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Nominal Stiffness Identification for Tumor Detection of Women Breast in a Digital Image Elasto Tomography (DIET) System

机译:数字图像弹性体层摄影(DIET)系统中女性乳房肿瘤检测的名义刚度识别

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This research develops a hysteresis loop analysis (HLA) based method for breast cancer diagnosis in a Digital Imaging Elasto-tomography (DIET) system. Dynamic displacements induced by mechanical actuation for 4 silicone breast phantoms (1 homogeneous healthy, 3 with 10-20mm stiffer inclusion “tumors”) are captured using the DIET system. Hysteresis loops for each measured reference point across the breast surface are reconstructed using the measured displacement and a calculated mass normalized restoring force. The distribution of the nominal elastic stiffness over the breast surface is estimated using an F -type hypothesis test and regression analysis. A higher stiffness is identified in the region of the inclusions, which is at least 2x greater than the nominal stiffness in other areas of the phantom. Thus, the method accurately detects and locates the inclusion in typical, representative silicone breast phantoms without misidentifying other regions or a healthy no-inclusion phantom. The overall results show the capability of the proposed method, based on the identification of the local nominal stiffness over the phantom surface as an efficient index, to accurately detect inclusion presence and location in a rapid, objective fashion using the non-invasive DIET approach.
机译:这项研究开发了一种基于磁滞回线分析(HLA)的数字成像弹力断层扫描(DIET)系统中的乳腺癌诊断方法。使用DIET系统捕获了由机械致动引起的4个硅胶乳腺幻像(1个均质健康,3个具有10-20mm较硬的夹杂物“肿瘤”)的动态位移。使用测得的位移和计算出的质量归一化恢复力,可以重建整个乳房表面上每个测得参考点的磁滞回线。使用F型假设检验和回归分析估算乳房表面名义弹性刚度的分布。在夹杂物的区域中识别出较高的刚度,该刚度比体模的其他区域中的标称刚度大至少2倍。因此,该方法准确地检测并定位了典型的代表性有机硅乳腺假体中的夹杂物,而没有错误地识别其他区域或健康的无夹杂物假体。总体结果表明,该方法具有以下能力:基于幻像表面上的局部名义刚度作为有效指标的识别,可以使用无创DIET方法以快速,客观的方式准确检测夹杂物的存在和位置。

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