{"id":2252,"date":"2021-02-12T00:00:00","date_gmt":"2021-02-12T05:00:00","guid":{"rendered":"https:\/\/icesontario.wpengine.com\/journal-articles\/predicting-adverse-outcomes-due-to-diabetes-complications-with-machine-learning-using-administrative-health-data\/"},"modified":"2023-06-14T20:03:22","modified_gmt":"2023-06-15T00:03:22","slug":"predicting-adverse-outcomes-due-to-diabetes-complications-with-machine-learning-using-administrative-health-data","status":"publish","type":"journal_article","link":"https:\/\/www.ices.on.ca\/fr\/publications\/journal-articles\/predicting-adverse-outcomes-due-to-diabetes-complications-with-machine-learning-using-administrative-health-data\/","title":{"rendered":"Predicting adverse outcomes due to diabetes complications with machine learning using administrative health data"},"content":{"rendered":"<p>Across jurisdictions, government and health insurance providers hold a large amount of data from patient interactions with the healthcare system. We aimed to develop a machine learning-based model for predicting adverse outcomes due to diabetes complications using administrative health data from the single-payer health system in Ontario, Canada. A Gradient Boosting Decision Tree model was trained on data from 1,029,366 patients, validated on 272,864 patients, and tested on 265,406 patients. Discrimination was assessed using the AUC statistic and calibration was assessed visually using calibration plots overall and across population subgroups. Our model predicting three-year risk of adverse outcomes due to diabetes complications (hyper\/hypoglycemia, tissue infection, retinopathy, cardiovascular events, amputation) included 700 features from multiple diverse data sources and had strong discrimination (average test AUC = 77.7, range 77.7&#x2013;77.9). Through the design and validation of a high-performance model to predict diabetes complications adverse outcomes at the population level, we demonstrate the potential of machine learning and administrative health data to inform health planning and healthcare resource allocation for diabetes management.<\/p>\n","protected":false},"excerpt":{"rendered":"<p>Across jurisdictions, government and health insurance providers hold a large amount of data from patient interactions with the healthcare system. We aimed to develop a machine learning-based model for predicting adverse outcomes due to diabetes complications using administrative health data from the single-payer health system in Ontario, Canada. A Gradient Boosting Decision Tree model was [&hellip;]<\/p>\n","protected":false},"template":"","migration-helper-automated":[],"migration-manual":[],"topic":[],"migration-helper-qa-sample-set":[],"class_list":["post-2252","journal_article","type-journal_article","status-publish","hentry"],"acf":{"citation":"Ravaut M, Sadeghi H, Leung KK, Volkovs M, Kornas K, Harish V, Watson T, Lewis GF, Weisman A, Poutanen T, Rosella L. <em>NPJ Digit Med<\/em>. 2021; 4(1):24. Epub 2021 Feb 12.","source_url":"https:\/\/www.nature.com\/articles\/s41746-021-00394-8","ices_scientist":[1339,1125],"site":[6735],"research_program":[],"news_release":[],"journal_article":[],"atlas":[],"research_report":[],"infographic":[],"video":[],"downloads":null,"links":null,"sitecore_item_id":"D59A847E-1915-47C4-9535-CD28D7C7929C","sitecore_item_name":"Predicting-adverse-outcomes-due-to-diabetes-complications-with-machine-learning","sitecore_field_values":"{\n  \"Title\": \"Predicting adverse outcomes due to diabetes complications with machine learning using administrative health data\",\n  \"Short title\": \"Predicting adverse outcomes due \",\n  \"Summary\": \"This study aimed to develop a machine learning-based model for predicting adverse outcomes due to diabetes complications using administrative health data from the single-payer health system.\",\n  \"Citation\": \"<p>Ravaut M, Sadeghi H, Leung KK, Volkovs M, Kornas K, Harish V, Watson T, Lewis GF, Weisman A, Poutanen T, Rosella L. <em>NPJ Digit Med<\/em>. 2021; 4(1):24. Epub 2021 Feb 12. DOI: <a href=\"https:\/\/doi.org\/10.1038\/s41746-021-00394-8\" title=\"Opens external link\">https:\/\/doi.org\/10.1038\/s41746-021-00394-8<\/a><\/p>\",\n  \"Abstract\": \"<p>Across jurisdictions, government and health insurance providers hold a large amount of data from patient interactions with the healthcare system. We aimed to develop a machine learning-based model for predicting adverse outcomes due to diabetes complications using administrative health data from the single-payer health system in Ontario, Canada. A Gradient Boosting Decision Tree model was trained on data from 1,029,366 patients, validated on 272,864 patients, and tested on 265,406 patients. Discrimination was assessed using the AUC statistic and calibration was assessed visually using calibration plots overall and across population subgroups. Our model predicting three-year risk of adverse outcomes due to diabetes complications (hyper\/hypoglycemia, tissue infection, retinopathy, cardiovascular events, amputation) included 700 features from multiple diverse data sources and had strong discrimination (average test AUC = 77.7, range 77.7&ndash;77.9). Through the design and validation of a high-performance model to predict diabetes complications adverse outcomes at the population level, we demonstrate the potential of machine learning and administrative health data to inform health planning and healthcare resource allocation for diabetes management.<\/p>n<p><a href=\"https:\/\/www.nature.com\/articles\/s41746-021-00394-8\" title=\"Opens external link\">View full text<\/a><\/p>\",\n  \"Research Programs\": \"{5B1AF319-EC9B-4BF0-A9CD-D066ABE49D71}\",\n  \"ICES Locations\": \"{FBE2D1B1-C0BA-423F-8D16-39466B6C1424}\",\n  \"ICES Scientists\": \"{430B2731-D3D6-4D57-9AF4-AA7626CF61B0}|{C6CF5BEE-928B-4481-A4C0-41FE159B40F5}\",\n  \"Posted Date\": \"20210212T000000\",\n  \"Show on Publications Landing Page\": \"1\"\n}","previous_url":"https:\/\/www.ices.on.ca\/Publications\/Journal-Articles\/2021\/February\/Predicting-adverse-outcomes-due-to-diabetes-complications-with-machine-learning"},"yoast_head":"<!-- This site is optimized with the Yoast SEO plugin v28.0 - https:\/\/yoast.com\/product\/yoast-seo-wordpress\/ -->\n<title>ICES | Predicting adverse outcomes due to diabetes complications with machine learning using administrative health data<\/title>\n<meta name=\"description\" content=\"Across jurisdictions, government and health insurance providers hold a large amount of data from patient interactions with the healthcare system. 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