| Literature DB >> 35413782 |
Suehyun Lee1,2, Seongwoo Jeon2, Hun-Sung Kim3,4.
Abstract
Drug repositioning is a strategy for identifying new applications of an existing drug that has been previously proven to be safe. Based on several examples of drug repositioning, we aimed to determine the methodologies and relevant steps associated with drug repositioning that should be pursued in the future. Reports on drug repositioning, retrieved from PubMed from January 2011 to December 2020, were classified based on an analysis of the methodology and reviewed by experts. Among various drug repositioning methods, the network-based approach was the most common (38.0%, 186/490 cases), followed by machine learning/deep learningbased (34.3%, 168/490 cases), text mining-based (7.1%, 35/490 cases), semantic-based (5.3%, 26/490 cases), and others (15.3%, 75/490 cases). Although drug repositioning offers several advantages, its implementation is curtailed by the need for prior, conclusive clinical proof. This approach requires the construction of various databases, and a deep understanding of the process underlying repositioning is quintessential. An in-depth understanding of drug repositioning could reduce the time, cost, and risks inherent to early drug development, providing reliable scientific evidence. Furthermore, regarding patient safety, drug repurposing might allow the discovery of new relationships between drugs and diseases.Entities:
Keywords: Data science; Drug repositioning; Machine learning; Real-world data; Semantics
Mesh:
Year: 2022 PMID: 35413782 PMCID: PMC9081315 DOI: 10.3803/EnM.2022.1404
Source DB: PubMed Journal: Endocrinol Metab (Seoul) ISSN: 2093-596X
Fig. 1.Flowchart depicting the study selection process. aThe 1st manual review by article type: Excluding review and systemic review articles; bThe 2nd manual review by article topic in the abstract
Computational Drug Repositioning Approaches
| Network-based approaches [ | |
| Assume that two drugs with structurally similar components perform similar roles | |
| Integrate information regarding drugs and diseases from large-scale biological datasets | |
| Use gene, protein, molecular, phenotypic, biological, or biomedical interactions | |
| Text mining-based approaches [ | |
| Estimate information and knowledge from the literature | |
| Identify drug functions, drug metabolic pathways, and diseases using specific keywords | |
| Effective in predicting associations between drugs and diseases | |
| Semantics-based approaches [ | |
| Add the existing ontology of network-based prior information to the existing semantic information extracted from a large-scale medical database | |
| Combine multiple sources for predictive indications and therapeutic potential of existing drugs | |
| Improve the accuracy of predicting biological entity relationships | |
| Machine learning/deep learning-based approaches [ | |
| Identify new indications using computational approaches for extracting features from biological data | |
| Train a model based of disease and drug characteristics obtained from various biological and biomedical datasets | |
| Predict new uses based on the trained model | |
Candidate Diabetes Drugs for Diseases Other than Diabetes Mellitus
| Drug | Other candidate for indication | Reference |
|---|---|---|
| Sulfonylurea | Treatment of Alzheimer’s disease | [ |
| Metformin | Cancer treatment as it reduces cancer incidence and mortality | [ |
| Therapeutic agent for neurodegenerative diseases | [ | |
| Cerebroprotective potential for ischemic stroke | [ | |
| Suitable candidate in aging-related CNS disorders | ||
| Improves depressive symptoms | [ | |
| Sulfonylurea+Metformin | Decrease affective disorder | [ |
| DPP4i | Good prognosis of colorectal cancer | [ |
| Antiviral properties, suggesting the broad-spectrum antiviral agents | [ | |
| Potential agents to treat SARS-CoV-2 infection | [ | |
| SGLT2i | Protective role in the occurrence of AF | [ |
| Decrease triglyceride and increase HDL-C | [ | |
| Lowers blood pressure and exhibits a diuretic effect | [ | |
| DPP4i+SGLT2i | Neuroprotection in the obese-insulin resistance | [ |
| Thiazolidinedione | Improves depressive symptoms | [ |
| GLP1-RA | Neuroprotection, substance against neurodegeneration | [ |
| Prevent heart failure was obtained | [ | |
| Treatment options in Parkinson’s disease | [ | |
| Treatment of metabolic syndrome | [ | |
| Weight loss | [ |
CNS, central nervous system; DPP4i, dipeptidyl peptidase-4 inhibitor; SARS-CoV-2, severe acute respiratory syndrome coronavirus-2; SGLT2i, sodium glucose cotransporter-2 inhibitor; AF, atrial fibrillation; HDL-C, high-density lipoprotein cholesterol; GLP1-RA, glucagon-like peptide-1 receptor agonist.
