Smartphone TBI Sensing using Deep Embedded Clustering and Extreme Boosted Outlier Detection

Srinarayan Srikanthan, Florin Asani, B. Patel, E. Agu
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引用次数: 2

Abstract

Traumatic Brain Injury (TBI), caused by a severe impact to the head, can have long-lasting and possibly life-long disability of patients. This ultimately creates a huge economic and social burden on patients and the healthcare system. Many TBI patients do not get early and adequate medical care. Sensor-rich, ubiquitously owned smartphones can now be used to passively sense a wide range of ailments, facilitating continuous monitoring of patients and high-risk groups in the real world. In this paper, we propose a deep learning approach for distinguishing smartphone users with TBI from healthy controls based on smartphone-sensed behaviors within 24-hours of the injury. Our method analyzes smartphone sensor data by first utilizing Deep Embedded Clustering (DEC) to identify clusters of users with similar smartphone-sensed behaviors. Extreme Gradient Boosted Outlier Detection (XGBOD) is then employed on each of the identified clusters to predict users with TBI. In rigorous evaluation, our method achieved a balanced accuracy of 88 % and a sensitivity of 74 %. Our proposed method can flag smartphone users with TBI, enabling them to receive early medical attention and improve their prognostic outlook.
基于深度嵌入聚类和极端增强离群值检测的智能手机TBI传感
创伤性脑损伤(TBI)是由于头部受到严重撞击而造成的,可使患者长期甚至可能终身残疾。这最终会给患者和医疗系统带来巨大的经济和社会负担。许多创伤性脑损伤患者没有得到早期和充分的医疗护理。传感器丰富、无处不在的智能手机现在可以用来被动地感知各种疾病,促进对现实世界中患者和高危人群的持续监测。在本文中,我们提出了一种深度学习方法,基于智能手机在损伤后24小时内的感知行为,将智能手机用户与健康对照组区分开来。我们的方法首先利用深度嵌入聚类(DEC)来识别具有相似智能手机感知行为的用户群,从而分析智能手机传感器数据。然后在每个识别的集群上使用极端梯度增强离群检测(XGBOD)来预测TBI用户。经过严格的评估,我们的方法达到了88%的平衡精度和74%的灵敏度。我们提出的方法可以标记智能手机用户的TBI,使他们能够得到早期的医疗关注,并改善他们的预后前景。
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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