SmartCare: Detecting Heart Failure and Diabetes Using Smartwatch

Lahiru Colombage, Thisari Amarasiri, Tilshini Sanjeewani, Chirantha Senevirathne, R. Panchendrarajan
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引用次数: 2

Abstract

Busy lifestyles of people which resulted in an increase in non-communicable diseases have demanded a revolution in the healthcare system. This has prompted active research in developing smart sensing devices to automatically monitor the health status of a user with less human intervention. This could be more challenging when the disease is asymptomatic, hence smart solutions for early detection of such diseases are vital to help people to maintain a healthy and long life. In this study, we focus on the most common non-communicable diseases, Heart Failure, and Diabetes which are asymptomatic in their early stages. We propose a SmartCare solution for the real-time detection of heart failure and diabetes disease using a smartwatch. Data collected through a smartwatch along with health data provided by the user are used to detect heart failure, severity levels of the heart failure, diabetes disease, and types of diabetes. Random Forest and Logistic Regression algorithms are used to develop the four prediction models. Extensive evaluations performed on patients' data collected from local hospitals show our SmartCare system can detect the heart failure, severity levels of the heart failure, diabetes disease, and types of diabetes with an F1 score of 0.72, 0.7, 0.72, and 0.86 respectively.
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SmartCare:使用智能手表检测心力衰竭和糖尿病
人们忙碌的生活方式导致非传染性疾病的增加,这要求医疗保健系统进行一场革命。这促使人们积极研究开发智能传感设备,以减少人为干预,自动监测用户的健康状况。当疾病无症状时,这可能更具挑战性,因此早期发现此类疾病的智能解决方案对于帮助人们保持健康和长寿至关重要。在这项研究中,我们重点关注最常见的非传染性疾病,心力衰竭和糖尿病,这些疾病在早期阶段没有症状。我们提出了一种使用智能手表实时检测心力衰竭和糖尿病疾病的SmartCare解决方案。通过智能手表收集的数据与用户提供的健康数据一起用于检测心力衰竭,心力衰竭的严重程度,糖尿病疾病和糖尿病类型。采用随机森林和逻辑回归算法建立了四种预测模型。对从当地医院收集的患者数据进行的广泛评估表明,我们的SmartCare系统可以检测心力衰竭、心力衰竭的严重程度、糖尿病疾病和糖尿病类型,F1得分分别为0.72、0.7、0.72和0.86。
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