| Literature DB >> 27557277 |
Edwin C Rowe1, Adriana E S Ford2,3, Simon M Smart4, Peter A Henrys4, Mike R Ashmore5.
Abstract
Atmospheric nitrogen (N) deposition has had detrimental effects on species composition in a range of sensitive habitats, although N deposition can also increase agricultural productivity and carbon storage, and favours a few species considered of importance for conservation. Conservation targets are multiple, and increasingly incorporate services derived from nature as well as concepts of intrinsic value. Priorities vary. How then should changes in a set of species caused by drivers such as N deposition be assessed? We used a novel combination of qualitative semi-structured interviews and quantitative ranking to elucidate the views of conservation professionals specialising in grasslands, heathlands and mires. Although conservation management goals are varied, terrestrial habitat quality is mainly assessed by these specialists on the basis of plant species, since these are readily observed. The presence and abundance of plant species that are scarce, or have important functional roles, emerged as important criteria for judging overall habitat quality. However, species defined as 'positive indicator-species' (not particularly scarce, but distinctive for the habitat) were considered particularly important. Scarce species are by definition not always found, and the presence of functionally important species is not a sufficient indicator of site quality. Habitat quality as assessed by the key informants was rank-correlated with the number of positive indicator-species present at a site for seven of the nine habitat classes assessed. Other metrics such as species-richness or a metric of scarcity were inconsistently or not correlated with the specialists' assessments. We recommend that metrics of habitat quality used to assess N pollution impacts are based on the occurrence of, or habitat-suitability for, distinctive species. Metrics of this type are likely to be widely applicable for assessing habitat change in response to different drivers. The novel combined qualitative and quantitative approach taken to elucidate the priorities of conservation professionals could be usefully applied in other contexts.Entities:
Mesh:
Year: 2016 PMID: 27557277 PMCID: PMC4996518 DOI: 10.1371/journal.pone.0161085
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Pre-defined topics covered by semi-structured interviews, and themes that emerged within these topics.
| Topic (pre-defined) | Theme (emergent) |
|---|---|
| T1. Main features of habitat quality | |
| T2. Value of individual species | |
| T3. Plant & lichen indicator-species | |
| T4. Taxa other than plants and lichens | |
| T5. Species-groups | |
| T6. Reference communities | |
Types of habitat considered in the study, and numbers of rankings obtained.
| EUNIS Level 2 | EUNIS Level 3 | ||||
|---|---|---|---|---|---|
| D1 | Raised and blanket bogs | 3 | D1.2 | Blanket bogs | 1 |
| D2 | Valley mires, poor fens and transition mires | 1 | |||
| E1 | Dry grasslands | 3 | |||
| E2 | Mesic grasslands | 2 | |||
| E3 | Seasonally wet and wet grasslands | 2 | |||
| F4 | Temperate shrub heathland | 5 | F4.1 | Wet temperate shrub heathland | 2 |
| F4.2 | Dry temperate shrub heathland | 2 | |||
Habitat types were defined using the EUNIS system [57].
n = number of specialists who ranked the set of examples for the habitat.
Algorithmic metrics calculated from example relevé data.
| Metric | Summary of calculation method |
|---|---|
| Species-richness | Total number of vascular plant, bryophyte and lichen species present. |
| Simpson’s diversity index | 1 − (sum of squared cover proportions) |
| Scarcity | −1 × number of 10×10 km squares in the UK where the species occurs [ |
| Positive indicator-species | Number of positive indicator-species present. |
| Negative indicator-species | −1 × number of negative indicator-species present. |
| Positive minus negative indicator-species | Number of positive indicator-species present, minus number of negative indicator-species present. |
| Species-groups (bog) | Total cover of |
| Species-groups (heathland) | Total cover of sub-shrubs. |
| Species-groups (grassland) | Forb cover / total cover. |
| Maximum similarity | Maximum Czekanowski similarity to a reference NVC subcommunity. |
| Mean similarity | Mean Czekanowski similarity to reference NVC subcommunities. |
| Infertility indicator-score | −1 × mean Ellenberg N score for plant species present, not cover-weighted. |
Key messages from semi-structured interviews.
