School of Electrical and Computer Engineering, National Technical University of Athens, 15773 Athens, Greece.
Institute of Communication and Computer Systems, 10682 Athens, Greece.
Sensors (Basel). 2022 Feb 24;22(5):1799. doi: 10.3390/s22051799.
Parkinson's disease is a chronic neurodegenerative disease that affects a large portion of the population, especially the elderly. It manifests with motor, cognitive and other types of symptoms, decreasing significantly the patients' quality of life. The recent advances in the Internet of Things and Artificial Intelligence fields, including the subdomains of machine learning and deep learning, can support Parkinson's disease patients, their caregivers and clinicians at every stage of the disease, maximizing the treatment effectiveness and minimizing the respective healthcare costs at the same time. In this review, the considered studies propose machine learning models, trained on data acquired via smart devices, wearable or non-wearable sensors and other Internet of Things technologies, to provide predictions or estimations regarding Parkinson's disease aspects. Seven hundred and seventy studies have been retrieved from three dominant academic literature databases. Finally, one hundred and twelve of them have been selected in a systematic way and have been considered in the state-of-the-art systematic review presented in this paper. These studies propose various methods, applied on various sensory data to address different Parkinson's disease-related problems. The most widely deployed sensors, the most commonly addressed problems and the best performing algorithms are highlighted. Finally, some challenges are summarized along with some future considerations and opportunities that arise.
帕金森病是一种慢性神经退行性疾病,影响着很大一部分人群,尤其是老年人。它表现为运动、认知和其他类型的症状,极大地降低了患者的生活质量。物联网和人工智能领域的最新进展,包括机器学习和深度学习等子领域,可以在疾病的各个阶段支持帕金森病患者、他们的护理人员和临床医生,同时最大限度地提高治疗效果,最小化各自的医疗保健成本。在这篇综述中,所考虑的研究提出了机器学习模型,这些模型是基于通过智能设备、可穿戴或不可穿戴传感器和其他物联网技术获取的数据进行训练的,以提供有关帕金森病方面的预测或估计。从三个主要的学术文献数据库中检索到了 770 项研究。最后,系统地选择了其中的 112 项,并在本文提出的最新系统综述中进行了考虑。这些研究提出了各种方法,应用于各种传感器数据,以解决不同的与帕金森病相关的问题。突出显示了使用最广泛的传感器、最常解决的问题和表现最好的算法。最后,总结了一些挑战,并提出了一些未来的考虑和机会。