Potential Drugs Repositioned as Diabetes Medication
| Drug | Original indication | Potential as an anti-diabetic drug | Reference |
|---|---|---|---|
| Alpha 1 (α1)-adrenoceptor antagonist | Benign prostate hyperplasia | Increases the success rate of blood sugar control | [ |
| Bromocriptine | Parkinson’s disease | Treatment of type 2 diabetes mellitus | [ |
| Calcium channel blockers | Anti-hypertensive drug | Effective in treating or preventing GDM | [ |
| Colesevelam | Hyperlipidemia | Management of prediabetes and type 2 diabetes mellitus | [ |
| Cyclooxygenase-2 inhibitor | Non-steroidal anti-inflammatory drug | Can be used as a treatment for type 1 diabetes mellitus | [ |
| Pregabalin | Epilepsy | Treatment for diabetic neuropathy | [ |
GDM, gestational diabetes mellitus.
Database for Drug Repositioning
| Database | Comment |
|---|---|
| Chembank [ |
|
| A public web-based information technology environment | |
| Freely available data and resources | |
| ChEMBL [ |
|
| Database of bioactive drug-like small molecules | |
| Open database of EMBL-EBI with ADMET information | |
| Additional data on clinical progress of compounds has been integrated. | |
| ClinicalTrials.gov [ |
|
| Comprehensive clinical trial data representing the US, EU, and Japan | |
| DailyMed [ |
|
| Database containing labels for products submitted to FDA | |
| DrugBank [ |
|
| Comprehensive, open access, online database containing information on drugs and drug targets | |
| FAERS [ |
|
| New user-friendly search tool that improves access to real-world adverse event data | |
| Gene Ontology [ |
|
| The world’s largest source of information on the functions of genes | |
| A community-based bioinformatics resource | |
| Uses ontology to represent biological knowledge | |
| KEGG [ | |
| Large-scale molecular datasets generated by genome sequencing and other high-throughput experimental technologies | |
| MedHelp [ |
|
| Source of medical, health and wellness information created by users | |
| MEDLINE [ |
|
| Database of the NLM that contains more than 28 million documents in the life sciences | |
| MedlinePlus [ |
|
| Health information website for the general public with NLM’s consumer-focused health information | |
| MeSH [ |
|
| Comprehensive vocabulary for genes, diseases, and drugs that co-occur in the literature | |
| OMIM [ |
|
| Comprehensive knowledge base of human genes and genetic phenotypes | |
| PharmGKB [ |
|
| Interactive tool for researchers investigating how genetic variation affects drug response | |
| PreMedKB [ |
|
| A knowledge base that integrates the four basic components of precision medicine: disease, genes, variants and drugs | |
| PubChem [ |
|
| Open chemistry database at the NIH | |
| PubMed [ |
|
| MEDLINE’s database of biomedical literature, life science journals, online books | |
| RepoDB [ |
|
| Standard set of drug repositioning successes and failures | |
| SemMedDB [ |
|
| Summarizes MEDLINE citations returned by a PubMed search | |
| Extract semantic predications from titles and abstracts by natural language processing | |
| SIDER [ |
|
| Computer-readable side effect resource linking drug and side effects terms |
ChEMBL, Chemical database of the European Molecular Biology Laboratory; ADMET, Absorption, Distribution, Metabolism, Excretion, Toxicity; EMBL, European Molecular Biology Laboratory; EBI, European Bioinformatics Institute; US, United States; EU, European Union; FDA, US Food and Drug Administration; FAERS, FDA Adverse Event Reporting System; KEGG, Kyoto Encyclopedia of Genes and Genomes; MEDLINE, Medical Literature Analysis and Retrieval System Online; NLM, National Library of Medicine; MeSH, Medical Subject Headings; OMIM, Online Mendelian Inheritance in Man; PharmGKB, Pharmacogenomics Knowledge Base; PreMedKB, Precision Medicine KnowledgeBase; NIH, National Institutes of Health; ReproDB, Drug Repositioning Database; SemMed DB, Semantic Medical Literature Analysis and Retrieval System Online (MEDLINE) database; SIDER, Side Effect Resource.