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Robust Nonlinear Regression in Enzyme Kinetic Parameters Estimation (CROSBI ID 237809)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Maja Marasović, Maja ; Marasović, Tea ; Miloš, Mladen Robust Nonlinear Regression in Enzyme Kinetic Parameters Estimation // Journal of Chemistry (Hindawi), 2017 (2017), 1-12. doi: 10.1155/2017/6560983

Podaci o odgovornosti

Maja Marasović, Maja ; Marasović, Tea ; Miloš, Mladen

engleski

Robust Nonlinear Regression in Enzyme Kinetic Parameters Estimation

Accurate estimation of essential enzyme kinetic parameters, such as Km and Vmax, is very important in modern biology. To this date, linearization of kinetic equations is still widely established practice for determining these parameters in chemical and enzyme catalysis. Although simplicity of linear optimization is alluring, these methods have certain pitfalls due to which they more often then not result in misleading estimation of enzyme parameters. In order to obtain more accurate predictions of parameter values, the use of nonlinear least-squares fitting techniques is recommended. However, when there are outliers present in the data, these techniques become unreliable. This paper proposes the use of a robust nonlinear regression estimator based on modified Tukey’s biweight function that can provide more resilient results in the presence of outliers and/or influential observations. Real and synthetic kinetic data have been used to test our approach. Monte Carlo simulations are performed to illustrate the efficacy and the robustness of the biweight estimator in comparison with the standard linearization methods and the ordinary least- squares nonlinear regression. We then apply this method to experimental data for the tyrosinase enzyme (EC 1.14.18.1) extracted from Solanum tuberosum, Agaricus bisporus, and Pleurotus ostreatus. The results on both artificial and experimental data clearly show that the proposed robust estimator can be successfully employed to determine accurate values of Km and Vmax.

Nonlinear regression, enzyme kinetics, Michaelis-Menten equation

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Podaci o izdanju

2017

2017.

1-12

objavljeno

2090-9063

10.1155/2017/6560983

Povezanost rada

Farmacija, Kemija

Poveznice
Indeksiranost