Sensitivity and identifiability analysis of a third-order tumor growth model

M. Siket, G. Eigner, L. Kovács
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引用次数: 8

Abstract

The growing cancer cases attract more and more scientific research and introductions of new models, applied control algorithms and methods. The models are fundamental in the area of computer generated low-dose metronomic (LDM) chemotherapy, when the administration of the drug is ought to be optimized. Generally the in-silico tests and investigations are based on a model, which is hypothesized to describe the given process reliably and accurately. The analysis of the models and its parameters is crucial for therapy generation. We performed an analysis of a third-order tumor growth model based on sensitivity analysis and identifiability tests. The results show that a subset of parameters can be fixed as population values and the rest of the parameter sets results in an identifiable system with minor loss of accuracy.
一种三级肿瘤生长模型的敏感性和可识别性分析
越来越多的癌症病例吸引了越来越多的科学研究和新的模型、应用控制算法和方法的引入。这些模型是计算机生成的低剂量节律化疗(LDM)领域的基础,当药物给药应该优化时。一般来说,计算机测试和研究都是基于一个模型,该模型被假设为可靠而准确地描述给定过程。模型及其参数的分析对治疗的产生至关重要。我们基于敏感性分析和可识别性测试对三级肿瘤生长模型进行了分析。结果表明,可以将参数子集固定为总体值,其余参数集可以在精度损失较小的情况下产生可识别系统。
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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