跨学科研究解锁医疗保健领域的创新解决方案

Interdisciplinary research unlocking innovative solutions in healthcare

TECHNOVATION · 2022
被引 56
人大 AABS 3

中文导读

基于行动研究方法,介绍了一个由欧盟资助的物联网健康活动识别平台,该平台通过跨学科合作处理和分析个人健康数据,同时保护用户隐私,展示了物联网与机器学习在医疗领域的潜力与挑战。

Abstract

Advances in Internet of Things (IoT) devices and in Machine Learning (ML) applications can provide valuable insights and predictions on personal health by optimizing data generation and processing. Nevertheless, the flow of data about the health status of a patient brings a variety of technical, legal and economic challenges that need to be addressed through an interdisciplinary approach. In this context, based on the action research methodology, the paper introduces an exemplary health-related activity recognition platform based on IoT, developed as a part of European-funded project Horizon 2020 in collaboration with academia and industry. The platform proposes innovative solutions on how personal healthcare data can be processed and analysed, protecting users’ privacy. The main strength of the platform is the interdisciplinary approach used within a triple-helix model, involving a variety of institutions, companies and researchers from different academic fields. In this perspective, the paper shows the potential that the integration of IoT and ML models have to offer and the main challenges that still need to be addressed.

物联网机器学习医疗保健数据隐私跨学科研究