@article{b85f83dadb7b4336b668087b0d7899b7,
title = "Deep-Learning Approach to Predict Survival Outcomes Using Wearable Actigraphy Device Among End-Stage Cancer Patients",
abstract = "Survival prediction is highly valued in end-of-life care clinical practice, and patient performance status evaluation stands as a predominant component in survival prognostication. While current performance status evaluation tools are limited to their subjective nature, the advent of wearable technology enables continual recordings of patients' activity and has the potential to measure performance status objectively. We hypothesize that wristband actigraphy monitoring devices can predict in-hospital death of end-stage cancer patients during the time of their hospital admissions. The objective of this study was to train and validate a long short-term memory (LSTM) deep-learning prediction model based on activity data of wearable actigraphy devices. The study recruited 60 end-stage cancer patients in a hospice care unit, with 28 deaths and 32 discharged in stable condition at the end of their hospital stay. The standard Karnofsky Performance Status score had an overall prognostic accuracy of 0.83. The LSTM prediction model based on patients' continual actigraphy monitoring had an overall prognostic accuracy of 0.83. Furthermore, the model performance improved with longer input data length up to 48 h. In conclusion, our research suggests the potential feasibility of wristband actigraphy to predict end-of-life admission outcomes in palliative care for end-stage cancer patients. Clinical Trial Registration: The study protocol was registered on ClinicalTrials.gov (ID: NCT04883879).",
keywords = "actigraphy, deep learning, long short-term memory networks, palliative care, performance status, prognostic accuracy, survival prediction, wearable technology",
author = "Yang, {Tien Yun} and Kuo, {Pin Yu} and Yaoru Huang and Lin, {Hsiao Wei} and Shwetambara Malwade and Lu, {Long Sheng} and Tsai, {Lung Wen} and Shabbir Syed-Abdul and Sun, {Chia Wei} and Chiou, {Jeng Fong}",
note = "Funding Information: The authors thank the Ministry of Science and Technology and Ministry of Education of Taiwan, Taipei Medical University, and Wanfang hospital for financially supporting the project. The authors also thank TMU Research Center of Cancer Translational Medicine from the Featured Areas Research Center Program within the framework of the Higher Education Sprout Project by the Ministry of Education in Taiwan. Finally, the authors thank the hospice care unit of Taipei Medical University Hospital for supportive cooperation with the research team. Funding Information: This work was supported in part by Ministry of Science and Technology, Taiwan [Grant Numbers 108-2221-E-038-013, 110-2923-E-038-001-MY3, 110-5420-003-300, 110-2320-B-038-056, 109-2221-E-009-018-MY3, 109-2314-B-038-122, 109-2314-B-038-141, 109-2635-B-038-001, and 109-2314-B-038-072], Taipei Medical University, Taiwan [Grant Numbers 108-3805-009-110 and 109-3800-020-400], Ministry of Education, Taiwan [Grant Number 108-6604-002-400], and Wanfang hospital, Taiwan [Grant Number 106TMU-WFH-01-4]. Publisher Copyright: Copyright {\textcopyright} 2021 Yang, Kuo, Huang, Lin, Malwade, Lu, Tsai, Syed-Abdul, Sun and Chiou.",
year = "2021",
month = dec,
day = "9",
doi = "10.3389/fpubh.2021.730150",
language = "English",
volume = "9",
journal = "Frontiers in Public Health",
issn = "2296-2565",
publisher = "Frontiers Media SA",
}