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## Brazilian Journal of Pharmaceutical Sciences

##
*versão On-line* ISSN 2175-9790

### Braz. J. Pharm. Sci. vol.45 no.4 São Paulo out./dez. 2009

#### http://dx.doi.org/10.1590/S1984-82502009000400005

**ARTICLE**

**Estimating the turnover number in enzyme kinetic reactions using transient and stationary state data**

**Sibel Uludag-Demirer ^{I}; Jorge Duran^{II}; Robert D. Tanner^{III, *}**

^{I}Villanova University, Civil and Environmental Engineering, Villanova, USA

^{II}NCYTH/CTUA, Buenos Aires, Argentina

^{III}Vanderbilt University, Department of Chemical and Biomolecular Engineering, Nashville, USA

**ABSTRACT**

Substrate and product concentration data obtained by simulating enzyme-substrate reaction rate equations were used to test two proposed kinetic rate constant estimation techniques in this study. In the first technique, the turnover number, k_{3}, was calculated using early transient time domain data, which are difficult to obtain experimentally. The technique used an iterative approach to calculate k_{3} with a pair of data and the value of k_{3} could be retrieved with 35% error. The second technique calculated k_{3} using stationary domain data and the value of k_{3} could be retrieved with less than 5% error. This second technique also offered internal consistency in the calculation of k_{3} by calculating k_{3} both from the intercept and the slope of the linear plot derived in this study. A series of sensitivity analyses was conducted to understand the robustness of the second technique in estimating k_{3} from simulated data to the changes in the reaction rate constants (k_{1}, k_{2}, and k_{3}) and the initial concentration of enzyme used for simulation. It was found that the second technique generally worked well in the estimation of k_{3} except for the simulated data for fast substrate conversions such as in the large k_{3} and [E]_{0} cases . This latter method, thus, shows promise for the use of late time experimental substrate/product concentration data to obtain k_{3}. Exclusively using late time data avoids the need for difficult and expensive rapid early time measurement techniques for estimating k_{3}. Once a reasonable estimate for k_{3} is obtained, the initial enzyme value can easily be determined from the maximum velocity constant established from fitting the Michaelis-Menten or Briggs-Haldane equations to substrate and product stationary state domain (late time) data. While the first technique can estimate k_{3} with only one point in the transient domain, it is suggested that the second method generally be favored since it only requires late-time stationary domain data and appears to be more accurate.

**Uniterms:** Enzyme. Kinetics/rate constant. Enzyme reactions.

**RESUMO**

Dados de concentração de substrato e de produto obtidos por simulação de equações de velocidade de reação enzima-substrato foram usados neste estudo para testar duas técnicas para estimar constantes cinéticas. Na primeira técnica, a constante, k_{3}, foi calculada utilizando os dados de domínio do tempo inicial de transição, que são difíceis de serem obtidos experimentalmente. A técnica usou uma aproximação iterativa para calcular k_{3} cujo valor pôde ser estimado com erro de 33%. A segunda técnica calculou k_{3} usando dados de domínio no estado estacionário e o valor de k_{3} pôde ser estimado com erro de 5%. Esta segunda técnica também ofereceu uma consistência interna no cálculo de k_{3}, por calculá-lo tanto pela intersecção quanto pela inclinação da reta derivada deste estudo. Uma série de análises de sensibilidade foi realizada para avaliar a robustez da segunda técnica na estimativa de k_{3} utilizando dados que foram simulados quanto às mudanças nas constantes de taxa de reação (k_{1}, k_{2} e k_{3}) e na concentração inicial de enzima. Foi encontrado que a segunda técnica, em geral, proporcionou boa estimativa de k_{3}, exceto para os dados simulados para as conversões rápidas de substrato, como no caso de valores elevados de k_{3} e de [E]_{o}. Este último método, portanto, mostra ser promissor quando se usam dados experimentais tardios da concentração de substrato/produto para obter k_{3}. O uso dados de tempo tardio evita a necessidade do uso de técnicas difíceis e caras na medida de tempo iniciais para estimativa de k_{3}. Uma vez que é obtida uma estimativa razoável de k_{3,} o valor inicial da enzima pode ser facilmente determinado a partir da constante de velocidade máxima estabelecida por ajuste das equações de Michaelis-Menten ou de Briggs-Haldane e partir de dados de substrato e de produtos no estado estacionário (tempo tardio). Enquanto a primeira técnica pode estimar k_{3} com somente um ponto no regime transiente, sugere-se que o segundo método seja melhor uma vez que ele requer apenas dados do estado estacionário tardio e parece ser mais preciso.

