Toward Naturalistic Self-Monitoring of Medicine Intake

Selima Curci, A. Mura, Daniele Riboni
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引用次数: 7

Abstract

Since drug actions are dose- and time-dependent, adherence to prescribed medications is essential for the effectiveness of therapies. Unfortunately, several studies show that when patients are responsible for treatment administration, poor adherence is prevalent. Hence, it is necessary to devise effective methods to remotely assess medication compliance and support self-administration of drugs. Existing methods include electronic reminders such as short message service reminders and pill reminder apps. Although those tools may help increasing adherence, they interfere with the normal routine of patients by providing unnecessary reminders, or providing the reminder at an unfortunate time. More sophisticated solutions include the use of smart packaging and ingestible sensors to quantify and monitor drug intake. While those solutions do not interfere with normal routines, currently they are restricted to patients involved in a few clinical studies. In this paper, we introduce a novel system to support self-administration of drugs without interfering with the patient's routines. The system is based on a combination of cheap sensors and a smartphone. Tiny Bluetooth low energy sensors attached to medicine boxes communicate motion data to an app running on the patient's smartphone. Thanks to a machine learning algorithm, the app detects intake events, and reminds the user only when needed. Active learning is used to improve recognition rates thanks to the user's feedback. Preliminary experiments with a dataset acquired from volunteers show that the algorithm can detect most intake events with a few false positives. At the time of writing, we have developed a working prototype of the system, and we are beginning an experimental evaluation with a group of patients of an Italian hospital.
论药物摄入的自然自我监测
由于药物作用是剂量和时间依赖的,坚持服用处方药物对治疗的有效性至关重要。不幸的是,几项研究表明,当患者负责治疗管理时,依从性差是普遍存在的。因此,有必要设计有效的方法来远程评估药物依从性和支持自我给药。现有的方法包括电子提醒,如短信服务提醒和药丸提醒应用程序。尽管这些工具可能有助于提高依从性,但它们通过提供不必要的提醒或在不幸的时间提供提醒,干扰了患者的正常生活。更复杂的解决方案包括使用智能包装和可摄入传感器来量化和监测药物摄入。虽然这些解决方案不会干扰正常的日常生活,但目前它们仅限于参与一些临床研究的患者。在本文中,我们介绍了一个新的系统,以支持药物的自我管理,而不干扰病人的日常生活。该系统是基于廉价传感器和智能手机的组合。连接在药箱上的微型低功耗蓝牙传感器将运动数据传输到患者智能手机上运行的应用程序。由于机器学习算法,该应用程序检测摄入事件,并在需要时提醒用户。主动学习通过用户的反馈来提高识别率。对从志愿者那里获得的数据集进行的初步实验表明,该算法可以检测出大多数摄入事件,其中有少量误报。在撰写本文时,我们已经开发了该系统的工作原型,并开始对一家意大利医院的一组患者进行实验性评估。
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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