Next Article in Journal
Feline Calicivirus Infection: Current Understanding and Implications for Control Strategies
Previous Article in Journal
People and Pets: Good for Each Other?
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Reassessment Individual Growth Analysis of the Gulf Corvina, Cynoscion othonopterus (Teleostei: Sciaenidae), Using Observed Residual Error

by
Eugenio Alberto Aragón-Noriega
1,*,
José Adán Félix-Ortiz
2,
Jaime Edzael Mendivil-Mendoza
3,
Gilberto Genaro Ortega-Lizárraga
4 and
Marcelo Vidal Curiel-Bernal
5,*
1
Unidad Guaymas del Centro de Investigaciones Biológicas del Noroeste, Km 2.35 Camino al Tular, Estero de Bacochibampo, Guaymas 85454, Sonora, Mexico
2
Facultad de Ciencias del Mar, Universidad Autónoma de Sinaloa, Paseo Claussen S/N, Mazatlán 82000, Sinaloa, Mexico
3
Departamento de Ingenierías, Tecnológico Nacional de México, Campus Valle del Yaqui, Bácum 85276, Sonora, Mexico
4
Instituto Mexicano de Investigación en Pesca y Acuacultura Sustentables, Centro Regional de Investigación Acuícola y Pesquera, Calzada Sábalo-Cerritos s/n, col. Estero El Yugo, Mazatlán 82000, Sinaloa, Mexico
5
Instituto Mexicano de Investigación en Pesca y Acuacultura Sustentables, Centro Regional de Investigación Acuícola y Pesquera-Guaymas, Calle 20 No. 605-Sur, Guaymas 85400, Sonora, Mexico
*
Authors to whom correspondence should be addressed.
Animals 2025, 15(14), 2008; https://doi.org/10.3390/ani15142008
Submission received: 26 May 2025 / Revised: 4 July 2025 / Accepted: 5 July 2025 / Published: 8 July 2025

Simple Summary

The Gulf corvina (Cynoscion othonopterus) is a fish belonging to the Sciaenidae family endemic to the Gulf of California, commonly known as croaker. This species is migratory, annually moving to the Upper Gulf of California and the Colorado River Delta biosphere reserve between February and May to reproduce. It is highly valued in fisheries due to its catch volume and its availability during Lent, a period when Mexicans traditionally consume more fish in place of red meat, following Catholic customs. Therefore, responsible management is essential to ensure sustainable exploitation. Effective management requires an understanding of the species growth patterns, which has led to the development of various mathematical models and analytical approaches. In this study, we use a criterion that is gaining prominence for estimating parameters within mathematical growth equations: observed variance. This criterion is compared to those traditionally used in previous studies aimed at assessing the growth of fish in fisheries and aquaculture.

Abstract

Growth is the most influential aspect in demographic species analysis. Collecting data on ages and sizes (such as length and weight) is a fundamental step in growth modeling, particularly in fishery science. Residual analysis plays a crucial role in parameterizing the mathematical models chosen to describe the growth patterns of the species under investigation. Using optimal residual criteria is essential to improving model performance and accuracy. In the present study, the length-at-age data of the Gulf corvina (Cynoscion othonopterus) were evaluated with the Schnute model to obtain the best error type and to establish the most accurate growth pattern. Later, the observed, constant, depensatory, and compensatory variance approaches were tested using the logistic model. The Bayesian information criterion (BIC) was used as the goodness-of-fit test to obtain the best variance approach parametrizing the growth model. The BIC values selected the observed variance as the best approach to parametrize the logistic growth model. The conclusion is that the observed variance approach produces robust results—that is, the observed variance produced the most plausible fits. It is suggested that the observed error structure should be used to estimate individual growth.

Graphical Abstract

1. Introduction

The Gulf corvina (Cynoscion othonopterus) is endemic to the Gulf of California and forms spawning aggregations in the Upper Gulf, where water depths are no more than 30 m. This species is commercially harvested within the biosphere reserve, with annual landings exceeding 4000 tons caught by approximately 700 small-scale boats from February to April. Since 2012, the species has been managed through a total allowable annual catch scheme [1]. The Gulf corvina is estimated to reach maturity at two years [2] and is considered relatively fast-growing. Its great value in economic terms comes from the fact that this fish is commercialized for its flesh, swim bladder, and gonads separately. In open access (de facto or de jure) regimes such as that for the Gulf corvina, which forms spawning aggregations, the economic value of the fish can encourage fishing efforts that lead to stock depletion, until the stock reaches risky levels. In such cases, bioeconomic models can provide useful information for management [3]. These models are based on individual growth analysis, and historically, the most commonly used model is the von Bertalanffy growth model (VBGM). Beverton and Holt [4] were the first to use it for fish stock evaluation. Bioeconomic models play a crucial role in fishery management by integrating ecological dynamics and economic considerations. These models not only help in determining optimal harvest levels but also aid in assessing the risks associated with stock depletion. Bioeconomic models account for stock depletion risks by modeling the interplay between fish population dynamics and fishing efforts. For instance, the Gordon–Schaefer model integrates biological growth rates, carrying capacity, and fishing effort to determine the maximum sustainable yield (MSY).

