自动 CT 间质性肺异常概率预测:波士顿肺癌研究中的逐步式机器学习方法。

IF 12.1 1区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Radiology Pub Date : 2024-09-01 DOI:10.1148/radiol.233435
Akinori Hata, Kota Aoyagi, Takuya Hino, Masami Kawagishi, Noriaki Wada, Jiyeon Song, Xinan Wang, Vladimir I Valtchinov, Mizuki Nishino, Yohei Muraguchi, Minoru Nakatsugawa, Akihiro Koga, Naoki Sugihara, Masahiro Ozaki, Gary M Hunninghake, Noriyuki Tomiyama, Yi Li, David C Christiani, Hiroto Hatabu
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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. 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引用次数: 0

摘要

背景 越来越多的人认识到 CT 检测到的肺间质异常(ILAs)具有潜在的临床意义,但 ILAs 的自动识别尚未完全建立。目的 在 CT 图像上使用机器学习技术开发并测试自动 ILA 概率预测模型。材料和方法 这项回顾性研究的二次分析包括波士顿肺癌研究患者在 2004 年 2 月至 2017 年 6 月间收集的 CT 扫描图像。由两名放射科医生和一名肺科医生对 ILA 进行目视评估,作为基本事实。开发的自动 ILA 概率预测模型采用分步法,包括切面推断模型和病例推断模型。切片推断模型为每个 CT 切片生成 ILA 概率,病例推断模型综合这些概率生成病例级 ILA 概率。对于不确定的切片和病例,我们评估了双标签和三标签方法。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])。我们进行了接收者工作特征分析,以计算接收者工作特征曲线下的面积(AUC)。结果 共纳入了 1382 份 CT 扫描(患者平均年龄为 67 岁 ± 11 [SD];759 位女性)。在这 1382 份 CT 扫描中,104 份(8%)被评估为有 ILA,492 份(36%)不确定是否有 ILA,786 份(57%)根据地面实况标记被评估为没有 ILA。队列分为训练集(n = 96;ILA,n = 48)、验证集(n = 24;ILA,n = 12)和测试集(n = 1262;ILA,n = 44)。在所评估的模型(双标签和三标签剖面推断模型;双标签和三标签 SVM、RF 和 CNN 病例推断模型)中,在剖面推断模型中使用三标签方法、在病例推断模型中使用双标签方法和 RF 的模型的 AUC 最高,为 0.87。结论 该模型在估计 ILA 概率方面表现优异,表明其在临床环境中具有潜在的实用性。RSNA, 2024 这篇文章有补充材料。另请参阅本期 Zagurovskaya 的社论。
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Automated Interstitial Lung Abnormality Probability Prediction at CT: A Stepwise Machine Learning Approach in the Boston Lung Cancer Study.

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 (n = 96; ILA, n = 48), a validation set (n = 24; ILA, n = 12), and a test set (n = 1262; ILA, n = 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 Supplemental material is available for this article. See also the editorial by Zagurovskaya in this issue.

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来源期刊
Radiology
Radiology 医学-核医学
CiteScore
35.20
自引率
3.00%
发文量
596
审稿时长
3.6 months
期刊介绍: Published regularly since 1923 by the Radiological Society of North America (RSNA), Radiology has long been recognized as the authoritative reference for the most current, clinically relevant and highest quality research in the field of radiology. Each month the journal publishes approximately 240 pages of peer-reviewed original research, authoritative reviews, well-balanced commentary on significant articles, and expert opinion on new techniques and technologies. Radiology publishes cutting edge and impactful imaging research articles in radiology and medical imaging in order to help improve human health.
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