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Breast mass lesions: computer-aided diagnosis models with mammographic and sonographic descriptors.

机译:乳腺肿块病变:具有乳腺X线和超声检查描述符的计算机辅助诊断模型。

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摘要

PURPOSE: To retrospectively develop and evaluate computer-aided diagnosis (CAD) models that include both mammographic and sonographic descriptors. MATERIALS AND METHODS: Institutional review board approval was obtained for this HIPAA-compliant study. A waiver of informed consent was obtained. Mammographic and sonographic examinations were performed in 737 patients (age range, 17-87 years), which yielded 803 breast mass lesions (296 malignant, 507 benign). Radiologist-interpreted features from mammograms and sonograms were used as input features for linear discriminant analysis (LDA) and artificial neural network (ANN) models to differentiate benign from malignant lesions. An LDA with all the features was compared with an LDA with only stepwise-selected features. Classification performances were quantified by using receiver operating characteristic (ROC) analysis and were evaluated in a train, validate, and retest scheme. On the retest set, both LDAs were compared with radiologist assessment score of malignancy. RESULTS: Both the LDA and ANN achieved high classification performance with cross validation (area under the ROC curve [A(z)] = 0.92 +/- 0.01 [standard deviation] and (0.90)A(z) = 0.54 +/- 0.08 for LDA, A(z) = 0.92 +/- 0.01 and (0.90)A(z) = 0.55 +/- 0.08 for ANN). Results of both models generalized well to the retest set, with no significant performance differences between the validate and retest sets (P > .1). On the retest set, there were no significant performance differences between LDA with all features and LDA with only the stepwise-selected features (P > .3) and between either LDA and radiologist assessment score (P > .2). CONCLUSION: Results showed that combining mammographic and sonographic descriptors in a CAD model can result in high classification and generalization performance. On the retest set, LDA performance matched radiologist classification performance.
机译:目的:回顾性开发和评估计算机辅助诊断(CAD)模型,其中包括乳房X线和超声图像描述符。材料和方法:该符合HIPAA的研究获得了机构审查委员会的批准。获得了知情同意的放弃。在737例患者(年龄范围17-87岁)中进行了乳房X线检查和超声检查,结果发现803例乳腺肿块病变(296例恶性,507例良性)。放射线学家从乳房X线照片和超声波检查图解释的特征被用作线性判别分析(LDA)和人工神经网络(ANN)模型的输入特征,以区分良性和恶性病变。将具有所有功能的LDA与仅具有逐步选择功能的LDA进行比较。分类性能通过使用接收机工作特性(ROC)分析进行量化,并在训练,验证和重新测试方案中进行评估。在重新测试组中,将两个LDA与放射线医师对恶性肿瘤的评估评分进行了比较。结果:LDA和ANN都通过交叉验证获得了很高的分类性能(ROC曲线下的面积[A(z)] = 0.92 +/- 0.01 [标准偏差],(0.90)A(z)= 0.54 +/- 0.08对于LDA,A(z)= 0.92 +/- 0.01,(ANN的(0.90)A(z)= 0.55 +/- 0.08)。两种模型的结果都能很好地推广到重新测试集,而验证和重新测试集之间没有显着的性能差异(P> .1)。在重新测试集上,具有所有功能的LDA与仅具有逐步选择的功能的LDA(P> .3)之间以及LDA和放射线医师评估得分之间(P> .2)没有明显的性能差异。结论:结果表明,在CAD模型中结合乳房X线描记和超声图描记可以提高分类和泛化性能。在重新测试集上,LDA性能与放射科医生的分类性能相匹配。

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