A Novel Semi-Supervised Learning Model for Smartphone-Based Health Telemonitoring

被引:0
|
作者
Gaw, Nathan [1 ]
Li, Jing [2 ]
Yoon, Hyunsoo [3 ]
机构
[1] Air Force Inst Technol, Dept Operat Sci, Wright Patterson AFB, OH 43433 USA
[2] Georgia Inst Technol, H Milton Stewart Sch Ind & Syst Engn, Atlanta, GA 30332 USA
[3] Yonsei Univ, Dept Ind Engn, Seoul 03722, South Korea
关键词
Diseases; Feature extraction; Smart phones; Predictive models; Data models; Semisupervised learning; Prediction algorithms; Machine learning; statistical modeling; health care; mobile health; telemonitoring; Parkinson's disease; NONNEGATIVE MATRIX FACTORIZATION; FEATURE-SELECTION; PARKINSONS-DISEASE; REGRESSION; CLASSIFICATION; REGULARIZATION; GRAPH; OPTIMIZATION; ALGORITHM; FRAMEWORK;
D O I
10.1109/TASE.2022.3218132
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Telemonitoring is the use of electronic devices such as smartphones to remotely monitor patients. It provides great convenience and enables timely medical decisions. To facilitate the decision making for each patient, a model is needed to translate the data collected by the patient's smartphone into a predicted score for his/her disease severity. To train a robust predictive model, semi-supervised learning (SSL) provides a viable approach by integrating both labeled and unlabeled samples to leverage all the available data from each patient. There are two challenging issues that need to be simultaneously addressed in using SSL for this problem: (1) feature selection from high-dimensional noisy telemonitoring data; and (2) instance selection from many, possibly redundant unlabeled samples. We propose a novel SSL model allowing for simultaneous feature and instance selection, namely the S2SSL model. We present a real-data application of telemonitoring for patients with Parkinson's Disease using their smartphone-collected activity data such as tapping and speaking. A total of 382 features were extracted from the activity data of each patient. 74 labeled and 563 unlabeled instances from 37 patients were used to train S2SSL. The trained model achieved a high accuracy of 0.828 correlation between the true and predicted disease severity scores on a validation dataset. Note to Practitioners-Telemonitoring is an emerging health care platform enabled by smartphones and wearables. Because it allows for health data to be collected anytime and anywhere, patients can be frequently monitored and medical decisions can be made more timely and effectively. This paper addresses the data science challenges in leveraging the telemonitoring platform to benefit patient care. Specifically, we propose a new model, S2SSL, to tackle these challenges and provide better robustness, accuracy, and efficiency. This paper may be interesting to health care practitioners seeking advanced analytics capabilities to model and integrate the data collected through telemonitoring devices, with ultimate purposes of improving the decision in treating each patient and increasing patient access to specialized care.
引用
收藏
页码:428 / 441
页数:14
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