Machine learning to improve breast cancer diagnosis by multimodal ultrasound.

Laith R Sultan, Susan M Schultz, Theodore W Cary, Chandra M Sehgal
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引用次数: 19

Abstract

Despite major advances in breast cancer imaging there is compelling need to reduce unnecessary biopsies by improving characterization of breast lesions. This study demonstrates the use of machine learning to enhance breast cancer diagnosis with multimodal ultrasound. Surgically proven solid breast lesions were studied using quantitative features extracted from grayscale and Doppler ultrasound images. Statistically different features from the logistic regression classifier were used train and test lesion differentiation by leave-one-out cross-validation. The area under the ROC curve (AUC) of the grayscale morphologic features was 0.85 (sensitivity = 87, specificity = 69). The diagnostic performance improved (AUC = 0.89, sensitivity = 79, specificity = 89) when Doppler features were added to the analysis. Reliability of the individual training cycles of leave-one-out cross-validation was tested by measuring dispersion from the mean model. Significant dispersion from the mean, representing weak learning, was observed in 11.3% of cases. Pruning the high-dispersion cases improved the diagnostic performance markedly (AUC 0.96, sensitivity = 92, specificity = 95). These results demonstrate the effectiveness of dispersion to identify weakly learned cases. In conclusion, machine learning with multimodal ultrasound including grayscale and Doppler can achieve high performance for breast cancer diagnosis, comparable to that of human observers. Identifying weakly learned cases can markedly enhance diagnosis.

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机器学习提高乳腺癌多模态超声诊断。
尽管乳腺癌影像学取得了重大进展,但迫切需要通过改善乳腺病变的特征来减少不必要的活组织检查。本研究展示了使用机器学习来增强乳腺癌多模态超声诊断。通过从灰度和多普勒超声图像中提取定量特征,研究手术证实的乳腺实性病变。从逻辑回归分类器中统计不同的特征被用来训练和检验病变分化,通过留一交叉验证。灰度形态特征的ROC曲线下面积(AUC)为0.85(敏感性= 87,特异性= 69)。当多普勒特征加入分析时,诊断效能提高(AUC = 0.89,灵敏度= 79,特异性= 89)。通过测量均值模型的离散度来检验留一交叉验证的个人训练周期的可靠性。在11.3%的病例中观察到与平均值的显著离散,代表弱学习。对高弥散病例进行剪枝可显著提高诊断效能(AUC = 0.96,敏感性= 92,特异性= 95)。这些结果证明了分散识别弱学习案例的有效性。综上所述,基于灰度和多普勒等多模态超声的机器学习可以实现与人类观察者相当的乳腺癌诊断性能。识别弱学习病例可以显著提高诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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