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Neural network methodology for real-time modelling of bio-heat transfer during thermo-therapeutic applications

机译:神经网络方法可在热疗应用中对生物热传递进行实时建模

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摘要

Real-time simulation of bio-heat transfer can improve surgical feedback in thermo-therapeutic treatment, leading to technical innovations to surgical process and improvements to patient outcomes; however, it is challenging to achieve real-time computational performance by conventional methods. This paper presents a cellular neural network (CNN) methodology for fast and real-time modelling of bio-heat transfer with medical applications in thermo-therapeutic treatment. It formulates nonlinear dynamics of the bio-heat transfer process and spatially discretised bio-heat transfer equation as the nonlinear neural dynamics and local neural connectivity of CNN, respectively. The proposed CNN methodology considers three-dimensional (3-D) volumetric bio-heat transfer behaviour in tissue and applies the concept of control volumes for discretisation of the Pennes bio-heat transfer equation on 3-D irregular grids, leading to novel neural network models embedded with bio-heat transfer mechanism for computation of tissue temperature and associated thermal dose. Simulations and comparative analyses demonstrate that the proposed CNN models can achieve good agreement with the commercial finite element analysis package, ABAQUS/CAE, in numerical accuracy and reduce computation time by 304 and 772.86 times compared to those of with and without ABAQUS parallel execution, far exceeding the computational performance of the commercial finite element codes. The medical application is demonstrated using a high-intensity focused ultrasound (HIFU)-based thermal ablation of hepatic cancer for prediction of tissue temperature and estimation of thermal dose.
机译:生物传热的实时模拟可以改善热疗法中的手术反馈,从而导致手术过程的技术创新和患者预后的改善;然而,通过常规方法实现实时计算性能具有挑战性。本文提出了一种用于神经热传递的快速,实时建模的细胞神经网络(CNN)方法,并将其应用于热疗治疗中的医学应用。它将生物传热过程的非线性动力学和空间离散的生物传热方程分别表示为CNN的非线性神经动力学和局部神经连通性。拟议的CNN方法考虑了组织中的三维(3-D)体积生物传热行为,并应用控制体积的概念离散化了3-D不规则网格上的Pennes生物传热方程,从而产生了新颖的神经网络嵌入生物热传递机制的模型,用于计算组织温度和相关的热剂量。仿真和比较分析表明,所提出的CNN模型与商业有限元分析软件包ABAQUS / CAE在数值精度上可以达到良好的一致性,与有和没有ABAQUS并行执行的情况相比,计算时间分别减少了304和772.86倍。超过了商业有限元代码的计算性能。使用基于高强度聚焦超声(HIFU)的肝癌热消融用于组织温度预测和热剂量估计,证明了医疗应用。

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