AI-based diagnosis of chronic obstructive pulmonary disease from low-dose CT images

Chayanon Pamarapa, Salisa Kemlek, Wichasa Sukumwattana, Pharinda Sitthikul, Sichon Khuanrubsuan, Akkarawat Chaikhampa, Paritt Wongtrakool, Ammarut Chuajak, Monchai Phonlakrai, Ruedeerat Keerativittayayut
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Abstract

Background: Chronic obstructive pulmonary disease (COPD) is a group of diseases characterized by airflow blockage. It is one of the leading causes of global mortality and is primarily attributed to smoking. COPD patients are usually diagnosed by spirometry test. Although regarded as the gold standard for COPD diagnosis, the spirometry test carries contraindications, thus prompting the development of low-dose computed tomography (low-dose CT) scan as an alternative for COPD screening. However, a practical limitation of diagnosing COPD from CT images is its reliance on the expertise of a skilled radiologist. Objective: To address this limitation, we aimed to develop a deep-learning model for the automated classification of COPD and non-COPD from low-dose CT images. Materials and methods: We examined the potential of a convolutional neural network for identifying COPD. Our dataset consisted of 10,000 low-dose CT images obtained from a lung cancer screening program, involving both ex-smokers and current smokers deemed at high risk of lung cancer. Spirometry data served as the ground truth for defining COPD. We used 90% of the datasets for training and 10% for testing. Results: Our developed model achieved notable performance metrics: an area under the receiver operating characteristic curve (AUC) of 0.97, an accuracy of 0.89, a precision of 0.85, a recall of 0.96, and an F1-score of 0.90. Conclusion: Our study demonstrates the potential of deep learning models to augment clinical assessments and improve the diagnosis of COPD, thereby enhancing diagnostic accuracy and efficiency. The findings suggest the feasibility of integrating this technology into routine lung cancer screening programs for COPD detection.
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基于人工智能的低剂量 CT 图像诊断慢性阻塞性肺病
背景:慢性阻塞性肺疾病(COPD)是一组以气流阻塞为特征的疾病。它是导致全球死亡的主要原因之一,主要归因于吸烟。慢性阻塞性肺病患者通常通过肺活量测试进行诊断。虽然肺活量测试被认为是诊断慢性阻塞性肺病的金标准,但它也有一些禁忌症,因此低剂量计算机断层扫描(低剂量 CT)成为慢性阻塞性肺病筛查的替代方法。然而,从 CT 图像诊断慢性阻塞性肺病的一个实际限制因素是依赖于技术熟练的放射科医生的专业知识。目的:为了解决这一局限性,我们旨在开发一种深度学习模型,用于从低剂量 CT 图像中自动分类慢性阻塞性肺病和非慢性阻塞性肺病。材料和方法:我们研究了卷积神经网络识别慢性阻塞性肺病的潜力。我们的数据集包括从肺癌筛查项目中获得的 10,000 张低剂量 CT 图像,其中既有戒烟者,也有被视为肺癌高危人群的吸烟者。肺活量数据是定义慢性阻塞性肺病的基础数据。我们将 90% 的数据集用于训练,10% 用于测试。结果我们开发的模型取得了显著的性能指标:接收者工作特征曲线下面积(AUC)为 0.97,准确度为 0.89,精确度为 0.85,召回率为 0.96,F1 分数为 0.90。结论我们的研究证明了深度学习模型在增强临床评估和改善慢性阻塞性肺病诊断方面的潜力,从而提高了诊断的准确性和效率。研究结果表明,将这项技术整合到常规肺癌筛查项目中用于慢性阻塞性肺病检测是可行的。
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