1.1. Growth Models

Besides the VBGM, other models such as the Gompertz and logistic growth models have also been used. Since Katsanevakis [5] published his study on the multi-model approach, most related papers have focused on models rather than growth pattern (e.g., the VBGM projects an inverted exponential curve, while the Gompertz and logistic models project a sigmoidal curve). The growth pattern depends not only on the species but also on the stage of the species (larval, juvenile, or adult), meaning that the anticipated growth pattern might be asymptotic (inverted exponential or sigmoidal) or non-asymptotic (linear, exponential, or power). This distinction is important in modeling and understanding long-term behavior. Asymptotic growth is that which approaches a limiting value (a horizontal asymptote) but never quite reaches it, while non-asymptotic growth does not approach a fixed upper bound. It might be linear, exponential, or of other types. The Schnute model is a very versatile model that may project all of these types of curves under special circumstances [6]. This model is a general four-parameter growth model that can take several mathematical forms depending on the values of its coefficients. It is most important to determine the curve that fits the set of parameters obtained for the species under study. The Schnute model has many special cases depending on the values of the parameters a and b. It can replicate the VBGM, Gompertz, and logistic models, among others. The advantage of using the Schnute model is that there are no differences in parameter meanings. In other words, there may be different reasonable biological interpretations for each parameter, but as the Schnute equations project the same curves for the sub-models, the meaning of the parameters remains unaltered.
The logistic and Schnute models are autonomous, but using appropriate values for parameters a and b in the latter can provide a sigmoid asymptotic curve similar to the logistic model.

1.2. Analytical Approaches

Growth models, like any other mathematical model, consist of variables and parameters that must be estimated. Parameter estimation also involves several analytical approaches, one of which is the use of objective functions to estimate nonlinear models. Objective functions are constructed using the error structure, and this, in turn, also has several considerations. Additive or multiplicative errors are considered, while objective functions with depensatory [7] and compensatory [8] variances have also been tested. This study presents a new approach to estimate parameters of individual growth models based on error structure as previously proposed [9]. It seems obvious that the observed error structure (sample variance) is suitable for parameter estimation in growth modeling; however, it is not used, and instead, the established paradigm is the use of additive or multiplicative error. Based on the above, one can set up an objective function based on different criteria of the standard deviation structure as follows: constant variance, increasing variance (also called a depensatory effect) [7,10], decreasing variance (also called a compensatory effect) [8], and the observed variance, which does not assume a predefined variance structure, instead utilizing the sample-derived variance estimated from the data.

1.3. Research Objective

The focus on variability at age has become a core strategy in growth analysis. The main purpose of this study was to estimate the individual growth of the Gulf corvina (C. othonopterus), comparing the previously used hypothesis of variability at age, assumed as constant, depensatory, and compensatory, with the observed variance to parametrize the growth model in Gulf corvina from the Upper Gulf of California. The hypothesis of the study is that using the observed error structure will improve the robustness of individual growth parameter estimates.

2. Materials and Methods

2.1. Data Source

Data were obtained from the SNIB-CONABIO database maintained by CONABIO (Mexico City, Mexico) (http://www.conabio.gob.mx/institucion/cgi-bin/datos.cgi?Letras=L&Numero=298, accessed on 28 February 2025). Detailed information is presented in the above link for those interested in the number of fish sampled by sex, the number of fish sampled, and any additional details. The data represent the length at age of Gulf corvina from the spawning aggregation area in the Upper Gulf of California. Age was estimated using the sagittal otoliths. The total lengths of 463 individuals (246 males, 217 females) were used to model Gulf corvina growth. Gulf corvina fisheries focus on catching larger fish, including individuals that may exceed the average size at age, while bycatch fisheries tend to capture smaller fish, potentially those below the average size at age [2].

2.2. Schnute Model Description

The Schnute model [6] was applied to length-at-age data to identify the growth pattern that best fits the observations and to estimate individual growth parameters. This model is a flexible, four-parameter growth function that can take on four distinct mathematical forms, depending on the values of parameters a and b relative to zero. Although the Schnute model encompasses multiple solution forms, it remains a single unified model [6]. Specific cases of this model replicate well-known growth models: for example, the von Bertalanffy model corresponds to Schnute case 1 with a > 0 and b = 1, while the logistic model corresponds to Schnute case 1 with a > 0 and b = −1. In these special cases, b is fixed, reducing the model to a three-parameter form, thus simplifying parameter estimation. In this study, we focused on Schnute case 1 where a ≠ 0 and b ≠ 0, which is described in detail below:
L t =   Y 1   b +   Y 2   b Y 1   b 1 e a t τ 1 1 e a τ 2 τ 1   1 b
The following parameters are used in this model:
t is the age at size.
τ 1 is the lowest age in the data set.
τ 2 is the highest age in the data set.
a is the relative growth rate parameter.
b is the incremental relative growth rate (incremental time constant).
Y 1 is the size at age τ 1 .
Y 2 is the size at age τ 2 .
To compute L using the Schnute model, the following equation was used:
L =   e a τ 2   Y 2   b e a τ 1   Y 1   b e a τ 2 e a τ 1   1 b
To compute τ 0, the following equation was used:
τ 0 = τ 1 + τ 2 1 a l n   e a τ 2 Y 2   b e a τ 1 Y 1   b Y 2   b Y 1   b  
To compute τ * , the following equation was used:
τ * = τ 1 + τ 2 1 a l n   b e a τ 2 Y 2   b e a τ 1 Y 1   b Y 2   b Y 1   b  
To estimate the parameters, the objective functions were first suited considering the following: Y o is the observed value of the dependent variable and Y e is the estimated value with any of the candidate models. The likelihood function was calculated as follows:
L L = 0.5 l n σ 2 0.5 l n 2 π Y o Y e 2 2 σ 2
This function was maximized. The sigma σ values used according to error structure criteria were as follows:
Observed:
σ i = Y o i Y a i 2 n
In this case, Y o i is the observed value at each age and Y a i is the average value at each age.
Additive:
σ = Y o Y e 2 n
Multiplicative:
σ = l n Y o l n Y e 2 n
In this case, Y o is the observed value and Y e is the estimated value.

