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Multichannel response analysis on 2D projection views for detection of clustered microcalcifications in digital breast tomosynthesis

机译:二维投影视图上的多通道响应分析用于检测数字乳腺断层合成中的群集微钙化

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摘要

>Purpose: To investigate the feasibility of a new two-dimensional (2D) multichannel response (MCR) analysis approach for the detection of clustered microcalcifications (MCs) in digital breast tomosynthesis (DBT).>Methods: With IRB approval and informed consent, a data set of two-view DBTs from 42 breasts containing biopsy-proven MC clusters was collected in this study. The authors developed a 2D approach for MC detection using projection view (PV) images rather than the reconstructed three-dimensional (3D) DBT volume. Signal-to-noise ratio (SNR) enhancement processing was first applied to each PV to enhance the potential MCs. The locations of MC candidates were then identified with iterative thresholding. The individual MCs were decomposed with Hermite–Gaussian (HG) and Laguerre–Gaussian (LG) basis functions and the channelized Hotelling model was trained to produce the MCRs for each MC on the 2D images. The MCRs from the PVs were fused in 3D by a coincidence counting method that backprojects the MC candidates on the PVs and traces the coincidence of their ray paths in 3D. The 3D MCR was used to differentiate the true MCs from false positives (FPs). Finally a dynamic clustering method was used to identify the potential MC clusters in the DBT volume based on the fact that true MCs of clinical significance appear in clusters. Using two-fold cross validation, the performance of the 3D MCR for classification of true and false MCs was estimated by the area under the receiver operating characteristic (ROC) curve and the overall performance of the MCR approach for detection of clustered MCs was assessed by free response receiver operating characteristic (FROC) analysis.>Results: When the HG basis function was used for MCR analysis, the detection of MC cluster achieved case-based test sensitivities of 80% and 90% at the average FP rates of 0.65 and 1.55 FPs per DBT volume, respectively. With LG basis function, the average FP rates were 0.62 and 1.57 per DBT volume at the same sensitivity levels. The difference in the two sets of basis functions for detection of MCs did not show statistical significance.>Conclusions: The authors' experimental results indicate that the MCR approach is promising for the detection of MCs on PV images. The HG or LG basis functions are both effective in characterizing the signal response of MCs using the channelized Hotelling model. The coincidence counting method for fusion of the 2D MCR in 3D is an important step for FP reduction. Further study is underway to improve the MCR approach for microcalcification detection in DBT.
机译:>目的:研究新的二维(2D)多通道响应(MCR)分析方法在数字乳腺断层合成(DBT)中检测簇状微钙化(MCs)的可行性。>方法::在IRB的批准和知情同意的情况下,本研究收集了来自42个包含活检证实的MC簇的乳房的双视图DBT数据集。作者开发了一种使用投影视图(PV)图像而不是重建的三维(3D)DBT体积进行MC检测的2D方法。首先将信噪比(SNR)增强处理应用于每个PV,以增强潜在的MC。然后通过迭代阈值确定MC候选者的位置。使用Hermite–Gaussian(HG)和Laguerre–Gaussian(LG)基函数分解单个MC,并训练通道化的Hotelling模型以在2D图像上为每个MC生成MCR。通过重合计数方法将PV中的MCR融合到3D中,该方法将MC候选物反投影到PV上,并跟踪其射线路径在3D中的重合。 3D MCR用于区分真实MC和假阳性(FP)。最后,基于具有临床意义的真实MC出现在集群中的事实,使用动态集群方法来识别DBT体积中潜在的MC集群。使用双重交叉验证,通过接收器工作特征(ROC)曲线下的面积估算3D MCR对真假MC的分类性能,并通过以下方法评估MCR方法检测群集MC的总体性能:免费响应接收器运行特征(FROC)分析。>结果:当使用HG基函数进行MCR分析时,MC簇的检测平均达到基于案例的测试敏感度,分别为80%和90%每个DBT体积的FP速率分别为0.65和1.55 FP。使用LG基函数,在相同的灵敏度水平下,每DBT体积的平均FP速率为0.62和1.57。两组基函数检测MC的差异没有统计学意义。>结论:作者的实验结果表明,MCR方法有望在PV图像上检测MC。 HG或LG基函数都可以有效地利用信道化的Hotelling模型来表征MC的信号响应。在3D中融合2D MCR的同时计数方法是FP降低的重要步骤。正在进行进一步的研究以改进用于DBT中微钙化检测的MCR方法。

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