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Computerized image analysis: Texture-field orientation method for pectoral muscle identification on MLO-view mammograms

机译:计算机图像分析:基于MLO乳房X线照片的胸肌识别的纹理场定向方法

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摘要

>Purpose: To develop a new texture-field orientation (TFO) method that combines a priori knowledge, local and global information for the automated identification of pectoral muscle on mammograms.>Methods: The authors designed a gradient-based directional kernel (GDK) filter to enhance the linear texture structures, and a gradient-based texture analysis to extract a texture orientation image that represented the dominant texture orientation at each pixel. The texture orientation image was enhanced by a second GDK filter for ridge point extraction. The extracted ridge points were validated and the ridges that were less likely to lie on the pectoral boundary were removed automatically. A shortest-path finding method was used to generate a probability image that represented the likelihood that each remaining ridge point lay on the true pectoral boundary. Finally, the pectoral boundary was tracked by searching for the ridge points with the highest probability lying on the pectoral boundary. A data set of 130 MLO-view digitized film mammograms (DFMs) from 65 patients was used to train the TFO algorithm. An independent data set of 637 MLO-view DFMs from 562 patients was used to evaluate its performance. Another independent data set of 92 MLO-view full field digital mammograms (FFDMs) from 92 patients was used to assess the adaptability of the TFO algorithm to FFDMs. The pectoral boundary detection accuracy of the TFO method was quantified by comparison with an experienced radiologist’s manually drawn pectoral boundary using three performance metrics: The percent overlap area (POA), the Hausdorff distance (Hdist), and the average distance (AvgDist).>Results: The mean and standard deviation of POA, Hdist, and AvgDist were 95.0±3.6%, 3.45±2.16 mm, and 1.12±0.82 mm, respectively. For the POA measure, 91.5%, 97.3%, and 98.9% of the computer detected pectoral muscles had POA larger than 90%, 85%, and 80%, respectively. For the distance measures, 85.4% and 98.0% of the computer detected pectoral boundaries had Hdist within 5 and 10 mm, respectively, and 99.4% of computer detected pectoral muscle boundaries had AvgDist within 5 mm from the radiologist’s manually drawn boundaries.>Conclusions: The pectoral muscle on DFMs can be detected accurately by the automated TFO method. The preliminary study of applying the same pectoral muscle identification algorithm to FFDMs without retraining demonstrates that the TFO method is reasonably robust against the differences in the image properties between the digitized and digital mammograms.
机译:>目的:开发一种结合先验知识,局部信息和全局信息的新纹理场定向(TFO)方法,以自动识别乳房X线照片上的胸肌。>方法:作者设计了基于梯度的方向核(GDK)过滤器以增强线性纹理结构,并设计了基于梯度的纹理分析以提取表示每个像素处主要纹理方向的纹理方向图像。通过用于脊点提取的第二个GDK滤镜增强了纹理定向图像。验证提取的山脊点,并自动去除不太可能位于胸腔边界上的山脊。最短路径查找方法用于生成概率图像,该图像表示每个剩余脊点位于真实胸骨边界上的可能性。最后,通过搜索具有最高概率的脊点来跟踪胸边界。来自65位患者的130张MLO视点数字化胶片X线照片(DFM)的数据集用于训练TFO算法。使用来自562名患者的637个MLO视图DFM的独立数据集来评估其性能。来自92例患者的92个MLO视野全视野数字化乳房X线照片(FFDM)的另一个独立数据集用于评估TFO算法对FFDM的适应性。通过与经验丰富的放射科医生手动绘制的胸腔边界进行比较,使用三个性能指标对TFO方法的胸腔边界检测准确性进行了量化:重叠面积百分比(POA),Hausdorff距离(Hdist)和平均距离(AvgDist)。 strong>结果: POA,Hdist和AvgDist的平均值和标准差分别为95.0±3.6%,3.45±2.16 mm和1.12±0.82 mm。对于POA度量,计算机检测到的91.5%,97.3%和98.9%的胸肌的POA分别大于90%,85%和80%。对于距离测量,计算机检测到的胸肌边界的85.4%和98.0%的Hdist分别在5 mm和10 mm之内,计算机检测到的胸肌边界的99.4%的AvgDist在距放射科医生手动绘制的边界5 mm以内。>结论:采用自动TFO方法可以准确检测DFM的胸肌。将相同的胸肌识别算法应用于FFDM而无需重新训练的初步研究表明,TFO方法对于数字化和数字化X线照片之间的图像特性差异具有相当强的鲁棒性。

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