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A new study method of microhabitat structure of small mammals

Um novo método de estudo da estrutura de microhábitat de pequenos mamíferos

Abstracts

The variables in habitat studies are usually transformed in such a way that they become abstractions and intuition is lost. We tested a new method for the analysis of habitat using data collected in a grid laid at the "restinga de Maricá", in Rio de Janeiro State, Brazil. Thirty-seven microhabitat variables were measured at each trap station. We assume that these variables characterize the microhabitat structure at the moment when measurements were taken. The data are transformed in 3 ways: (1) the averages of the measured variables were calculated, as usual in habitat studies; (2) the data are transformed in densities per area in square meters without reduction in the number of variables; and (3) we calculated the natural logarithms of the data thus transformed. The 3 sets were analised through discriminant analysis. The logarithms of densities were the most efficient kind of transformation. This transformation resulted in a significance of p = 0.0001 with 39.72% of variance in the 1st discriminant function and of p = 0.0426 with 31.45% of variance in the 2nd function, and 84.62% of groups correctly classified. We obtained better classification results than previous similar works and we kept the intuition through the data analysis.

discriminant analysis; methods; niche; neotropics; small mammals


As variáveis utilizadas em estudos de hábitat são transformadas de tal maneira que se tornam abstrações e se perde a intuição. Testamos um novo método para esse tipo de análise usando dados coletados em uma grade na restinga de Maricá, Rio de Janeiro. Em cada ponto de captura foram medidas 37 variáveis de microhábitat. Consideramos que tais variáveis caracterizam a estrutura dos microhábitats no momento em que são tomadas. Os dados foram transformados de 3 maneiras: (1) as médias das variáveis foram calculadas, como é usual em estudos de hábitat; (2) os dados foram transformados em suas densidades por área em metros quadrados, sem redução no número de variáveis; e (3) calculamos os logaritimos naturais dos dados transformados em densidades. Os 3 conjuntos foram submetidos à análise discriminante. O logaritimo das densidades foi o tipo de transformação mais eficiente. Esta transformação resultou na obtenção de p = 0,0001, com 39,72% da variância na 1ª função e um p = 0,0426 com 31,45% da variância na 2ª função, com um acerto de 84,62% na classificação dos grupos. Os resultados obtidos foram melhores do que em trabalhos similares anteriores, mantendo-se a intuição.

análise discriminante; métodos; nicho; pequenos mamíferos; Região Neotropical


A NEW STUDY METHOD OF MICROHABITAT STRUCTURE OF SMALL MAMMALS

CERQUEIRA, R. and FREITAS, S. R.

Departamento de Ecologia, Universidade Federal do Rio de Janeiro, C.P. 68020, CEP 21941-590, Rio de Janeiro, RJ, Brazil

Correspondence to: Rui Cerqueira, Departamento de Ecologia, Universidade Federal do Rio de Janeiro, C.P. 68020, CEP 21941-590, Rio de Janeiro, RJ, Brazil

Received October 08, 1997 - Accepted November 17, 1998 - Distributed June 30, 1999

ABSTRACT

The variables in habitat studies are usually transformed in such a way that they become abstractions and intuition is lost. We tested a new method for the analysis of habitat using data collected in a grid laid at the "restinga de Maricá", in Rio de Janeiro State, Brazil. Thirty-seven microhabitat variables were measured at each trap station. We assume that these variables characterize the microhabitat structure at the moment when measurements were taken. The data are transformed in 3 ways: (1) the averages of the measured variables were calculated, as usual in habitat studies; (2) the data are transformed in densities per area in square meters without reduction in the number of variables; and (3) we calculated the natural logarithms of the data thus transformed. The 3 sets were analised through discriminant analysis. The logarithms of densities were the most efficient kind of transformation. This transformation resulted in a significance of p = 0.0001 with 39.72% of variance in the 1st discriminant function and of p = 0.0426 with 31.45% of variance in the 2nd function, and 84.62% of groups correctly classified. We obtained better classification results than previous similar works and we kept the intuition through the data analysis.

Key words: discriminant analysis, methods, niche, neotropics, small mammals.

