Medical image classification and segmentation based on deep learning (DL) are emergency research topics for diagnosing variant viruses of the current COVID-19 situation. In COVID-19 computed tomography (CT) images of the lungs, ground glass turbidity is the most common finding that requires specialist diagnosis. Based on this situation, some researchers propose the relevant DL models which can replace professional diagnostic specialists in clinics when lacking expertise. However, although DL methods have a stunning performance in medical image processing, the limited datasets can be a challenge in developing the accuracy of diagnosis at the human level. In addition, deep learning algorithms face the challenge of classifying and segmenting medical images in three or even multiple dimensions and maintaining high accuracy rates. Consequently, with a guaranteed high level of accuracy, our model can classify the patients' CT images into three types: Normal, Pneumonia and COVID. Subsequently, two datasets are used for segmentation, one of the datasets even has only a limited amount of data (20 cases). Our system combined the classification model and the segmentation model together, a fully integrated diagnostic model was built on the basis of ResNet50 and 3D U-Net algorithm. By feeding with different datasets, the COVID image segmentation of the infected area will be carried out according to classification results. Our model achieves 94.52% accuracy in the classification of lung lesions by 3 types: COVID, Pneumonia and Normal. For future medical use, embedding the model into the medical facilities might be an efficient way of assisting or substituting doctors with diagnoses, therefore, a broader range of the problem of variant viruses in the COVID-19 situation may also be successfully solved.
翻译:基于深层学习(DL)的医学图像分类和分解是诊断目前COVID-19状况的变异病毒的紧急研究课题。在COVID-19计算机化肺部透析图像(CT)中,地面玻璃扰动是最常见的发现,需要专家诊断。根据这种情况,一些研究人员提出相关的DL模型,在缺乏专门知识的情况下可以取代诊所的专业诊断专家。然而,虽然DL方法在医疗图像处理方面表现优异,但有限的数据集在确定人类层面诊断的准确性方面可能是一项挑战。此外,在COVI-19计算机化模型中,深层学习算法面临着将医疗图像分为三个甚至多个维维度,并保持高准确率的挑战。因此,在保证高度准确性的情况下,我们的模型可以将病人的CT图像分为三种类型:正常、肺炎和COVID。 之后,两个数据集用于分解,其中一个数据集甚至只有有限的数据量(20个案例)。我们的系统将分类模型和分解模式结合起来,共同实现分解模式,一个更宽的医学图像,一个完全一体化的PVI值,一个通过AS-ROdealdeal dealation模型,一个在Resnalationalationalationalationalation 3xxal 将我们的数据序列中,然后在SRlation 3xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx