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Mathematical formulation and analysis of the nonlinear system reconstruction of the online image-guided adaptive control of hyperthermia

机译:在线图像指导的热疗自适应控制的非线性系统重构的数学公式和分析

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摘要

>Purpose: A nonlinear system reconstruction can theoretically provide timely system reconstruction when designing a real-time image-guided adaptive control for multisource heating for hyperthermia. This clinical need motivates an analysis of the essential mathematical characteristics and constraints of such an approach.>Methods: The implicit function theorem (IFT), the Karush–Kuhn–Tucker (KKT) necessary condition of optimality, and the Tikhonov–Phillips regularization (TPR) were used to analyze and determine the requirements of the optimal system reconstruction. Two mutually exclusive generic approaches were analyzed to reconstruct the physical system: The traditional full reconstruction and the recently suggested partial reconstruction. Rigorous mathematical analysis based on IFT, KKT, and TPR was provided for all four possible nonlinear reconstructions: (1) Nonlinear noiseless full reconstruction, (2) nonlinear noisy full reconstruction, (3) nonlinear noiseless partial reconstruction, and (4) nonlinear noisy partial reconstruction, when a class of nonlinear formulations of system reconstruction is employed.>Results: Effective numerical algorithms for solving each of the aforementioned four nonlinear reconstructions were introduced and formal derivations and analyses were provided. The analyses revealed the necessity of adding regularization when partial reconstruction is used. Regularization provides the theoretical support for one to uniquely reconstruct the optimal system. It also helps alleviate the negative influences of unavoidable measurement noise. Both theoretical analysis and numerical examples showed the importance of having a good initial guess for accomplishing nonlinear system reconstruction.>Conclusions: Regularization is mandatory for partial reconstruction to make it well posed. The Tikhonov–Phillips regularized Gauss–Newton algorithm has nice theoretical performance for partial reconstruction of systems with and without noise. The Levenberg–Marquardt algorithm is a more robust algorithmic option compared to the Gauss–Newton algorithm for nonlinear full reconstruction. A severe limitation of nonlinear reconstruction is the time consuming calculations required for the derivatives of temperatures to unknowns. Developing a method of model reduction or implementing a parallel algorithm can resolve this. The results provided herein are applicable to hyperthermia with blood perfusion nonlinearly depending on temperature and in the presence of thermally significant blood vessels.
机译:>目的:从理论上讲,非线性系统重构在设计用于多热疗的实时图像引导自适应控制时,可以及时提供系统重构。这种临床需求激发了对这种方法的基本数学特征和约束条件的分析。>方法:隐函数定理(IFT),Karush–Kuhn–Tucker(KKT)最优性的必要条件,以及Tikhonov–Phillips正则化(TPR)用于分析和确定最佳系统重建的要求。分析了两种互斥的通用方法来重建物理系统:传统的完全重建和最近建议的部分重建。针对所有四种可能的非线性重建提供了基于IFT,KKT和TPR的严格数学分析:(1)非线性无噪声完全重建,(2)非线性噪声完全重建,(3)非线性无噪声部分重建和(4)非线性噪声>结果:介绍了一种有效的数值算法,用于求解上述四种非线性重构,并提供了形式推导和分析。分析表明,使用部分重建时必须添加正则化。正则化为唯一重构最优系统提供了理论支持。它还有助于减轻不可避免的测量噪声的负面影响。理论分析和数值算例都表明了对完成非线性系统重构进行良好初步猜测的重要性。>结论:正则化对于部分重构以使其具备良好的状态是强制性的。 Tikhonov-Phillips正则化高斯-牛顿算法在有噪声和无噪声系统的部分重构方面具有良好的理论性能。与非线性完整重建的高斯-牛顿算法相比,Levenberg-Marquardt算法是一种更可靠的算法。非线性重建的一个严重局限性是将温度导数到未知数所需的耗时计算。开发模型简化方法或实现并行算法可以解决此问题。本文提供的结果适用于根据温度和存在热显着血管而非线性灌注血液的热疗。

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