Indian Institute of Technology Delhi, Delhi, India.
Veritas Technologies LLC, Pune, India.
J Healthc Eng. 2022 Mar 30;2022:9036457. doi: 10.1155/2022/9036457. eCollection 2022.
Chest X-ray (CXR) imaging is one of the most widely used and economical tests to diagnose a wide range of diseases. However, even for expert radiologists, it is a challenge to accurately diagnose diseases from CXR samples. Furthermore, there remains an acute shortage of trained radiologists worldwide. In the present study, a range of machine learning (ML), deep learning (DL), and transfer learning (TL) approaches have been evaluated to classify diseases in an openly available CXR image dataset. A combination of the synthetic minority over-sampling technique (SMOTE) and weighted class balancing is used to alleviate the effects of class imbalance. A hybrid Inception-ResNet-v2 transfer learning model coupled with data augmentation and image enhancement gives the best accuracy. The model is deployed in an edge environment using Amazon IoT Core to automate the task of disease detection in CXR images with three categories, namely pneumonia, COVID-19, and normal. Comparative analysis has been given in various metrics such as precision, recall, accuracy, AUC-ROC score, etc. The proposed technique gives an average accuracy of 98.66%. The accuracies of other TL models, namely SqueezeNet, VGG19, ResNet50, and MobileNetV2 are 97.33%, 91.66%, 90.33%, and 76.00%, respectively. Further, a DL model, trained from scratch, gives an accuracy of 92.43%. Two feature-based ML classification techniques, namely support vector machine with local binary pattern (SVM + LBP) and decision tree with histogram of oriented gradients (DT + HOG) yield an accuracy of 87.98% and 86.87%, respectively.
胸部 X 光(CXR)成像 是诊断广泛疾病最常用和最经济的测试之一。然而,即使是经验丰富的放射科医生,从 CXR 样本中准确诊断疾病也是一项挑战。此外,全球仍然严重缺乏受过训练的放射科医生。在本研究中,评估了一系列机器学习(ML)、深度学习(DL)和迁移学习(TL)方法,以对公开可用的 CXR 图像数据集进行疾病分类。使用合成少数过采样技术(SMOTE)和加权类别平衡相结合的方法来减轻类别不平衡的影响。结合了 Inception-ResNet-v2 迁移学习模型、数据增强和图像增强的混合模型可以提供最佳的准确性。该模型在边缘环境中使用 Amazon IoT Core 进行部署,以自动执行 CXR 图像中三类疾病(肺炎、COVID-19 和正常)的检测任务。在各种指标(如精度、召回率、准确性、AUC-ROC 评分等)中进行了比较分析。所提出的技术的平均准确率为 98.66%。其他 TL 模型,即 SqueezeNet、VGG19、ResNet50 和 MobileNetV2 的准确率分别为 97.33%、91.66%、90.33%和 76.00%。此外,从头开始训练的 DL 模型的准确率为 92.43%。两种基于特征的 ML 分类技术,即支持向量机与局部二值模式(SVM + LBP)和决策树与方向梯度直方图(DT + HOG)的准确率分别为 87.98%和 86.87%。