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CT 下自动化肺间质异常概率预测:波士顿肺癌研究中的逐步机器学习方法。

Automated Interstitial Lung Abnormality Probability Prediction at CT: A Stepwise Machine Learning Approach in the Boston Lung Cancer Study.

机构信息

From the Center for Pulmonary Functional Imaging, Department of Radiology (A.H., T.H., N.W., V.I.V., M. Nishino, H.H.), and Pulmonary and Critical Care Division (G.M.H.), Brigham and Women's Hospital and Harvard Medical School, 75 Francis St, Boston, MA 02115; Diagnostic and Interventional Radiology, Osaka University Graduate School of Medicine, Osaka, Japan (A.H., N.T.); Canon Medical Systems, Tochigi, Japan (K.A., Y.M., M. Nakatsugawa, A.K., N.S., M.O.); Department of Clinical Radiology, Graduate School of Medical Sciences, Kyushu University, Fukuoka, Japan (T.H., N.W.); R&D Headquarters, Canon, Tokyo, Japan (M.K.); Department of Biostatistics, University of Michigan, Ann Arbor, Mich (J.S., Y.L.); Departments of Biostatistics (X.W., D.C.C.) and Environmental Health (D.C.C.), Harvard T.H. Chan School of Public Health, Boston, Mass; and Department of Imaging, Dana Farber Cancer Institute, Boston, Mass (M. Nishino).

出版信息

Radiology. 2024 Sep;312(3):e233435. doi: 10.1148/radiol.233435.

Abstract

Background It is increasingly recognized that interstitial lung abnormalities (ILAs) detected at CT have potential clinical implications, but automated identification of ILAs has not yet been fully established. Purpose To develop and test automated ILA probability prediction models using machine learning techniques on CT images. Materials and Methods This secondary analysis of a retrospective study included CT scans from patients in the Boston Lung Cancer Study collected between February 2004 and June 2017. Visual assessment of ILAs by two radiologists and a pulmonologist served as the ground truth. Automated ILA probability prediction models were developed that used a stepwise approach involving section inference and case inference models. The section inference model produced an ILA probability for each CT section, and the case inference model integrated these probabilities to generate the case-level ILA probability. For indeterminate sections and cases, both two- and three-label methods were evaluated. For the case inference model, we tested three machine learning classifiers (support vector machine [SVM], random forest [RF], and convolutional neural network [CNN]). Receiver operating characteristic analysis was performed to calculate the area under the receiver operating characteristic curve (AUC). Results A total of 1382 CT scans (mean patient age, 67 years ± 11 [SD]; 759 women) were included. Of the 1382 CT scans, 104 (8%) were assessed as having ILA, 492 (36%) as indeterminate for ILA, and 786 (57%) as without ILA according to ground-truth labeling. The cohort was divided into a training set ( = 96; ILA, = 48), a validation set ( = 24; ILA, = 12), and a test set ( = 1262; ILA, = 44). Among the models evaluated (two- and three-label section inference models; two- and three-label SVM, RF, and CNN case inference models), the model using the three-label method in the section inference model and the two-label method and RF in the case inference model achieved the highest AUC, at 0.87. Conclusion The model demonstrated substantial performance in estimating ILA probability, indicating its potential utility in clinical settings. © RSNA, 2024 See also the editorial by Zagurovskaya in this issue.

摘要

背景

越来越多的人认识到 CT 检测到的肺间质异常(ILA)具有潜在的临床意义,但 ILA 的自动识别尚未完全建立。目的:使用机器学习技术在 CT 图像上开发和测试自动 ILA 概率预测模型。材料与方法:本回顾性研究的二次分析纳入了 2004 年 2 月至 2017 年 6 月期间波士顿肺癌研究中的 CT 扫描。两名放射科医生和一名肺病专家对 ILA 进行了视觉评估,作为金标准。使用涉及节段推断和病例推断模型的逐步方法开发了自动 ILA 概率预测模型。节段推断模型为每个 CT 节段生成一个 ILA 概率,病例推断模型则整合这些概率以生成病例级 ILA 概率。对于不确定的节段和病例,评估了两种和三种标签方法。对于病例推断模型,我们测试了三种机器学习分类器(支持向量机[SVM]、随机森林[RF]和卷积神经网络[CNN])。进行了接收器工作特征分析以计算接收器工作特征曲线下的面积(AUC)。结果:共纳入 1382 例 CT 扫描(平均患者年龄 67 岁±11[标准差];759 例女性)。根据地面真实标记,1382 例 CT 扫描中,104 例(8%)被评估为存在 ILA,492 例(36%)为 ILA 不确定,786 例(57%)为无 ILA。该队列分为训练集(=96;ILA,=48)、验证集(=24;ILA,=12)和测试集(=1262;ILA,=44)。在所评估的模型(两节段推断模型的两和三标签方法;两节段 SVM、RF 和 CNN 病例推断模型的两和三标签方法)中,在节段推断模型中使用三标签方法和病例推断模型中使用两标签方法和 RF 的模型达到了最高的 AUC,为 0.87。结论:该模型在估计 ILA 概率方面表现出了很高的性能,表明其在临床环境中的潜在应用价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2861/11427858/9ecc1bb66922/radiol.233435.VA.jpg

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