Temporal case-based reasoning for type 1 diabetes mellitus bolus insulin decision support

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摘要

Individuals with type 1 diabetes have to monitor their blood glucose levels, determine the quantity of insulin required to achieve optimal glycaemic control and administer it themselves subcutaneously, multiple times per day. To help with this process bolus calculators have been developed that suggest the appropriate dose. However these calculators do not automatically adapt to the specific circumstances of an individual and require fine-tuning of parameters, a process that often requires the input of an expert.To overcome the limitations of the traditional methods this paper proposes the use of an artificial intelligence technique, case-based reasoning, to personalise the bolus calculation. A novel aspect of our approach is the use of temporal sequences to take into account preceding events when recommending the bolus insulin doses rather than looking at events in isolation.The in silico results described in this paper show that given the initial conditions of the patient, the temporal retrieval algorithm identifies the most suitable case for reuse. Additionally through insulin-on-board adaptation and postprandial revision, the approach is able to learn and improve bolus predictions, reducing the blood glucose risk index by up to 27% after three revisions of a bolus solution.

论文关键词:Case-based reasoning,Temporal,Diabetes,Feature selection,Knowledge based systems,Similarity measures

论文评审过程:Received 26 January 2017, Revised 22 August 2017, Accepted 13 September 2017, Available online 3 October 2017, Version of Record 16 March 2018.

论文官网地址:https://doi.org/10.1016/j.artmed.2017.09.007