| Theme | Key message | Example quotations |
|---|---|---|
| Habitat quality is viewed in terms of vegetation composition, but also more holistically as the result of a combination of features, including habitat structure and physical attributes such as water table dynamics. | ||
| Structural and functional aspects of habitats, such as water quality and quantity, surface topography, and management impacts, are highly important for wetlands in the assessment of habitat quality, but may also be of increasing importance in the future for other habitats. | ||
| Vegetation, both in terms of composition and structure, is the dominant factor in habitat quality assessment for grasslands and heathlands. Species assemblages are typically more important for habitat quality assessment than individual species, although both can act as a proxy for environmental conditions. | ||
| Habitat quality assessment may need to reflect geographical differences in condition–whether caused naturally or by historical anthropogenic causes–as well as the temporally dynamic changes that may occur in a habitat. | ||
| Ecosystem services, such as water and climate regulation, have the potential be included as an additional factor to biodiversity conservation objectives in habitat quality assessments. | ||
| The Common Standards Monitoring guidance acts as the key framework for much of the habitat quality assessment; however, tailoring of CSM indicator-species lists has improved local applicability and practicality for use by local monitoring officers. | “ | |
| Species that are structurally or functionally important have particular value, especially in wetland habitats. They may have increasing relevance to other habitats in the face of climate change. | ||
| Scarce species provide added value to a habitat, and can be important for site designation. However, they are not usually a dominant criterion for assessing habitat quality, in part because they do not occur on enough sites to be widely applicable as indicators. | ||
| Invasive species, whether native or non-native, are generally considered negative when they out-compete or cause other detrimental impacts to valued native species, rather than being considered negative | “ | |
| The historical context of a habitat or a particular site can influence the management goals with regards to species assemblage, potentially resulting in over-valuing or undervaluing species. | ||
| Valuing some species more highly than others has challenges and potential conflicts, for example over which species to conserve. | ||
| Criteria for selecting positive plant and lichen indicators include being distinctive for the habitat, typical for the habitat, or indicating good environmental conditions. | ||
| Negative indicator-species are typically those that out-compete desirable native species, but they also may be those that indicate poor environmental conditions such as heavy grazing and eutrophication. Some species may become negative indicators if they cause ecosystem disbenefits. | ||
| The use of species-indicators can be complex and requires flexibility to take into account variation in geographical factors (including scale and altitude), natural habitat variation, and other factors such as past management. | ||
| Plants and lichens are typically considered more useful for the assessment of habitat quality than other taxa. However, other taxa can be an important feature for site designation, in which case the species will typically be monitored by specialists in those taxa rather than as part of routine habitat quality assessment. | ||
| In some cases other taxa require management conditions that are not compatible with high habitat quality; however these different requirements can normally be accommodated, particularly on larger sites. | ||
| There are a number of barriers to using other taxa in habitat quality assessment, including limitations in resources, time, skill, knowledge of species’ autecology, and consistency of sightings. | ||
| The quality of a habitat with respect to other taxa may be inferred through using environmental conditions, such as habitat structure and vegetation composition, as a proxy. | “ | |
| Assessing cover of species-groups can be a useful tool for inferring habitat quality. However, species-groups may not always provide the level of detail necessary, for example for rare subcommunities or as a proxy for environmental conditions. | ||
| Cover of species-groups can be useful in habitat quality assessment, such as forbs and grasses for grasslands; dwarf shrubs, graminoids, mosses and lichens for heathlands; and mosses for wetlands, but a group such as ‘graminoids’ can include negative and positive indicator-species. | ||
| There is considerable variation in the examples of each habitat that are seen as high quality, so it would be very difficult to define a reference community. | ||
| The NVC tables, or past records where these exist, could be used to define a reference community at site level, or a set of reference communities covering the variation in high-quality habitat. | “ | |
Fig 1Correlations of habitat specialists’ rankings with algorithmic rankings, for heathland.
Correlations between rank-scores given by habitat specialists to 12 examples of EUNIS class F4 (Temperate shrub heathland) and rank scores for metrics based on algorithms applied to the same examples: Species richness; Simpson diversity; Scarcity, −1 × UK prevalence of least-prevalent species present; number of positive indicator-species; −1 × number of negative indicator-species; number of positive indicator-species minus number of negative indicator-species; subshrub cover; greatest Czekanowski similarity to corresponding National Vegetation Classification (NVC) subcommunities; Infertility, −1 × mean Ellenberg N score. Tau, Kendall’s Tau statistic.
Coefficients for correlations between habitat specialists’ rankings of examples of different habitats and algorithmic rankings.
| Metric | D1 | D1.2 | D2 | E1 | E2 | E3 | F4 | F4.1 | F4.2 |
|---|---|---|---|---|---|---|---|---|---|
| Correlation coefficient (Kendall’s Tau) | |||||||||
| SR | 0.29ns | 0.21ns | 0.06ns | 0.52 | 0.50 | 0.81 | 0.25ns | 0.80 | 0.60 |
| SimpsonD | 0.39ns | 0.02ns | 0.08ns | 0.47 | 0.48 | 0.46 | 0.18ns | 0.54 | 0.17 |
| Scarcity | 0.38ns | 0.08ns | 0.03ns | 0.27ns | 0.02ns | 0.37ns | 0.25ns | 0.06ns | 0.02ns |
| Positive | 0.85 | 0.09ns | −0.40ns | 0.72 | 0.81 | 0.85 | 0.61 | 0.78 | 0.52 |
| Negative | 0.13ns | −0.25ns | −0.13ns | −0.18ns | 0.32ns | −0.12ns | −0.10ns | −0.35ns | −0.36ns |
| Pos—Neg | 0.84 | 0.04ns | −0.46 | 0.74 | 0.66 | 0.74 | 0.34ns | 0.67 | 0.55 |
| Subshrub | 0.12ns | 0.29ns | 0.39ns | ||||||
| Forb/Tot | 0.02ns | 0.39ns | 0.15ns | ||||||
| Sphagnum | 0.53 | 0.62 | 0.52 | ||||||
| MaxSimil | 0.58 | 0.43ns | 0.29ns | 0.63 | 0.48 | 0.12ns | 0.54 | 0.64 | 0.08ns |
| MeanSimil | 0.42ns | 0.71 | 0.29ns | 0.53 | 0.61 | 0.58 | 0.30ns | 0.63 | 0.30ns |
| Infertility | 0.49 | 0.25ns | 0.11ns | 0.47 | 0.73 | 0.36ns | 0.63 | 0.57 | −0.05ns |
SR, Species-richness; SimpsonD, Simpson’s Diversity Index; Scarcity, (−1 × UK prevalence of least-prevalent species present); Positive, number of positive indicator-species; Negative, −1 × number of negative indicator-species; Pos − Neg, number of positive indicator-species minus number of negative indicator-species; MaxSimil, greatest Czekanowski similarity to corresponding National Vegetation Classification (NVC) subcommunities; MeanSimil, mean Czekanowski similarity to corresponding NVC subcommunities; Infertility, −1 × mean Ellenberg N score; ns, not significant
*, P < 0.05
**, P < 0.01
***, P < 0.001; blank cells, not applicable.