Modeling Aquatic Macroinvertebrate Richness Using Landscape Attributes

We used a rapid, repeatable, and inexpensive geographic information system (GIS) approach to predict aquatic macroinvertebrate family richness using the landscape attributes stream gradient, riparian forest cover, and water quality. Stream segments in the Allegheny River basin were classified into e...

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Main Authors: Marcia S. Meixler, Mark B. Bain
Format: Article
Language:English
Published: Hindawi Limited 2015-01-01
Series:International Journal of Ecology
Online Access:http://dx.doi.org/10.1155/2015/926526
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spelling doaj-bf6936aadd194106b2784be0ed45b1e22020-11-24T22:35:54ZengHindawi LimitedInternational Journal of Ecology1687-97081687-97162015-01-01201510.1155/2015/926526926526Modeling Aquatic Macroinvertebrate Richness Using Landscape AttributesMarcia S. Meixler0Mark B. Bain1Department of Ecology, Evolution and Natural Resources, Rutgers University, 14 College Farm Road, New Brunswick, NJ 08901, USADepartment of Ecology, Evolution and Natural Resources, Rutgers University, 14 College Farm Road, New Brunswick, NJ 08901, USAWe used a rapid, repeatable, and inexpensive geographic information system (GIS) approach to predict aquatic macroinvertebrate family richness using the landscape attributes stream gradient, riparian forest cover, and water quality. Stream segments in the Allegheny River basin were classified into eight habitat classes using these three landscape attributes. Biological databases linking macroinvertebrate families with habitat classes were developed using life habits, feeding guilds, and water quality preferences and tolerances for each family. The biological databases provided a link between fauna and habitat enabling estimation of family composition in each habitat class and hence richness predictions for each stream segment. No difference was detected between field collected and modeled predictions of macroinvertebrate families in a paired t-test. Further, predicted stream gradient, riparian forest cover, and total phosphorus, total nitrogen, and suspended sediment classifications matched observed classifications much more often than by chance alone. High gradient streams with forested riparian zones and good water quality were predicted to have the greatest macroinvertebrate family richness and changes in water quality were predicted to have the greatest impact on richness. Our findings indicate that our model can provide meaningful landscape scale macroinvertebrate family richness predictions from widely available data for use in focusing conservation planning efforts.http://dx.doi.org/10.1155/2015/926526
collection DOAJ
language English
format Article
sources DOAJ
author Marcia S. Meixler
Mark B. Bain
spellingShingle Marcia S. Meixler
Mark B. Bain
Modeling Aquatic Macroinvertebrate Richness Using Landscape Attributes
International Journal of Ecology
author_facet Marcia S. Meixler
Mark B. Bain
author_sort Marcia S. Meixler
title Modeling Aquatic Macroinvertebrate Richness Using Landscape Attributes
title_short Modeling Aquatic Macroinvertebrate Richness Using Landscape Attributes
title_full Modeling Aquatic Macroinvertebrate Richness Using Landscape Attributes
title_fullStr Modeling Aquatic Macroinvertebrate Richness Using Landscape Attributes
title_full_unstemmed Modeling Aquatic Macroinvertebrate Richness Using Landscape Attributes
title_sort modeling aquatic macroinvertebrate richness using landscape attributes
publisher Hindawi Limited
series International Journal of Ecology
issn 1687-9708
1687-9716
publishDate 2015-01-01
description We used a rapid, repeatable, and inexpensive geographic information system (GIS) approach to predict aquatic macroinvertebrate family richness using the landscape attributes stream gradient, riparian forest cover, and water quality. Stream segments in the Allegheny River basin were classified into eight habitat classes using these three landscape attributes. Biological databases linking macroinvertebrate families with habitat classes were developed using life habits, feeding guilds, and water quality preferences and tolerances for each family. The biological databases provided a link between fauna and habitat enabling estimation of family composition in each habitat class and hence richness predictions for each stream segment. No difference was detected between field collected and modeled predictions of macroinvertebrate families in a paired t-test. Further, predicted stream gradient, riparian forest cover, and total phosphorus, total nitrogen, and suspended sediment classifications matched observed classifications much more often than by chance alone. High gradient streams with forested riparian zones and good water quality were predicted to have the greatest macroinvertebrate family richness and changes in water quality were predicted to have the greatest impact on richness. Our findings indicate that our model can provide meaningful landscape scale macroinvertebrate family richness predictions from widely available data for use in focusing conservation planning efforts.
url http://dx.doi.org/10.1155/2015/926526
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