2020
DOI: 10.1136/bmjopen-2020-037860
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Predicting population health with machine learning: a scoping review

Abstract: ObjectiveTo determine how machine learning has been applied to prediction applications in population health contexts. Specifically, to describe which outcomes have been studied, the data sources most widely used and whether reporting of machine learning predictive models aligns with established reporting guidelines.DesignA scoping review.Data sourcesMEDLINE, EMBASE, CINAHL, ProQuest, Scopus, Web of Science, Cochrane Library, INSPEC and ACM Digital Library were searched on 18 July 2018.Eligibility criteriaWe in… Show more

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Cited by 59 publications
(63 citation statements)
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References 24 publications
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“…As complexity in medical information has increased, there has been progressive interest in the application of machine learning to facilitate clinical decision-making. Such algorithms have been studied in a diverse array of applications, including sepsis prediction, 52 COVID-19 prognosis, 53 population health, 54 and cyberbullying. 55 In the present study, before the COVID-19 pandemic, 6 , 7 ensemble time-series forecasting models accurately predicted 70 of 72 monthly pediatric admission rates (97.2%) between July 2019 and December 2019.…”
Section: Discussionmentioning
confidence: 99%
“…As complexity in medical information has increased, there has been progressive interest in the application of machine learning to facilitate clinical decision-making. Such algorithms have been studied in a diverse array of applications, including sepsis prediction, 52 COVID-19 prognosis, 53 population health, 54 and cyberbullying. 55 In the present study, before the COVID-19 pandemic, 6 , 7 ensemble time-series forecasting models accurately predicted 70 of 72 monthly pediatric admission rates (97.2%) between July 2019 and December 2019.…”
Section: Discussionmentioning
confidence: 99%
“…Related systematic and scoping reviews helped inform the choice of terms for the search strategy. 31 32 The health research librarians at McMaster University also assisted in optimising the search query to each database. We also conducted a grey literature search in the general Google and Google Scholar databases and reviewed the first 50 hits from each database for inclusion.…”
Section: Methods and Analysismentioning
confidence: 99%
“…Identifying current vapers from people with an experience of vaping represents a supervised binary classification task in machine learning, a discipline of computer science with increasing popularity in health research [17][18][19]. Compared with conventional regression, machine learning leverages computational power to reduce multicollinearity and improve the overall model performance.…”
Section: Introductionmentioning
confidence: 99%