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A Machine Learning Approach to Detecting Low Medication State with Wearable Technologies

机译:一种可穿戴技术检测低药物状态的机器学习方法

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Medication adherence is a critical component and implicit assumption of the patient life cycle that is often violated, incurring financial and medical costs to both patients and the medical system at large. As obstacles to medication adherence are complex and varied, approaches to overcome them must themselves be multifaceted.This paper demonstrates one such approach using sensor data recorded by an Apple Watch to detect low counts of pill medication in standard prescription bottles. We use distributed computing on a cloud-based platform to efficiently process large volumes of high-frequency data and train a Gradient Boosted Tree machine learning model. Our final model yielded average cross-validated accuracy and F1 scores of 80.27% and 80.22%, respectively.We conclude this paper with two use cases in which wearable devices such as the Apple Watch can contribute to efforts to improve patient medication adherence.
机译:药物依从性是患者生命周期的重要组成部分和隐含假设,通常会被违反,这给患者和整个医疗系统带来了财务和医疗成本。由于药物依从性的障碍是复杂而多样的,因此克服这些障碍的方法本身必须是多方面的。本文演示了一种使用Apple Watch记录的传感器数据来检测标准处方药瓶中少量药丸的方法。我们在基于云的平台上使用分布式计算来有效处理大量高频数据,并训练Gradient Boosted Tree机器学习模型。我们的最终模型产生的交叉验证平均准确度分别为80.27%和F1分数。我们以两个用例总结了本文的两个用例,其中可穿戴设备(例如Apple Watch)可以为改善患者对药物的依从性做出贡献。

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