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

IF 4.4 2区 医学 Q2 ENGINEERING, BIOMEDICAL
Yiheng Shen, Samantha Kleinberg
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引用次数: 0

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. Further, we demonstrate the effectiveness of our method in cold-start scenarios, which helps new CGM users obtain accurate predictions.

利用增量再训练 LSTM 从有限的 CGM 数据中进行个性化血糖预测
对于 1 型糖尿病(T1D)患者来说,准确预测血糖(BG)对于人工胰腺(AP)系统有效输送胰岛素至关重要。长短期记忆(LSTM)等深度学习框架已被广泛用于利用连续葡萄糖监测仪(CGM)数据预测血糖。然而,这些方法通常需要大量的训练数据才能进行个性化预测。此外,糖尿病患者的血糖变异性(GV)各不相同,导致预测准确性也不尽相同。为了解决这些局限性,我们提出了一种新颖的深度学习框架:增量重训练堆叠 LSTM(IS-LSTM)。这种方法能逐渐适应个体数据,并采用参数转移来提高效率。我们使用来自 T1D 患者的两个 CGM 数据集将我们的方法与三个基准进行了比较:OpenAPS 和 Replace-BG。在这两个数据集上,与最先进的方法(Stacked LSTM)相比,我们的方法大大降低了均方根误差:在 30 分钟预测水平(PH)上,从 14.55mg/dL 降至 10.23mg/dL(OpenAPS),从 17.15mg/dL 降至 13.41mg/dL(Replace-BG)。克拉克误差网格分析表明了临床可行性,在 30 分钟和 60 分钟 PH 时,至少有 98.81% 和 97.25% 的预测结果在临床安全范围内。此外,我们还证明了我们的方法在冷启动情况下的有效性,这有助于 CGM 新用户获得准确的预测结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IEEE Transactions on Biomedical Engineering
IEEE Transactions on Biomedical Engineering 工程技术-工程:生物医学
CiteScore
9.40
自引率
4.30%
发文量
880
审稿时长
2.5 months
期刊介绍: IEEE Transactions on Biomedical Engineering contains basic and applied papers dealing with biomedical engineering. Papers range from engineering development in methods and techniques with biomedical applications to experimental and clinical investigations with engineering contributions.
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