Ukwandu Ogechukwu, Hindy Hanan, Ukwandu Elochukwu
Department of Computer, Communication and Information Systems, School of Engineering and Built Environment, Glasgow Caledonian University, UK.
School of Computer Science and Informatics, Cardiff University, Cardiff, Wales.
Healthc Anal (N Y). 2022 Nov;2:100096. doi: 10.1016/j.health.2022.100096. Epub 2022 Aug 23.
Timely and rapid diagnoses are core to informing on optimum interventions that curb the spread of COVID-19. The use of medical images such as chest X-rays and CTs has been advocated to supplement the Reverse-Transcription Polymerase Chain Reaction (RT-PCR) test, which in turn has stimulated the application of deep learning techniques in the development of automated systems for the detection of infections. Decision support systems relax the challenges inherent to the physical examination of images, which is both time consuming and requires interpretation by highly trained clinicians. A review of relevant reported studies to date shows that most deep learning algorithms utilised approaches are not amenable to implementation on resource-constrained devices. Given the rate of infections is increasing, rapid, trusted diagnoses are a central tool in the management of the spread, mandating a need for a low-cost and mobile point-of-care detection systems, especially for middle- and low-income nations. The paper presents the development and evaluation of the performance of lightweight deep learning technique for the detection of COVID-19 using the MobileNetV2 model. Results demonstrate that the performance of the lightweight deep learning model is competitive with respect to heavyweight models but delivers a significant increase in the efficiency of deployment, notably in the lowering of the cost and memory requirements of computing resources.
及时且快速的诊断是确定遏制新冠病毒传播的最佳干预措施的核心。提倡使用胸部X光和CT等医学影像来辅助逆转录聚合酶链反应(RT-PCR)检测,这反过来又推动了深度学习技术在开发感染检测自动化系统中的应用。决策支持系统缓解了图像体格检查固有的挑战,图像体格检查既耗时又需要训练有素的临床医生进行解读。对迄今为止相关报道研究的综述表明,大多数深度学习算法所采用的方法不适用于在资源受限的设备上实施。鉴于感染率不断上升,快速、可靠的诊断是控制疫情传播的核心工具,这就需要低成本的移动即时检测系统,尤其是针对中低收入国家。本文介绍了使用MobileNetV2模型开发用于检测新冠病毒的轻量级深度学习技术并评估其性能。结果表明,轻量级深度学习模型的性能与重量级模型相比具有竞争力,但在部署效率方面有显著提高,特别是在降低计算资源的成本和内存需求方面。