Convolutional Neural Networks Model for Medical Radiographic Image Recognition COVID-19 Cases of Madagascar

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Abstract

The symptoms related to COVID-19 are diverse depending on the severity of the disease. COVID-19 is responsible for a clinical picture called the coronavirus, named SARS-CoV-2 by the who, which involves multiple organ systems, including the lungs. To determine if the lungs are affected, the doctor relies on radiographic images and its interpretation requires a specialist physician. Our research work proposes an artificial intelligence-based system to replace the specialist doctor in order to provide an interpretation of the obtained image and address the problems of a shortage of qualified doctors (radiologists). Indeed, a convolutional neural network has been proposed to train data from real images for cases of patients diagnosed with COVID or not, based on real data COVID-19 in Madagascar. Various parameters of the network were adjusted to obtain an efficient neural network model. Due to a shortage of image data and the limited computing resources (CPU and memory) of our machine, and in order to achieve sufficient performance, we used the transfer learning technic, which involves reusing a pretrained model capable to classify and adapte images to our own model. Our validation shows that the obtained model provides better classification.
卷积神经网络模型在医学放射图像识别中的应用
根据疾病的严重程度,与COVID-19相关的症状多种多样。COVID-19导致了一种名为冠状病毒的临床症状,世界卫生组织将其命名为SARS-CoV-2,它涉及包括肺在内的多个器官系统。为了确定肺部是否受到影响,医生依靠放射图像,其解释需要专科医生。我们的研究工作提出了一种基于人工智能的系统来取代专科医生,以提供对获得的图像的解释,并解决合格医生(放射科医生)短缺的问题。事实上,已经提出了一种卷积神经网络,以马达加斯加的真实COVID-19数据为基础,从真实图像中训练数据,以确定是否诊断为COVID-19的患者。通过对网络各参数的调整,得到一个高效的神经网络模型。由于图像数据的短缺和机器有限的计算资源(CPU和内存),为了达到足够的性能,我们使用了迁移学习技术,这涉及到重用一个预训练的模型,该模型能够对图像进行分类并适应我们自己的模型。我们的验证表明,得到的模型提供了更好的分类。
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