2.3. Logistic Model Description

The logistic model was also analyzed to test the different standard deviation structures. This model anticipates a sigmoid-shaped curve with an inflection point at 50% (symmetrical curve). Reference [8] probed this model to analyze compensatory (decreasing the variance of errors with x, the independent variable) and depensatory (increasing variance of errors with x) variance. The logistic equation is as follows:
Y t = Y 1 + e k t t * 1
where Y t is the size at time t , Y is the asymptotic size, t * is the inflection point of the sigmoid curve, and k represents the coefficient of growth.
A normal distribution of errors was considered (additive error). The sigma σ values used according to error structure criteria were as follows:
Constant:
σ =   Y o Y e 2 n
Depensatory:
σ = σ 2   1 + e k t t * 1 2
Compensatory:
σ = σ 2   1 + e k t t * 1 2
Observed:
σ i = Y o i Y a i 2 n
where σ 2   is the variance for the oldest organism, like   L in growth models. That is, σ 2 is the variance at the asymptotic size. Y o is the observed value, Y e is the estimated value, Y o i is the observed value at each age, and Y a i is the average value at each age.

2.4. Model Selection Criterion

The Bayesian information criterion (BIC) was employed to identify the optimal error structure for parameterizing the growth models. The BIC was estimated as B I C = 2 L L + l n n θ i , where L L is the maximum log-likelihood, θ i is the number of parameters, and n represents the number of observations. The error structure achieving the lowest B I C value is best for model parameter estimation. Differences in the B I C values Δ i = B I C i B I C m i n were estimated among the error structures used in this study. The B I C weight w i is the percentage of evidence in favor of error structure i . w i was estimated according to Burnham and Anderson [11] using the following formula:
W i = e 0.5 Δ i i = 1 3 e 0.5 Δ i

2.5. Confidence Intervals

Confidence intervals were assessed using likelihood profiles in combination with the chi-square distribution [12]. The interval was defined as the set of values that satisfy the inequality 2 L Y θ L Y θ b e s t < χ 1 ,   1 2 , where L Y θ b e s t represents the log-likelihood corresponding to the maximum likelihood estimate of θ and χ 1 ,   1 2 is the χ 2 quantity considering only one degree of freedom at the level of 1 α . Thus, the confidence interval at 95% of the value θ covers all values that are twice the difference between the log-likelihood of a given value of θ and the log likelihood of the best estimate of a θ that is less than 3.84.

2.6. Software Application

Parameter searches guided by the objective function were carried out with Excel’s Solver tool. Excel is a program that is part of the Microsoft Office suite. Solver operates on a set of cells known as decision variable cells, which are used to compute the formulas in both the objective and constraint cells. It iteratively adjusts the values in these variable cells to satisfy the constraints and achieve the desired outcome in the objective cell.

3. Results

In the three datasets of total length (Figure 1, first column), the curve might be asymptotic but is more likely to be sigmoid. The standard deviation (Figure 1, second column) displays a bell shape, increasing and then decreasing. For this reason, it is possible to parametrize the model with constant, depensatory, or compensatory variance. Note that in the pooled data, two values are obtained for an age of 8 years, and for this reason, these are represented in the graph of sigma value. This is not the case for the data separated by sex, because only one record was observed at ages of 8 (both sexes) and 9 years (males).

3.1. Schnute Growth Model

When fitting the Schnute growth model, the lowest BIC was calculated with sample variance, here called the observed variance (Table 1). The second lowest BIC was observed for the constant variance, followed by the multiplicative error structure. This result was the same for the three data sources: pooled data, females, and males. However, in females, 6% of the evidence is in favor of the additive error structure.
The growth patterns observed for (Cynoscion othonopterus) were best represented by the Schnute model with observed variance, with a BIC weighting of 100% (Table 1), showing that the other curves had no support for the data. The parameters of the Schnute model version 1 were selected using the three criteria (observed, additive, and multiplicative) and described a sigmoidal curve that did not extrapolate back to the time axis. Instead, this curve had the time axis as the lower asymptote. This curve shape was inferred because the parameters met the principles –b*ln(Y2/Y1)/( τ 2- τ 1) < a and b ≤ 0. The parameters obtained once the equation was used to transform data into L, k, or t* were L = 741.2, k = 3.7 y−1, and t* = 3.76 years. As the best model, it obtained over 90% of the Bayesian weight. Figure 2 shows only these three curves for the three data sources, and the parameters are shown in (Table 2). For pooled data, the converted parameters from Schnute into von Bertalanffy were L = 935.9, k = 0.275 y−1, and t0 = 0.244. On the other hand, the version representing the logistic model gave the following parameters: L = 783.8, k = 0.857 y−1, and t* = 2.48 years.

