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用于计算机辅助诊断的数字化乳腺X线摄影中肿块病变的定量特征分析

Quantitative characterization of mass lesions on digitized mammograms for computer-assisted diagnosis.

作者信息

Leichter I, Buchbinder S, Bamberger P, Novak B, Fields S, Lederman R

机构信息

Jerusalem College of Technology, Israel.

出版信息

Invest Radiol. 2000 Jun;35(6):366-72. doi: 10.1097/00004424-200006000-00005.

Abstract

RATIONALE AND OBJECTIVES

To investigate features for discriminating benign from malignant mammographic findings by using computer-aided diagnosis (CAD) and to test the accuracy of CAD interpretations of mass lesions.

METHODS

Fifty-five sequential, mammographically detected mass lesions, referred for biopsy, were digitized for computerized reevaluation with a CAD system. Quantitative features that characterize spiculation were automatically extracted by the CAD system. Data generated by 271 known retrospective cases were used to set reference values indicating the range for malignant and benign lesions. After conventional interpretation of the 55 prospective cases, they were evaluated a second time by the radiologist using the extracted features and the reference ranges. In addition, a pattern-recognition scheme based on the extracted features was used to classify the prospective cases. Accuracy of interpretation with and without the CAD system was evaluated using receiver operating characteristic (ROC) curve analysis.

RESULTS

Sensitivity of the CAD diagnosis for the prospective cases improved from 92% to 100%. Specificity improved significantly from 26.7% to 66.7%. This was accompanied by a significant increase in the accuracy of diagnosis from 56.4% to 81.8% and in the positive predictive value from 51.1% to 71.4%. The Az for the CAD ROC curve significantly increased from 0.73 to 0.90. The performance of the classification scheme was slightly lower than that of the radiologists' interpretation with the CAD system.

CONCLUSIONS

Use of the CAD system significantly improved the accuracy of diagnosis. The findings suggest that the classification scheme may improve the radiologist's ability to differentiate benign from malignant mass lesions in the interpretation of mammograms.

摘要

原理与目的

利用计算机辅助诊断(CAD)研究鉴别乳腺钼靶检查结果为良性或恶性的特征,并测试CAD对肿块病变解读的准确性。

方法

选取55例经乳腺钼靶检查发现并转诊活检的连续肿块病变,进行数字化处理以便使用CAD系统进行计算机化重新评估。CAD系统自动提取表征毛刺征的定量特征。利用271例已知回顾性病例生成的数据来设定指示恶性和良性病变范围的参考值。对55例前瞻性病例进行传统解读后,放射科医生再次使用提取的特征和参考范围对其进行评估。此外,基于提取特征的模式识别方案用于对前瞻性病例进行分类。使用受试者操作特征(ROC)曲线分析评估有无CAD系统时解读的准确性。

结果

前瞻性病例的CAD诊断敏感性从92%提高到100%。特异性从26.7%显著提高到66.7%。这伴随着诊断准确性从56.4%显著提高到81.8%,阳性预测值从51.1%提高到71.4%。CAD的ROC曲线下面积(Az)从0.73显著增加到0.90。分类方案的性能略低于放射科医生使用CAD系统的解读。

结论

使用CAD系统显著提高了诊断准确性。研究结果表明,该分类方案可能会提高放射科医生在解读乳腺钼靶片时区分良性和恶性肿块病变的能力。

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