首页> 外文期刊>Radiology >Improvement in radiologists' characterization of malignant and benign breast masses on serial mammograms with computer-aided diagnosis: an ROC study.
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Improvement in radiologists' characterization of malignant and benign breast masses on serial mammograms with computer-aided diagnosis: an ROC study.

机译:放射科医师通过计算机辅助诊断在系列乳房X线照片上对恶性和良性乳腺肿块的表征得到改善:ROC研究。

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摘要

PURPOSE: To evaluate the effects of computer-aided diagnosis (CAD) on radiologists' characterization of masses on serial mammograms. MATERIALS AND METHODS: Two hundred fifty-three temporal image pairs (138 malignant and 115 benign) obtained from 96 patients who had masses on serial mammograms were evaluated. The temporal pairs were formed by matching masses of the same view from two different examinations. Eight radiologists and two breast imaging fellows assessed the temporal pairs with and without computer aid. The classification of accuracy was quantified by using the area under receiver operating characteristic curve (A(z)). The statistical significance of the difference in A(z) between the different reading conditions was estimated with the Dorfman-Berbaum-Metz method for analysis of multireader multicase data and with the Student paired t test for analysis of observer-specific paired data. RESULTS: The average A(z) for radiologists' estimates of the likelihood of malignancy was 0.79 without CAD and improved to 0.84 with CAD. The improvement was statistically significant (P =.005). The corresponding average partial area index was 0.25 without CAD and improved to 0.37 with CAD. The improvement was also statistically significant (P =.005). On the basis of Breast Imaging Reporting and Data System assessments, it was estimated that with CAD, each radiologist, on average, reduced 0.7% (0.8 of 115) of unnecessary biopsies and correctly recommended 5.7% (7.8 of 138) of additional biopsies. CONCLUSION: CAD based on analysis of interval changes can significantly increase radiologists' accuracy in classification of masses and thereby may be useful in improving correct biopsy recommendations.
机译:目的:评估计算机辅助诊断(CAD)对放射技师对系列乳房X线照片的质量表征的影响。材料与方法:对从96例行乳房X线照片上行肿块的患者获得的253个颞图像(138例恶性和115例良性)进行了评估。通过匹配来自两个不同检查的相同视图的质量形成时间对。八名放射科医生和两名乳腺影像学专家评估了有无计算机辅助的时间对。准确度的分类通过使用接收器工作特性曲线下的面积(A(z))进行量化。使用Dorfman-Berbaum-Metz方法评估多阅读器多案例数据,并使用Student Paired t检验分析特定于观察者的配对数据,从而估算出不同阅读条件之间A(z)差异的统计显着性。结果:放射科医生估计的不使用CAD的恶性可能性的平均A(z)为0.79,使用CAD可以提高至0.84。改善具有统计学意义(P = .005)。相应的平均局部面积指数在不使用CAD的情况下为0.25,而在使用CAD的情况下提高至0.37。改善也具有统计学意义(P = .005)。根据乳房成像报告和数据系统评估,估计使用CAD的每位放射科医生平均减少了0.7%(115的0.8)不必要的活检,并正确推荐了5.7%(138的7.8)的额外活检。结论:基于间隔变化分析的CAD可以显着提高放射科医师对肿物分类的准确性,从而可能有助于改善正确的活检建议。

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