**Unitermos:** Enzimas. Cinética/constantes. Reações enzimáticas.

**INTRODUCTION**

The reactions between an enzyme and a substrate are usually analyzed by using the substrate and product concentrations measured over time under isothermal conditions. The Michaelis-Menten or Briggs-Haldane model equations are applied to describe such time varying data for the simplest enzyme substrate interactions with the limitation that they exclude the initial (transient) time profiles. The simplest and most often used enzyme substrate model is the reaction scheme with one substrate, one intermediate, and one product with the recovery of the enzyme (Equation 1) and this model reaction is sufficient to describe the behavior of many enzyme-substrate systems (Bernhard, S.,1968).

In Equation (1), k_{1}, k_{2}, and k_{3} are the reaction rate constants. In general, the initial substrate concentration ([S]_{0}) is known while the initial (and total) enzyme concentration ([E]_{0}) in the reaction system is unknown. Therefore, [E]_{0} behaves as another parameter to be estimated from the model. Based on the reaction scheme given in Equation (1), the rate expressions of each species follow from the law of mass action:

where [S], [E], [ES], and [P] indicate the molar concentrations of the substrate, enzyme, enzyme-substrate complex and product, respectively, in the solution at any reaction time t. Initial concentrations of [ES] and [P] are zero. Typical simulations of [S] and [P] are shown in Figure 1. There are also two independent linear molar conservation equations, as follows:

Equation (6), an algebraic molar balance on the enzyme concentration in it's two forms, can be obtained by summing Equations (3) and (4) and then integrating, while Equation (7), an algebraic molar balance on the substrate and its products, follows from summing Equations (2), (4), and (5) and then integrating.

The Briggs-Haldane model equation, Equation 8, can be used to fit late time (stationary-state) experimental data ([S] and [P]) to calculate the model parameters: the Michaelis constant (K_{m}) and the maximum velocity term (V_{max}).

where K_{m} = (k_{2} + k_{3})/k_{1}; V_{max} = k_{3}[E]_{0} and ν=product formation rate or velocity

Equation (8) is developed from the stationary-state assumption of d[ES]/dt = 0, and Equation (6). The other widely used correlation equation is the Michaelis-Menten Equation, where the K_{m} term is replaced by Ke = k_{2} / k_{1} . That equation is derived by using the equilibrium between E+S and ES, neglecting the subsequent reaction to P and E, along with Equation (6). It turns out that the Briggs-Haldane equation provides a lower bound for d[P]/dt as a function of [S] and the Michaelis-Menten equation an upper bound as a function of [S] (Rutherford, B.J. *et al.*, 2007).To calculate the model parameters, a nonlinear regression analysis can be performed. Typically, a linear arrangement of reciprocal ν (product formation rate) plotted against reciprocal [S] in the form of a Lineweaver-Burk plot is generally preferred for recovering the model parameters. To calculate the initial concentration of enzyme, [E]_{0}, k_{3} should be estimated separately.

