通过迁移学习提高基于递归神经网络的胰岛素敏感性预测的患者特异性

B. Szabó, Á. Szlávecz, K. Kovács, B. Paláncz, G. Chase, B. Benyó
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引用次数: 1

摘要

胰岛素治疗是重症监护中常用的治疗方法,用于使患者因应激性高血糖而升高的血糖水平正常化。这种疗法通常被称为严格血糖控制(TGC)。STAR(随机靶向)方案是一种使用患者胰岛素敏感性(SI)作为描述患者实际状态的关键参数的TGC。预测未来患者的状态,即预测患者未来的SI值,是目前实施的方案的关键步骤,该方案使用所谓的重症监护胰岛素-葡萄糖(ice)模型,即人类葡萄糖-胰岛素系统和相关的随机模型。在我们之前的研究中,我们已经表明递归神经网络(RNN)模型是有效的SI预测替代方法。在本文中,我们建议应用所谓的迁移学习技术,通过使用当前患者的SI病史来进一步提高SI预测的准确性。本文提出了将迁移学习应用于SI预测的方法,并通过将结果与目前应用的解决方案进行比较来评估该方法的准确性。该验证涉及使用真实患者数据的Insilico验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Increasing Patient Specificity of the Recurrent Neural Network Based Insulin Sensitivity Prediction by Transfer Learning
Insulin therapy is a frequently applied treatment in intensive care to normalize the patient's blood glucose level increased by stress-induced hyperglycaemia. This therapy is generally referred to as Tight Glycaemic Control (TGC). The STAR (Stochastic-TARgeted) protocol is a TGC which uses the patient's insulin sensitivity (SI) as a key parameter to describe the patient's actual state. Prediction of the future patient's state, i.e. prediction of the patient's future SI value, is a crucial step of the protocol currently implemented by using the so-called Intensive Care INsulin Glucose (ICING) model of the human glucose-insulin system and an associated stochastic model. In our previous studies, we have shown that the Recurrent Neural Network (RNN) models are efficient alternative methods of SI prediction. In this paper, we suggest applying the so-called transfer learning technique to further enhance the accuracy of the SI prediction by using the SI history of the current patient. The paper presents the proposed methodology for applying transfer learning in SI prediction and the evaluation of the method's accuracy by comparing the outcomes with the currently applied solution. Insilico validation using real patients' data is involved in this validation.
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