Meng Hongjia, Liu Yun, Xu Xiaoyin, Liao Yuting, Liang Hengrui, Chen Huai
Department of Radiology, The First Affiliated Hospital of Guangzhou University of Chinese Medicine, Guangzhou, China.
School of Radiology, Guangzhou Medical University, Guangzhou, China.
Quant Imaging Med Surg. 2023 Mar 1;13(3):1510-1523. doi: 10.21037/qims-22-70. Epub 2023 Feb 5.
It is clinically important to accurately assess the pulmonary function of patients with lung cancer, especially before surgery. This knowledge can help clinicians to monitor patients pre- and post-surgery, predict the impact of surgery on pulmonary function, and help to optimize postsurgical recovery. We used a deep learning approach for assessing pulmonary function on computed tomography (CT) scans in patients with lung cancer before they underwent surgery.
A total of 188 patients with lung cancer whose diagnoses had been pathologically confirmed were enrolled in this study. We used a software to automatically delineate regions of interest (ROIs) throughout the airways, lobes, and the whole lungs. We then used AK software to extract radiomics features of the 3 types of ROIs. We randomly separated these cases into a training cohort and a test cohort at a ratio of 7:3. We next constructed a logistic regression model to assess pulmonary function from the radiomics features. The machine learning outcomes were compared with established clinical criteria for pulmonary function. including forced expiratory volume in the first second/forced vital capacity (FEV1/FVC), FVC, and maximum vital capacity (VCmax) to evaluate the accuracy of the machine learning model.
In the ROIs of the lobes, our results showed that the machine learning model had good performance in predicting FVC and VCmax, attaining a Spearman correlation r value of 0.714 with P<0.001 for FVC and a r value of 0.687 with P<0.001 for VCmax. Using the airway ROIs, our model achieved a r of 0.603 with P=0.001 for VCmax. Using the whole lung ROIs, our model achieved a r of 0.704 with P<0.001 for FVC and a r of 0.693 with P<0.001 for VCmax.
Preoperative CT may provide a means for evaluating pulmonary function in patients with lung cancer. With radiomics features extracted from the airway, lobes, and the whole lung region, and a properly trained machine learning model, it is possible to obtain accurate estimation for metrics used in clinical criteria and to offer clinicians imaging-based indicators for the status of pulmonary functions.
准确评估肺癌患者的肺功能在临床上具有重要意义,尤其是在手术前。这些信息有助于临床医生在手术前后监测患者,预测手术对肺功能的影响,并有助于优化术后恢复。我们采用深度学习方法,在肺癌患者手术前行计算机断层扫描(CT)时评估其肺功能。
本研究共纳入188例经病理确诊的肺癌患者。我们使用一款软件自动勾勒气道、肺叶和全肺的感兴趣区域(ROI)。然后使用AK软件提取3种类型ROI的放射组学特征。我们以7:3的比例将这些病例随机分为训练队列和测试队列。接下来,我们构建了一个逻辑回归模型,根据放射组学特征评估肺功能。将机器学习结果与既定的肺功能临床标准进行比较,包括第一秒用力呼气量/用力肺活量(FEV1/FVC)、FVC和最大肺活量(VCmax),以评估机器学习模型的准确性。
在肺叶的ROI中,我们的结果表明,机器学习模型在预测FVC和VCmax方面表现良好,FVC的Spearman相关r值为0.714,P<0.001,VCmax的r值为0.687,P<0.001。使用气道ROI,我们的模型在预测VCmax时r值为0.603,P=0.001。使用全肺ROI,我们的模型在预测FVC时r值为0.704,P<0.001,在预测VCmax时r值为0.693,P<0.001。
术前CT可为评估肺癌患者的肺功能提供一种方法。通过从气道、肺叶和全肺区域提取放射组学特征,并使用经过适当训练的机器学习模型,可以准确估计临床标准中使用的指标,并为临床医生提供基于影像学的肺功能状态指标。