Patients with the COVID-19 infection may have pneumonia-like symptoms as well as respiratory problems which may harm the lungs. From medical images, coronavirus illness may be accurately identified and predicted using a variety of machine learning methods. Most of the published machine learning methods may need extensive hyperparameter adjustment and are unsuitable for small datasets. By leveraging the data in a comparatively small dataset, few-shot learning algorithms aim to reduce the requirement of large datasets. This inspired us to develop a few-shot learning model for early detection of COVID-19 to reduce the post-effect of this dangerous disease. The proposed architecture combines few-shot learning with an ensemble of pre-trained convolutional neural networks to extract feature vectors from CT scan images for similarity learning. The proposed Triplet Siamese Network as the few-shot learning model classified CT scan images into Normal, COVID-19, and Community-Acquired Pneumonia. The suggested model achieved an overall accuracy of 98.719%, a specificity of 99.36%, a sensitivity of 98.72%, and a ROC score of 99.9% with only 200 CT scans per category for training data.
翻译:COVID-19 感染COVID-19 的病人可能有肺炎相似的症状和呼吸道问题,可能会损害肺部。从医疗图像中,可精确地发现并使用各种机器学习方法预测冠状病毒疾病。大多数已公布的机器学习方法可能需要大量的超光度调整,并且不适合小型数据集。通过在相对较小的数据集中利用数据,少见的学习算法旨在减少大型数据集的需求。这促使我们开发了一个微小的早期发现COVID-19的学习模型,以降低这一危险疾病的后效应。拟议的结构将几发性学习与预先训练的脉动神经网络结合起来,从CT扫描图像中提取特征矢量,用于类似学习。拟议的Triplet Siames网络作为少数的学习模型,将CT扫描图像分类为正常、COVID-19 和社区-获得的肺部。建议的模式实现了98.719 %的总体精确度,99.36%的特性,98.72%的敏感度为98.72%,而ROC的分数为99.9 %,每类培训数据只有200.9%。