3.2. Logistic Growth Model

Testing the logistic growth models using the four variance criteria revealed that the model with observed variance yielded the lowest BIC (Table 3), followed by the compensatory variance in pooled data and males, but in females, the constant variance ranked second. Depensatory variance was ranked in last place for the three data sources (Table 3). Figure 3 presents the variance trajectories based on observed, constant, depensatory, and compensatory criteria for the total length data.
Since the logistic model fitted with observed variance provided the best fit, its parameters are presented in Table 4. The curve trajectories for the three data sources are shown in Figure 4. There are significant differences between males and females in the parameters L and k. However, no significant difference was observed in the inflection point. According to the upper limit of the 95% confidence interval, females can grow to over 817 mm, while males reach a maximum of approximately 757 mm. Males exhibit a significant higher growth rate than females.

4. Discussion

The significant variability in length at age in fish could reflect high environmental variability and possibly competition for food. This variability remains significant as organisms age. Earlier papers on the individual growth evaluation of wild fishes assumed that constant variation would be most appropriate to use, but when a multi-criteria approach was used, the observed variation was the most appropriate according to the BIC [9]. Most growth studies for wild or farmed animals assume constant variation at an identifiable age. The advantage of using observed variance is the recognition of the intrinsic variability in length at age, which is not discernable when the objective function is solved using the conventional constant-variance assumption or a monotonically increasing or decreasing approach.
Individual variability by age should be considered to parameterize models and obtain better results [7]. This approach has been used for both wild [13] and farmed fish [9], concluding that this should be a common practice. Assessing sigma values by optimizing observed variability led to improved analysis of length-at-age data. If the variance is assumed to be constant using the conventional method, the improved analysis of length-at-age data cannot be documented. The observed variance could demonstrate an inherent variability of length-at-age data. In this study, the BIC made evident the differences between the various variance criteria for the species studied. In other words, having confidence in the traditional criteria (constant variance) could lead to the conclusion that the error structure is irrelevant. However, fitting the growth model with observed variance allowed us to show here that this approach produces robust results; that is, the observed variance produced the most plausible fits.
BIC quantifies the relative likelihood of each model being the best approximation of the true biological process that generated the data. BIC weight (Wi) represents the probability that model i is the best model (given the data and assuming the true model is in the candidate set). In growth analysis, models represent different hypotheses about growth. BIC weights help to assess which hypothesis is most supported by the data, while penalizing model complexity. The BIC balances model fit (likelihood) with parsimony (penalizing more complex models). This normalization allows Wi to be interpreted like probability (a higher Wi means stronger evidence that the model best explains data). In essence, BIC weights provide a way to rank competing biological hypotheses with a quantifiable measure of support, grounded in statistical theory.
Previous studies on the growth of Gulf corvina (C. othonopterus) have applied the von Bertalanffy growth model (VBGM) without considering alternative models. In the present study, two growth models were fitted. The result here is an asymptotically sigmoid shape as the best pattern to describe the growth of Gulf corvina. However, [14] found biphasic growth to be the best pattern. This biphasic growth pattern is affected by reproductive age, and this must be included in fitting a growth model [15]. Gherard et al. [2] reported that a shift in energy allocation occurs in Gulf corvina, supporting the biphasic growth mentioned by [14]. The VBGM has been modified as an approach to fitting a biphasic growth pattern in fishes [15,16]. Erisman [17] indicated that biphasic growth could be appropriate for Gulf corvina but avoided its use because of the difficulty of applying further fishery analysis. Previously, [15] showed how to describe the growth performance of a species: the best model must be applied independently if the species is a fishery resource. In the present study, a sigmoid curve was the most accurate growth pattern established by the Schnute model. The versatility of the Schnute model allowed us to determine that the model can generate the curve that best fits the data, namely a sigmoid curve, also known as case 1 of the Schnute model. Of course, this depends on the combined values of a and b in the dataset used for the present study.
As mentioned above, previous studies on Gulf corvina growth have produced different results because of the models that were used. Bolser et al. [18] decided to use the Schnute model, establishing the maximum length at an age of 8 years and the minimum length at an age of 1 year, and only estimated the model parameters a and b, when Y1 and Y2 should also have been estimated. This can be seen in the original article ([6]: page 1130), which states that four parameters must be found and only T1 and T2 are fixed. Graphs of the models in Table 1 of [18], which are those they report as adjusted to the original data, do not match their graphs. Therefore, it is concluded that this model was not well adjusted. Accepting then that their real models are those in Table 1 of Bolser et al. [18], while the adequately estimated parameters are found for the von Bertalanffy, logistic, and Schnute and Richards models, it can be observed that the Schnute and Richards model practically reaches an asymptote of 730 mm from an age of 5 years onwards, while with the logistic and von Bertalanffy models, the curve continues to ascend. This indicates that the Schnute and Richards model infers smaller sizes than the von Bertalanffy model at ages of 6 years and older. In this case, assuming that it was adequately adjusted via maximum likelihood, the fact that the Schnute and Richards model ranked in first place must have been due to the large amount of data from fish aged under 6 years, for which the model fits better, while these data were missing for fish aged 6 to 8 years. In this case, Bloser’s observation that the von Bertalanffy model is a better model would be correct, although statistically this is not the case for the original data. The above reinforces the ideas of Bolser et al. [18]: “The existence of discrepancies between the previous Gulf corvina growth studies and the importance of the age length relationship to the stock assessment of the fishery merit further investigation on the growth pattern of the species”. In the present study, we rethink the individual growth analysis of the Gulf corvina and conclude that an asymptotic, sigmoid-shaped curve best represents the growth pattern of this species. It is also significant to mention that Arzola-Sotelo [19] applied a multi-model approach that included the von Bertalanffy, Gompertz, logistic, and Schnute (case 1) models. Arzola-Sotelo [19] found that the logistic model yielded a Wi = 99.92% (Akaike weight), while reported a L = 772.2 mm Lt, CI (769.4–774.9) for pooled data (male and females); these values are significantly smaller than those found in the present study (L = 783.8 (777.3–789.6)).
In the above studies using multi-model approaches, the von Bertalanffy model is always compared with other models. Flinn and Midway [20] suggested improving growth equations to achieve common sense in fish growth analysis. Even though in many important species in commercial fisheries, models other than the von Bertalanffy growth model have a better fit, the VBGM is better for stock assessments, mainly because it is derived from an ingrained paradigm coined in 1957 by Beverton and Holt in their book on fishery assessments [4]. It is worth mentioning that the elasmobranch group (also known as cartilaginous fish) can be contradictory in terms of results using models other than the VBGM [21,22]. On the one hand, [21] found that, for a species of skate in the family Rajidae, the logistic model was the best compared to the von Bertalanffy and Gompertz models according to the Akaike information criterion (AIC) for three datasets. On the other hand, [22] compared the Gompertz model with the von Bertalanffy model for a species belonging to the family Rhinobatidae, in which case the former was shown to be best by the AIC. The generalized use of the VBGM can also be observed in studies analyzing growth in other very important sciaenid fish in the Upper Gulf of California, as it is the most commonly used model for analyzing growth curves [23,24,25,26,27,28].
As the Gulf corvina remains the most important fishery resource in the Upper Gulf of California zone and the Colorado River Delta biosphere reserve [29], good fishery administration is required, while a detailed understanding of stock assessment and population dynamics is also needed. Individual growth parameters also need to be assessed. It is worth noting that the purpose of this study is to obtain the best parameters using novel approaches, including the observed error structure.

