Mingyue Tang, Jiechao Gao, Guimin Dong, Carl Yang, Bradford Campbell, Brendan Bowman, Jamie Marie Zoellner, Emaad Abdel-Rahman, Mehdi Boukhechba
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引用次数: 0
摘要
慢性肾脏病(CKD)是一种威胁生命的常见疾病。慢性肾脏病患者,尤其是接受血液透析的终末期肾脏病(ESKD)患者,因肾功能衰竭而无法排出过多的液体,导致体液超负荷和包括死亡在内的多种病症。目前的体液超负荷监测解决方案,如超声波检查和生物标志物评估,都非常繁琐、不连续,而且只能在临床上进行。在本文中,我们提出了基于传感器关系双自动编码器的潜图学习驱动的体液过量检测系统 SRDA,该系统可根据智能手表传感器被动收集的生物行为数据检测 EKSD 患者的过量液体消耗。使用真实世界移动传感数据进行的实验表明,SRDA 在 F1 分数和召回率方面都优于最先进的基线系统,并证明了无处不在的传感在 ESKD 摄入液体管理方面的潜力。
SRDA: Mobile Sensing based Fluid Overload Detection for End Stage Kidney Disease Patients using Sensor Relation Dual Autoencoder.
Chronic kidney disease (CKD) is a life-threatening and prevalent disease. CKD patients, especially endstage kidney disease (ESKD) patients on hemodialysis, suffer from kidney failures and are unable to remove excessive fluid, causing fluid overload and multiple morbidities including death. Current solutions for fluid overtake monitoring such as ultrasonography and biomarkers assessment are cumbersome, discontinuous, and can only be performed in the clinic. In this paper, we propose SRDA, a latent graph learning powered fluid overload detection system based on Sensor Relation Dual Autoencoder to detect excessive fluid consumption of EKSD patients based on passively collected bio-behavioral data from smartwatch sensors. Experiments using real-world mobile sensing data indicate that SRDA outperforms the state-of-the-art baselines in both F1 score and recall, and demonstrate the potential of ubiquitous sensing for ESKD fluid intake management.