用人工神经网络估计前列腺肿瘤的线性和非线性弹性参数:肿瘤的线性和非线性弹性参数的估计

Pooya Tahmasebi, M. M. Dastjerdi, A. Fallah, S. Rashidi
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摘要

由于其重要的临床应用,近十年来,软组织的建模和力学性能的研究如弹性和超弹性得到了高度重视。由于正常组织和癌组织的力学特性存在差异,对软组织力学行为进行精确建模,并根据其对应用刺激的反应来区分组织类型,将有助于癌组织的诊断。本研究旨在非侵入性地识别前列腺组织及其癌块的机械行为。为此,利用基于位移数据的有效神经网络方法,对癌组织的力学参数进行了准确估计。开发和训练神经网络模型需要与各种组织相关的位移数据和相应的力学性能。利用Abaqus软件进行有限元建模,模拟前列腺组织行为,提取训练神经网络所需数据。在软组织建模中应考虑组织的非线性行为。Ogden和Yeoh模型在表征软组织超弹性行为方面较为准确,本研究利用Ogden和Yeoh模型制备了含肿瘤前列腺组织有限元模型。此外,在从模型中提取组织数据时,在模拟实验室条件的有限元模型得到的位移数据中加入白噪声,以获得鲁棒的神经网络模型。结果表明,所训练的神经网络模型在基于位移数据估计前列腺癌组织力学参数方面具有较高的准确性和效率,为前列腺癌组织的准确诊断提供了一个有希望的结果。
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Estimation of Linear and Nonlinear Elastic Parameters of Prostate Tumors Using Artificial Neural Networks : Estimation of Linear and Nonlinear Elastic Parameters of Tumors
Due to momentous clinical applications, modeling soft tissues and studying their mechanical properties such as elasticity and hyperelasticity were highly highlighted during the last decade. Because of differences between the mechanical properties of normal and cancerous tissues, precise modeling of mechanical behavior of soft tissues and distinguishing the types of tissues based on their responses to applied stimulations would facilitate the diagnosis of cancerous tissues. The present study sought to noninvasively recognize the mechanical behavior of prostate tissue and its cancerous masses. In this regard, the mechanical parameters of cancerous tissues were accurately estimated using the potent neural network method based on the displacement data. The displacement data related to various tissues and corresponding mechanical properties are required for developing and training neural network models. The finite element modeling using Abaqus software was implemented to simulate prostate tissue behavior and extract the required data for training neural networks. The nonlinear tissue behavior should be considered in soft tissue modeling. For representing the hyperelastic behavior of soft tissues, Ogden and Yeoh models are accurate, which were utilized in the study to prepare the finite element model of prostate tissue containing tumor. In addition, white noise was added into the displacement data obtained by the finite element model for simulating laboratory conditions during extracting tissue data from the model in order to achieve robust neural network models. The results indicate high accuracy and efficiency of the trained neural network models in estimating the mechanical parameters of cancerous prostate tissues based on the displacement data, which is promising outcome for the exact diagnosis of cancerous tissues.
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