Ng Peter H F, Chen Peter Q, Sin Zackary P T, Lai Sun H S, Cheng Andy S K
Department of Rehabilitation Science, The Hong Kong Polytechnic University, Hong Kong, China.
Department of Computing, The Hong Kong Polytechnic University, Hong Kong, China.
Bioengineering (Basel). 2023 Jan 28;10(2):172. doi: 10.3390/bioengineering10020172.
As occupational rehabilitation services are part of the public medical and health services in Hong Kong, work-injured workers are treated along with other patients and are not considered a high priority for occupational rehabilitation services. The idea of a work trial arrangement in the private market occurred to meet the need for a more coordinated occupational rehabilitation practice. However, there is no clear service standard in private occupational rehabilitation services nor concrete suggestions on how to offer rehabilitation plans to injured workers. Electronic Health Records (EHRs) data can provide a foundation for developing a model to improve this situation. This project aims at using a machine-learning-based approach to enhance the traditional prediction of disability duration and rehabilitation plans for work-related injury and illness. To help patients and therapists to understand the machine learning result, we also developed an interactive dashboard to visualize machine learning results. The outcome is promising. Using the variational autoencoder, our system performed better in predicting disability duration. We have around 30% improvement compared with the human prediction error. We also proposed further development to construct a better system to manage the work injury case.
由于职业康复服务是香港公共医疗卫生服务的一部分,工伤工人与其他患者一同接受治疗,在职业康复服务方面不被视为优先对象。为满足更协调的职业康复实践需求,于是有了在私营市场进行工作试验安排的想法。然而,私营职业康复服务没有明确的服务标准,对于如何为受伤工人提供康复计划也没有具体建议。电子健康记录(EHRs)数据可为开发改善这种情况的模型提供基础。本项目旨在采用基于机器学习的方法,加强对与工作相关的伤病的残疾持续时间和康复计划的传统预测。为帮助患者和治疗师理解机器学习结果,我们还开发了一个交互式仪表盘来可视化机器学习结果。结果很有前景。使用变分自编码器,我们的系统在预测残疾持续时间方面表现更佳。与人工预测误差相比,我们有大约30%的改进。我们还提出了进一步的发展方向,以构建一个更好的系统来管理工伤案件。