气候包络模型在尼日利亚控制巨型片形吸虫流行中的应用

I. Hamisu, Abdulmumin Garba Budah
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引用次数: 0

摘要

绘制病原体流行的潜在区域是一个重复的过程,本研究是对尼日利亚巨型片形吸虫全国流行情况进行建模的初步尝试。结合生物气候变量,利用气候包络模型(MaxEnt)分析和预测尼日利亚巨型片形吸虫的空间范围,确定尼日利亚巨型片形吸虫的适宜流行区。结果表明,预测的高风险地区包括尼日利亚西北部的索科托、凯比、卡齐纳和卡诺州的一些地区。包奇、贡贝、博尔诺和高原州的大部分地区也是如此。该模型显示的其他高风险地区包括西南部的埃基蒂、奥贡和拉各斯州。同样,感染风险覆盖了尼日利亚东南部河流、阿夸伊博姆河和克罗斯河的一些地区。模型显示,训练增益最高的三个最重要变量是等温线、最冷月最低气温和降水季节性。MaxEnt模型的性能优于随机预测,训练AUC得分为0.891。这表明,MaxEnt基于其非常好的预测精度,是一种适合预测尼日利亚片形吸虫病流行空间范围的建模技术。
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Application of Climate Envelope Model in the Control of Fasciola gigantica Prevalence in Nigeria
: Mapping the potential areas for pathogen prevalence is a repetitive process and this research is an initial attempt to model the nation-wide prevalence of Fasciola gigantica in Nigeria. Data on Fasciola gigantica occurrence localities were obtained from published literature together with bioclimatic variables, the climate envelope model (MaxEnt) was utilized to analyze and predict its spatial range and to create suitable areas for Fasciola gigantica prevalence in Nigeria. The results show that the predicted areas of high risk included parts of northwestern Nigeria in Sokoto, Kebbi, Katsina, and some patches of Kano State. Likewise, Bauchi, Gombe, Borno, and large portions of Plateau State. Other areas of high risk as indicated by the model included Ekiti, Ogun, and Lagos State in the southwest. Similarly, infection risks covered the southeastern Nigeria in some parts of Rivers, Akwa Ibom and Cross rivers. The three most important variables with the highest training gain as revealed by the model are isothermality, minimum temperature of the coldest month, and precipitation seasonality. The performance of the MaxEnt model was better than a random prediction with training AUC scores of 0.891. This shows that MaxEnt is a suitable modelling technique for predicting the spatial range of fascioliasis prevalence in Nigeria based on its very good predictive accuracy.
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