RESUMO

Um novo método de estudo da estrutura de microhábitat de pequenos mamíferos

As variáveis utilizadas em estudos de hábitat são transformadas de tal maneira que se tornam abstrações e se perde a intuição. Testamos um novo método para esse tipo de análise usando dados coletados em uma grade na restinga de Maricá, Rio de Janeiro. Em cada ponto de captura foram medidas 37 variáveis de microhábitat. Consideramos que tais variáveis caracterizam a estrutura dos microhábitats no momento em que são tomadas. Os dados foram transformados de 3 maneiras: (1) as médias das variáveis foram calculadas, como é usual em estudos de hábitat; (2) os dados foram transformados em suas densidades por área em metros quadrados, sem redução no número de variáveis; e (3) calculamos os logaritimos naturais dos dados transformados em densidades. Os 3 conjuntos foram submetidos à análise discriminante. O logaritimo das densidades foi o tipo de transformação mais eficiente. Esta transformação resultou na obtenção de p = 0,0001, com 39,72% da variância na 1a função e um p = 0,0426 com 31,45% da variância na 2a função, com um acerto de 84,62% na classificação dos grupos. Os resultados obtidos foram melhores do que em trabalhos similares anteriores, mantendo-se a intuição.

Palavras-chave: análise discriminante, métodos, nicho, pequenos mamíferos, Região Neotropical.

INTRODUCTION

Several methods have been used in the studies of microhabitat choice by small mammals. Most studies use 2 basic aspects of vegetation that can be distinguished: structure or physiognomy, and floristics (Morrison et al., 1992). Many authors have used structural aspects in their studies of microhabitat choice (Cerqueira et al., 1994, Dueser & Shugart, 1978; Ernest & Mares, 1986; Murúa & González, 1982), while others have used floristic aspects (Bonaventura et al., 1991, 1992) or both (Fa et al., 1990; Monamy, 1995). As Cerqueira (1995) has pointed out, floristics may be an indication of resources other than space, being a measure of niche not of habitat. Even some common habitat measurements as, for instance, litter, may be linked to niche in certain species (Freitas et al., 1997). The structural measures have different orders of magnitude and, therefore, are not very amenable to analysis and the data must be transformed before analysis. The most common methods of transformation are the use of means (Kelt et al., 1994), square-roots, natural logarithms or arcsine to normalise the data (Adler & Wilson, 1987; Murúa & González, 1982). Another problem is that the data are gathered using different unit systems and the results obtained are not intuitive. We describe here a method to avoid these problems (Cerqueira et al., 1994).

MATERIAL AND METHODS

We studied a 1 hectare grid with 100 traps evenly spaced. The area was described elsewhere (Cerqueira et al., 1990, 1994). We took 37 microhabitat measurements at each trap station, belonging to fourteen categories:

I. Canopy height (CH): estimate of canopy height taken at the trap station.

II. Woody species density (WD): wood plant species' richness, done by counting the woody species in a circle of 0.52 m radius at ground level.

III. Herbaceous species density (HD): similar to WD using herbaceous species.

IV. Woody stems density (WSD): number of woody stems in a 0.52 m radius at several heights. The measurement is taken turning a 0.52 m stick from an axis staked to the ground, at heights of 0.20 m, 0.40 m, 0.60 m, 0.80 m, 1.00 m, 1.20 m, 1.40 m, 1.60 m, 1.80 m and 2.00 m, counting each live woody stem that touches the stick.

V. Herbaceous stem density (HSD): similar to WSD using live herbaceous stems.

VI. Horizontal obstruction estimate (HOE): vegetation cover in 3 height categories. The measurement is taken using a rectangle with 0.30 m x 0.50 m, divided into 32 equal small squares. This variable was measured in the following heights from the ground: 0.50 m, 1.00 m, and 1.50 m. The observer positions himself at 0.52 m from the trap station and he observes through the rectangle at each height. The retangle is positioned at north, south, east and west directions at each height. We counted the number of squares that were more than 50% obstructed by the vegetation.

VII. Soil surface exposure (SSE): the exposure is measured along two perpendicular transects 5.0 m long and 0.60 m wide at each trap station in an interval of every 0.50 m in each direction (north, south, east and west). We considered five soil surface exposure categories (0 to 4). The category zero corresponded a totally covered ground and the category four a completely open floor.

VIII. Soil litter density (LD): litter was collected at each trap station in a 11.56 cm radius circle (0.042 m2 area). The litter was then ovendryed in a stove at 45oC during 48 h, and weighed (g/m2).

IX. Distance to the closest trees (DIST): a measure of tree dispersion. We measured the distances to the closest trees in a 5.00 m radius circle from the trap station.