The turnover number, k_{3}, can be determined directly from Equation (5), if both [ES] and [P] are measured at specified time intervals. Usually, however, [ES] is not measured, and k_{3} must then be determined from the early time (transient) data from measurements of [S] and [P] at specific time intervals. [ES] is generally not very accurate if obtained from [S] and [P] measurements and [S]_{0} using Equation (7), since it is the small difference between large numbers with relatively large measurement error. Assuming that at very early reaction times, [P] is negligible with respect to [S]_{0}, i.e., [P] ^{®} 0, then Equation (7) reduces to:

Now, replacing [ES] in Equation (5) with (9), Equation (10) can be obtained as previously shown (Tanner *et al.*, 1977).

With the measurements of product and substrate concentrations corresponding to the transient period, it is possible to determine k_{3} for [S] __<__ [S]_{0} from the slope of the expression in Equation (10) by plotting d[P]/dt against ([S]_{0} - [S]) for a positive slope or against [S] for a negative slope, as pictured by the line (qualitatively) near the peak in Figure 2. The estimated value of k_{3} from Equation (10) increases as [S]^{®}[S]_{0}, so that the tangent at [S]_{0} gives the most accurate value for k_{3}. However, it is difficult to obtain the early time product formation rates since enzyme-substrate reactions are generally too fast, and there are typically only one or two data points taken (at best) in the transient period. Measurement errors come into play as well. Since [S]_{0} - [S] is small in early time, the variance associated with [S] dominates this difference and becomes controlling. It is noted that, without the assumption of small [P], Equation (10) would be replaced by: d[P]/dt = k_{3}([S]_{0} - [S] -[P)). This rigorous replacement equation will be invoked in the iterative method which is described in next section.

**Turnover Number Estimation Using The Maximum Product Formation Rate**

Numerically integrating the model given by Equations (2) through (5), employing k_{i} = 1 (i = 1, 2, 3), [E]_{0} = 0.1, [S]_{0}=1 in dimensionless molar units and using a linear, triangular, implicit integration scheme for a step size of 0.01 time units up to 90 time units leads to the set of simulated data presented in Figure 1 (Tanner, 1972). The simulated data, accurate to three decimal points, can be divided into two domains: ** transient** and

**(Figure 2). The transient domain extends from the initiation of the reaction (t = 0; [S]=[S]**

*stationary state*_{0}), to the moment (t=t

_{peak}) when the maximum value is registered for the product generation rate (d[P]/dt

_{peak}at [S] = S

_{peak}). The stationary state domain includes the data from t=t

_{peak}to t=∞, i.e., from d[P]/dt

_{peak}to the end of the reaction, d[P]/dt=0 as t→∞ and [S] →0 (Figure 2). Typically, there is only a single data point simulated in the transient state domain when [E]

_{0}equals 1/10 of [S]

_{0}if the point at the boundary between transient and stationary state is excluded (Tanner, 1972).

In this section, the estimation of k_{3} with only one pair of data points is illustrated using an iterative technique. Since special equipment like the stopped flow apparatus is generally required for multiple measurements of [S] and [P] in the transient state domain, it is not always possible to use Equation (10) to estimate k_{3}. In addition, it is difficult to precisely define the maximum rate of product formation d[P]/dt_{peak} with a corresponding S value of S_{peak}) to define the transient state domain precisely and then to accurately use it with the initial time point, [S]=[S]_{0} and d[P]/dt=0 to estimate k_{3}. Therefore, an iterative procedure should be developed to determine d[P]/dt_{peak} and k_{3}. A point near d[P]/dt_{peak} and S_{peak} is assumed to be the largest estimated d[P]/dt value and is used as the starting point for the iteration. The pair of d[P]/dt_{peak}(pointed out in Figure 2) and S_{peak} measurements can then be used to draw the line connecting the peak and the origin (below the slope as the transient line shown in Figure 2) and k_{3} can be calculated from the slope of the line. The first iteration in this example provided a k_{3} estimate of 0.45 in reciprocal time units compared to 1, the value originally employed in the simulated model. In an effort to improve the accuracy of this calculation, an iteration procedure is developed to sharpen the estimate of the value of the slope. Since the most accurate slope in the transient domain is the tangent at [S]=S_{0} and since this is equal to k_{3}, the negative slope has to be steeper than that of the line connecting the peak and the initial value, such as the slope of the line in the transient domain pictured in Figure 2. This slope has a value of -(k_{3})_{2} for the second iteration, in which the subscript stands for the number of iterations, as shown in Figure 2. The subscript or k_{3} refers to the second iteration. To enhance the convergence of the results, an "overshoot segment" is defined as the product of k_{3} and P_{peak} and it was added to the d[P]/dt | _{peak} previously employed to determine k_{3}. It is hypothesized that this additive term will bring the value of d[P]/dt | _{peak} closer to the desired d[P]/dt value on the initial tangent line. The theoretical development of the method and the iteration sequence now follows (in the six indicated parts):

