Finite Element Analysis of Identifying Breast Cancer Tumor Grades Through Frequency Spectral Variation of High-Frequency Ultrasound

Koushik Paul , Jeremy Stromer , Samuel Razmi , Barbara A. Pockaj , Leila Ladani
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Abstract

Ultrasound analysis is an instantaneous characterization tool to evaluate microstructural inhomogeneity. In this study, computational high-frequency ultrasound analysis was conducted to characterize histological features of malignant breast tissue. A high-frequency ultrasound signal was sent through the soft tissue model in a through-transmission manner. Histological features of the soft tissue were categorized as cell shape, nuclear pleomorphism, and malignant cell density. The design of experiment was created by combining various levels of histological features of tumor tissue. Transmitted ultrasound frequency spectrums from all combinations of histological features were analyzed in terms of peak density and mean peak to valley distance (MPVD) parameters. For the circular-shaped cell model, peak density and MPVD responded with increasing and decreasing trends respectively while the malignant histological features became gradually dominant. For the elliptical-shaped cell model, only peak density was effective to establish a relationship with the histological features. It was observed that added malignant cells had more contribution to the response parameters than nuclear pleomorphism. Furthermore, the frequency spectrum patterns from all histological combinations were evaluated to find further information about malignant features.

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高频超声频谱变化识别乳腺癌肿瘤分级的有限元分析
超声分析是一种评估微观结构不均匀性的即时表征工具。在本研究中,通过计算高频超声分析来表征恶性乳腺组织的组织学特征。高频超声信号以透传方式通过软组织模型。软组织的组织学特征分为细胞形态、核多形性和恶性细胞密度。结合肿瘤组织不同层次的组织学特征进行实验设计。根据峰值密度和平均峰谷距离(MPVD)参数对所有组织学特征组合的透射超声频谱进行分析。对于圆形细胞模型,峰值密度和MPVD分别呈上升和下降趋势,恶性组织学特征逐渐占主导地位。对于椭圆型细胞模型,只有峰值密度才能有效地建立与组织学特征的关系。结果表明,与核多形性相比,添加的恶性细胞对反应参数的贡献更大。此外,对所有组织学组合的频谱模式进行评估,以找到有关恶性特征的进一步信息。
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IPEM-translation
IPEM-translation Medicine and Dentistry (General)
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