5. Conclusions

In order to parametrize individual growth models (the Schnute and logistic models), in the present study, the sample variance was found to be most effective using length-at-age data for Gulf corvina (C. othonopterus) from the Colorado River Delta biosphere reserve in the fishery zone. The BIC indicated that the observed error structure produced the most reasonable inferences. We conclude that the observed error structure should be explored when robust estimations of individual growth parameters are required.

Author Contributions

Conceptualization, E.A.A.-N. and M.V.C.-B.; methodology, E.A.A.-N. and M.V.C.-B.; software, E.A.A.-N., G.G.O.-L., and M.V.C.-B.; validation, E.A.A.-N. and M.V.C.-B.; formal analysis, E.A.A.-N., G.G.O.-L., and M.V.C.-B.; investigation, J.E.M.-M., M.V.C.-B., and G.G.O.-L.; resources, E.A.A.-N. and J.A.F.-O.; data curation, J.E.M.-M., M.V.C.-B., G.G.O.-L., and J.A.F.-O.; writing—original draft preparation, E.A.A.-N., G.G.O.-L., J.E.M.-M., M.V.C.-B., and J.A.F.-O.; writing—review and editing, E.A.A.-N., G.G.O.-L., J.E.M.-M., M.V.C.-B., and J.A.F.-O.; visualization, E.A.A.-N.; supervision, E.A.A.-N.; project administration, E.A.A.-N.; funding acquisition, E.A.A.-N. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by “SECIHTI, grant number CF-2023-I-668”, and the APC was also funded by “SECIHTI, grant number CF-2023-I-668”. Please note that SECIHTI was previously CONAHCYT (its Spanish acronym), the National Council of Humanities, Sciences and Technologies Decentralized Public Area of the federal government of Mexico, which is the entity in charge of the promotion of scientific and technological activities in Mexico, setting government policies for these matters, and granting scholarships for postgraduate studies. In January 2025, its name was changed to SECIHTI (Spanish acronym of Secretaría de Ciencias Humanidades Tecnología e Innovación).

Institutional Review Board Statement

Ethical review and approval were waived for this study since this study did not manipulate any animals. Only data that came from published papers are incorporated.

Informed Consent Statement

Not applicable.

Data Availability Statement

Data are available from the CONABIO Database SNIB-CONABIO; http://www.conabio.gob.mx/institucion/cgi-bin/datos.cgi?Letras=L&Numero=298 (accessed on 28 February 2025).

Acknowledgments

This project was supported by CONAHCYT in 2023. Thanks go to CONAHCYT for the grant awarded to Marcelo Vidal. Curiel-Bernal as an SNII level 3 research assistant (Contract I1200/051/2023 MOD.ORD./02/2023). We also thank Edgar Alcantara Razo from CIBNOR-Guaymas Applied Ecology and Fisheries lab for his help in data acquisition.