• Initial estimate of k_{3}

Initial estimate of k_{3} starts with using Equation (10). This equation was derived by assuming that [P] in Equation (7) is small with respect to [S]_{0} - [S]. (d[P]/dt)_{0} represents a real experimental value, which is typically at the largest [S] value in the stationary state domain, and it is equal to the observed (d[P]/dt)_{peak..} It is the starting rate in the beginning iteration. The value of [S]_{peak}, which is the substrate concentration corresponding to the maximum product formation rate, will remain the same at each step of the iteration. It therefore follows that the first estimate for k_{3} is:

where the subscript 1 indicates the first iteration.

Note that the slope is negative for the tangent line in Figure 2 since the d[P]/dt value is zero at the point of initial substrate. The two [S] terms in the denominator of Equation (11) are switched from the usual order for a tangent line in order to make (k_{3}) positive in Equation (11).

• Calculation of the overshoot segment using Equations of (5) and (7):

Since: (d[P]/dt)_{1} = (k_{3})_{1}([S]_{0} - [S]_{peak}) + (k_{3})_{1}[P]_{peak}, the overshoot segment for the calculation of (d[P]/dt)_{1} is equal to (k_{3})_{1} [P]_{peak}, where [P]_{peak} is the concentration of product at the maximum product formation rate. [P]_{peak} like [S]_{peak} remains constant throughout the iteration.

• Definition of the overshoot point or (d[P]/dt)_{2} :

The first iterative equation thus becomes:

• Calculation of the next estimate of k_{3}:

(k_{3})_{2} = (d[P]/dt)_{1} / ([S]_{0} - [S]_{peak})

• Calculation of the new overshoot segment:

(overshoot segment)_{2} = (k_{3})_{2} [P]_{peak}

• Calculation of the new overshoot point:

(d[P]/dt)_{2} =(d[P]/dt)_{peak} + (k_{3})_{2} [P]_{peak}

In general, we have two iteration equations as follows:

where n is the iteration number. Here, (d[P]/dt)_{peak} was a fixed number. This iterative procedure is performed until the value of k_{3} appeared to converge. The iteration procedure was stopped when the retrieved value of k_{3} was within a difference of ± 0.01.

This procedure was applied to the simulated data (Figure 2) and the value of k_{3} appeared to converge to 0.65 after five iterations, but clearly more iterations would have been in order since the known outcome of 1 should be reached.. This procedure retrieved the value of k_{3} with a 35% error. Combining Equations (13) and (14) and generalizing for the n'th case gives: (d[P]/dt)_{n} = (d[P]/dt)_{peak} [1+x+(x)(x)+...] = /(d[P]/dt)_{peak} (1-x) for x less than 1, in this geometric progression. Here, (x= P_{peak}/([S]_{0}-[S]_{peak} ), which is less than 1, since [P]/([S]_{0}-[S] ) is less than 1 in general from (Equation (7) because [ES] is positive). Thus, (d[P]/dt)_{n} converges so that Equation (14) converges for large n . It is noted that the iterative value of k_{3} in this procedure used only a single data point. Stopping at five iterations was in keeping with another iterative procedure in the transient domain in which three to five iterations typically resulted in the desired outcome. That procedure was based on the use of orthogonal polynomials and Picard's iteration technique and used essentially the same simulated data (Tanner, R.D.,1972). Since there is only one data point in this method, another technique was explored for the estimation of k_{3} using the much more accessible stationary state domain data (See Figure 2).

