Herbal Compound Screening with GPU Computation on ZINC Database through Similarity Comparison Approach

Covid-19 is a global pandemic that drives many researchers to strive to look for its solution, especially in the field of health, medicine, and total countermeasures. Early screening with in-silico processes is crucial to minimize the search space of the potential drugs to cure a disease. This resea...

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Bibliographic Details
Main Authors: Darmawan, Refianto Damai, Kusuma, Wisnu Ananta, Rahmawan, Hendra
Format: UMS Journal (OJS)
Language:eng
Published: Department of Informatics, Universitas Muhammadiyah Surakarta, Indonesia 2022
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Online Access:https://journals.ums.ac.id/index.php/khif/article/view/16349
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Summary:Covid-19 is a global pandemic that drives many researchers to strive to look for its solution, especially in the field of health, medicine, and total countermeasures. Early screening with in-silico processes is crucial to minimize the search space of the potential drugs to cure a disease. This research aims to find potential drugs of covid-19 disease in the ZINC database to be further investigated through the in-vitro method. About 997.402.117 chemical compounds are searched about their similarity to some of the confirmed drugs to combat coronavirus. Sequential computation would take months to accomplish this task. The general programming graphic processing unit approach is used to implement a similarity comparison algorithm in parallel, in order to speed up the process. The result of this study shows the parallel algorithm implementation can speed up the computation process up to 55 times faster, and also that some of the chemical compounds have high similarity scores and can be found in nature