首页> 外文期刊>Medical informatics and the Internet in medicine >Evaluation of an automated wavelet-based system dedicated to the detection of clustered microcalcifications in digital mammograms.
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Evaluation of an automated wavelet-based system dedicated to the detection of clustered microcalcifications in digital mammograms.

机译:评估基于自动小波的系统,该系统专用于检测数字乳房X线照片中的集群微钙化。

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摘要

Mammographic screening programs are delivering reductions in breast cancer mortality. However, breast cancer screening will be cost effective and will provide a real profit only when both high sensitivity and specificity levels are reached. To date, due to human or technical factors, a significant number of breast cancers are still missed or misinterpreted on the mammograms. Computer methodologies, developed to assist radiologists, could represent further amelioration by increasing diagnostic accuracy in the screening programs. We have tested a computerized scheme to detect clustered microcalcifications in digital mammograms, employing 360 mammograms that were randomly selected from the mammographic screening program, currently undergoing at the Galicia Community (Spain). After the digitization process, the breast border was initially determined. A wavelet-based algorithm was employed to detect the clusters of microcalcifications. The performance of the automated system over the test set was evaluated employing Free-response Receiver Operating Characteristic (FROC) methodology. The sensitivity achieved was 74% at a false positive detection rate of 1.83. The corresponding area under the Alternative FROC (AFROC) curve was A1=0.667 +/-0.09.
机译:乳房X光检查程序正在降低乳腺癌的死亡率。但是,乳腺癌筛查将具有成本效益,并且只有同时达到高灵敏度和特异性水平时,才能提供真正的利润。迄今为止,由于人为或技术因素,在乳房X线照片上仍然遗漏或误解了许多乳腺癌。为协助放射科医生而开发的计算机方法论可以通过提高筛查程序的诊断准确性来进一步改善。我们测试了一种计算机化方案,以检测360幅乳腺X线照片,以检测数字乳腺X线照片中的簇状微钙化,这些乳腺X射线照片是从目前在加利西亚社区(西班牙)进行的乳腺X线照片筛查程序中随机选择的。在数字化过程之后,最初确定了乳房边界。基于小波的算法用于检测微钙化的群集。使用自由响应接收器工作特性(FROC)方法对自动化系统在测试装置上的性能进行了评估。假阳性检出率为1.83时,灵敏度为74%。替代FROC(AFROC)曲线下的相应面积为A1 = 0.667 +/- 0.09。

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