Conflicts of Interest

The authors declare no conflicts of interest.

Abbreviations

The following abbreviations are used in this manuscript:
AICAkaike information criterion
BICBayesian information criterion
CIConfidence interval
CIBNORCentro de Investigaciones Biológicas del Noroeste
CONABIOComisión Nacional para el Conocimiento y Uso de la Biodiversidad
CONAHCYTConsejo Nacional de Humanidades, Ciencias y Tecnologías
SECIHTISecretaría de Ciencias Humanidades Tecnología e Innovación
SNIBSistema Nacional de Información sobre biodiversidad
SNIISistema Nacional de Investigadoras e Investigadores
VBGMvon Bertalanffy growth model

References

  1. Mendivil-Mendoza, J.E.; Rodríguez-Domínguez, G.; Castillo-Vargasmachuca, S.G.; Ortega-Lizárraga, G.G.; Aragón-Noriega, E.A. Estimación de los parámetros de crecimiento de curvina golfina Cynoscion othonopterus (Pisces: Sciaenidae) por medio de los casos del modelo de Schnute. Interciencia 2017, 42, 570–577. Available online: https://www.redalyc.org/articulo.oa?id=33952909004 (accessed on 6 January 2025).
  2. Gherard, K.E.; Erisman, B.E.; Aburto-Oropeza, O.; Rowell, K.; Allen, L.G. Growth, development, and reproduction in Gulf corvina (Cynoscion othonopterus). Bull South. Cal. Acad. Sci. 2013, 112, 1–18. [Google Scholar] [CrossRef]
  3. Pascoe, S.; Kahui, V.; Hutton, T.; Dichmont, C. Experiences with the use of bioeconomic models in the management of Australian and New Zealand fisheries. Fish. Res. 2016, 183, 539–548. [Google Scholar] [CrossRef]
  4. Beverton, R.J.H.; Holt, S.J. On the Dynamics of Exploited Fish Populations; Ministry of Agriculture, Fisheries and Food, Fisheries Investigations: London, UK, 1957. [Google Scholar]
  5. Katsanevakis, S. Modelling fish growth: Model selection, multi-model inference and model selection uncertainty. Fish. Res. 2006, 81, 229–235. [Google Scholar] [CrossRef]
  6. Schnute, J. A versatile growth model with statistically stable parameters. Can. J. Fish. Aquat. Sci. 1981, 38, 1128–1140. [Google Scholar] [CrossRef]
  7. Restrepo, V.R.; Diaz, G.A.; Walter, J.F.; Neilson, J.D.; Campana, S.E.; Secor, D.; Wingate, R.L. Updated estimate of the growth curve of western Atlantic bluefin tuna. Aquat. Living Resour. 2010, 23, 335–342. [Google Scholar] [CrossRef]
  8. Félix-Ortiz, J.A.; Aragón-Noriega, E.A.; Castañeda-Lomas, N.; Rodríguez-Domínguez, G.; Valenzuela-Quiñónez, W.; Castillo-Vargasmachuca, S. Individual growth analysis of the Pacific yellowlegs shrimp Penaeus californiensis via multi-criteria approach. Lat. Am. J. Aquat. Res. 2020, 48, 768–778. [Google Scholar] [CrossRef]
  9. Castillo-Vargasmachuca, S.G.; Aragón-Noriega, E.A.; Rodríguez-Domínguez, G.; Martínez-Cárdenas, L.; Arámbul-Muñoz, E.; Burgos Arcos, Á.J. The Standard Deviation Structure as a New Approach to Growth Analysis in Weight and Length Data of Farmed Lutjanus guttatus. Fishes 2021, 6, 60. [Google Scholar] [CrossRef]
  10. Luquin-Covarrubias, M.A.; Morales-Bojórquez, E.; González-Peláez, S.S.; Hidalgo-de la Toba, J.Á.; Lluch-Cota, D.B. Modeling of growth depensation of geoduck clam Panopea globosa based on a multimodel inference approach. J. Shellfish Res. 2016, 35, 379–387. [Google Scholar] [CrossRef]
  11. Burnham, K.P.; Anderson, D.R. Model Selection and Multimodel Inference: A Practical Information-Theoretic Approach, 2nd ed.; Springer: New York, NY, USA, 2002; pp. 1–488. [Google Scholar]
  12. Venzon, D.J.; Moolgavkar, S.H. A method for computing profile-likelihood-based confidence intervals. Appl. Stat. 1988, 37, 7–94. [Google Scholar] [CrossRef]
  13. Curiel-Bernal, M.V.; Aragón-Noriega, E.A.; Cisneros-Mata, M.Á.; Sánchez-Velasco, L.; Jiménez-Rosenberg, S.P.A.; Parés-Sierra, A. Using Observed Residual Error Structure Yields the Best Estimates of Individual Growth Parameters. Fishes. 2021, 6, 35. [Google Scholar] [CrossRef]
  14. Aragon-Noriega, E.A. Modeling the individual growth of the Gulf corvina, Cynoscion othonopterus (Pisces: Sciaenidae), using a multi-model approach. Cienc. Mar. 2014, 40, 149–161. [Google Scholar] [CrossRef]
  15. Ohnishi, S.; Yamakawa, T.; Okamura, H.; Akamine, T. A note on the von Bertalanffy growth function concerning the allocation of surplus energy to reproduction. Fish. Bull. 2012, 110, 223–229. [Google Scholar]
  16. Tribuzio, C.A.; Kruse, G.H.; Fujioka, J.T. Age and growth of spiny dogfish (Squalus acanthias) in the Gulf of Alaska: Analysis of alternative growth models. Fish. Bull. 2010, 108, 119–135. [Google Scholar]
  17. Erisman, B.E. Evaluation of Available Data, Preliminary Datapoor Assessment and Recommendations for the Gulf Corvina Fishery in the Gulf of California; Technical Report to the Environmental Defense Fund: La Jolla, CA, USA, 2012. [Google Scholar]
  18. Bolser, D.G.; Grüss, A.; Lopez, M.A.; Reed, E.M.; Mascareñas-Osorio, I.; Erisman, B.E. The influence of sample distribution on growth model output for a highly-exploited marine fish, the Gulf Corvina (Cynoscion othonopterus). Peer J. 2018, 6, e5582. [Google Scholar] [CrossRef]
  19. Arzola-Sotelo, E.A. Aplicación del enfoque multimodelo para la evaluación del crecimiento individual de la curvina golfina Cynoscion othonopterus en el Alto Golfo de California. Cienc. Pessq. 2014, 22, 79–88. [Google Scholar]
  20. Flinn, S.A.; Midway, S.R. Trends in Growth Modeling in Fisheries Science. Fishes 2021, 6, 1. [Google Scholar] [CrossRef]
  21. Başusta, N.; Ozel, F.V. Growth Characteristics of Long-Nosed Skate Dipturus oxyrinchus (Linnaeus, 1758) Inhabiting the Northeastern Mediterranean Sea. Animals 2022, 12, 3443. [Google Scholar] [CrossRef]
  22. Başusta, N.; Başusta, A.; Tıraşın, E.M.; Sulikowski, J.A. Age and growth of the blackchin guitarfish Glaucostegus cemiculus (Geoffroy Saint-Hilaire, 1817) from Iskenderun Bay (Northeastern Mediterranean). J Appl Ichthyol. 2020, 36, 880–887. [Google Scholar] [CrossRef]
