Personalized Blood Glucose Forecasting From Limited CGM Data Using Incrementally Retrained LSTM

Yiheng Shen, Samantha Kleinberg

Research output: Contribution to journalArticlepeer-review

Abstract

For people with Type 1 diabetes (T1D), accurate blood glucose (BG) forecasting is crucial for the effective delivery of insulin by Artificial Pancreas (AP) systems. Deep learning frameworks like Long Short-Term-Memory (LSTM) have been widely used to predict BG using continuous glucose monitor (CGM) data. However, these methods usually require large amounts of training data for personalized forecasts. Moreover, individuals with diabetes exhibit diverse glucose variability (GV), resulting in varying forecast accuracy. To address these limitations, we propose a novel deep learning framework: Incrementally Retrained Stacked LSTM (IS-LSTM). This approach gradually adapts to individuals' data and employs parameter-transfer for efficiency. We compare our method to three benchmarks using two CGM datasets from individuals with T1D: OpenAPS and Replace-BG. On both datasets, our approach significantly reduces root mean square error compared to the state of the art (Stacked LSTM): from 14.55 to 10.23mg/dL (OpenAPS) and 17.15 to 13.41mg/dL (Replace-BG) at 30-minute Prediction Horizon (PH). Clarke error grid analysis demonstrates clinical feasibility with at least 98.81% and 97.25% of predictions within the clinically safe zone at 30- and 60-minute PHs.

Original languageEnglish
JournalIEEE Transactions on Biomedical Engineering
DOIs
StateAccepted/In press - 2024

Keywords

  • Blood glucose forecasting
  • cold start forecasting
  • glucose variability
  • incremental training

Fingerprint

Dive into the research topics of 'Personalized Blood Glucose Forecasting From Limited CGM Data Using Incrementally Retrained LSTM'. Together they form a unique fingerprint.

Cite this