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首页> 外文期刊>Nuclear Medicine Communications >Kinetic parameter estimation from compartment models using a genetic algorithm.
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Kinetic parameter estimation from compartment models using a genetic algorithm.

机译:使用遗传算法根据隔室模型估算动力学参数。

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Kinetic parameters were estimated from a three-compartment fluorodeoxyglucose model with three rate constants using a genetic algorithm. The performance of the genetic algorithm was investigated by simulation studies, in which brain time-activity data (TAD) were generated using cited mean values of rate constants and the plasma TAD obtained from positron emission tomographic studies. The accuracy of kinetic parameter estimation using the genetic algorithm was compared with that using the non-linear least-squares (NLSQ) method. The margin of error in the parameters estimated using the genetic algorithm tended to be smaller than that obtained by the NLSQ method. Although not statistically significant at a noise level of 5% in the brain TAD, the difference between the two methods became significant for all parameters at a noise level of 15% or higher. Our results suggest that the genetic algorithm is a promising means of estimating kinetic parameters from compartment models, because it is more robust against statistical noise than the NLSQ method and it can be rendered highly parallel for processing.
机译:使用遗传算法从具有三个速率常数的三室氟脱氧葡萄糖模型估计动力学参数。通过仿真研究对遗传算法的性能进行了研究,其中使用引用的速率常数平均值和从正电子发射断层扫描研究获得的血浆TAD生成了大脑时间活动数据(TAD)。比较了使用遗传算法与使用非线性最小二乘(NLSQ)方法进行动力学参数估计的准确性。使用遗传算法估计的参数中的误差幅度往往小于通过NLSQ方法获得的误差幅度。尽管在大脑TAD中5%的噪声水平下统计上没有显着性,但对于15%或更高的噪声水平下的所有参数,两种方法之间的差异变得显着。我们的结果表明,遗传算法是一种从隔室模型估算动力学参数的有前途的方法,因为它比NLSQ方法更能抵抗统计噪声,并且可以高度并行地进行处理。

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