Zannou Olivier M, Ouedraogo Achille S, Biguezoton Abel S, Abatih Emmanuel, Coral-Almeida Marco, Farougou Souaïbou, Yao Kouassi Patrick, Lempereur Laetitia, Saegerman Claude
Research Unit in Epidemiology and Risk Analysis applied to veterinary sciences (UREAR-ULg), Fundamental and Applied Research for Animal and Health (FARAH) Center, Department of Infectious and Parasitic Diseases, Faculty of Veterinary Medicine, University of Liège, 4000 Liège, Belgium.
Laboratory of Parasitology and Parasitic Diseases, Fundamental and Applied Research for Animal and Health (FARAH) Center, Faculty of Veterinary Medicine, University of Liège, 4000 Liège, Belgium.
Pathogens. 2021 Jul 14;10(7):893. doi: 10.3390/pathogens10070893.
Ticks and tick-borne diseases (TTBD) are constraints to the development of livestock and induce potential human health problems. The worldwide distribution of ticks is not homogenous. Some places are ecologically suitable for ticks but they are not introduced in these areas yet. The absence or low density of hosts is a factor affecting the dissemination of the parasite. To understand the process of introduction and spread of TTBD in different areas, and forecast their presence, scientists developed different models (e.g., predictive models and explicative models). This study aimed to identify models developed by researchers to analyze the TTBD distribution and to assess the performance of these various models with a meta-analysis. A literature search was implemented with PRISMA protocol in two online databases (Scopus and PubMed). The selected articles were classified according to country, type of models and the objective of the modeling. Sensitivity, specificity and accuracy available data of these models were used to evaluate their performance using a meta-analysis. One hundred studies were identified in which seven tick genera were modeled, with the most frequently modeled. Additionally, 13 genera of tick-borne pathogens were also modeled, with the most frequently modeled. Twenty-three different models were identified and the most frequently used are the generalized linear model representing 26.67% and the maximum entropy model representing 24.17%. A focus on TTBD modeling in Africa showed that, respectively, genus and were the most modeled. A meta-analysis on the quality of 20 models revealed that maximum entropy, linear discriminant analysis, and the ecological niche factor analysis models had, respectively, the highest sensitivity, specificity, and area under the curve effect size among all the selected models. Modeling TTBD is highly relevant for predicting their distribution and preventing their adverse effect on animal and human health and the economy. Related results of such analyses are useful to build prevention and/or control programs by veterinary and public health authorities.
蜱虫及蜱传疾病(TTBD)是畜牧业发展的制约因素,并引发潜在的人类健康问题。蜱虫在全球的分布并不均匀。有些地方在生态上适合蜱虫生存,但蜱虫尚未传入这些地区。宿主的缺失或低密度是影响寄生虫传播的一个因素。为了解TTBD在不同地区的传入和传播过程,并预测它们的存在,科学家们开发了不同的模型(如预测模型和解释模型)。本研究旨在识别研究人员开发的用于分析TTBD分布的模型,并通过荟萃分析评估这些不同模型的性能。采用PRISMA协议在两个在线数据库(Scopus和PubMed)中进行了文献检索。所选文章根据国家、模型类型和建模目的进行分类。使用这些模型的敏感性、特异性和准确性可用数据,通过荟萃分析来评估它们的性能。共识别出100项研究,其中对7个蜱属进行了建模, 建模最为频繁。此外,还对13个蜱传病原体属进行了建模, 建模最为频繁。识别出23种不同的模型,最常用的是广义线性模型,占26.67%,以及最大熵模型,占24.17%。对非洲TTBD建模的关注表明, 属和 属分别是建模最多的。对20个模型质量的荟萃分析表明,在所有选定模型中,最大熵模型、线性判别分析模型和生态位因子分析模型分别具有最高的敏感性、特异性和曲线下面积效应大小。对TTBD进行建模对于预测其分布以及预防其对动物和人类健康及经济的不利影响具有高度相关性。此类分析的相关结果有助于兽医和公共卫生当局制定预防和/或控制计划。