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Brief Report

A New Fluctuating Asymmetry Index, or the Solution for the Scaling Effect?

by
Cino Pertoldi
1,2,* and
Torsten Nygaard Kristensen
1
1
Department of Chemistry and Bioscience, Aalborg University, Fredrik Bajers Vej 7H, 9220 Aalborg, Denmark
2
Aalborg Zoo, Mølleparkvej 63, DK-9000 Aalborg, Denmark
*
Author to whom correspondence should be addressed.
Submission received: 26 January 2015 / Revised: 10 March 2015 / Accepted: 23 March 2015 / Published: 1 April 2015
(This article belongs to the Special Issue Fluctuating Asymmetry)

Abstract

: Two principal methods are commonly employed for the estimation of developmental instability at the population level. Some studies use variances of morphological traits (σ2p), while others use fluctuating asymmetry (FA). In both cases, differences in the degree of developmental instability can be tested with an F-test, which is the most common way to compare variances. However, the variance is expected to scale proportionally to the square of the mean as there is a tendency in biological data for σ2p to scale proportionally to the square of the mean ( μ ¯ ) : σ p 2 = Z μ ¯ ξ, where ξ is the scaling exponent, which is expected to be two for pure statistical reasons, μ ¯ is the mean of the trait and Z is a measure of individual-level variability. Because of this scaling effect, the fluctuating asymmetry will be affected, FA is estimated as the variance between the right and the left sides of a trait (σ2r l = σ2r + σ2l − 2rσrσl), where σ2r and σ2l are the variances of the right and the left trait values, respectively. In this paper, we propose a novel method that allows an exact correction of the scaling effect, which will enable a proper comparison of the degree of fluctuating asymmetry for a trait. The problem of the scaling of the FA with the trait size is quite crucial if FA is to be considered an indicator of fitness or an indicator of environmental or genetic stress, as different stresses or fitness levels are typically accompanied by a change of the traits’ μ ¯.

1. Introduction

1.1. Developmental Instability

The development of a trait in a given environment is disturbed by random processes that cause it to deviate from its expected phenotype. It is believed that an individual’s ability to buffer its development against these random perturbations is influenced by genotype, environment and/or genotype-environment interactions [14]. Developmental instability (DI) results when stress affects the buffering capacity of the processes that provide stability to an organism’s development [5]. The theoretical argument that stressed individuals have greater DI is supported by some research showing a positive relationship between DI and the intensity of stress [4,612]. However, empirical studies supporting its general adequacy for monitoring species or populations are generally lacking or contradictory [4,1316].

Two principal methods are commonly employed for the estimation of DI at the population level. Some studies use variances of morphological characters or phenotypic variance (σ2p) [12,1618], where the estimate may be blurred by genetic variation (σ2g), while other studies use fluctuating asymmetry (FA) [1,4,7].

Phenotypic variance can be considered as an estimator of DI when variation caused by environmental variability (σ2e) and σ2g is negligible [19]. Several studies have revealed that the σ2p of quantitative traits increases in populations experiencing environmental stress [12,16,20]. The problem with estimating σ2p even in a monoclonal strain (σ2g = 0) is that the estimate in general will be strongly affected by σ2e [17,19,21,22].

1.2. Phenotypic Variance

In biological data there is a tendency for σ2p to scale proportionally to the square of the mean ( μ ¯) [23]:

σ p 2 = Z μ ¯ ξ
where ξ is the scaling exponent, which is expected to be two for pure statistical reasons (see [23] for derivation). Z is a measure of individual-level variability [23]. The regression of log σ2 (dependent) on log μ ¯ (independent) gives a line with a slope of two, called Taylor’s power law [24,25]. However, ξ has been found to be considerably smaller than two for many morphological traits (ξ < 2) [26].

1.3. Fluctuating Asymmetry

Whereas it is generally accepted that σ2p is influenced by σ2g and σ2e [27], FA at the individual level has the advantage that dissimilarity in the expression of a given character on the left and right sides of an organism cannot be explained by either differences in genotype or environment [1,7].

