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Ability of Current Machine Learning Algorithms to Predict and Detect Hypoglycemia in Patients With Diabetes Mellitus: Meta-analysis
- Source :
- JMIR Diabetes, Vol 6, Iss 1, p e22458 (2021), JMIR Diabetes
- Publication Year :
- 2021
- Publisher :
- JMIR Publications, 2021.
-
Abstract
- Background Machine learning (ML) algorithms have been widely introduced to diabetes research including those for the identification of hypoglycemia. Objective The objective of this meta-analysis is to assess the current ability of ML algorithms to detect hypoglycemia (ie, alert to hypoglycemia coinciding with its symptoms) or predict hypoglycemia (ie, alert to hypoglycemia before its symptoms have occurred). Methods Electronic literature searches (from January 1, 1950, to September 14, 2020) were conducted using the Dialog platform that covers 96 databases of peer-reviewed literature. Included studies had to train the ML algorithm in order to build a model to detect or predict hypoglycemia and test its performance. The set of 2 × 2 data (ie, number of true positives, false positives, true negatives, and false negatives) was pooled with a hierarchical summary receiver operating characteristic model. Results A total of 33 studies (14 studies for detecting hypoglycemia and 19 studies for predicting hypoglycemia) were eligible. For detection of hypoglycemia, pooled estimates (95% CI) of sensitivity, specificity, positive likelihood ratio (PLR), and negative likelihood ratio (NLR) were 0.79 (0.75-0.83), 0.80 (0.64-0.91), 8.05 (4.79-13.51), and 0.18 (0.12-0.27), respectively. For prediction of hypoglycemia, pooled estimates (95% CI) were 0.80 (0.72-0.86) for sensitivity, 0.92 (0.87-0.96) for specificity, 10.42 (5.82-18.65) for PLR, and 0.22 (0.15-0.31) for NLR. Conclusions Current ML algorithms have insufficient ability to detect ongoing hypoglycemia and considerate ability to predict impeding hypoglycemia in patients with diabetes mellitus using hypoglycemic drugs with regard to diagnostic tests in accordance with the Users’ Guide to Medical Literature (PLR should be ≥5 and NLR should be ≤0.2 for moderate reliability). However, it should be emphasized that the clinical applicability of these ML algorithms should be evaluated according to patients’ risk profiles such as for hypoglycemia and its associated complications (eg, arrhythmia, neuroglycopenia) as well as the average ability of the ML algorithms. Continued research is required to develop more accurate ML algorithms than those that currently exist and to enhance the feasibility of applying ML in clinical settings. Trial Registration PROSPERO International Prospective Register of Systematic Reviews CRD42020163682; http://www.crd.york.ac.uk/PROSPERO/display_record.php?ID=CRD42020163682
- Subjects :
- Endocrinology, Diabetes and Metabolism
Biomedical Engineering
030209 endocrinology & metabolism
Health Informatics
Hypoglycemia
Machine learning
computer.software_genre
Likelihood ratios in diagnostic testing
lcsh:Diseases of the endocrine glands. Clinical endocrinology
03 medical and health sciences
0302 clinical medicine
Health Information Management
Diabetes mellitus
medicine
False positive paradox
030212 general & internal medicine
Original Paper
lcsh:RC648-665
Receiver operating characteristic
business.industry
Neuroglycopenia
nutritional and metabolic diseases
medicine.disease
Computer Science Applications
meta-analysis
machine learning
hypoglycemia
Systematic review
Meta-analysis
Artificial intelligence
business
Algorithm
computer
Subjects
Details
- Language :
- English
- ISSN :
- 23714379
- Volume :
- 6
- Issue :
- 1
- Database :
- OpenAIRE
- Journal :
- JMIR Diabetes
- Accession number :
- edsair.doi.dedup.....3b94b0e7159eac2b58281b6ce69e7e26