Rodrigues Moreira Larissa Ferreira, Moreira Rodrigo, Travençolo Bruno Augusto Nassif, Backes André Ricardo
Faculty of Computing (FACOM), Federal University of Uberlândia, Uberlândia, Minas Gerais, Brazil.
Institute of Exacts and Technological Sciences (IEP), Federal University of Viçosa, Rio Paranaíba, Minas Gerais, Brazil.
Appl Soft Comput. 2023 Feb;134:110014. doi: 10.1016/j.asoc.2023.110014. Epub 2023 Jan 13.
Coronavirus Disease-2019 (COVID-19) causes Severe Acute Respiratory Syndrome-Corona Virus-2 (SARS-CoV-2) and has opened several challenges for research concerning diagnosis and treatment. Chest X-rays and computed tomography (CT) scans are effective and fast alternatives to detect and assess the damage that COVID causes to the lungs at different stages of the disease. Although the CT scan is an accurate exam, the chest X-ray is still helpful due to the cheaper, faster, lower radiation exposure, and is available in low-incoming countries. Computer-aided diagnostic systems based on Artificial Intelligence (AI) and computer vision are an alternative to extract features from X-ray images, providing an accurate COVID-19 diagnosis. However, specialized and expensive computational resources come across as challenging. Also, it needs to be better understood how low-cost devices and smartphones can hold AI models to predict diseases timely. Even using deep learning to support image-based medical diagnosis, challenges still need to be addressed once the known techniques use centralized intelligence on high-performance servers, making it difficult to embed these models in low-cost devices. This paper sheds light on these questions by proposing the Artificial Intelligence as a Service Architecture (AIaaS), a hybrid AI support operation, both centralized and distributed, with the purpose of enabling the embedding of already-trained models on low-cost devices or smartphones. We demonstrated the suitability of our architecture through a case study of COVID-19 diagnosis using a low-cost device. Among the main findings of this paper, we point out the performance evaluation of low-cost devices to handle COVID-19 predicting tasks timely and accurately and the quantitative performance evaluation of CNN models embodiment on low-cost devices.
2019冠状病毒病(COVID-19)由严重急性呼吸综合征冠状病毒2(SARS-CoV-2)引起,给诊断和治疗方面的研究带来了诸多挑战。胸部X光和计算机断层扫描(CT)是检测和评估COVID在疾病不同阶段对肺部造成损害的有效且快速的替代方法。尽管CT扫描是一种精确的检查,但胸部X光因其成本更低、速度更快、辐射暴露更低且在低收入国家也可获得,仍然很有帮助。基于人工智能(AI)和计算机视觉的计算机辅助诊断系统是从X光图像中提取特征的一种替代方法,可提供准确的COVID-19诊断。然而,专用且昂贵的计算资源颇具挑战性。此外,还需要更好地了解低成本设备和智能手机如何承载AI模型以及时预测疾病。即使使用深度学习来支持基于图像的医学诊断,一旦已知技术在高性能服务器上使用集中式智能,仍有挑战需要解决,这使得难以将这些模型嵌入低成本设备。本文通过提出人工智能即服务架构(AIaaS)来阐明这些问题,这是一种集中式和分布式相结合的混合AI支持操作,目的是能够将已训练的模型嵌入低成本设备或智能手机中。我们通过使用低成本设备进行COVID-19诊断的案例研究证明了我们架构的适用性。在本文的主要发现中,我们指出了低成本设备及时准确处理COVID-19预测任务的性能评估以及低成本设备上CNN模型实例的定量性能评估。