Institute of Artificial Intelligence, Shaoxing University, Shaoxing, China.
Department of Computer Science and Engineering, Saveetha School of Engineering, Saveetha Institute of Medical and Technical Sciences, Chennai, India
JMIR Mhealth Uhealth. 2024 Feb 22;12:e44406. doi: 10.2196/44406.
In the modern world, mobile apps are essential for human advancement, and pandemic control is no exception. The use of mobile apps and technology for the detection and diagnosis of COVID-19 has been the subject of numerous investigations, although no thorough analysis of COVID-19 pandemic prevention has been conducted using mobile apps, creating a gap.
With the intention of helping software companies and clinical researchers, this study provides comprehensive information regarding the different fields in which mobile apps were used to diagnose COVID-19 during the pandemic.
In this systematic review, 535 studies were found after searching 5 major research databases (ScienceDirect, Scopus, PubMed, Web of Science, and IEEE). Of these, only 42 (7.9%) studies concerned with diagnosing and detecting COVID-19 were chosen after applying inclusion and exclusion criteria using the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) protocol.
Mobile apps were categorized into 6 areas based on the content of these 42 studies: contact tracing, data gathering, data visualization, artificial intelligence (AI)-based diagnosis, rule- and guideline-based diagnosis, and data transformation. Patients with COVID-19 were identified via mobile apps using a variety of clinical, geographic, demographic, radiological, serological, and laboratory data. Most studies concentrated on using AI methods to identify people who might have COVID-19. Additionally, symptoms, cough sounds, and radiological images were used more frequently compared to other data types. Deep learning techniques, such as convolutional neural networks, performed comparatively better in the processing of health care data than other types of AI techniques, which improved the diagnosis of COVID-19.
Mobile apps could soon play a significant role as a powerful tool for data collection, epidemic health data analysis, and the early identification of suspected cases. These technologies can work with the internet of things, cloud storage, 5th-generation technology, and cloud computing. Processing pipelines can be moved to mobile device processing cores using new deep learning methods, such as lightweight neural networks. In the event of future pandemics, mobile apps will play a critical role in rapid diagnosis using various image data and clinical symptoms. Consequently, the rapid diagnosis of these diseases can improve the management of their effects and obtain excellent results in treating patients.
在现代世界,移动应用程序对于人类的进步至关重要,而疫情防控也不例外。移动应用程序和技术在 COVID-19 的检测和诊断中的应用已经成为众多研究的主题,尽管尚未对移动应用程序在 COVID-19 疫情防控中的应用进行全面分析,存在一定空白。
本研究旨在为软件公司和临床研究人员提供信息,全面介绍疫情期间移动应用程序在 COVID-19 诊断中的不同应用领域。
本系统评价通过搜索 5 个主要研究数据库(ScienceDirect、Scopus、PubMed、Web of Science 和 IEEE),共找到了 535 项研究。应用 PRISMA(系统评价和荟萃分析的首选报告项目)协议,根据纳入和排除标准,仅选择了其中 42 项(7.9%)关于诊断和检测 COVID-19 的研究。
根据这 42 项研究的内容,将移动应用程序分为 6 个领域:接触者追踪、数据收集、数据可视化、基于人工智能(AI)的诊断、基于规则和指南的诊断以及数据转换。通过移动应用程序,利用各种临床、地理、人口统计学、放射学、血清学和实验室数据来识别 COVID-19 患者。大多数研究侧重于使用 AI 方法来识别可能患有 COVID-19 的人群。此外,与其他数据类型相比,症状、咳嗽声和放射学图像被更频繁地使用。与其他类型的 AI 技术相比,深度学习技术(如卷积神经网络)在处理医疗保健数据方面表现更好,从而提高了 COVID-19 的诊断准确性。
移动应用程序很快将成为数据收集、传染病健康数据分析和疑似病例早期识别的有力工具。这些技术可以与物联网、云存储、5G 技术和云计算结合使用。使用新的深度学习方法(如轻量级神经网络)可以将处理管道转移到移动设备处理核心。在未来的大流行中,移动应用程序将在使用各种图像数据和临床症状进行快速诊断方面发挥关键作用。因此,这些疾病的快速诊断可以改善其疗效管理,并在治疗患者方面取得优异的效果。