| Literature DB >> 32946413 |
Jiayang Chen1, Kay Choong See1,2.
Abstract
BACKGROUND: COVID-19 was first discovered in December 2019 and has since evolved into a pandemic.Entities:
Keywords: COVID-19; SARS virus; artificial intelligence; computing; coronavirus; deep learning; machine learning; medical informatics; review
Mesh:
Year: 2020 PMID: 32946413 PMCID: PMC7595751 DOI: 10.2196/21476
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Study flow diagram.
Studies included in the review.
| First author (year) | Area or specialty of AIa application | AI application method | Clinical benefit shown | Internal or external validation done |
| Hurt (2020) [ | Diagnosis and clinical decision making | Using a deep learning approach to augment radiographs with color probability | Improved diagnostic accuracy of pneumonia and COVID-19 at point of care, triaged patient for CTb scan, helped physicians track evolution of pulmonary manifestation over length of hospitalization | No |
| Li (2020) [ | Diagnosis | Deep learning–based computer-aided diagnostic system for pneumonia trained with CT scans of patients with COVID-19 suggested pneumonia in patients who received a negative reverse-transcription polymerase chain reaction test result | Improved accuracy of diagnosis | No |
| Li (2020) [ | Diagnosis | AI 3D deep learning model to analyze CT scan | Improved diagnostic accuracy and differentiated from non–COVID-19 lung pathologies | Yes |
| Yang (2020) [ | Public health | Recurrent neural network for AI-based prediction of epidemic trend | Good epidemiological modeling and prediction of trends relating to COVID-19 | Yes |
| Al-Najjar (2020) [ | Public health | AI-based classifier prediction model to determine the outcome of patients | Identified key factors influencing clinical outcome, guided public health decision making | No |
| Jiang (2020) [ | Clinical decision making | Tool with AI capabilities that will predict patients at risk for more severe illnesses based on clinical parameters | AI tool predicted patients at risk for more severe illness on initial presentation, provided clinical decision support | Yes |
| Beck (2020) [ | Therapeutics | Used pretrained deep learning–based system to identify commercially available drugs that could act on the viral proteins of SARS-CoV-2 | Used AI to discover that atazanavir, an antiretroviral medication, is the best chemical compound due to its high inhibitory potency, among several other antiviral agents that could be used in the treatment of SARS-CoV-2 | Yes |
| Kadioglu (2020) [ | Therapeutics | AI combined with molecular docking to identify candidates suitable for drug repurposing via in silico methods | Supervised machine learning was used to study drug likeliness of candidate compounds, helped with evaluation of the potential of various agents | Yes |
| Richardson (2020) [ | Therapeutics | Use of BenevolentAI's knowledge graph to search for approved drugs that can help treat COVID-19 | Baricitinib was identified as a viable drug with tolerable side effects and potential therapeutic use in patients with COVID-19 | No |
| Ton (2020) [ | Therapeutics | Use of Deep Docking for accelerated screening of large chemical libraries for potential drugs against COVID-19 | Screened through 1.3 billion compounds from the ZINC15 library to identify the top 1000 potential ligands against the main protease (Mpro) of SARS-CoV-2 and made them publicly available | Yes |
| Zhang (2020) [ | Therapeutics | Use of AI-based dock analysis to determine whether the compounds listed in Traditional Chinese Medicine databases had potential for direct SARS-CoV-2 protein interaction | Identified 26 herbal plants containing compounds potentially active against SARS-CoV-2 | No |
aAI: artificial intelligence.
bCT: computed tomography.
Figure 2Adherence of studies to reporting standards.
Figure 3Risk of bias and applicability assessment using PROBAST (Prediction model Risk Of Bias ASsessment Tool).