**Turnover Number Estimation Using Stationary State Data**

A combination of Equations (5) and (7) can lead to an alternative expression which, when suitably arranged, can be employed to estimate k_{3} directly (without iteration) using "ordinary" [S] and [P] data in the stationary state domain, and without requiring the difficult-to-obtain transient data, although such additional data would enhance the fitting technique. Starting with Equation (5), the [ES] complex concentration can be expressed in terms of [P] and [S] employing Equation (7) to obtain:

After division of Equation (16) by [P] the following mathematical expression is obtained:

This form of the product formation rate equation is very helpful in estimating the k_{3} constant, because it bears a linear relationship between 1/[P] d{P}/dtand ([S]_{0} - [S])/[P]and k_{3} can be calculated both from the intercept and the slope of the plot. Linearity in Equation (17) may also be useful in directly testing the original premise shown in Equation (1), as stated in Equations (2)-(5). An example of such a linear plot is shown in Figure 3 for [S] and [P] simulated data from Figure (1) with 3 significant figures. Note that as t →∞, the line goes to the point (1,0 ). This is seen, in general, for the "x" coordinate going to one as [S] goes to zero and [P] goes to [S]_{0} as t →∞and for the "y" coordinate going to zero as [P] goes to [S]_{0} and d[P]/dt goes to zero as t→∞. Internal consistency of these two estimated k_{3} values serves as a check on the scatter and the time spacing of the [S] and [P] data as well as the integrity of the differenced value, Δ[P]/Δt, which is used to estimate d[P]/dt. The linear regression analysis of the plot shown in Figure 3 resulted in four place k_{3} values as 0.9883 using the slope and 0.9875 using the intercept. The goodness of fit of the method could be evaluated in two ways: (a) Accuracy, the difference with the known parameter value used to simulate the data, and (b) Consistency, the internal difference between the slope and intercept estimates of k_{3}. The first one is related to the accuracy of the method that is the average of the k_{3} values, 0.988 (in keeping with the three place simulated data), was found to be very close to 1, the value used to create [S] and [P]. The difference with the known value for this particular regression was measured considering the percent difference between the average k_{3} calculated and the known k_{3} value and estimated as 1.24%, which is close to the desired 0% for highest accuracy. The internal difference was evaluated by calculating the percent difference between the slope and the intercept values for k_{3} and estimated as 0.08%, which is negligibly small as compared to a desired 0% for desired internal consistency.

The two parameters in the Briggs-Haldane model equation, Equation (8), V_{max} and K_{m}, are generally estimated using stationary state data with the Lineweaver-Burk expression, Equation 18). This equation is the reciprocal of Equation (8) and is used to formulate a linear form to use as an alternative to the nonlinear regression of the hyperbolic Equation (8):

In estimating the K_{m} and V_{max} constants with the Lineweaver-Burk plot, linear regression analysis of the straight line was performed (Figure 4). The values of the parameters are calculated as 0.968 concentration units and 0.0588 moles per unit time for K_{m} and V_{max} respectively. Since V_{max} = k_{3} [E]_{0}, the initial concentration of the enzyme, which is typically unknown in the system, was calculated as 0.06 concentration units which is different by 40% from the product of the original parameter values used to simulate in the differential equations. The K_{m} estimate was off by 50%. These are large errors when compared to those incurred in estimating k_{3} from Equation (17).

**Sensitivity Analysis**

The enzyme-substrate single intermediate model previously introduced in Equation (1) contains four typically unknown parameters; k_{1}, k_{2}, k_{3}, and [E]_{0}, given [S]_{0}. Here, the accuracy of the parameter estimation method comparing Equation (17) to simulated data in determining k_{3} and its sensitivity to the variation of the different parameters used in simulating the data is evaluated. Also considered in this analysis is the effect of the number of significant figures employed in the linear regression procedure.