Following Palmer and Strobeck [1], FA can be estimated as FA = σ2r l, where r and l are, respectively, the trait values on the right and left side. A scaled FA index can be utilized by dividing FA with the mean of the traits: (σ2r l)/(0.5r + 0.5l) (FA7 index; [1]). Reference [1] suggested also the index FA 3 = μ ¯ I r l I / ( 0.5 r + 0.5 l ), which is equivalent to the mean of the absolute value of the difference between the left and right side divided by the population trait size; however, the unsigned difference between the r and the l side is not normally distributed, and therefore, other statistical problems are introduced by using this index, which require testing with non-parametric techniques [1]. The division by the mean trait size can correct for scale differences. This is a necessary operation when the (σ2r l) is positively correlated with the mean of the trait. Other indices (FA9 and FA9a; [1]) that are equivalent to one minus the square of the correlation coefficient between the right and left sides (1 − r2r,l) (FA9; [1]) or one minus the correlation coefficient between the right and left (1 − rr,l) (FA9a; [1]) have also been proposed [1,28]. The performance of the different indices’ depends on whether the FA of a trait is more correlated to its μ ¯ or its σ2p [28].

Windig and Nylin [28] have shown that FA measured as (σ2r l) on 36 traits in the Speckled Wood Butterfly (Pararge aegeria) were highly correlated both with the mean (r = 0.94) and the variance (r = 0.96). As a consequence of this strong correlation between (σ2r l) with the σ2p and μ ¯ of the trait, the same problems mentioned above for the standardization of the variance with the mean will exist for the standardization of the (σ2r l) with the mean. In order to get an accurate estimate of the level of FA for a given trait new as the different indices suggested by [1,28] and have to be considered as different options for correcting the scaling effect are needed. This will allow a comparison of the level of FA estimated for traits with different means or for the same trait, but with a different means in different samples. Correcting for scale effects can however, increase the possibility of committing errors of Type 1 and Type 2. Considering the fact that often, the differences of the FA levels are subtle, makes the need for a methodology that can correct for the scaling effect in a precise way that do need effect the likelihood to make Type 1 and Type 2 errors quite urgent. The aim of this paper is therefore to propose a new methodology that will allow an exact correction for the scaling effect.

2. Methods and Results

In this paper, we suggest the following method:

  • We assume two sample sizes: ( μ ¯ 1, (σ2r l)1 and μ ¯ 2, (σ2r l)2) in which the μ ¯ and the (σ2r l) will be log-transformed. For both samples, also the correlation between the right and the left values will be estimated, and we will therefore have two correlations: r1 and r2.

  • The (σ2r − l) is equivalent to:

    ( σ 2 r l ) = σ 2 r + σ 2 l 2 r σ r σ l
    as σ2r = σ2l = σ2p.

    We substitute (from Equation (1)):

    ( σ 2 r l ) = Z μ ¯ 1 ξ + Z μ ¯ 2 ξ 2 r ( Z μ ¯ 1 ξ Z μ ¯ 2 ξ ) 1 / 2

    Rearranging:

    ( σ 2 r l ) = 2 Z μ ¯ ξ 2 r Z μ ¯ ξ
    and:
    ( σ 2 r l ) = 2 Z μ ¯ ξ ( 1 r )

  • Following a log-transformation, Equation (3) becomes:

    log ( σ 2 r l ) = log 2 + log Z + log ( 1 r ) + ξ log μ ¯

    Consequently, the regression of log(σ2r l) (dependent) on log μ ¯ (independent) gives a line with an intercept equal to: (log2 + logZ + log(1 − r)) and a slope of ξ = 2 for pure statistical reasons. In this equation, it is assumed that r1 = r2, which means that there is no difference in the degree of correlation between the right and the left values measured in the two samples with two means: μ ¯ 1 and μ ¯ 2; however (σ2r l)1 ≠ (σ2r l)2, because, despite the fact that r1 = r2, the log (σ2r l) is increasing with a slope of two (ξ = 2). This ξ is therefore a hypothetical slope, which will only coincide with the observed slope if r1 = r2, and we will therefore call it ξ (ξi) = 2.

  • Estimation of the slope of the line using the observed values of: log μ ¯ 1, log(σ2r − l)1 and log μ ¯ 2, log(σ2r l)2; therefore, we will obtain an observed ξ (ξo), which will be equivalent to: ξ 0 = [ log ( σ r l ) 2 log ( σ r l ) 1 ] / ( log μ ¯ 2 log μ ¯ 1 )).

