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自动机器学习与放射科医生在计算机断层扫描评估子宫内膜方面的性能比较

Performance of automatic machine learning versus radiologists in the evaluation of endometrium on computed tomography.

作者信息

Li Dan, Hu Rong, Li Huizhou, Cai Yeyu, Zhang Paul J, Wu Jing, Zhu Chengzhang, Bai Harrison X

机构信息

Department of Interventional Medicine, The Sixth Affiliated Hospital of Sun Yat-sen University, Guangdong, China.

School of Computer Science and Engineering, Central South University, Changsha, China.

出版信息

Abdom Radiol (NY). 2021 Nov;46(11):5316-5324. doi: 10.1007/s00261-021-03210-9. Epub 2021 Jul 21.

Abstract

PURPOSE

In this study, we developed radiomic models that utilize a combination of imaging features and clinical variables to distinguish endometrial cancer (EC) from normal endometrium on routine computed tomography (CT).

METHODS

A total of 926 patients consisting of 416 endometrial cancer (EC) and 510 normal endometrium were included. The CT images of these patients were segmented manually, and divided into training, validation, testing and external testing sets. Non-texture and texture features of these images with endometrium or uterus as region of interest were extracted. The clinical feature "age" was also included in the feature set. Feature selection and machine learning classifier were applied to normalized feature set. This manual optimized combination was then compared with the best pipeline exported by Tree-Based Pipeline Optimization Tool (TPOT) on testing and external testing set. The performances of these machine learning pipelines were compared to that of radiologists.

RESULTS

The manual expert optimized pipeline using the "reliefF" feature selection method and "Bagging" classifier on the external testing set achieved a test ROC AUC of 0.73, accuracy of 0.73 (95% CI 0.62-0.82), sensitivity of 0.64 (95% CI 0.45-0.79), and specificity of 0.78 (95% CI 0.65-0.87), while TPOT achieved a test ROC AUC of 0.79, accuracy of 0.80 (95% CI 0.70-0.87), sensitivity of 0.61 (95% CI 0.43-0.77), and specificity of 0.90 (95% CI 0.78-0.96). When compared to average radiologist performance, the TPOT achieved higher test accuracy (0.80 vs. 0.49, p < 0.001) and specificity (0.90 vs. 0.51, p < 0.001), with comparable sensitivity (0.61 vs. 0.46, p = 0.130).

CONCLUSION

Our results demonstrate that automatic machine learning can distinguish EC from normal endometrium on routine CT imaging with higher accuracy and specificity than radiologists.

摘要

目的

在本研究中,我们开发了放射组学模型,该模型利用成像特征和临床变量的组合,在常规计算机断层扫描(CT)上区分子宫内膜癌(EC)与正常子宫内膜。

方法

共纳入926例患者,其中416例为子宫内膜癌(EC),510例为正常子宫内膜。手动分割这些患者的CT图像,并将其分为训练集、验证集、测试集和外部测试集。以子宫内膜或子宫为感兴趣区域,提取这些图像的非纹理和纹理特征。临床特征“年龄”也包含在特征集中。对标准化特征集应用特征选择和机器学习分类器。然后将这种手动优化的组合与基于树的管道优化工具(TPOT)在测试集和外部测试集上导出的最佳管道进行比较。将这些机器学习管道的性能与放射科医生的性能进行比较。

结果

在外部测试集上,使用“reliefF”特征选择方法和“Bagging”分类器的手动专家优化管道的测试ROC AUC为0.73,准确率为0.73(95%CI 0.62 - 0.82),灵敏度为0.64(95%CI 0.45 - 0.79),特异性为0.78(95%CI 0.65 - 0.87),而TPOT的测试ROC AUC为0.79,准确率为0.80(95%CI 0.70 - 0.87),灵敏度为0.61(95%CI 0.43 - 0.77),特异性为0.90(95%CI 0.78 - 0.96)。与放射科医生的平均表现相比,TPOT的测试准确率更高(0.80对0.49,p < 0.001),特异性更高(0.90对0.51,p <

0.001),灵敏度相当(0.61对0.46,p = 0.130)。

结论

我们的结果表明,自动机器学习在常规CT成像上能够比放射科医生更准确、更特异地区分EC与正常子宫内膜。

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