Sudan Journal of Medical Sciences

ISSN: 1858-5051

High-impact research on the latest developments in medicine and healthcare across MENA and Africa

Exploring the Power and Promise of In Silico Clinical Trials with Application in COVID-19 Infection

Published date: Sep 30 2021

Journal Title: Sudan Journal of Medical Sciences

Issue title: Sudan JMS: Volume 16 (2021), Issue No. 3

Pages: 355–370

DOI: 10.18502/sjms.v16i3.9697

Authors:

Abdelrahman H. Abdelmoneimabduhamza009@gmail.comClinical Immunology Resident, Sudan Medical Specialization Board, Khartoum, Sudan

Safinaz I. KhalilDepartment of Pharmacology, Faculty of Medicine, University of Medical Sciences and Technology, Khartoum, Sudan

Hiba Awadelkareem Osman FadlDepartment of Hematology, Faculty of Medical Laboratory Sciences, Al-Neelain University, Khartoum, Sudan

Ayesan RewaneDepartment of Allergy and Immunology, Rush University Medical Center, Chicago, Illinois, USA

Sahar G. ElbagerDepartment of Hematology, Faculty of Medical Laboratory Sciences, University of Medical Sciences and Technology, Khartoum, Sudan

Abstract:

Background: COVID-19 pandemic has dramatically engulfed the world causing catastrophic damage to human society. Several therapeutic and vaccines have been suggested for the disease in the past months, with over 150 clinical trials currently running or under process. Nevertheless, these trials are extremely expensive and require a long time, which presents the need for alternative cost-effective methods to tackle this urgent requirement for validated therapeutics and vaccines. Bearing this in mind, here we assess the use of in silico clinical trials as a significant development in the field of clinical research, which holds the possibility to reduce the time and cost needed for clinical trials on COVID-19 and other diseases.

Methods: Using the PubMed database, we analyzed six relevant scientific articles regarding the possible application of in silico clinical trials in testing the therapeutic and investigational methods of managing different diseases.

Results: Successful use of in silico trials was observed in many of the reviewed evidence.

Conclusion: In silico clinical trials can be used in refining clinical trials for COVID-19 infection.

Keywords: in silico, clinical trials, COVID-19, SARS-CoV-2, vaccine How

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