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通过筛查CT扫描预测恶性结节

Predicting Malignant Nodules from Screening CT Scans.

作者信息

Hawkins Samuel, Wang Hua, Liu Ying, Garcia Alberto, Stringfield Olya, Krewer Henry, Li Qian, Cherezov Dmitry, Gatenby Robert A, Balagurunathan Yoganand, Goldgof Dmitry, Schabath Matthew B, Hall Lawrence, Gillies Robert J

机构信息

Department of Computer Sciences and Engineering, University of South Florida, Tampa, Florida.

Department of Radiology, Tianjin Medical University Cancer Institute and Hospital, National Clinical Research Center of Cancer, Key Laboratory of Cancer Prevention and Therapy, Tianjin, People's Republic of China; Department of Cancer Imaging and Metabolism, H. Lee Moffitt Cancer Center and Research Institute, Tampa, Florida.

出版信息

J Thorac Oncol. 2016 Dec;11(12):2120-2128. doi: 10.1016/j.jtho.2016.07.002. Epub 2016 Jul 13.

Abstract

OBJECTIVES

The aim of this study was to determine whether quantitative analyses ("radiomics") of low-dose computed tomography lung cancer screening images at baseline can predict subsequent emergence of cancer.

METHODS

Public data from the National Lung Screening Trial (ACRIN 6684) were assembled into two cohorts of 104 and 92 patients with screen-detected lung cancer and then matched with cohorts of 208 and 196 screening subjects with benign pulmonary nodules. Image features were extracted from each nodule and used to predict the subsequent emergence of cancer.

RESULTS

The best models used 23 stable features in a random forests classifier and could predict nodules that would become cancerous 1 and 2 years hence with accuracies of 80% (area under the curve 0.83) and 79% (area under the curve 0.75), respectively. Radiomics outperformed the Lung Imaging Reporting and Data System and volume-only approaches. The performance of the McWilliams risk assessment model was commensurate.

CONCLUSIONS

The radiomics of lung cancer screening computed tomography scans at baseline can be used to assess risk for development of cancer.

摘要

目的

本研究旨在确定基线时低剂量计算机断层扫描肺癌筛查图像的定量分析(“放射组学”)是否能够预测后续癌症的出现。

方法

将来自国家肺癌筛查试验(ACRIN 6684)的公共数据整理成两组队列,分别为104例和92例经筛查发现肺癌的患者,然后与208例和196例有良性肺结节的筛查对象队列进行匹配。从每个结节中提取图像特征,并用于预测后续癌症的出现。

结果

最佳模型在随机森林分类器中使用23个稳定特征,能够分别预测1年后和2年后会发展为癌症的结节,准确率分别为80%(曲线下面积为0.83)和79%(曲线下面积为0.75)。放射组学的表现优于肺部影像报告和数据系统以及仅基于体积的方法。麦克威廉姆斯风险评估模型的表现相当。

结论

基线时肺癌筛查计算机断层扫描的放射组学可用于评估癌症发生风险。

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Radiomics: Images Are More than Pictures, They Are Data.放射组学:图像不止是图片,它们是数据。
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