Estimation of Blood Perfusion and Metabolic Heat Generation of Lung Tumor During Cryosurgery

H. Kassahun, Henok Tadesse Moges, Amanuel Shigut Dinsa, W. Negussie, Okebiorun Michael Oluwaseyi, M. Rushdi
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Abstract

Cryosurgery applies very cold temperature to freeze tumor cells. For accurate treatment, monitoring the temperature field during this process is a must. In this work, we estimated parameters such as metabolic heat generation and blood perfusion rate which are vital to determine the temperature field during cryosurgery. We applied the Quasi-Newton and the Gauss-Newton inverse algorithms to estimate these parameters. Temperature measurements were taken from sensor output. To estimate the parameters, the one-dimensional Pennes’ bioheat equation was utilized. The parameters were predicted using least square minimization of the difference between sensor output and estimated temperature values. Once the parameters are obtained, the temperature distribution around the lung tumor at any time can easily be determined. Random initial values were given for both algorithms. The result showed that the Gauss-Newton method has faster convergence rate as compared to the Quasi Newton method in estimating the target parameters. The output of the research will help cryosurgeons to monitor the temperature of the cryoprobe during cryosurgery procedures.
肺肿瘤冷冻手术中血液灌注及代谢热的测定
冷冻手术使用非常低的温度来冷冻肿瘤细胞。为了进行准确的处理,必须在此过程中监测温度场。在这项工作中,我们估计了代谢热产生和血液灌注率等参数,这些参数对确定冷冻手术过程中的温度场至关重要。我们应用拟牛顿和高斯-牛顿逆算法来估计这些参数。温度测量从传感器输出中获取。采用一维Pennes生物热方程进行参数估计。使用传感器输出和估计温度值之间的差的最小二乘最小化来预测参数。一旦获得这些参数,就可以很容易地确定任何时间肺肿瘤周围的温度分布。两种算法都给出了随机初始值。结果表明,高斯-牛顿法在估计目标参数方面具有比拟牛顿法更快的收敛速度。这项研究的成果将有助于冷冻外科医生在冷冻手术过程中监测冷冻探头的温度。
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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