2022
DOI: 10.1007/s11892-022-01477-w
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Machine Learning Models for Inpatient Glucose Prediction

Abstract: Purpose of Review Glucose management in the hospital is difficult due to non-static factors such as antihyperglycemic and steroid doses, renal function, infection, surgical status, and diet. Given these complex and dynamic factors, machine learning approaches can be leveraged for prediction of glucose trends in the hospital to mitigate and prevent suboptimal hypoglycemic and hyperglycemic outcomes. Our aim was to review the clinical evidence for the role of machine learning–based models in predict… Show more

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Cited by 19 publications
(11 citation statements)
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“…It is natural to anticipate a decrease in prediction power as the PH increases due to the limited number of available confounding factors in the data used to train the model. A shorter PH may be more useful for prompt clinician intervention, whereas a larger PH increases the prevalence of an outcome and consequently model performance, but may be less useful as a decision support tool ( 42 ). An increase in PH, on the other hand, improves clinical usability of prediction services by extending the time required to take the necessary action during a critical situation, but at the expense of clinical accuracy.…”
Section: Resultsmentioning
confidence: 99%
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“…It is natural to anticipate a decrease in prediction power as the PH increases due to the limited number of available confounding factors in the data used to train the model. A shorter PH may be more useful for prompt clinician intervention, whereas a larger PH increases the prevalence of an outcome and consequently model performance, but may be less useful as a decision support tool ( 42 ). An increase in PH, on the other hand, improves clinical usability of prediction services by extending the time required to take the necessary action during a critical situation, but at the expense of clinical accuracy.…”
Section: Resultsmentioning
confidence: 99%
“…In brief, current hypoglycemia prediction models are mostly based on clinical parameters, CGM data, or a combination of both. The predictive accuracy varied with the study population, outcome definition, PH definition, modeling technique and model training and validation approaches ( 42 ). As for clinical data-based models, large sample size and sufficient data processing are frequently required to ensure the accuracy and reliability.…”
Section: Introductionmentioning
confidence: 99%
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“…In clinical practice, there is growing interest in developing machine learning algorithms to predict hypoglycemia in the inpatient setting. Although many of the published algorithms use categorical variables [ 38 ], consideration should be given to models that quantitatively predict BG, similar to CGM data. Our findings suggest that smaller prediction horizons are correlated more to the next BG measurement compared with longer periods of data, which suggests that clinicians should consider more recent BG measurements when attempting to predict the next BG measurement.…”
Section: Discussionmentioning
confidence: 99%
“…Over the past decade, there has been growing interest in leveraging large EHR data sets to develop prediction models for hypoglycemia using ML algorithms. 24 By including large numbers of predictor variables known to influence glucose homeostasis from very large cohorts of patients, AI technologies can fill an evidence gap by identifying and weighing clinical factors that affect glucose levels in ways that would be difficult for clinicians to recognize from clinical experience alone. Various ML techniques have been used to develop prediction models in both non-ICU and ICU settings, including gradient boosting, [25][26][27][28][29][30] random forest classification, 31 recurrent neural net, 27 and logistic regression.…”
Section: Technology Needed To Improve the Use Of Ai To Predict Hypogl...mentioning
confidence: 99%