Observer Variability in BI-RADS Ultrasound Features and Its Influence on Computer-Aided Diagnosis of Breast Masses.

乳腺癌(英文) Pub Date : 2015-01-01 Epub Date: 2015-01-09 DOI:10.4236/abcr.2015.41001
Laith R Sultan, Ghizlane Bouzghar, Benjamin J Levenback, Nauroze A Faizi, Santosh S Venkatesh, Emily F Conant, Chandra M Sehgal
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引用次数: 4

Abstract

Objective: Computer classification of sonographic BI-RADS features can aid differentiation of the malignant and benign masses. However, the variability in the diagnosis due to the differences in the observed features between the observations is not known. The goal of this study is to measure the variation in sonographic features between multiple observations and determine the effect of features variation on computer-aided diagnosis of the breast masses.

Materials and methods: Ultrasound images of biopsy proven solid breast masses were analyzed in three independent observations for BI-RADS sonographic features. The BI-RADS features from each observation were used with Bayes classifier to determine probability of malignancy. The observer agreement in the sonographic features was measured by kappa coefficient and the difference in the diagnostic performances between observations was determined by the area under the ROC curve, Az, and interclass correlation coefficient.

Results: While some features were repeatedly observed, κ = 0.95, other showed a significant variation, κ = 0.16. For all features, combined intra-observer agreement was substantial, κ = 0.77. The agreement, however, decreased steadily to 0.66 and 0.56 as time between the observations increased from 1 to 2 and 3 months, respectively. Despite the variation in features between observations the probabilities of malignancy estimates from Bayes classifier were robust and consistently yielded same level of diagnostic performance, Az was 0.772 - 0.817 for sonographic features alone and 0.828 - 0.849 for sonographic features and age combined. The difference in the performance, ΔAz, between the observations for the two groups was small (0.003 - 0.044) and was not statistically significant (p < 0.05). Interclass correlation coefficient for the observations was 0.822 (CI: 0.787 - 0.853) for BI-RADS sonographic features alone and for those combined with age was 0.833 (CI: 0.800 - 0.862).

Conclusion: Despite the differences in the BI- RADS sonographic features between different observations, the diagnostic performance of computer-aided analysis for differentiating breast masses did not change. Through continual retraining, the computer-aided analysis provides consistent diagnostic performance independent of the variations in the observed sonographic features.

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BI-RADS超声特征的观察者变异及其对乳腺肿块计算机辅助诊断的影响。
目的:超声BI-RADS特征的计算机分型有助于肿块的良恶性鉴别。然而,由于观察到的特征之间的差异,诊断的可变性尚不清楚。本研究的目的是测量多次观察之间超声特征的变化,并确定特征变化对乳腺肿块计算机辅助诊断的影响。材料和方法:对活检证实的实性乳腺肿块的超声图像进行三次独立的BI-RADS超声特征分析。每个观察的BI-RADS特征与贝叶斯分类器一起用于确定恶性肿瘤的概率。观察者对超声特征的一致性用kappa系数来衡量,观察者之间诊断表现的差异用ROC曲线下面积、Az和类间相关系数来衡量。结果:部分特征重复出现,κ = 0.95,部分特征变化显著,κ = 0.16。对于所有特征,联合观察者之间的一致性是显著的,κ = 0.77。然而,随着观察间隔时间分别从1个月增加到2个月和3个月,一致性稳步下降到0.66和0.56。尽管观察值之间的特征存在差异,但贝叶斯分类器估计恶性肿瘤的概率是稳健的,并且始终产生相同水平的诊断性能,单独超声特征的Az为0.772 - 0.817,超声特征和年龄组合的Az为0.828 - 0.849。两组观察结果的性能(ΔAz)差异很小(0.003 - 0.044),无统计学意义(p < 0.05)。单独BI-RADS超声特征的类间相关系数为0.822 (CI: 0.787 - 0.853),合并年龄的类间相关系数为0.833 (CI: 0.800 - 0.862)。结论:尽管BI- RADS超声特征在不同的观察结果之间存在差异,但计算机辅助分析对乳腺肿块鉴别的诊断价值没有改变。通过不断的再训练,计算机辅助分析提供了一致的诊断性能,独立于观察到的超声特征的变化。
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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