诊断呼吸变异:卷积神经网络用于不同肺部疾病的胸部 X 光片分类。

Rajesh Kancherla, Anju Sharma, Prabha Garg
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引用次数: 0

摘要

肺部疾病给全球带来的负担是一个紧迫的问题,尤其是在医疗条件有限的发展中国家。肺部疾病的准确诊断对于有效治疗至关重要,但由于肺部解剖结构复杂错综,使用胸片图像和 CT 扫描等医学成像技术诊断肺部疾病具有挑战性。深度学习方法,尤其是卷积神经网络(CNN),为利用成像数据进行自动疾病分类提供了前景广阔的解决方案。这项研究有望大大改善医疗资源有限的发展中国家的医疗服务,为更好地诊断和治疗肺部疾病带来希望。研究采用了多种 CNN 模型进行训练,包括基线模型和迁移学习模型,如 VGG16、VGG19、InceptionV3 和 ResNet50。模型的训练使用的图像数据集来自美国国立卫生研究院(NIH)和 COVID-19 数据库,其中包含描述四种肺部疾病(肺不张、COVID-19、肺炎和气胸)的 8000 张胸片图像和 2000 张健康胸片图像,并采用了十倍交叉验证方法。在验证和外部测试数据集上,基于 VGG19 的模型诊断肺部疾病的平均准确率分别为 0.995 和 0.996,优于基线模型。所提出的模型还优于已发表的肺病预测模型;这些发现突出表明,与其他架构相比,VGG19 模型在从胸片图像中准确分类和检测肺病方面表现出色。这项研究凸显了人工智能(尤其是像 VGG19 这样的 CNN)在提高肺部疾病诊断准确性方面的潜力,有望带来更好的医疗效果。该预测模型可在 GitHub 上查阅:https://github.com/PGlab-NIPER/Lung_disease_classification 。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnosing Respiratory Variability: Convolutional Neural Networks for Chest X-ray Classification Across Diverse Pulmonary Conditions.

The global burden of lung diseases is a pressing issue, particularly in developing nations with limited healthcare access. Accurate diagnosis of lung conditions is crucial for effective treatment, but diagnosing lung ailments using medical imaging techniques like chest radiograph images and CT scans is challenging due to the complex anatomical intricacies of the lungs. Deep learning methods, particularly convolutional neural networks (CNN), offer promising solutions for automated disease classification using imaging data. This research has the potential to significantly improve healthcare access in developing countries with limited medical resources, providing hope for better diagnosis and treatment of lung diseases. The study employed a diverse range of CNN models for training, including a baseline model and transfer learning models such as VGG16, VGG19, InceptionV3, and ResNet50. The models were trained using image datasets sourced from the NIH and COVID-19 repositories containing 8000 chest radiograph images depicting four lung conditions (lung opacity, COVID-19, pneumonia, and pneumothorax) and 2000 healthy chest radiograph images, with a ten-fold cross-validation approach. The VGG19-based model outperformed the baseline model in diagnosing lung diseases with an average accuracy of 0.995 and 0.996 on validation and external test datasets. The proposed model also outperformed published lung-disease prediction models; these findings underscore the superior performance of the VGG19 model compared to other architectures in accurately classifying and detecting lung diseases from chest radiograph images. This study highlights AI's potential, especially CNNs like VGG19, in improving diagnostic accuracy for lung disorders, promising better healthcare outcomes. The predictive model is available on GitHub at https://github.com/PGlab-NIPER/Lung_disease_classification .

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