  • Subtraction of the observed slope (ξo) from the hypothetical slope (ξi) = 2; therefore Equation (4) becomes:

    log ( σ 2 r l ) = log 2 + log Z + log ( 1 r ) + ( ξ o ξ i ) log μ ¯
    which allows an estimation of the corrected values of the log-variance log (σ2r − l)c as:
    ( log ( σ 2 r l ) c log ( σ 2 r l ) 1 ) / ( log μ ¯ 2 log μ ¯ 1 ) = ( ξ o ξ i ) ,
    Resolving:
    log ( σ 2 r l ) c = ( ξ o ξ i ) ( log μ ¯ 2 log μ ¯ 1 ) + log ( σ 2 r l ) 1

  • Estimation of the anti-log value of log(σ2r l)c.

  • G. F-test for testing differences between (σ2r l)c and (σ2r l)1.

Therefore, the correction can be easily applied in the form of an FA index, which we will call for commodity the “FA corrected for scaling index (FAcs)”, where FAcs = log(σ2r l)c and consequently FA cs = ( ξ 0 ξ i ) ( log μ ¯ 1 ) + log ( σ r 1 ) 1. Substituting (ξi) = 2 and ξ 0 = [ log ( σ 2 r l ) 2 log ( σ 2 r l ) 1 ] / ( log μ ¯ 2 log μ ¯ 1 )), we obtain:

FA cs = { [ log ( σ 2 r l ) 2 log ( σ 2 r l ) 1 ] / [ ( log μ ¯ 2 log μ ¯ 1 ) ] 2 } ( log μ ¯ 2 log μ ¯ 1 ) + log ( σ 2 r l ) 1 ,
in the equation above, there are only four terms: log(σ2r l)2, log(σ2r l)1, log μ ¯ 2 and log μ ¯ 1, which are all known and that can easily be estimated in order to obtain the FAcs index, which, after an antilog transformation, will be compared to (σ2r − l)1, with an F-test.

3. Discussion

3.1. Scaling Problems of Fluctuating Asymmetry

Despite the fact that the finding of an exact way to correct FA for scaling could give an impression of a rather technical discussion, the problem of the scaling of the FA with the trait size is crucial if FA has to be considered an indicator of fitness, as often, variation of fitness among individuals is accompanied by a variation of the μ ¯ of the traits [7,29,30]. For FA to be considered an indicator of environmental or genetic stress, the problem of scaling is also present as a higher stress level is typically accompanied by a reduction of the traits’ μ ¯ [3,16].

3.2. Transformations

The log-transformation of the variance [31], the Box–Cox power transformation [32], or the coefficient of variation (CV) [33] are commonly used to make σ2 independent of μ ¯ [34]. The transformed data can be compared with the log-log-test [31], the naive test [34], the likelihood ratio test, Bennett’s test, the score test, Miller’s test, Doornbos and Dijkstra’s test or the Wald test.

All of these tests are used for taking into account eventual violations of the assumptions required by the F-test (like for example a small sample size or non-normally distributed data) [23].

3.3. Correction for the Scaling Effect

Pertoldi et al. [23] proposed an exact methodology that can correct for the scaling effect of the σ2p with the μ ¯ without the need for transformations, which will give an approximate estimate of the true σ2p.

It should also be noted that in Equation (5), ξo > ξi, the slope of the corrected line (ξo − ξi) continues to remain positive (slope > 0), even if the slope is reduced, which means that log(σ2r l)c > log(σ2r l)1, which implies that the uncorrected F-test is more prone to an error of Type 1 (incorrect rejection of the H0 hypothesis) compared to the F-test, which is performed on the corrected variances. If, in Equation (5), ξo < ξi, the slope of the corrected line will have a negative slope (slope < 0). A negative slope implies that (σ2r l)c < (σ2r l)1, which is in contradiction to the one-tailed HA hypothesis of the F-test in which σ21 > σ22. In fact, F-tests that have a ξo > ξi may lead to wrong conclusions as the σ2 in the nominator of the F-test (which is supposed to be bigger) is in reality smaller than the σ2 in the denominator (which is supposed to be smaller). If ξo = ξi, then the corrected line will have a slope equal to zero.