  23. Flanagan, C.A. Study of the feasibility of modeling the totoaba fishery of the northern Gulf of California with preliminary estimation of some critical parameters. Univ. Ariz. Biol. Sci. Rep. 1973, 249, 1–58. [Google Scholar]
  24. Cisneros-Mata, M.Á.; Montemayor-López, G.; Román-Rodríguez, M.J. Life history and conservation of Totoaba macdonaldi. Conserv. Biol. 1995, 9, 806–814. [Google Scholar] [CrossRef]
  25. Pedrín-Osuna, O.; Córdova-Murueta, J.H.; Delgado-Marchena, M. Crecimiento y mortalidad de la totoaba, Totoaba macdonaldi, del Alto Golfo de California. Cienc. Pesq. 2001, 15, 131–140. [Google Scholar]
  26. De Anda-Montañez, J.A.; García de León., F.J.; Zenteno-Savín, T.; Balart-Páez, E.; Méndez-Rodríguez, L.C.; Bocanegra-Castillo, N.; Martínez-Aguilar, S.; Campos-Dávila, L.; Román Rodríguez, M.J.; Valenzuela-Quiñonez, F.; et al. Estado de Salud y Estatus de Conservación de la(s) Población(es) de Totoaba (Totoaba macdonaldi) en el Golfo de California: Una Especie en Peligro de Extinción; Informe Final, SNIB-CONABIO. Proyecto Núm. hK050; Centro de Investigaciones Biológicas del Noroeste, S.C.: La Paz, Mexico, 2013; Available online: http://www.conabio.gob.mx/institucion/proyectos/resultados/InfHK050.pdf (accessed on 3 February 2021).
  27. Valenzuela-Quiñonez, F. Genética y Dinámica Poblacional de la Totoaba (Totoaba macdonaldi Gilbert, 1891) en el Golfo de California. Ph.D. Thesis, Centro de Investigaciones Biológicas del Noroeste, S.C., La Paz, Mexico, 22 May 2014. [Google Scholar]
  28. Román-Rodríguez, M.; Hammann, M.G. Age and growth of totoaba, Totoaba macdonaldi (Sciaenidae) in the upper Gulf of California. Fish. Bull. 1997, 95, 620–628. [Google Scholar]
  29. Licon-González, H.A.; Sanjurjo-Rivera, E.; Olivares-Bañuelos, N.C.; Vázquez-Vera, W.L.; Ortiz Rodríguez, R. Experiencias de manejo participativo en la pesquería de curvina golfina en el alto golfo de California. Región Y Soc. 2023, 35, e1678. [Google Scholar] [CrossRef]
Figure 1. Length-at-age data and the observed variability at age for the three data sources.
Figure 1. Length-at-age data and the observed variability at age for the three data sources.
Animals 15 02008 g001
Figure 2. Growth curves of the Schnute model fitted with the observed variance for the three data sources. Lines represent a sigmoid asymptotic curve.
Figure 2. Growth curves of the Schnute model fitted with the observed variance for the three data sources. Lines represent a sigmoid asymptotic curve.
Animals 15 02008 g002
Figure 3. Variability at age of the four criteria used for the three data sources.
Figure 3. Variability at age of the four criteria used for the three data sources.
Animals 15 02008 g003
Figure 4. Growth curves of the logistic model fitted with the observed variance for the three data sources. Lines represent a sigmoid asymptotic curve.
Figure 4. Growth curves of the logistic model fitted with the observed variance for the three data sources. Lines represent a sigmoid asymptotic curve.
Animals 15 02008 g004
Table 1. The Bayesian information criterion (BIC) for the Schnute model and the three error structures. Δi is the difference and the BIC minimum value and the i value. Wi is the percentage of evidence in favor of model i.
Table 1. The Bayesian information criterion (BIC) for the Schnute model and the three error structures. Δi is the difference and the BIC minimum value and the i value. Wi is the percentage of evidence in favor of model i.
Data SourceStructureBICΔiWi (%)
Observed52280100
Pooled dataAdditive5291620
Multiplicative56023740
Observed2358094
FemalesAdditive236466
Multiplicative24801220
Observed25740100
MalesAdditive2644740
Multiplicative27992250
Table 2. Estimated growth parameters of (Cynoscion othonopterus) for each data source using the Schnute model version 1. The confidence intervals at 95% are in parentheses.
Table 2. Estimated growth parameters of (Cynoscion othonopterus) for each data source using the Schnute model version 1. The confidence intervals at 95% are in parentheses.
Data SourceY1Y2ab
Pooled data203.2 (198–209)741.2 (735–747)3.070 (2.969–3.186)−8.162 (−7.84–8.47)
Females199.8 (191–209)762.1 (751–773)2.073 (1.985–2.180)−5.178 (−4.86–5.47)
Males253.7 (243–265)724.4 (719–731)10.813 (10.14–11.48)−23.769 (−22.37–25.37)
Table 3. The Bayesian information criterion (BIC) for the logistic model and the four variance criteria. Δi is the difference between the BIC minimum value and the i value. Wi is the percentage of evidence in favor of model i.
Table 3. The Bayesian information criterion (BIC) for the logistic model and the four variance criteria. Δi is the difference between the BIC minimum value and the i value. Wi is the percentage of evidence in favor of model i.
Data SourceCriteriaBICΔiWi (%)
Pooled dataObserved5333099.38
Compensatory 5343100.61
Constant 5351180.01
Depensatory55662330.00
FemalesObserved2381099.91
Constant2395140.09
Compensatory 2403230.00
Depensatory2478980.00
MalesObserved26020100
Compensatory 2647450
Constant 2675730
Depensatory27601580
Table 4. Parameter estimates and their 95% confidence intervals (CIs) for the logistic growth model with the observed error structure. In this model, L denotes the asymptotic length, t represents the inflection point of the sigmoid curve, and k is the growth coefficient.
Table 4. Parameter estimates and their 95% confidence intervals (CIs) for the logistic growth model with the observed error structure. In this model, L denotes the asymptotic length, t represents the inflection point of the sigmoid curve, and k is the growth coefficient.
ParameterData SourceOptimum (CI)
L∞ (mm)Pooled data783.8 (777.3–789.6)
Females806.7 (796.7–816.7)
Males749.5 (742.6–756.4)
k (years−1)Pooled data0.857 (0.823–0.893)
Females0.829 (0.785–0.881)
Males1.126 (1.053–1.209)
t* (years)Pooled data2.48 (2.42–2.54)
Females2.57 (2.48–2.66)
Males2.62 (2.52–2.71)
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.

