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数字乳腺摄影中临床图像处理算法的评估

Evaluation of clinical image processing algorithms used in digital mammography.

作者信息

Zanca Federica, Jacobs Jurgen, Van Ongeval Chantal, Claus Filip, Celis Valerie, Geniets Catherine, Provost Veerle, Pauwels Herman, Marchal Guy, Bosmans Hilde

机构信息

Department of Radiology and Leuven University Center of Medical Physics in Radiology, University Hospitals Leuven, 3000 Leuven, Belgium.

出版信息

Med Phys. 2009 Mar;36(3):765-75. doi: 10.1118/1.3077121.

Abstract

Screening is the only proven approach to reduce the mortality of breast cancer, but significant numbers of breast cancers remain undetected even when all quality assurance guidelines are implemented. With the increasing adoption of digital mammography systems, image processing may be a key factor in the imaging chain. Although to our knowledge statistically significant effects of manufacturer-recommended image processings have not been previously demonstrated, the subjective experience of our radiologists, that the apparent image quality can vary considerably between different algorithms, motivated this study. This article addresses the impact of five such algorithms on the detection of clusters of microcalcifications. A database of unprocessed (raw) images of 200 normal digital mammograms, acquired with the Siemens Novation DR, was collected retrospectively. Realistic simulated microcalcification clusters were inserted in half of the unprocessed images. All unprocessed images were subsequently processed with five manufacturer-recommended image processing algorithms (Agfa Musica 1, IMS Raffaello Mammo 1.2, Sectra Mamea AB Sigmoid, Siemens OPVIEW v2, and Siemens OPVIEW v1). Four breast imaging radiologists were asked to locate and score the clusters in each image on a five point rating scale. The free-response data were analyzed by the jackknife free-response receiver operating characteristic (JAFROC) method and, for comparison, also with the receiver operating characteristic (ROC) method. JAFROC analysis revealed highly significant differences between the image processings (F = 8.51, p < 0.0001), suggesting that image processing strongly impacts the detectability of clusters. Siemens OPVIEW2 and Siemens OPVIEW1 yielded the highest and lowest performances, respectively. ROC analysis of the data also revealed significant differences between the processing but at lower significance (F = 3.47, p = 0.0305) than JAFROC. Both statistical analysis methods revealed that the same six pairs of modalities were significantly different, but the JAFROC confidence intervals were about 32% smaller than ROC confidence intervals. This study shows that image processing has a significant impact on the detection of microcalcifications in digital mammograms. Objective measurements, such as described here, should be used by the manufacturers to select the optimal image processing algorithm.

摘要

筛查是唯一经证实可降低乳腺癌死亡率的方法,但即便所有质量保证指南都得到落实,仍有大量乳腺癌未被检测出来。随着数字乳腺摄影系统的日益普及,图像处理可能是成像链中的关键因素。据我们所知,此前尚未证明制造商推荐的图像处理具有统计学上的显著效果,但我们放射科医生的主观经验表明,不同算法之间的表观图像质量可能有很大差异,这促使我们开展了这项研究。本文探讨了五种此类算法对微钙化簇检测的影响。我们回顾性收集了一个数据库,其中包含200例使用西门子Novation DR采集的正常数字乳腺钼靶未处理(原始)图像。在一半的未处理图像中插入了逼真的模拟微钙化簇。随后,所有未处理图像都使用五种制造商推荐的图像处理算法(爱克发Musica 1、IMS拉斐尔乳腺1.2、Sectra Mamea AB Sigmoid、西门子OPVIEW v2和西门子OPVIEW v1)进行处理。四位乳腺影像放射科医生被要求在五分制评分量表上对每张图像中的簇进行定位和评分。通过留一法自由响应接收器操作特性(JAFROC)方法对自由响应数据进行分析,为作比较,还采用了接收器操作特性(ROC)方法。JAFROC分析显示图像处理之间存在高度显著差异(F = 8.51,p < 0.0001),表明图像处理对簇的可检测性有强烈影响。西门子OPVIEW2和西门子OPVIEW1分别产生了最高和最低的性能。对数据的ROC分析也显示处理之间存在显著差异,但显著性低于JAFROC(F = 3.47,p = 0.0305)。两种统计分析方法均显示相同的六对模态存在显著差异,但JAFROC置信区间比ROC置信区间小约32%。本研究表明,图像处理对数字乳腺钼靶中微钙化的检测有显著影响。制造商应使用此处所述的客观测量方法来选择最佳图像处理算法。

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