3.4. How Can the Scaling Effect Have Afflicted Investigations?

The possible scenarios listed above are underlying potential problems, which could have afflicted several investigations in many scientific disciplines that have formulated hypotheses based on the F-distribution. The bigger the difference between the two means ( μ ¯ 1 and μ ¯ 2) of the distributions compared in the F-test, the higher is the probability that the above-mentioned errors could have led to wrong conclusions. The transformations and approximations listed in this paper can in some way reduce the probability that these errors occur, but at the same time, they can also introduce a further bias and complexity due to the interactions between the scaling effect and the effects on the data transformations.

4. Conclusions

The method proposed in this paper can be utilized to make an exact correction for differences in means between samples that are compared. This can be utilized in future investigations dealing with developmental instability.

However even with this correction we should be aware of confounding factors, such as the standard error of the variance and the presence of mixtures due to environmental variability, which can produce platykurtic or leptokurtic distributions of the (rl) values [3540]. Mixtures due to genetic substructuring can also produce the same effects that environmental variability can have on the distribution of (rl) values [41]. The measurement error should be minimal compared to the level of variation of the (rl) values [1,42] and there should not be antisymmetry and/or directional asymmetry, which will make the correction proposed in this paper inapplicable [43,44]. Potentially, there is a very promising application of fluctuating asymmetry as an indicator of environmental stress if we choose to apply the exact correction proposed in this paper on clonal organisms where no genetic substructure is present [4551]. The absence of genetic substructure is allowing us to exclude one of the potential biases which is afflicting the fluctuating asymmetry indexes. In addition, following the methodology proposed in [21,37,40], it will be possible to exclude samples in an investigation where the presence of environmental variability and/or antisymmetry/directional asymmetry have been detected. Once all these checks have been performed on the samples which are being compared for differences in the degree of fluctuating asymmetry, we believe that fluctuating asymmetry remains a powerful tool for comparing the level of developmental instability of samples. The methodology proposed in [37,40] can clearly also be utilized for the detection of the presence of genetic substructuring and in this case fluctuating asymmetry can be utilized for the detection of genetic and environmental stress in sexually reproducing populations which expands its application in the field of conservation biology in wild populations.

Acknowledgments

This study has been partly supported by the Danish Natural Science Research Council (Grant Numbers #21-01-0526, #21-03-0125, 95095995, and #4002-00036) and the Aalborg Zoo Conservation Foundation (AZCF). Finally, we thank Volker Loeschcke, John Graham and two anonymous reviewers for invaluable suggestions and help.

