Fuzzy logic discriminant function for evaluating goats exposed to verminosis occurrence regarding resistance, resilience, or sensitivity to parasitism
Wellhington Paulo da Silva Oliveira, Natanael Pereira da Silva Santos, Max Brandão de Oliveira, Amauri Felipe Evangelista, Raimundo Tomaz da Costa Filho, Adriana Mello de Araújo
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Abstract
Abstract Worm infections pose a significant challenge to goat farming in the tropics. While individual variations in the animals' response to this disease are observed, understanding its genetic component is crucial for establishing effective herd production management, prioritizing the selection of goats with higher resistance to parasitism. This study aimed to assess goat response to worm infection under natural field conditions using data on eggs per gram of feces (EPG), body condition score (BCS), and conjunctival mucosa coloration (FAMACHA©). Cluster analysis and artificial intelligence (AI) techniques were applied to 3,839 data points from 200 individuals in an experimental goat herd in Piauí, Brazil. The study considered the phenotypic expression of resistance, sensitivity, and resilience to worm infection as responses to parasitism. Three clustering methods, namely Ward, Average, and k-means, were employed and compared with fuzzy logic obtained through the CAPRIOVI web software. The analysis revealed statistically significant differences (P<0.05) between the groups of animals classified as resistant, resilient, and sensitive to parasitism. Pregnancy and peripartum were identified as stages of heightened sensitivity to parasitism (P<0.05). Among the clustering techniques, traditional statistical methods exhibited excellent performance, with an overall accuracy percentage exceeding 90.00%. In contrast, CAPRIOVI's fuzzy logic demonstrated lower overall accuracy (77.00%). The clustering methods showed similar efficiency, but differed in terms of the distribution of animals per group, with a tendency towards greater numbers in the resistant category. Fuzzy logic circumvented this limitation by enabling the formation of groups tailored to meet the producer's interests, adding consistency in terms of the animals' response to worm infection. This finding highlights the potential of the software for goat health management.
用于评价暴露于寄生虫病发生的山羊对寄生虫的抗性、恢复力或敏感性的模糊逻辑判别函数
蠕虫感染对热带地区的山羊养殖业构成了重大挑战。虽然观察到动物对这种疾病的反应存在个体差异,但了解其遗传成分对于建立有效的羊群生产管理至关重要,优先选择抗寄生虫能力较强的山羊。本研究旨在利用每克粪便产蛋数(EPG)、体况评分(BCS)和结膜黏膜着色(FAMACHA©)等数据,评估山羊在自然野外条件下对蠕虫感染的反应。聚类分析和人工智能(AI)技术应用于巴西Piauí实验山羊群中200只个体的3839个数据点。该研究考虑了对蠕虫感染的抗性、敏感性和恢复力的表型表达作为对寄生的反应。采用Ward、Average、k-means三种聚类方法,并与CAPRIOVI网络软件得到的模糊逻辑进行比较。分析显示,抗、抗、敏感三组动物之间存在统计学上的显著差异(P<0.05)。妊娠期和围产期被认为是对寄生虫高度敏感的阶段(P<0.05)。在聚类技术中,传统的统计方法表现优异,总体准确率超过90.00%。相比之下,CAPRIOVI模糊逻辑的总体准确率较低(77.00%)。聚类方法具有相似的效率,但在每组动物分布方面存在差异,抗性类别的数量倾向较多。模糊逻辑规避了这一限制,使群体的形成符合生产者的利益,增加了动物对蠕虫感染反应的一致性。这一发现凸显了该软件在山羊健康管理方面的潜力。
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