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The impact of breast structure on lesion detection in breast tomosynthesis

机译:乳房断层合成中乳房结构对病变检测的影响

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Virtual clinical trials (VCT) can be carefully designed to inform, orient, or potentially replace clinical trials. The focus of this study was to demonstrate the capability of the sophisticated tools that can be used in the design, implementation, and performance analysis of VCTs, through characterization of the effect of background tissue density and heterogeneity on the detection of irregular masses in digital breast tomosynthesis. Twenty breast phantoms from the extended cardiac-torso (XCAT) family, generated based on dedicated breast computed tomography of human subjects, were used to extract a total of 2173 volumes of interest (VOI) from simulated tomosynthesis images. Five different lesions, modeled after human subject tomosynthesis images, were embedded in the breasts, for a total of 6x2173 VOIs with and without lesions. Effects of background tissue density and heterogeneity on the detection of the lesions were studied by implementing a doubly composite hypothesis signal detection theory paradigm with location known exactly, lesion known exactly, and background known statistically. The results indicated that the detection performance as measured by the area under the receiver operating characteristic curve (ROC) deteriorated as density was increased, yielding findings consistent with clinical studies. The detection performance varied substantially across the twenty breasts. Furthermore, the log-likelihood ratio under H_0 and H_1 seemed to be affected by background tissue density and heterogeneity differently. Considering background tissue variability can change the outcomes of a VCT and is hence of crucial importance. The XCAT breast phantoms can address this concern by offering realistic modeling of background tissue variability based on a wide range of human subjects.
机译:虚拟临床试验(VCT)可以经过精心设计,以为临床试验提供信息,定位或替代其用途。这项研究的重点是通过表征背景组织密度和异质性对检测数字乳腺不规则肿块的影响,证明可用于VCT设计,实施和性能分析的先进工具的功能。断层合成。基于人类受试者专用的胸部计算机断层摄影术生成的二十个来自扩展的心脏躯干(XCAT)家族的乳房幻影,用于从模拟的断层合成图像中提取总计2173体积的感兴趣的物体(VOI)。根据人体断层合成图像建模的五个不同病变被植入乳房,总共有6x2173 VOI(有或没有病变)。通过实施双重复合假设信号检测理论范例,研究了背景组织密度和异质性对病变检测的影响,该假设范例的位置准确,病变准确,背景统计已知。结果表明,随着接收器密度的增加,接收器工作特性曲线(ROC)下的面积所测得的检测性能下降,得出的结果与临床研究一致。二十个乳房的检测性能差异很大。此外,H_0和H_1下的对数似然比似乎受背景组织密度和异质性的影响不同。考虑背景组织的变异性可以改变VCT的结果,因此至关重要。 XCAT乳房体模可以通过根据广泛的人类受试者提供背景组织变异性的逼真建模来解决此问题。

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