Author Contributions

Both authors contributed equally.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Palmer, A.R.; Strobeck, C. Fluctuating asymmetry: Measurement, analysis, patterns. Annu. Rev. Ecol. Syst. 1986, 17, 391–421. [Google Scholar]
  2. Lens, L.; van Dongen, S.; Kark, S.; Matthysen, E. Fluctuating asymmetry as an indicator of fitness: Can we bridge the gap between studies? Biol. Rev. 2002, 77, 27–38. [Google Scholar]
  3. Pertoldi, C.; Andersen, D.H.; Kristensen, T.N.; Loeschcke, V. Consequences of a reduction in genetic variance on developmental instability estimators. Evol. Ecol. Res. 2003, 5, 893–902. [Google Scholar]
  4. Graham, J.H.; Raz, S.; Hel-Or, H.; Nevo, E. Fluctuating Asymmetry: Methods, Theory, and Applications. Symmetry 2010, 2, 466–540. [Google Scholar]
  5. Lens, L.; van Dongen, S.; Galbusera, P. Developmental instability and inbreeding natural bird populations exposed to different levels of habitat disturbance. J. Evol. Biol. 2000, 13, 889–896. [Google Scholar]
  6. Leary, R.F.; Allendorf, F.W. Fluctuating asymmetry as an indicator of stress: implication for conservation biology. Trends Ecol. Evol. 1989, 4, 214–217. [Google Scholar]
  7. Møller, A.P.; Swaddle, J.P. Asymmetry, Developmental Stability and Evolution; Oxford University Press: Oxford, UK, 1997. [Google Scholar]
  8. Pertoldi, C.; Loeschcke, V.; Madsen, A.B.; Randi, E. Developmental stability in the Eurasian Otter (Lutra lutra) in Denmark. Ann. Zool. Fenn. 1997, 34, 187–196. [Google Scholar]
  9. Pertoldi, C.; Madsen, A.B.; Randi, E.; Braun, A.; Loeschcke, V. Variation of skull morphometry of Eurasian otters (Lutra lutra) in Denmark and Germany. Ann. Zool. Fenn. 1998, 35, 87–94. [Google Scholar]
  10. Graham, J.H.; Freeman, D.C.; Emlen, J.M. Developmental stability: A sensitive indicator of populations under stress. In Environmental Toxicology and Risk Assessment; ASTM STP 1179; Landis, W.G., Hughes, J., Lewis, M.A., Eds.; American Society for Testing and Materials: Philadelphia, PA, USA, 1993; pp. 136–158. [Google Scholar]
  11. Markow, T.A. Developmental Instability: Its Origins and Evolutionary Implications; Kluwer: Dordrecht, The Netherlands, 1994. [Google Scholar]
  12. Kristensen, T.N.; Pertoldi, C.; Pedersen, L.D.; Andersen, D.H.; Bach, L.A.; Loeschcke, V. The increase of fluctuating asymmetry in a monoclonal strain of collembolans after chemical exposure—Discussing a new method for estimating the environmental variance. Ecol. Indic. 2004, 4, 73–81. [Google Scholar]
  13. Vøllestad, L.A.; Hindar, K.; Møller, A.P. Meta-analysis of fluctuating asymmetry in relation to heterozygosity. Heredity 1999, 83, 206–218. [Google Scholar]
  14. Woods, R.E. The association between fluctuating asymmetry, trait variability, trait heritability and stress: A multiply-replicated experiment on combined stresses Drosophila melanogaster. Evolution 1999, 53, 493–505. [Google Scholar]
  15. Gilligan, D.M.; Woodworth, L.M.; Montgomery, M.E.; Nurthern, R.K.; Briscoe, D.A.; Frankham, R. Can fluctuating asymmetry be used to detect inbreeding and loss of genetic diversity in endangered populations? Anim. Conserv. 2000, 3, 97–104. [Google Scholar]
  16. Pertoldi, C.; Kristensen, T.N.; Andersen, D.H.; Loeschcke, V. Review: Developmental Instability as an estimator of genetic stress. Heredity. 2006, 96, 122–127. [Google Scholar]
  17. Imasheva, A.G.; Loeschcke, V.; Lazebny, O.; Zhivotovsky, L.A. Effects of extreme temperatures on quantitative variation and developmental stability in Drosophila melanogaster and Drosophila buzzatii. Biol. J. Linn. Soc. 1997, 61, 117–126. [Google Scholar]
  18. Kristensen, T.N.; Pertoldi, C.; Andersen, D.H.; Loeschcke, V. The use of fluctuating asymmetry and phenotypic variability as indicators of developmental instability: A test of a new method employing clonal organisms and high temperature stress. Evol. Ecol. Res. 2003, 5, 53–68. [Google Scholar]