The computer software, Polymath, was employed to simulate Equations (2) through (5) in order to determine the evolution of substrate and product concentration trajectories with time by using an implicit modified Euler method. These simulated data were then used to estimate the value of k_{3} both from the slope and intercept using Equation (17). The estimated value of k_{3} for a particular fit was then calculated by averaging the k_{3} values obtained from the slope and from the intercept. Only the data corresponding to the stationary state domain, following the (d[P]/dt)_{peak} for late times, were utilized in the proposed fitting Equation (17). This limitation to only stationary state data was followed even though Equation (17) applies in general to include the early time transient as well as the stationary data, because in practice only stationary data are readily available.

The goodness of fit of the method was evaluated in terms of accuracy and consistency. The absolute difference with the known value, k_{3}, for a particular regression was determined to develop the accuracy using the percent difference between the average k_{3} calculated and the known k_{3}. The internal difference was evaluated by calculating the percent difference between the slope and the intercept values for k_{3}, to determine the consistency of the method.

**Effect of k _{1} variation on the estimate for k_{3}**

Values of 0.01, 0.1, 1, and 10 for k_{1}, which were used to simulate three place data for the estimation process, were selected in this part of the study to estimate the effect of k_{1} variation on k_{3} estimation. The remaining parameters, k_{2}, k_{3}, [E]_{0}, and [S]_{0} were kept equal to 1, while the initial product concentration [P]_{0} was kept at zero throughout these case studies. Note that [E]_{0} is now 1 rather than 0.1 as in Figure 1.

When k_{1} was larger than 1, the percent absolute difference of the k_{3} value determined with the linear regression (Equation 17) with respect to the known value was generally unacceptable (above 10% error). However, for k_{1} equal to 0.1 or less, that difference decreased to levels less than 10% (Figure 5). Equation (7) itself is useful in helping us understand why the absolute value of the estimated k_{3} increases as the value of k_{1} increases. Equation (7), when divided through by [P] yields Equation (19):

It can be seen, at least for late time data using Equation (8), that as K_{m} = (k_{2} + k_{3})/k_{1} increases goes towards zero and (dP/dt) increases. This means that the rate at which (P) is formed increases, up to (P) =1 at t=∞. This is when [P] goes to [S]_{0}=1, when (ES) and (S) go to zero referring to Equation (7). As t approaches∞, the term (dP/dt) in Equation (17) eventually tends towards zero since d[P]/dt = k_{3} [ES] and [ES] goes towards zero while [P] goes to [S]_{0 .} Thus, the term ([S]_{0} - [S])/[P] drives to 1. This is also observed in Figure 3. and can serve as in internal check step for fitting Equation (17) as seen in Figure (3).

Since higher k_{1} values correspond to higher rates of substrate consumption, the number of spread out data points available for a reasonable least squares fit of the data decreases (in both the substrate and product domains) affecting the accuracy of the linear regression. For very large k_{1} , for example, the points tend to collapse to one point (zero for [S] and one for [P] ). With fewer data points in hand, it can be seen that it would be more and more difficult to obtain both accurate slope and intercept values from Figure 3, since the early time high [S] and low [P] values tend to define the entire fitting domain. Interestingly, the internal consistency between the k_{3} estimated from the slope and the k_{3} from the intercept becomes more acceptable as k_{1} approaches 10 (Figure 6).

