Artificial Intelligence for COVID-19 Drug Discovery and Vaccine Development
Arash Keshavarzi Arshadi,Julia Webb,Milad Salem,Emmanuel Cruz,Stacie Calad-Thomson,Niloofar Ghadirian,Jennifer Collins,Elena Diez-Cecilia,Brendan Kelly,Hani Goodarzi,Jiann-Shiun Yuan +10 more
- 18 Aug 2020
- Vol. 3, pp 65-65
TL;DR: To facilitate applications of deep learning for SARS-COV-2, multiple molecular targets of COVID-19 are highlighted, one of which may increase patient survival, and CoronaDB-AI, a dataset of compounds, peptides, and epitopes discovered either in silico or in vitro that can be potentially used for training models in order to extract CO VID-19 treatment.
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Abstract: SARS-COV-2 has roused the scientific community with a call to action to combat the growing pandemic. At the time of this writing, there are as yet no novel antiviral agents or approved vaccines available for deployment as a frontline defense. Understanding the pathobiology of COVID-19 could aid scientists in their discovery of potent antivirals by elucidating unexplored viral pathways. One method for accomplishing this is the leveraging of computational methods to discover new candidate drugs and vaccines in silico. In the last decade, machine learning-based models, trained on specific biomolecules, have offered inexpensive and rapid implementation methods for the discovery of effective viral therapies. Given a target biomolecule, these models are capable of predicting inhibitor candidates in a structural-based manner. If enough data are presented to a model, it can aid the search for a drug or vaccine candidate by identifying patterns within the data. In this review, we focus on the recent advances of COVID-19 drug and vaccine development using artificial intelligence and the potential of intelligent training for the discovery of COVID-19 therapeutics. To facilitate applications of deep learning for SARS-COV-2, we highlight multiple molecular targets of COVID-19, inhibition of which may increase patient survival. Moreover, we present CoronaDB-AI, a dataset of compounds, peptides, and epitopes discovered either in silico or in vitro that can be potentially used for training models in order to extract COVID-19 treatment. The information and datasets provided in this review can be used to train deep learning-based models and accelerate the discovery of effective viral therapies.
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Plant-derived natural products for drug discovery: current approaches and prospects
TL;DR: In this paper , the authors summarized different approaches for phytopharmaceutical drug development and discussed the progress in systems biology and computational tools for identifying drug targets, and reviewed the existing drug delivery methods to facilitate the efficient delivery of drugs to the targets.
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Advances in de Novo Drug Design: From Conventional to Machine Learning Methods.
Varnavas D. Mouchlis,Antreas Afantitis,Angela Serra,Michele Fratello,Anastasios G. Papadiamantis,Vassilis Aidinis,Iseult Lynch,Dario Greco,Georgia Melagraki +8 more
TL;DR: Deep reinforcement learning is a subdivision of machine learning that combines artificial neural networks with reinforcement-learning architectures as mentioned in this paper, which has successfully been employed to develop novel de novo drug design approaches using a variety of artificial networks including recurrent neural networks, convolutional neural network, generative adversarial networks, and autoencoders.
An Updated Review of Computer-Aided Drug Design and Its Application to COVID-19.
Arun Bahadur Gurung,Mohammad Ajmal Ali,Joongku Lee,Mohammad Abul Farah,Khalid Mashay Al-Anazi +4 more
TL;DR: In this paper, the authors highlight two important categories of computer-aided drug design (CADD), viz., the ligand-based as well as structured-based drug discovery.
On the Challenges for the Diagnosis of SARS-CoV-2 Based on a Review of Current Methodologies.
TL;DR: The most used methodologies for diagnosis of COVID-19 are surveyed and the strengths and limitations of all of these methodologies are discussed, particularly in light of the required combination of tests owing to the long incubation periods.
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