  19. Lajus, D.L.; Graham, J.H.; Kozhara, A.V. Developmental instability and the stochastic component of total phenotypic variance. In Developmental Instability: Causes and Consequences; Polak, M., Ed.; Oxford University Press: Oxford, UK, 2003; pp. 343–363. [Google Scholar]
  20. Loeschcke, V.; Bundgaard, J.; Barker, J.S.F. Variation in body size and life history traits in Drosophila aldrichi and D. buzzatii from a latitudinal cline in eastern Australia. Heredity 2000, 85, 423–433. [Google Scholar]
  21. Pertoldi, C.; Kristensen, T.N.; Loeschcke, V. A new method for estimating environmental variability for parthenogenetic organisms, and the use of fluctuating asymmetry as an indicator of developmental stability. J. Theor. Biol. 2001, 4, 407–410. [Google Scholar]
  22. Pertoldi, C.; Loeschcke, V.; Scali, V. Developmental stability in sexually reproducing and parthenogenetic populations of Bacillus rossius rossius and Bacillus rossius redtenbacheri. Evol. Ecol. Res. 2001, 4, 449–463. [Google Scholar]
  23. Pertoldi, C.; Bundgaard, J.; Loeschcke, V.; Barker, J.S.F. The phenotypic variance gradient? A novel concept. Ecol. Evol. 2014, 22, 4230–4236. [Google Scholar]
  24. Taylor, L.R. Aggregation, variance and the mean. Nature 1961, 189, 732–735. [Google Scholar]
  25. Mutsunori, T. On the mathematical basis of the variance-mean power relationship. Res. Popul. Ecol. 1995, 37, 43–48. [Google Scholar]
  26. Fisher, R.A. The relation between variability and abundance shown by the measurements of the eggs of British nesting birds. Proc. R. Soc. Lond. B. Biol. 1937, 122, 1–26. [Google Scholar]
  27. Falconer, D.; Mackay, T. Introduction to Quantitative Genetics, 4th ed; Longman Inc.: New York, NY, USA, 1996; p. 464. [Google Scholar]
  28. Windig, J.J.; Nylin, S. How to compare fluctuating asymmetry of different traits. J. Evol. Biol. 2000, 13, 29–37. [Google Scholar]
  29. Pertoldi, C.; Bach, L.A.; Madsen, A.B.; Randi, E.; Loeschcke, V. Morphological variability and developmental instability in subpopulations of the Eurasian badger (Meles meles) in Denmark. J. Biogeogr. 2003, 30, 949–958. [Google Scholar]
  30. Pertoldi, C.; Givskov, J.S.; David, J.R.; Loeschcke, V. Lerner’s theory on the genetic relationship between heterozygosity, genomic coadaptation and developmental instability. Evol. Ecol. Res. 2006, 8, 1487–1498. [Google Scholar]
  31. Neves, H.H.R.; Carvalheiro, R.; Queiroz, S.A. Genetic and environmental heterogeneity of residual variance of weight traits in Nellore beef cattle. Genet. Sel. Evol. 2012, 44. [Google Scholar] [CrossRef]
  32. Ronnegard, L.; Valdar, W. Detecting major genetic loci controlling phenotypic variability in experimental crosses. Genetics 2011, 188, 435–447. [Google Scholar]
  33. Levy, S.F.; Siegal, M.L. Network hubs buffer environmental variation in Saccharomyces cerevisiae. PLoS Biol. 2008, 6. [Google Scholar] [CrossRef]
  34. Geiler-Samerotte, K.A.; Bauer, C.R.; Li, S.; Ziv, N.; Gresham, D.; Siegal, M.L. The details in the distributions: Why and how to study phenotypic variability. Curr. Opin. Biotechnol. 2013, 24, 752–759. [Google Scholar]
  35. Pertoldi, C.; Faurby, S.; Reed, D.H.; Knape, J.; Björklund, M.; Lundberg, P.; Kaitala, V.; Loeschcke, V.; Bach, L.A. Scaling of the mean and variance of population dynamics under fluctuating regimes. Theor. Biosci. 2014, 133, 165–173. [Google Scholar]
  36. Pertoldi, C.; Faurby, S. Consequences of Environmental Fluctuations on Taylor’s Power Law and Implications for the Dynamics and Persistence of Populations. Acta Biotheor 2013, 61, 173–180. [Google Scholar]
  37. Pertoldi, C.; Jorgensen, H.B.H.; Randi, R.; Jensen, L.F.; Kjaersgaard, A.; Loeschcke, V.; Faurby, S. Implementation of mixture analysis on quantitative traits in studies of neutral versus selective divergence. Evol. Ecol. Res. 2012, 14, 881–895. [Google Scholar]
