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Benefits of a new Metropolis-Hasting based algorithm, in eon-linear regression for estimation of ex vivo antimalarial sensitivity in patients infected with two strains

机译:一种新的基于Metropolis-Hasting的算法的优点,用于进行线性回归的线性回归,用于评估感染两种菌株的患者的离体抗疟药敏感性

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Malaria is one of the world's most widespread parasitic diseases. The parasitic protozoans of the genus Plasmodium have developed resistance to several antimalarial drugs. Some patients are therefore infected by two or more strains with different levels of antimalarial drug sensitivity. We previously developed a model to estimate the drug concentration (/C50) that inhibits 50% of the growth of the parasite isolated from a patient infected with one strain. We propose here a new Two-Slopes model for patients infected by two strains. This model involves four parameters: the proportion of each strain and their IC50, and the sigmoidicity parameter. To estimate the parameters of this model, we have developed a new algorithm called PGBO (Population Genetics-Based Optimizer). It is based on the Metropolis-Hasting algorithm and is implemented in the statistical software R. We performed a simulation study and defined three evaluation criteria to evaluate its properties and compare it with three other algorithms (Gauss-Newton, Levenberg-Marquardt, and a simulated annealing). We also evaluated it using in vitro data and three ex vivo datasets from the French Malaria Reference Center.Our evaluation criteria in the simulation show that PGBO gives good estimates of the parameters even if the concentration design is poor. Moreover, our algorithm is less sensitive than Gauss-Newton algorithms to initial values. Although parameter estimation is good, interpretation of the results can be difficult if the proportion of the second strain is close to 0 or 1. For these reasons, this approach cannot yet be implemented routinely.
机译:疟疾是世界上最广泛的寄生虫病之一。疟原虫属的寄生原生动物对几种抗疟药产生了抗药性。因此,一些患者被两种或更多种具有不同水平的抗疟药敏感性的菌株感染。我们之前开发了一个模型来估算可抑制从感染一种菌株的患者中分离出的寄生虫50%生长的药物浓度(/ C50)。我们在这里为感染两种菌株的患者提出一种新的“两斜率”模型。该模型涉及四个参数:每种菌株的比例及其IC50,以及Sigmoidiity参数。为了估计该模型的参数,我们开发了一种称为PGBO(基于人口遗传学的优化器)的新算法。它基于Metropolis-Hasting算法并在统计软件R中实现。我们进行了仿真研究,定义了三个评估标准以评估其属性,并将其与其他三个算法(Gauss-Newton,Levenberg-Marquardt和模拟退火)。我们还使用了来自法国疟疾参考中心的体外数据和三个离体数据集对其进行了评估。模拟中的评估标准表明,即使浓度设计不佳,PGBO仍可以很好地评估参数。而且,我们的算法对初始值的敏感性不及高斯-牛顿算法。尽管参数估计很好,但是如果第二个应变的比例接近于0或1,则结果的解释可能会很困难。由于这些原因,该方法尚不能常规实现。

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