Authors
Mei R Fu, Yao Wang, Chenge Li, Zeyuan Qiu, Deborah Axelrod, Amber A Guth, Joan Scagliola, Yvette Conley, Bradley E Aouizerat, Jeanna M Qiu, Gary Yu, Janet H Van Cleave, Judith Haber, Ying Kuen Cheung
Publication date
2018
Journal
Mhealth
Volume
4
Publisher
AME Publications
Description
Background
In the digital era when mHealth has emerged as an important venue for health care, the application of computer science, such as machine learning, has proven to be a powerful tool for health care in detecting or predicting various medical conditions by providing improved accuracy over conventional statistical or expert-based systems. Symptoms are often indicators for abnormal changes in body functioning due to illness or side effects from medical treatment. Real-time symptom report refers to the report of symptoms that patients are experiencing at the time of reporting. The use of machine learning integrating real-time patient-centered symptom report and real-time clinical analytics to develop real-time precision prediction may improve early detection of lymphedema and long term clinical decision support for breast cancer survivors who face lifelong risk of lymphedema. Lymphedema, which is …
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