Information Technologies Institute, Centre for Research and Technology Hellas, Thessaloniki, Greece.
Institute of Computer Science, Foundation for Research and Technology Hellas, Heraklion, Greece.
JMIR Mhealth Uhealth. 2022 Apr 4;10(4):e32344. doi: 10.2196/32344.
Major chronic diseases such as cardiovascular disease (CVD), diabetes, and cancer impose a significant burden on people and health care systems around the globe. Recently, deep learning (DL) has shown great potential for the development of intelligent mobile health (mHealth) interventions for chronic diseases that could revolutionize the delivery of health care anytime, anywhere.
The aim of this study is to present a systematic review of studies that have used DL based on mHealth data for the diagnosis, prognosis, management, and treatment of major chronic diseases and advance our understanding of the progress made in this rapidly developing field.
A search was conducted on the bibliographic databases Scopus and PubMed to identify papers with a focus on the deployment of DL algorithms that used data captured from mobile devices (eg, smartphones, smartwatches, and other wearable devices) targeting CVD, diabetes, or cancer. The identified studies were synthesized according to the target disease, the number of enrolled participants and their age, and the study period as well as the DL algorithm used, the main DL outcome, the data set used, the features selected, and the achieved performance.
In total, 20 studies were included in the review. A total of 35% (7/20) of DL studies targeted CVD, 45% (9/20) of studies targeted diabetes, and 20% (4/20) of studies targeted cancer. The most common DL outcome was the diagnosis of the patient's condition for the CVD studies, prediction of blood glucose levels for the studies in diabetes, and early detection of cancer. Most of the DL algorithms used were convolutional neural networks in studies on CVD and cancer and recurrent neural networks in studies on diabetes. The performance of DL was found overall to be satisfactory, reaching >84% accuracy in most studies. In comparison with classic machine learning approaches, DL was found to achieve better performance in almost all studies that reported such comparison outcomes. Most of the studies did not provide details on the explainability of DL outcomes.
The use of DL can facilitate the diagnosis, management, and treatment of major chronic diseases by harnessing mHealth data. Prospective studies are now required to demonstrate the value of applied DL in real-life mHealth tools and interventions.
心血管疾病(CVD)、糖尿病和癌症等主要慢性疾病给全球人民和医疗体系带来了巨大负担。最近,深度学习(DL)在开发用于慢性病的智能移动医疗(mHealth)干预措施方面显示出巨大潜力,可能会彻底改变随时随地提供医疗保健的方式。
本研究旨在对使用基于 mHealth 数据的 DL 进行主要慢性疾病的诊断、预后、管理和治疗的研究进行系统综述,增进我们对这一快速发展领域进展的理解。
在 Scopus 和 PubMed 文献数据库中进行检索,以确定重点关注部署使用移动设备(如智能手机、智能手表和其他可穿戴设备)采集的数据的 DL 算法的研究,这些研究针对 CVD、糖尿病或癌症。根据目标疾病、纳入参与者的数量及其年龄、研究期间以及使用的 DL 算法、主要的 DL 结果、使用的数据集、选择的特征以及获得的性能对所确定的研究进行综合分析。
本综述共纳入 20 项研究。35%(7/20)的 DL 研究针对 CVD,45%(9/20)的研究针对糖尿病,20%(4/20)的研究针对癌症。最常见的 DL 结果是 CVD 研究中患者病情的诊断、糖尿病研究中血糖水平的预测以及癌症的早期检测。在 CVD 和癌症研究中最常用的 DL 算法是卷积神经网络,在糖尿病研究中最常用的是递归神经网络。总体而言,DL 的性能被发现是令人满意的,在大多数研究中达到了>84%的准确率。与经典机器学习方法相比,在报告此类比较结果的几乎所有研究中,DL 都被发现具有更好的性能。大多数研究没有提供关于 DL 结果可解释性的详细信息。
通过利用 mHealth 数据,DL 可促进主要慢性疾病的诊断、管理和治疗。现在需要前瞻性研究来证明应用 DL 在现实生活中的 mHealth 工具和干预措施中的价值。