Growth Models and Backcalculation
Growth models are a standard product of length at age data. The
models can vary in complexity from that of a simple straight line
through length at age data (simple linear regression), to
sophisticated maximum likelihood estimates of size at age. In most
cases, the rationale for model preparation is to allow prediction of an
expected mean size or growth rate at a given age, or to facilitate
comparisons of estimated growth with other published estimates.
Calculations of growth rate may be based on equations derived from
either empirically-fitted curves or one of the generally accepted
growth models. There are many possible growth models, all of
which can be applied to either length or weight data and use either
daily or yearly ages. Frequently-used models include linear
regression, Gompertz, von Bertalanffy, exponential and the logistic
model. Equations for all of these, as well as others, are presented in
Campana and Jones (1992). Also presented in Campana and Jones
(1992) is the equation for a growth model which incorporates both
age and temperature on a daily basis, thus allowing for changes in
growth rate through time due to temperature changes.
Growth backcalculations used to estimate fish length at a previous
age or date can be derived from a series of growth increments (either
daily or yearly) and represent one of the most powerful applications
of the otolith. Since the fish length:otolith length relationship can
be determined, the widths of the daily (or yearly) growth increments
in an otolith reflect the daily (or yearly) growth rates of the fish at
that age and on those dates. Similarly, the radius of the otolith at a
given age/increment is a reflection of the length of the fish at that
age and on that date. If the fish length:otolith length relationship is
linear, the increment widths are roughly proportional to the growth
of the fish. Conversely, if the relationship is nonlinear, a more
complicated conversion must be applied.
A major constraint to most existing backcalculation procedures is
the assumption that the fish-otolith relationship is not only linear,
but does not vary systematically with the growth rate of the fish.
However, many studies have demonstrated that otoliths of slow-growing
fish tend to be larger and heavier than those of fast-growing
fish of the same size, whether at the daily or yearly scale. Such a
systematic variation implies that growth backcalculations made with
any of the traditional equations (eg- regression, Fraser-Lee or those
of Francis (1990)) will tend to underestimate previous lengths at
age, with the degree of error varying with the range of growth rates
that are present in the population. The degree of error can be
substantial in some cases, and appears to explain many reported
cases of Lee's Phenomenon.
The presence of relatively large otoliths in slow-growing fish of a
given species is a widespread phenomenon. To avoid
backcalculation errors due to this effect, the biological intercept
procedure uses a biologically-determined, rather than a statistically-determined,
intercept in the backcalculation equation. Like the
Fraser-Lee method, the biological intercept method assumes a linear
relationship between fish length and otolith length within an
individual fish. However, unlike the Fraser-Lee method, the value
of the biological intercept is determined by the mean size of the fish
and the otolith at the larval or juvenile stage, and thus is completely
insensitive to any growth-related variations in the fish-otolith
relationship. The equation for this method is:
La = Lc + (O - Oc) (Lc - Li)
(Oc - Oi)-1
where La is the backcalculated length of the fish at age a, Lc and Oc
are the size of the fish and otolith at capture, respectively, and Li and
Oi are the size of the fish and otolith at the biological intercept,
respectively.
What value should be used for the biological intercept? The
biological intercept (fish length and otolith length) should be
measured in the smallest fish possible AS LONG AS all subsequent
fish and otolith growth is linear (proportional). It is VERY
IMPORTANT that very young fish with a nonlinear fish-otolith
growth trajectory not be used, since the resulting backcalculations
will not be as accurate as they could be. Therefore, the biological
intercept of some species may be at the juvenile stage, while others
may be right at the time of hatch.
The biological intercept will always yield backcalculated values
which are at least as accurate as those of the regression or Fraser-Lee methods.
Therefore, there is no disadvantage to the use of the
biological intercept method, other than those that are shared by the
other proportional methods. To quickly determine if the Fraser-Lee
method will yield comparable results to that of the biological
intercept method, simply compare the value of the biological
intercept with the predicted fish length derived from the population
fish-otolith regression for a comparable otolith length: if they are
significantly different, significant gains in accuracy can be expected
by using the biological intercept method.
For further information on growth models, growth backcalculation
and the biological intercept method, see Campana and Jones (1992)
and Campana (1990).
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