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[土耳其新型隐球菌物种分布的预测]

[Prediction of the species distribution of Cryptococcus neoformans throughout Turkey].

作者信息

Ergin Çağrı, Şengül Mustafa, Döğen Aylin, İlkit Macit

机构信息

Pamukkale University Faculty of Medicine, Department of Medical Microbiology, Denizli, Turkey.

Mersin University Faculty of Pharmacy, Department of Pharmaceutical Microbiology, Mersin, Turkey.

出版信息

Mikrobiyol Bul. 2019 Apr;53(2):233-238. doi: 10.5578/mb.67999.

Abstract

Cryptococcus neoformans is a human pathogenic yeast that causes life-threatening infections especially in immunosuppressed patients. The environmental isolation of C.neoformans from Turkey was reported as early as 2004, although this was mostly from Eucalyptus camaldulensis colonization. Successful isolations were also reported from pomegranate (Punica granatum), oriental plane (Platanus orientalis), pine tree (Pinaceae), chestnut (Castanea sativa) and salt cedar (Tamarix hispida). The investigation of the relationship between the bioclimatic factors affecting the environmental isolation sites and the colonization of pathogens is a frequently used method. With this method, detailed risk maps can be generated in which environmental colonization can be estimated. The aim of this study was to use the high-resolution bioclimatic and previously-isolated yeasts' coordinates to create a valid model for the occurrence of C.neoformans in Turkey and provide insight into ecological processes. A machine learning approach using presence-only data software, maximum entropy (MaxEnt), was used to for the prediction of C.neoformans distribution. Climatic data and environmental bioclimatic variables from WorldClim were downloaded as 30 seconds spatial resolutions. The correlation between different Turkey bioclimatic layers were analyzed with ENMTools and similar layers were discarded. Forty-one different coordinates representing C.neoformans isolation points were used to generate a predictive map. The area under the curve and the omission rate were used to validate the model. Meanwhile, Jackknife tests were applied to enumerate the contribution of different environmental variables, and then to predict the final model. Maps were created using QGIS mapping software. In this study, we have shown that the coastal region of Anatolia, which is geographically located in the Northeastern Mediterranean Basin, as well as the entire Aegean region, carry an extremely high risk for the colonization of C.neoformans. Other areas which have not previously been reported for the isolation of C.neoformans were predicted to be potential colonization hotspots, including the western part of Ataturk Dam, the Amik Plain and the Bakırçay and Gediz valleys. The maximum temperature of the warmest month, the mean temperature of the warmest quarter and the precipitation of the coldest quarter were the most important factors influencing the model's predictions. It was determined that the humidity in the environment affected the colonization especially in November. In conclusion, we produced a C.neoformans colonization risk map of Turkey for the first time. Obtaining more regional data will facilitate the identification of the regions having similar risk. This approach is useful for the clinical prediagnosis of cryptococcosis cases, which may be more common in places with environmental niches.

摘要

新型隐球菌是一种人类致病酵母,可引发危及生命的感染,尤其是在免疫抑制患者中。早在2004年就有报道称在土耳其从环境中分离出新型隐球菌,不过大多是从赤桉的定殖中分离得到。也有报道从石榴(石榴属)、悬铃木(东方悬铃木)、松树(松科)、板栗(欧洲栗)和柽柳(刚毛柽柳)中成功分离出该菌。研究影响环境分离地点的生物气候因素与病原体定殖之间的关系是一种常用方法。通过这种方法,可以生成详细的风险地图,用以估计环境定殖情况。本研究的目的是利用高分辨率生物气候数据和先前分离的酵母的坐标,创建一个关于土耳其新型隐球菌发生情况的有效模型,并深入了解生态过程。使用仅存在数据软件最大熵(MaxEnt)的机器学习方法来预测新型隐球菌的分布。从WorldClim下载了空间分辨率为30秒的气候数据和环境生物气候变量。使用ENMTools分析了土耳其不同生物气候层之间的相关性,并舍弃了相似的层。使用代表新型隐球菌分离点的41个不同坐标来生成预测地图。用曲线下面积和遗漏率来验证模型。同时,应用刀切法来确定不同环境变量的贡献,进而预测最终模型。使用QGIS制图软件创建地图。在本研究中,我们表明,地理位置位于地中海东北部盆地的安纳托利亚沿海地区以及整个爱琴海地区,新型隐球菌定殖风险极高。其他先前未报道过新型隐球菌分离情况的地区被预测为潜在的定殖热点,包括阿塔图尔克大坝西部、阿米克平原以及巴克尔恰伊河和格迪兹河谷。最暖月的最高温度、最暖季度的平均温度和最冷月的降水量是影响模型预测的最重要因素。确定环境湿度尤其在11月影响定殖。总之,我们首次绘制了土耳其新型隐球菌定殖风险地图。获取更多区域数据将有助于识别具有相似风险的地区。这种方法对于隐球菌病病例的临床预诊断很有用,隐球菌病在具有环境生态位的地方可能更为常见。

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