Faisal Alshanketi, Abdulrahman Alharbi, Mathew Kuruvilla, Vahid Mahzoon, Shams Tabrez Siddiqui, Nadim Rana, Ali Tahir
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The study evaluates the performance of various deep learning architectures, including visual geometry group (VGG), residual networks (ResNet), and Vision Transformers (ViT) along with strategies to mitigate the impact of imbalanced dataset, on publicly available datasets such as the Chest X-Ray Images (Pneumonia) dataset, BRAX dataset, and CheXpert dataset. Additionally, transfer learning from pre-trained models, such as ImageNet, is investigated to leverage prior knowledge for improved performance on pneumonia detection tasks. Our investigation extends to zero-shot and few-shot learning experiments on different geographical regions. The study also explores semi-supervised learning methods, including the Mean Teacher algorithm, to utilize unlabeled data effectively. Experimental results demonstrate the efficacy of transfer learning, data augmentation, and balanced weight in addressing imbalanced datasets, leading to improved accuracy and performance in pneumonia detection. 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引用次数: 0
摘要
肺炎仍然是全球健康面临的重大挑战,需要及时准确的诊断才能进行有效治疗。近年来,深度学习技术已成为从胸部 X 光图像自动检测肺炎的有力工具。本文对深度学习在肺炎检测中的应用进行了全面研究,重点是克服不平衡数据集带来的挑战。研究评估了各种深度学习架构的性能,包括视觉几何组(VGG)、残差网络(ResNet)和视觉变换器(ViT),以及减轻不平衡数据集影响的策略,这些数据集是公开可用的数据集,如胸部 X 光图像(肺炎)数据集、BRAX 数据集和 CheXpert 数据集。此外,我们还研究了从 ImageNet 等预先训练好的模型中进行迁移学习的方法,以利用先验知识提高肺炎检测任务的性能。我们的研究还扩展到不同地理区域的零次和少量学习实验。研究还探讨了半监督学习方法,包括平均教师算法,以有效利用无标记数据。实验结果表明,迁移学习、数据扩增和平衡权重在解决不平衡数据集方面具有功效,从而提高了肺炎检测的准确性和性能。我们的研究结果强调了根据数据集特征选择适当策略的重要性,半监督学习在利用无标记数据方面显示出特别的前景。这些发现凸显了深度学习技术在彻底改变肺炎诊断和治疗方面的潜力,为未来更高效、更准确的临床工作流程铺平了道路。
Pneumonia Detection from Chest X-Ray Images Using Deep Learning and Transfer Learning for Imbalanced Datasets.
Pneumonia remains a significant global health challenge, necessitating timely and accurate diagnosis for effective treatment. In recent years, deep learning techniques have emerged as powerful tools for automating pneumonia detection from chest X-ray images. This paper provides a comprehensive investigation into the application of deep learning for pneumonia detection, with an emphasis on overcoming the challenges posed by imbalanced datasets. The study evaluates the performance of various deep learning architectures, including visual geometry group (VGG), residual networks (ResNet), and Vision Transformers (ViT) along with strategies to mitigate the impact of imbalanced dataset, on publicly available datasets such as the Chest X-Ray Images (Pneumonia) dataset, BRAX dataset, and CheXpert dataset. Additionally, transfer learning from pre-trained models, such as ImageNet, is investigated to leverage prior knowledge for improved performance on pneumonia detection tasks. Our investigation extends to zero-shot and few-shot learning experiments on different geographical regions. The study also explores semi-supervised learning methods, including the Mean Teacher algorithm, to utilize unlabeled data effectively. Experimental results demonstrate the efficacy of transfer learning, data augmentation, and balanced weight in addressing imbalanced datasets, leading to improved accuracy and performance in pneumonia detection. Our findings emphasize the importance of selecting appropriate strategies based on dataset characteristics, with semi-supervised learning showing particular promise in leveraging unlabeled data. The findings highlight the potential of deep learning techniques in revolutionizing pneumonia diagnosis and treatment, paving the way for more efficient and accurate clinical workflows in the future.