**Effect of k _{2} variation on the estimate for k_{3}**

Four simulations were performed with k_{2} values at 0.01, 0.1, 1 and 10 while k_{1}, k_{3}, [E]_{0}, and [S]_{0} were kept equal to 1, keeping [P]_{0} at zero. The percent absolute differences of the estimated k_{3} values with the known value, 1, were very high for the k_{2} range tested in the study (Figure 5). The simulation performed with the lowest k_{2} value (0.01) yielded only two data points to estimate k_{3} using Equation (17) due to the fast conversion of substrate to product in the early transient domain with this small back reaction term. Moreover, there was very poor internal consistency in the calculation of k_{3} from the slope and the intercept of Equation (17). Therefore, the percent absolute difference is not shown for this case in Figure 6. Interestingly as the reverse reaction became more important (larger k_{2}), there was a decrease in the absolute difference of k_{3} from the known value as the value of k_{2} increased, from 0.1 to 10 (Figure 5). This decrease was due to the increase in the number of data points spread over the entire stationary state domain. At the same time, the internal difference values of k_{3} obtained from the slope and the intercept of the Equation (17) became insignificant as shown in Figure 6.

**Effect of k _{3} variation in the equations used to simulate the data on the estimate for k_{3} from those data**

Again, four different values in the range of 0.01-10 for the turnover number, k_{3}, were selected to test the effect of the magnitude of k_{3} on the performance of the method in predicting the known value. The remaining parameters, k_{1}, k_{2}, [E]_{0}, and [S]_{0} were kept equal to 1, while [P]_{0} was made equal to zero. The absolute value of the difference between the k_{3} determined with Equation (17) and the known value remained below 0.5 % for k_{3} values equal or lower than 0.1, indicating good accuracy of the method in that range. However, the difference with the known value increased for higher k_{3} values, reaching, for instance, 80 % for k_{3} equal to 1 (Figure 5), showing that the method becomes significantly less accurate at high k_{3} values. An explanation for this breakdown in the estimations is that there is the lack of data in the stationary state domain for these cases with high k_{3} values and this leads to large fitting errors. This lack of data points is the direct result of having the conversion rate of the substrate become so fast that the product concentration reaches 1 concentration unit rapidly in the early transient domain with the reaction essentially reaching completion. Thus there are few remaining data points left for fitting in the stationary state domain for fitting when these early time points are not measurable in practice.

It is observed that the internal difference is negligible in the estimations of higher k_{3} values (Figure 6). The internal difference is calculated as 27% for the case where the k_{3} value is 0.01. This is the lowest value tested in the study, indicating that at low k_{3} values (i.e. 0.01) the consistency of the method tends to break down leading to a high variance in the estimated value for k_{3}.

**Effect of [E] _{0} variation on the estimate for k_{3}**

The initial concentration of enzyme ([E]_{0}) was varied in four simulation runs, adopting values of 0.01, 0.1, 1, and 10 concentration units. The remaining parameters, k_{1}, k_{2}, k_{3}, and [S]_{0} were kept equal to 1, while [P]_{0} was kept equal to zero. When [E]_{0} had values equal to or smaller than 1, the percent difference of the k_{3} value estimated with Equation (17) and the known value remained within 10% (Figure 5). At a high [E]_{0} concentration (10 concentration units), that difference started to increase, reaching 191%. It seems that at very high initial enzyme concentrations the accuracy of the method deteriorates due to the very fast consumption of the substrate available in the system and lack of fittable data in the stationary-state (late time) domain. The resulting fitting is like putting a line through one point. The high internal consistency of the method was found to be almost independent of the initial enzyme concentration (Figure 6).

**Influence of the number of significant figures employed**

Analytical results are often expressed with two significant figures rather than with the three significant figure data employed in the above sensitivity analyses. In order to observe the variation introduced in the previous [E]_{0} sensitivity analysis employing more "standard quality" data, the values originally employed were rounded to two significant figures. As expected, the trends observed in absolute values were similar, but their magnitudes increased for each case. An absolute difference of 12.2% with the known value of k_{3} was observed with the two significant figure substrate and product concentration data compared to the absolute difference of 11.6% with the known value of k_{3} substrate and product concentration data with five significant figures.

