A Logistic Regression Analysis for Tissue Stiffness Categorization Through Magnetic Resonance Elastography

M. Ramzanpour, Mohammad Hosseini-Farid, Jayse McLean, M. Ziejewski, G. Karami
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Abstract

Magnetic resonance elastography (MRE) is commonly used as an image-based alternative for palpation of the internal organs of human body. The presence of tumor or other kind of pathologies in biological tissues can increase its stiffness. Therefore, while MRE technique is capable to provide a quantitative measurement, the qualitative description of the tissue stiffness could be potentially informative as well for physicians. MRE can be divided into several steps including the generation of waves in the tissue, measuring the field displacement of the tissue by magnetic resonance imaging devices, and then applying the constitutive based inversion algorithms to measure the material properties of the tissue. The inversion algorithms are dependent to the constitutive model in use, and moreover, it could be computationally expensive. To overcome this hindrance, in this paper, we propose a machine learning framework for categorizing the tissue stiffness based on the magnetic resonance elastography finite element simulation data. In our finite element simulation, the shear waves are generated in an axisymmetrical model by applying harmonic displacement at the center of the model with the known excitation frequency. To obtain the field displacement of the model, in the first step, the natural frequencies of the system will be calculated through numerical Block-Lanczos eigensolver algorithm. Thereafter, a transient dynamic modal analysis is carried out to find the corresponding displacement response of the tissue in different time steps of the simulation. To obtain the training dataset, ten simulations with the pre-assigned linear elastic modulus in the range of 2 to 6 kPa is conducted and the displacement of the tissue in three points at the end of the first and second cycle will be recorded as the features of the dataset. Each instance of the dataset is labelled as “Low“ or “High”, corresponding to its stiffness quantitative value lying in ranges of 2–4 kPa or 4–6 kPa. A machine learning classifying algorithm, a logistic regression hypothesis will be trained on this dataset. The trained hypothesis will be then tested on six new unseen simulation data with known elastic modulus values. The trained logistic regression was able to classify the tissue stiffness with the perfect accuracy score of 1.0. The findings of this study can be used for qualitative description of the tissue stiffness that can be beneficial for pathology diagnosis and moreover, it eliminates the need on the usage of inversion algorithms which leads to reduction in the computational complexity of tissue characterization.
磁共振弹性成像对组织刚度分类的逻辑回归分析
磁共振弹性成像(MRE)是一种常用的基于图像的人体内部器官触诊方法。生物组织中肿瘤或其他病变的存在可增加其硬度。因此,虽然MRE技术能够提供定量测量,但组织刚度的定性描述也可能为医生提供潜在的信息。MRE可以分为几个步骤,包括在组织中产生波,通过磁共振成像设备测量组织的场位移,然后应用基于本构的反演算法测量组织的材料特性。反演算法依赖于所使用的本构模型,而且计算量大。为了克服这一障碍,在本文中,我们提出了一个基于磁共振弹性有限元模拟数据的组织刚度分类机器学习框架。在有限元模拟中,在已知激励频率下,在模型中心施加谐波位移,产生轴对称模型中的剪切波。为了得到模型的场位移,第一步通过数值Block-Lanczos特征求解算法计算系统的固有频率。然后,进行瞬态动力模态分析,找出组织在仿真不同时间步长的位移响应。为了得到训练数据集,在预先设定的线弹性模量2 ~ 6 kPa范围内进行10次模拟,将组织在第一次和第二次循环结束时的三个点的位移记录为数据集的特征。数据集的每个实例被标记为“Low”或“High”,对应于其刚度定量值在2-4 kPa或4-6 kPa范围内。一个机器学习分类算法,一个逻辑回归假设将在这个数据集上训练。然后,训练好的假设将在六个新的未知的具有已知弹性模量值的模拟数据上进行测试。训练后的logistic回归能够对组织刚度进行分类,其完美准确率评分为1.0。本研究结果可用于组织刚度的定性描述,有利于病理诊断,此外,它消除了使用反演算法的需要,从而降低了组织表征的计算复杂性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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