A comparative study of lung disease classification using fine-tuned CXR and chest CT images

M. Shimja, K. Kartheeban
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Abstract

The diagnosis of lung disease is a challenging process that frequently combines clinical information, such as patient symptoms, medical history and test findings, with medical imaging, like X-rays or CT scans. The classification of lung diseases is very important in healthcare since it helps with diagnosis and treatment of many different lung diseases. A precise classification of lung conditions can aid doctors in choosing the best course of action and enhancing patient outcomes. Additionally, accurate classification can aid in evaluating the effectiveness of therapies, forecasting results and tracking the development of diseases. It is extremely important to accurately classify lung conditions. A comparison of a novel model for lung disease classification from chest CT and CXR images was presented in this paper. A modified VGG-16 model was used as the classification model. To improve the performance, a fine-tuning mechanism was added to the proposed model. The effectiveness of the suggested method is analyzed and compared on two distinct datasets in terms of performance metrics. The experimental outcomes showed that the suggested model performs better on the CXR image dataset.
使用微调 CXR 和胸部 CT 图像进行肺病分类的比较研究
肺部疾病的诊断是一个具有挑战性的过程,经常需要将患者症状、病史和检查结果等临床信息与 X 光或 CT 扫描等医学影像相结合。肺部疾病的分类在医疗保健中非常重要,因为它有助于诊断和治疗多种不同的肺部疾病。对肺部疾病进行精确分类有助于医生选择最佳治疗方案,提高患者的治疗效果。此外,准确的分类还有助于评估治疗效果、预测治疗结果和跟踪疾病发展。对肺部疾病进行准确分类极为重要。本文比较了一种从胸部 CT 和 CXR 图像进行肺部疾病分类的新型模型。分类模型采用了改进的 VGG-16 模型。为了提高性能,在模型中加入了微调机制。本文在两个不同的数据集上对所建议方法的有效性进行了性能指标分析和比较。实验结果表明,建议的模型在 CXR 图像数据集上表现更好。
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