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Breast density quantification with cone-beam CT: A post-mortem study

机译:锥形束CT对乳房密度的定量:一项事后研究

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摘要

Forty post-mortem breasts were imaged with a flat-panel based cone-beam x-ray CT system at 50 kVp. The feasibility of breast density quantification has been investigated using standard histogram thresholding and an automatic segmentation method based on the fuzzy c-means algorithm (FCM). The breasts were chemically decomposed into water, lipid, and protein immediately after image acquisition was completed. The percent fibroglandular volume (%FGV) from chemical analysis was used as the gold standard for breast density comparison. Both image-based segmentation techniques showed good precision in breast density quantification with high linear coefficients between the right and left breast of each pair. When comparing with the gold standard using %FGV from chemical analysis, Pearson’s r-values were estimated to be 0.983 and 0.968 for the FCM clustering and the histogram thresholding techniques, respectively. The standard error of the estimate (SEE) was also reduced from 3.92% to 2.45% by applying the automatic clustering technique. The results of the postmortem study suggested that breast tissue can be characterized in terms of water, lipid and protein contents with high accuracy by using chemical analysis, which offers a gold standard for breast density studies comparing different techniques. In the investigated image segmentation techniques, the FCM algorithm had high precision and accuracy in breast density quantification. In comparison to conventional histogram thresholding, it was more efficient and reduced inter-observer variation.
机译:使用基于平板的锥束X射线CT系统以50 kVp对40个死后乳房进行成像。使用标准直方图阈值法和基于模糊c均值算法(FCM)的自动分割方法,研究了乳房密度量化的可行性。图像采集完成后,立即将乳房化学分解为水,脂质和蛋白质。来自化学分析的纤毛体积百分比(%FGV)被用作乳房密度比较的金标准。两种基于图像的分割技术在每对左右乳房之间的线性系数都很高的情况下,乳房密度量化显示出良好的精度。与化学分析中使用%FGV的金标准进行比较时,对于FCM聚类和直方图阈值化技术,皮尔逊的r值分别估计为0.983和0.968。通过应用自动聚类技术,估算的标准误差(SEE)也从3.92%降低到2.45%。死后研究的结果表明,可以通过化学分析对乳房组织进行水分,脂质和蛋白质含量的高精度表征,这为比较不同技术的乳房密度研究提供了黄金标准。在研究的图像分割技术中,FCM算法在乳房密度量化中具有很高的精度和准确性。与传统的直方图阈值相比,它更有效并且减少了观察者之间的差异。

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