Abstract
Michaelis-Menten kinetics is an essential model to rationalize enzyme reactions. The quantification of Michaelis-Menten parameters can be very challenging as it is sensitive to even small experimental errors. We here present a quantification of the uncertainty inherent to the experimental determination of kinetic rate parameters for enzymatic reactions. We study the influence of several sources of uncertainty and bias, including the inner filter effect, pipetting errors, number of points in the Michaelis-Menten curve, and flat-field correction. Using Monte Carlo simulations and analyses of experimental data, we compute typical uncertainties of k_cat, K_M, and catalytic efficiency k_cat/K_M. As a salient example, we analyze the extraction of such parameters for CRISPR-Cas systems. CRISPR diagnostics have recently attracted much interest and yet reports of these enzymatic kinetic rates have been highly unreliable and inconsistent.
Supplementary materials
Title
Supporting Information for Uncertainty Quantification of Michaelis-Menten Kinetic Rates and Its Application to the Analysis of CRISPR-Based Diagnostics
Description
This document contains the following additional figures and other supplementary information:
• [S1] Michaelis-Menten model and derivation of the Schnell-Mendoza solution,
• [S2] Influence of the dynamic range of the reporters,
• [S3] Benchmark of the pipetting model,
• [S4] Influence of the number of replicates,
• [S5] Experimental signal from the thermal cycler,
• [S6] Fitting routine, and
• [S7] Cis-cleavage in CRISPR-based diagnostics.
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