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Estimation of breast percent density in raw and processed full field digital mammography images via adaptive fuzzy c-means clustering and support vector machine segmentation

机译:通过自适应模糊c均值聚类和支持向量机分割估计原始和处理的全场数字化乳腺摄影图像中的乳房百分比密度

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Purpose: The amount of fibroglandular tissue content in the breast as estimated mammographically, commonly referred to as breast percent density (PD), is one of the most significant risk factors for developing breast cancer. Approaches to quantify breast density commonly focus on either semiautomated methods or visual assessment, both of which are highly subjective. Furthermore, most studies published to date investigating computer-aided assessment of breast PD have been performed using digitized screen-film mammograms, while digital mammography is increasingly replacing screen-film mammography in breast cancer screening protocols. Digital mammography imaging generates two types of images for analysis, raw (i.e., FOR PROCESSING) and vendor postprocessed (i.e., FOR PRESENTATION), of which postprocessed images are commonly used in clinical practice. Development of an algorithm which effectively estimates breast PD in both raw and postprocessed digital mammography images would be beneficial in terms of direct clinical application and retrospective analysis. Methods: This work proposes a new algorithm for fully automated quantification of breast PD based on adaptive multiclass fuzzy c-means (FCM) clustering and support vector machine (SVM) classification, optimized for the imaging characteristics of both raw and processed digital mammography images as well as for individual patient and image characteristics. Our algorithm first delineates the breast region within the mammogram via an automated thresholding scheme to identify background air followed by a straight line Hough transform to extract the pectoral muscle region. The algorithm then applies adaptive FCM clustering based on an optimal number of clusters derived from image properties of the specific mammogram to subdivide the breast into regions of similar gray-level intensity. Finally, a SVM classifier is trained to identify which clusters within the breast tissue are likely fibroglandular, which are then aggregated into a final dense tissue segmentation that is used to compute breast PD. Our method is validated on a group of 81 women for whom bilateral, mediolateral oblique, raw and processed screening digital mammograms were available, and agreement is assessed with both continuous and categorical density estimates made by a trained breast-imaging radiologist. Results: Strong association between algorithm-estimated and radiologist-provided breast PD was detected for both raw (r 0.82, p 0.001) and processed (r 0.85, p 0.001) digital mammograms on a per-breast basis. Stronger agreement was found when overall breast density was assessed on a per-woman basis for both raw (r 0.85, p 0.001) and processed (0.89, p 0.001) mammograms. Strong agreement between categorical density estimates was also seen (weighted Cohens κ 0.79). Repeated measures analysis of variance demonstrated no statistically significant differences between the PD estimates (p > 0.1) due to either presentation of the image (raw vs processed) or method of PD assessment (radiologist vs algorithm). Conclusions: The proposed fully automated algorithm was successful in estimating breast percent density from both raw and processed digital mammographic images. Accurate assessment of a womans breast density is critical in order for the estimate to be incorporated into risk assessment models. These results show promise for the clinical application of the algorithm in quantifying breast density in a repeatable manner, both at time of imaging as well as in retrospective studies.
机译:目的:乳腺X线摄影估计的乳腺纤维腺组织含量通常被称为乳腺百分比密度(PD),是发生乳腺癌的最重要风险因素之一。量化乳房密度的方法通常集中在半自动方法或视觉评估上,这两者都是高度主观的。此外,迄今为止,大多数对计算机辅助评估乳腺PD的调查研究都是使用数字化的X线摄影胶片进行的,而数字化X线摄影术在乳腺癌筛查方案中正逐渐取代X线摄影。数字乳腺X线摄影成像生成两种类型的图像进行分析,即原始图像(即用于处理)和供应商后处理(即用于演示),其中在临床实践中通常使用后处理的图像。在直接的临床应用和回顾性分析方面,开发一种可以有效地估计原始和后处理的乳腺X线摄影图像中的乳腺PD的算法将是有益的。方法:这项工作提出了一种基于自适应多类模糊c均值(FCM)聚类和支持向量机(SVM)分类的乳腺PD全自动量化的新算法,该算法针对原始和处理过的数字乳房X线照片图像的成像特性进行了优化。以及针对个别患者和图像的特征。我们的算法首先通过自动阈值划分方案在乳房X线照片中勾勒出乳房区域,以识别背景空气,然后进行直线霍夫变换,以提取胸肌区域。然后,该算法基于从特定乳房X线照片的图像属性得出的最佳聚类数,应用自适应FCM聚类,将乳房细分为相似灰度强度的区域。最后,对SVM分类器进行训练,以识别出乳腺组织中的哪些簇可能是纤维腺,然后聚集到最终的致密组织分割中,以用于计算乳腺PD。我们的方法在一组81位女性中得到验证,这些女性可获得双侧,中外侧斜位,原始和加工过的筛查数字化X线乳房X线照片,并且由训练有素的乳腺放射线放射科医生对连续密度和分类密度进行评估,以评估一致性。结果:在每个乳房的基础上,对于原始(r 0.82,p 0.001)和已处理(r 0.85,p 0.001)数字乳腺X线照片,算法估计值与放射科医生提供的乳腺PD之间都发现了强相关性。当以原始图像(r 0.85,p 0.001)和已处理图像(0.89,p 0.001)对每位女性进行总体乳房密度评估时,发现更加一致。在分类密度估计之间也发现了很强的一致性(加权Cohensκ0.79)。重复测量方差分析表明,由于图像的显示(原始与处理)或PD评估方法(放射科医生与算法),PD估计之间在统计学上无显着差异(p> 0.1)。结论:所提出的全自动算法成功地从原始和处理过的数字乳腺X射线摄影图像估计乳房百分比密度。准确评估女性的乳房密度对于将评估结果纳入风险评估模型至关重要。这些结果显示了该算法在成像和回顾性研究中以可重复的方式量化乳房密度的临床应用前景。

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