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Deep learning tools for advancing drug discovery and development

A few decades ago, drug discovery and development were limited to a bunch of medicinal chemists working in a lab with enormous amount of testing, validations, and synthetic procedures, all contributing to considerable investments in time and wealth to get one drug out into the clinics. The advanceme...

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Autores principales: Nag, Sagorika, Baidya, Anurag T. K., Mandal, Abhimanyu, Mathew, Alen T., Das, Bhanuranjan, Devi, Bharti, Kumar, Rajnish
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer International Publishing 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8994527/
https://www.ncbi.nlm.nih.gov/pubmed/35433167
http://dx.doi.org/10.1007/s13205-022-03165-8
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author Nag, Sagorika
Baidya, Anurag T. K.
Mandal, Abhimanyu
Mathew, Alen T.
Das, Bhanuranjan
Devi, Bharti
Kumar, Rajnish
author_facet Nag, Sagorika
Baidya, Anurag T. K.
Mandal, Abhimanyu
Mathew, Alen T.
Das, Bhanuranjan
Devi, Bharti
Kumar, Rajnish
author_sort Nag, Sagorika
collection PubMed
description A few decades ago, drug discovery and development were limited to a bunch of medicinal chemists working in a lab with enormous amount of testing, validations, and synthetic procedures, all contributing to considerable investments in time and wealth to get one drug out into the clinics. The advancements in computational techniques combined with a boom in multi-omics data led to the development of various bioinformatics/pharmacoinformatics/cheminformatics tools that have helped speed up the drug development process. But with the advent of artificial intelligence (AI), machine learning (ML) and deep learning (DL), the conventional drug discovery process has been further rationalized. Extensive biological data in the form of big data present in various databases across the globe acts as the raw materials for the ML/DL-based approaches and helps in accurate identifications of patterns and models which can be used to identify therapeutically active molecules with much fewer investments on time, workforce and wealth. In this review, we have begun by introducing the general concepts in the drug discovery pipeline, followed by an outline of the fields in the drug discovery process where ML/DL can be utilized. We have also introduced ML and DL along with their applications, various learning methods, and training models used to develop the ML/DL-based algorithms. Furthermore, we have summarized various DL-based tools existing in the public domain with their application in the drug discovery paradigm which includes DL tools for identification of drug targets and drug–target interaction such as DeepCPI, DeepDTA, WideDTA, PADME DeepAffinity, and DeepPocket. Additionally, we have discussed various DL-based models used in protein structure prediction, de novo design of new chemical scaffolds, virtual screening of chemical libraries for hit identification, absorption, distribution, metabolism, excretion, and toxicity (ADMET) prediction, metabolite prediction, clinical trial design, and oral bioavailability prediction. In the end, we have tried to shed light on some of the successful ML/DL-based models used in the drug discovery and development pipeline while also discussing the current challenges and prospects of the application of DL tools in drug discovery and development. We believe that this review will be useful for medicinal and computational chemists searching for DL tools for use in their drug discovery projects.
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spelling pubmed-89945272022-04-11 Deep learning tools for advancing drug discovery and development Nag, Sagorika Baidya, Anurag T. K. Mandal, Abhimanyu Mathew, Alen T. Das, Bhanuranjan Devi, Bharti Kumar, Rajnish 3 Biotech Review Article A few decades ago, drug discovery and development were limited to a bunch of medicinal chemists working in a lab with enormous amount of testing, validations, and synthetic procedures, all contributing to considerable investments in time and wealth to get one drug out into the clinics. The advancements in computational techniques combined with a boom in multi-omics data led to the development of various bioinformatics/pharmacoinformatics/cheminformatics tools that have helped speed up the drug development process. But with the advent of artificial intelligence (AI), machine learning (ML) and deep learning (DL), the conventional drug discovery process has been further rationalized. Extensive biological data in the form of big data present in various databases across the globe acts as the raw materials for the ML/DL-based approaches and helps in accurate identifications of patterns and models which can be used to identify therapeutically active molecules with much fewer investments on time, workforce and wealth. In this review, we have begun by introducing the general concepts in the drug discovery pipeline, followed by an outline of the fields in the drug discovery process where ML/DL can be utilized. We have also introduced ML and DL along with their applications, various learning methods, and training models used to develop the ML/DL-based algorithms. Furthermore, we have summarized various DL-based tools existing in the public domain with their application in the drug discovery paradigm which includes DL tools for identification of drug targets and drug–target interaction such as DeepCPI, DeepDTA, WideDTA, PADME DeepAffinity, and DeepPocket. Additionally, we have discussed various DL-based models used in protein structure prediction, de novo design of new chemical scaffolds, virtual screening of chemical libraries for hit identification, absorption, distribution, metabolism, excretion, and toxicity (ADMET) prediction, metabolite prediction, clinical trial design, and oral bioavailability prediction. In the end, we have tried to shed light on some of the successful ML/DL-based models used in the drug discovery and development pipeline while also discussing the current challenges and prospects of the application of DL tools in drug discovery and development. We believe that this review will be useful for medicinal and computational chemists searching for DL tools for use in their drug discovery projects. Springer International Publishing 2022-04-09 2022-05 /pmc/articles/PMC8994527/ /pubmed/35433167 http://dx.doi.org/10.1007/s13205-022-03165-8 Text en © King Abdulaziz City for Science and Technology 2022
spellingShingle Review Article
Nag, Sagorika
Baidya, Anurag T. K.
Mandal, Abhimanyu
Mathew, Alen T.
Das, Bhanuranjan
Devi, Bharti
Kumar, Rajnish
Deep learning tools for advancing drug discovery and development
title Deep learning tools for advancing drug discovery and development
title_full Deep learning tools for advancing drug discovery and development
title_fullStr Deep learning tools for advancing drug discovery and development
title_full_unstemmed Deep learning tools for advancing drug discovery and development
title_short Deep learning tools for advancing drug discovery and development
title_sort deep learning tools for advancing drug discovery and development
topic Review Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8994527/
https://www.ncbi.nlm.nih.gov/pubmed/35433167
http://dx.doi.org/10.1007/s13205-022-03165-8
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