Machine learning techniques applied to the drug design and discovery of new antivirals: a brief look over the past decade

药物发现 计算机科学 计算生物学 人工智能 数据科学 医学 机器学习 生物信息学 生物
作者
Mateus Sá Magalhães Serafim,Valtair Severino Dos Santos Júnior,Jadson Castro Gertrudes,Vinícius Gonçalves Maltarollo,Káthia Maria Honório
出处
期刊:Expert Opinion on Drug Discovery [Informa]
卷期号:16 (9): 961-975 被引量:9
标识
DOI:10.1080/17460441.2021.1918098
摘要

Introduction: Drug design and discovery of new antivirals will always be extremely important in medicinal chemistry, taking into account known and new viral diseases that are yet to come. Although machine learning (ML) have shown to improve predictions on the biological potential of chemicals and accelerate the discovery of drugs over the past decade, new methods and their combinations have improved their performance and established promising perspectives regarding ML in the search for new antivirals.Areas covered: The authors consider some interesting areas that deal with different ML techniques applied to antivirals. Recent innovative studies on ML and antivirals were selected and analyzed in detail. Also, the authors provide a brief look at the past to the present to detect advances and bottlenecks in the area.Expert opinion: From classical ML techniques, it was possible to boost the searches for antivirals. However, from the emergence of new algorithms and the improvement in old approaches, promising results will be achieved every day, as we have observed in the case of SARS-CoV-2. Recent experience has shown that it is possible to use ML to discover new antiviral candidates from virtual screening and drug repurposing.
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