Tantipisanuh Naruemon, Gale George A, Pollino Carmel
Ecol Appl. 2014;24(7):1705-18. doi: 10.1890/13-1882.1.
Bayesian networks (BN) have been increasingly used for habitat suitability modeling of threatened species due to their potential to construct robust models with limited survey data. However, previous applications of this approach have only occurred in countries where human and budget resources are highly available, but the highest concentrations of threatened vertebrates globally are located in the tropics where resources are much more limited. We assessed the effectiveness of Bayesian networks in generating habitat suitability models in Thailand, a biodiversity-rich country where the knowledge base is typically sparse for a wide range of threatened species. The Bayesian network approach was used to generate habitat suitability maps for 52 threatened vertebrate species in Thailand, using a range of evidence types, from relatively well-documented species with good local knowledge to poorly documented species, with few local experts. Published information and expert knowledge were used to define habitat requirements. Focal species were categorized into 22 groups based on known habitat preferences, and then habitat suitability models were constructed with outcomes represented spatially. Models had a consistent structure with three major components: potential habitat, known range, and threat level. Model classification sensitivity was tested using presence-only field data for 21 species. Habitat models for 12 species were relatively sensitive (>70% congruency between observed and predicted locations), three were moderately congruent, and six were poor. Classification sensitivity tended to be high for bird models and moderate for mammals, whereas sensitivity for reptiles was low, presumably reflecting the relatively poor knowledge base for reptiles in the region. Bayesian network models show significant potential for biodiversity-rich regions with scarce resources, although they require further refinement and testing. It is possible that one detailed ecological study is sufficient to develop a model with reasonable sensitivity, but BN models for species groups with no quantitative data continue to be problematic.
贝叶斯网络(BN)因其能够利用有限的调查数据构建稳健模型的潜力,在濒危物种栖息地适宜性建模中得到了越来越广泛的应用。然而,此前这种方法仅在人力和预算资源丰富的国家得到应用,而全球濒危脊椎动物的最高集中地位于资源更为有限的热带地区。我们评估了贝叶斯网络在泰国生成栖息地适宜性模型的有效性,泰国是一个生物多样性丰富的国家,对于众多濒危物种而言,其知识库通常较为匮乏。贝叶斯网络方法被用于为泰国的52种濒危脊椎动物生成栖息地适宜性地图,使用了一系列证据类型,从有丰富本地知识记录的物种到记录较少、本地专家也较少的物种。已发表的信息和专家知识被用于定义栖息地需求。根据已知的栖息地偏好,将重点物种分为22组,然后构建栖息地适宜性模型,并以空间形式呈现结果。模型具有一致的结构,包含三个主要组成部分:潜在栖息地、已知分布范围和威胁级别。使用21个物种仅存在的实地数据对模型分类敏感性进行了测试。12个物种的栖息地模型相对敏感(观测位置与预测位置之间的一致性>70%),3个模型一致性中等,6个模型较差。鸟类模型的分类敏感性往往较高,哺乳动物模型的敏感性中等,而爬行动物模型的敏感性较低,这大概反映了该地区对爬行动物的了解相对较少。贝叶斯网络模型在资源稀缺的生物多样性丰富地区显示出巨大潜力,尽管它们需要进一步完善和测试。有可能一项详细的生态研究就足以开发出具有合理敏感性的模型,但对于没有定量数据的物种组的贝叶斯网络模型仍然存在问题。