Share and Cite

MDPI and ACS Style

Aragón-Noriega, E.A.; Félix-Ortiz, J.A.; Mendivil-Mendoza, J.E.; Ortega-Lizárraga, G.G.; Curiel-Bernal, M.V. Reassessment Individual Growth Analysis of the Gulf Corvina, Cynoscion othonopterus (Teleostei: Sciaenidae), Using Observed Residual Error. Animals 2025, 15, 2008. https://doi.org/10.3390/ani15142008

AMA Style

Aragón-Noriega EA, Félix-Ortiz JA, Mendivil-Mendoza JE, Ortega-Lizárraga GG, Curiel-Bernal MV. Reassessment Individual Growth Analysis of the Gulf Corvina, Cynoscion othonopterus (Teleostei: Sciaenidae), Using Observed Residual Error. Animals. 2025; 15(14):2008. https://doi.org/10.3390/ani15142008

Chicago/Turabian Style

Aragón-Noriega, Eugenio Alberto, José Adán Félix-Ortiz, Jaime Edzael Mendivil-Mendoza, Gilberto Genaro Ortega-Lizárraga, and Marcelo Vidal Curiel-Bernal. 2025. "Reassessment Individual Growth Analysis of the Gulf Corvina, Cynoscion othonopterus (Teleostei: Sciaenidae), Using Observed Residual Error" Animals 15, no. 14: 2008. https://doi.org/10.3390/ani15142008

APA Style

Aragón-Noriega, E. A., Félix-Ortiz, J. A., Mendivil-Mendoza, J. E., Ortega-Lizárraga, G. G., & Curiel-Bernal, M. V. (2025). Reassessment Individual Growth Analysis of the Gulf Corvina, Cynoscion othonopterus (Teleostei: Sciaenidae), Using Observed Residual Error. Animals, 15(14), 2008. https://doi.org/10.3390/ani15142008

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop