biomedical information, drug effect analysis for specific phenotypes has shown great promise in uncovering disease-associated pathways. However, this method has only been applied to a limited number of drugs. Here, we extracted the data of 4634 diseases, 3671 drugs, 112 809 disease-drug associations and 81 527 drug-gene associations by text mining of 29 168 919 publications. On this basis, we proposed a 'Drug Set Enrichment Analysis by Text Mining (DSEATM)' pipeline and applied it to 3250 diseases, which outperformed the state-of-the-art method. Furthermore, diseases pathways enriched by DSEATM were similar to those obtained using the TCGA cancer RNA-seq differentially expressed genes. In addition, the drug number, which showed a remarkable positive correlation of 0.73 with the AUC, plays a determining role in the performance of DSEATM. Taken together, DSEATM is an auspicious and accurate disease research tool that offers fresh insights.

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Source
http://dx.doi.org/10.1093/bib/bbac228DOI Listing

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