**CONCLUSIONS**

Two kinetic rate estimation techniques were studied using simulated data of substrate and product concentrations. The data were obtained by integrating the standard enzyme-substrate nonlinear differential equations (Equations 2-5) with the rate constants (k_{1}, k_{2}, k_{3}) equal to 1 and [S]_{0}=1 = [E]_{0} . The turnover number, k_{3}, was calculated in the first method using early transient domain data with an iterative method. k_{3} was found to equal 0.65 in this method after five iterations. This value lies within the bound of 0.4£k_{3}£2.1 estimated in an earlier study using the same data and a simple polynomial fitting technique (Tanner, 1972). A second method for the estimation of k_{3} was developed using stationary-state (late time) data only. The sensitivity of this method to changes in the reaction rate constants, including the turnover number, and the initial enzyme concentration was tested. It was clear that the method broke down in those cases of high rates of substrate consumption corresponding to very high enzymatic levels, a relatively unusual situation in traditional enzyme kinetic experiments. When all of the substrate is converted to product ([P]_{max} = 1, [S]_{0}=1 ) in the transient domain, there are no or limited data in the subsequent in time stationary domain to be used in the linear regression calculations. However, the method yielded very good estimates of k_{3} in these cases containing sufficient data in the stationary phase. By its generally good accuracy for all but the highest k_{3} and very high enzyme level cases the applicability of this method now provides a good reason for measuring both substrate and product concentration data in experimental enzyme kinetic systems in order to estimate k_{3}, the turnover number, directly. Once k_{3} is established, the total enzyme concentration is readily calculated from the V_{max} term of the Briggs-Haldane or the Michaelis-Menten equation.

Estimating k_{3} from late-time data in this new method, described by Equation (17), obviates the need for difficult-to-obtain initial rate data. The required late-time data or substrate and product concentrations needs to be of such quality as to provide reasonably accurate product rates, d[P]/dt, and normalized product rates, (1/[P])d[P]/dt, as well as the substrate difference, [S]_{0} - [S] and its division by [P]. This new method for estimating k_{3} not only provides a relatively simple and easy way to estimate [E]_{0}, but when k_{1} and k_{2} are estimated by other techniques, it offers the parameters to directly validate the original differential equations, Equations (2) and (5), against experimental data.

**ACKNOWLEDGEMENT**

We thank one of the reviewers of this paper for the comment:

"Most biochemists employ the method of initial rates to obtain steady-state data for parameter estimation (Briggs-Haldane equation). Complete progress curves are valuable for biochemists to generate, in addition to initial rate data, because comparison of the fitted parameters can reveal anomalies for further study."

**REFERENCES**

BERNHARD, S. *The structure and function of enzymes*. New York: W.A. Benjamin, 1968. p.73. [ Links ]

RUTHERFORD, B. J.; HAHS, D.; TANNER, R.D. Quantifying the position of the stationary state trajectory between the Michaelis-Menten and Briggs-Haldane equations as a function of the initial enzyme concentration. *Chem. Eng. Comm.*, v.194, n.7, p.867-888, 2007. [ Links ]

TANNER, R.D. Estimating kinetic rate constants using orthogonal polynomials and Picard's iteration method. *Ind. Eng. Chem. Fundamentals*, v.11, n.1, p.1-8, 1972. [ Links ]

TANNER, R. D.; LOO, A. C.; SHISLER, J. L.; REED, M. W.; ROWLETT, R. D.; MORRIS, J. W.; SCHLOSSNAGLE, G. W.; OVERLEY, J. R. Mapping the lag phase and bounding the growth phase in fermentation reactions. *AIChE Symp. Ser.*, v.78, n.167, p.55-65, 1977. [ Links ]

Received for publication on 12^{th} June 2009.

Accepted for publication on 27^{th} September 2009.

* **Correspondence:** R. D. Tanner. Chemical and Biomolecular Engineering Department, Vanderbilt University, Nashville, TN 37235, USA. e-mail: Robert.d.tanner@vanderbilt.edu.