X. Mean diameter of the closest tree (DIA): diameters of the same last trees.

XI. Number of holes (HOL), number of hiding places (HID), number of trees with dead canopy (DC), number of stumps (STU), number of trees of diameter at breast high ³ 0.75 m (DBH): all these measurements represent presumable hiding places for small mammals. Each measurement for each variable is taken in a 2.50 m diameter circle at the trap station.

All variables were measured in the same trapping session within 8 days interval.

The measurements taken were transformed as 3 different sets of data. First, we used the usual procedure, calculating the mean value of each category (Table 1). We used the raw data of Litter Density (LD) and Canopy Height (CH). To prepare the 2nd set we transformed each measurement as densities per square meter, excepting CH (Table 2). The 3rd set was the same 2nd set transformed in natural logarithms, as suggested by Digby & Kempton (1987).

TABLE 1

Equations used for mean data transformation applied to each microhabitat variable.

TABLE 2

Equations used for area data transformation applied to each variable. Each WSD and HSD heights and HOE obstructions had its own value.

The data in each set was submitted to canonical discriminant analysis. The a priori groups were determined by the species trapped in each station during a period of 6 nights.

The groups so formed were named after the species caught: (1) no mammals, trap station without captures; (2) Philander, points that captured the marsupial Philander frenata; (3) Akodon (after Akodon cursor); (4) Metachirus (after Metachirus nudicaudatus); (5) Trinomys (after Trinomys eliasi); and (6) Didelphis (after Didelphis aurita).

RESULTS

The classification results were similar in spite the kind of transformation used (Table 3). However, only the logarithm set was the only one that produced significant functions. It had as well a set of variables correlated with the functions (Table 4).

TABLE 3

Canonical discriminant functions, its significance and classification in all kinds of data transformations (* = p <0.05).

TABLE 4

Significant variables (p <0.05) by univariate ratio F and Wilk’s lambda in discriminant analysis using each transformation.

DISCUSSION

Multivariate data analysis have been in use in habitat studies since the pioneer work by Cody (1968). However, this approach has been criticised on several grounds, both mathematical and biological (James & Culloch, 1990). A variety of methods of measurement has been in use for mammals. Nevertheless, few studies showed as the measurements were done (Dueser & Shugart, 1978; Kelt, 1996; Yahner, 1986).

The data are always transformed or reduced but few studies show how the transformation was done (Adler & Wilson, 1987; Murúa & González 1982; Yahner, 1986).

Therefore, it is usually impossible to compare studies or to have even a glimpse on what are the authors talking of.

We have chosen our measurements on naturalistic grounds trying to describe the more evident features of the "restinga". However, our 1st studies had been disappointing (Carvalho-Huber, 1989) since we noticed a low correlation between variables and functions.

The simple transformations thus used not only get out the naturalist intuition, but the significance as well. We detected a possible cause, the change in the value of the measured variables through the time. Therefore, for the present report we measured all variables during the trapping. We describe the variation of habitat in time elsewhere (Freitas & Cerqueira, submitted).

The data transformation with best performance was the logarithm transformation applied to area transformation. The main advantage of this transformation is an intuitive perception of numerical results: it is easier to understand and compare data that reads 25 herbaceous stems/m2 than one wich reads a mean of 25 herbaceous stems in a site.

Moreover, area transformation is a solution to put all variables into one only metric system. Using the same data set, Cerqueira et al. (1994) achieved a significance of p = 0.0325 and classification of 60.69% at discriminant analysis using area transformation. We obtained most groups correctly classified (84.62%) using also the logarithm of the area transformation.

When all species are analysed together, it is supposed that the factors that determine a species presence in a habitat are the same for all species. However, our results showed that different species are influenced by distinct habitat factors. These results suggest that the habitat choice must be studied for each species separately.

Acknowledgements — We would like to thank the people of the Laboratório de Vertebrados that helped us in the field work. The 1st hints for transforming the variables were discussed with B. Carvalho, M. Cardoso, M. P. Soares, S. M. S. Guapyassú and P. S. D'Andrea. N. P. Barros and A. M. Marcondes gave technical and administrative help. The work was supported by grants from CAPES, CEPG/UFRJ, CNPq, FAPERJ, FINEP and FUJB/UFRJ.

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Publication Dates

  • Publication in this collection
    27 June 2001
  • Date of issue
    May 1999

History

  • Accepted
    17 Nov 1998
  • Received
    08 Oct 1997
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