  38. Pertoldi, C.; Bach, L.A.; Loeschcke, V. On the brink between extinction and persistence. Biol. Direct. 2008, 3. [Google Scholar] [CrossRef]
  39. Pertoldi, C.; Bach, L.A.; Barker, J.S.F.; Lundberg, P.; Loeschcke, V. The consequences of the variance-mean rescaling effect on effective population size. Oikos 2007, 116, 769–774. [Google Scholar]
  40. Pertoldi, C.; Garcia-Perea, R.; Godoy, J.A.; Delibes, M.; Loeschcke, V. Morphological consequences of range fragmentation and population decline on the endangered Iberian lynx (Lynx pardinus). J. Zool. 2006, 268, 73–86. [Google Scholar]
  41. Pertoldi, C.; Loeschcke, V.; Braun, A.; Madsen, A.B.; Randi, E. Craniometrical variability and developmental stability. Two useful tools for assessing the population viability of Eurasian otter (Lutra lutra) populations in Europe. Biol. J. Linn. Soc. 2000, 70, 309–323. [Google Scholar]
  42. Björklund, M.; Merilä, J. Why some measures of fluctuating asymmetry are so sensitive to measurement error. Ann. Zool. Fenn. 1997, 34, 133–137. [Google Scholar]
  43. Petavy, G.; David, J.R.; Debat, V.; Pertoldi, C.; Moreteau, B. Phenotypic and genetic variability of sternopleural bristle number in Drosophila melanogaster under daily thermal stress: Developmental instability and anti-asymmetry. Evol. Ecol. Res. 2006, 8, 149–167. [Google Scholar]
  44. Pertoldi, C.; Podesta, M.; Loeschcke, V.; Schandorff, S.; Marsili, L.; Mancusi, C.; Nicolosi, P.; Randi, E. Effect of the 1990 die-off in the northern Italian seas on the developmental stability of the striped dolphin Stenella coeruleoalba (Meyen, 1833). Biol. J. Linn. Soc. 2000, 71, 61–70. [Google Scholar]
  45. Andersen, D.H.; Pertoldi, C.; Scali, V.; Loeschcke, V. Intraspecific hybridization, developmental stability and fitness in Drosophila mercatorum. Evol. Ecol. Res. 2002, 4, 603–621. [Google Scholar]
  46. Andersen, D.H.; Pertoldi, C.; Scali, V.; Loeschcke, V. Heat stress and age induced maternal effects on wing size and shape in parthenogenetic Drosophila mercatorum. J. Evol. Biol. 2005, 18, 884–892. [Google Scholar]
  47. Andersen, D.H.; Pertoldi, C.; Loeschcke, V.; Scali, V. Developmental instability, hybridization and heterozygosity in stick insects of the genus Bacillus (Insecta; Phasmatodea) with different modes of reproduction. Biol. J. Linn. Soc. 2006, 87, 249–259. [Google Scholar]
  48. Faurby, S.; Kjaersgaard, A.; Pertoldi, C.; Loeschcke, V. The effect of maternal and grandmaternal age in benign and high temperature environments. Exp. Gerontol. 2005, 40, 988–996. [Google Scholar]
  49. Kjaersgaard, A.; Faurby, S.; Andersen, D.H.; Pertoldi, C.; David, J.R.; Loeschcke, V. Effects of temperature and maternal and grandmaternal age on wing shape in parthenogenetic Drosophila mercatorum. J. Therm. Biol. 2007, 32, 59–65. [Google Scholar]
  50. Rogilds, A.; Andersen, D.H.; Pertoldi, C.; Dimitrov, K.; Loeschcke, V. Maternal and grandmaternal age effects on developmental instability and wing size in parthenogenetic Drosophila mercatorum. Biogerontology 2005, 6, 61–69. [Google Scholar]
  51. Pertoldi, C.; Rogilds, A.; Andersen, D.H.; Loeschcke, V. Heat-induced maternal effects in Drosophila mercatorum and its evolutionary consequences. Evol. Ecol. Res. 2005, 7, 203–217. [Google Scholar]

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Pertoldi, C.; Kristensen, T.N. A New Fluctuating Asymmetry Index, or the Solution for the Scaling Effect? Symmetry 2015, 7, 327-335. https://0-doi-org.brum.beds.ac.uk/10.3390/sym7020327

AMA Style

Pertoldi C, Kristensen TN. A New Fluctuating Asymmetry Index, or the Solution for the Scaling Effect? Symmetry. 2015; 7(2):327-335. https://0-doi-org.brum.beds.ac.uk/10.3390/sym7020327

Chicago/Turabian Style

Pertoldi, Cino, and Torsten Nygaard Kristensen. 2015. "A New Fluctuating Asymmetry Index, or the Solution for the Scaling Effect?" Symmetry 7, no. 2: 327-335. https://0-doi-org.brum.beds.ac.uk/10.3390/sym7020327

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