4.8 Article

An artificial intelligence decision support system for the management of type 1 diabetes

Journal

NATURE METABOLISM
Volume 2, Issue 7, Pages 612-+

Publisher

NATURE RESEARCH
DOI: 10.1038/s42255-020-0212-y

Keywords

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Funding

  1. Leona M. and Harry B. Helmsley Charitable Trust [2018PG-T1D001]
  2. National Institutes of Health/National Institute of Diabetes and Digestive and Kidney Diseases [1 R01DK120367-01]
  3. Dexcom grant

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Type 1 diabetes (T1D) is characterized by pancreatic beta cell dysfunction and insulin depletion. Over 40% of people with T1D manage their glucose through multiple injections of long-acting basal and short-acting bolus insulin, so-called multiple daily injections (MDI)(1,2). Errors in dosing can lead to life-threatening hypoglycaemia events (<70 mg dl(-1)) and hyperglycaemia (>180 mg dl(-1)), increasing the risk of retinopathy, neuropathy, and nephropathy. Machine learning (artificial intelligence) approaches are being harnessed to incorporate decision support into many medical specialties. Here, we report an algorithm that provides weekly insulin dosage recommendations to adults with T1D using MDI therapy. We employ a unique virtual platform(3) to generate over 50,000 glucose observations to train a k-nearest neighbours 4 decision support system (KNN-DSS) to identify causes of hyperglycaemia or hypoglycaemia and determine necessary insulin adjustments from a set of 12 potential recommendations. The KNN-DSS algorithm achieves an overall agreement with board-certified endocrinologists of 67.9% when validated on real-world human data, and delivers safe recommendations, per endocrinologist review. A comparison of inter-physician-recommended adjustments to insulin pump therapy indicates full agreement of 41.2% among endocrinologists, which is consistent with previous measures of inter-physician agreement (41-45%)(3). In silico(3,6) benchmarking using a platform accepted by the United States Food and Drug Administration for evaluation of artificial pancreas technologies indicates substantial improvement in glycaemic outcomes after 12 weeks of KNN-DSS use. Our data indicate that the KNN-DSS allows for early identification of dangerous insulin regimens and may be used to improve glycaemic outcomes and prevent life-threatening complications in people with T1D.

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