| Literature DB >> 35701544 |
Nansu Zong1, Andrew Wen2, Sungrim Moon2, Sunyang Fu2, Liwei Wang2, Yiqing Zhao3, Yue Yu2, Ming Huang2, Yanshan Wang4, Gang Zheng5, Michelle M Mielke6, James R Cerhan2, Hongfang Liu2.
Abstract
Computational drug repurposing methods adapt Artificial intelligence (AI) algorithms for the discovery of new applications of approved or investigational drugs. Among the heterogeneous datasets, electronic health records (EHRs) datasets provide rich longitudinal and pathophysiological data that facilitate the generation and validation of drug repurposing. Here, we present an appraisal of recently published research on computational drug repurposing utilizing the EHR. Thirty-three research articles, retrieved from Embase, Medline, Scopus, and Web of Science between January 2000 and January 2022, were included in the final review. Four themes, (1) publication venue, (2) data types and sources, (3) method for data processing and prediction, and (4) targeted disease, validation, and released tools were presented. The review summarized the contribution of EHR used in drug repurposing as well as revealed that the utilization is hindered by the validation, accessibility, and understanding of EHRs. These findings can support researchers in the utilization of medical data resources and the development of computational methods for drug repurposing.Entities:
Year: 2022 PMID: 35701544 PMCID: PMC9198008 DOI: 10.1038/s41746-022-00617-6
Source DB: PubMed Journal: NPJ Digit Med ISSN: 2398-6352
Fig. 1Distribution of publication type, stratified on the year of publication and country of origin.
Fig. 2Distribution of EHR types and number of patients.
a shows the distribution of the EHR types, and b shows the distribution of the number of patients.
Fig. 3Distribution of different data processing methods and the predictive model.
Fig. 4Distribution of resources for training and validation.
Fig. 5Distribution of diseases targeted.
Summary of publically shared data and tools.
| Paper | Type | Description of resource | Link |
|---|---|---|---|
| Goldstein et al. [ | EHR | BioVU of Vanderbilt University Medical Center | |
| Zhou et al. [ | EHR | IBM Watson Health Explorys database | |
| Dang et al. [ | EHR | Medical Information Mart for Intensive Care - II | |
| Zhou et al. [ | EHR | IBM Watson Health Explorys database | |
| Bi et al. [ | EHR | IBM Health MarketScan database | |
| Liu et al. [ | EHR | IBM Health MarketScan database | |
| Ozery-Flato et al. [ | EHR | IBM Watson Health Explorys database IBM Health MarketScan database | |
| Challa et al. [ | Tool | ||
| Hsieh et al. [ | Tool | ||
| Liu et al. [ | Tool | ||
| Nordon et al. [ | Tool | ||
| Wen et al. [ | Tool |
Fig. 6Flow chart for article selection and filtering.