Department of Medicine, Faculty of Veterinary Science, Bangladesh Agricultural University, Mymensingh, 2202, Bangladesh.
Food and Feed Immunology Group, Graduate School of Agricultural Science, Tohoku University, Sendai, 980-8572, Japan.
Trop Anim Health Prod. 2020 Nov;52(6):2873-2881. doi: 10.1007/s11250-020-02263-0. Epub 2020 Oct 10.
Routine monitoring for subclinical infection is one of the key mastitis control approaches. However, the accuracy of the most commonly used screening tests has not yet been established. The aim of the present study was therefore to evaluate the accuracy of three screening tests, namely California mastitis test (CMT), white side test (WST), and surf field mastitis test (SFMT) for the screening of subclinical caprine mastitis. A cross-sectional study based on 484 randomly collected milk (242 goats) samples from three districts of Bangladesh was conducted for the screening of subclinical mastitis by the aforementioned tests. The Bayesian latent class model was implemented in WinBUGS to estimate the tests' characteristics and true prevalence of subclinical mastitis. The Bayesian posterior estimates of sensitivities with a 95% credible intervals (CrIs) were 98.60% (95.18-99.95%), 98.28% (94.56-99.92%), and 89.98% (83.39-95.03%), and specificities with 95% CrIs were 99.19% (98.11-99.96%), 99.27% (97.34-99.98%), and 99.28% (97.35-99.98%), respectively for CMT, WST, and SFMT. The true prevalence of subclinical caprine mastitis was estimated to be 43.49% (95% CrI 37.46-48.98%). The positive predictive values (PPV) of the three tests were similar. The serial and parallel interpretation of any test pairs increased the PPV and negative predictive value respectively close to 100%. Based on the simplicity, cost and performance as well WST and SFMT simultaneously could be recommended for the screening of caprine subclinical mastitis in Bangladesh.
常规监测亚临床感染是乳腺炎控制的关键方法之一。然而,最常用的筛选测试的准确性尚未确定。因此,本研究旨在评估三种筛选测试,即加利福尼亚乳腺炎测试(CMT)、白色侧面测试(WST)和冲浪场乳腺炎测试(SFMT)对亚临床山羊乳腺炎的筛查准确性。本研究基于孟加拉国三个地区的 484 个随机采集的牛奶(242 只山羊)样本,采用上述测试进行亚临床乳腺炎筛查。采用贝叶斯潜在类别模型在 WinBUGS 中实现,以估计测试的特征和亚临床乳腺炎的真实患病率。贝叶斯后验估计的敏感性(95%可信区间)分别为 98.60%(95.18-99.95%)、98.28%(94.56-99.92%)和 89.98%(83.39-95.03%),特异性(95%可信区间)分别为 99.19%(98.11-99.96%)、99.27%(97.34-99.98%)和 99.28%(97.35-99.98%)。亚临床山羊乳腺炎的真实患病率估计为 43.49%(95%可信区间 37.46-48.98%)。三种测试的阳性预测值(PPV)相似。任何测试对的串联和并行解释分别提高了 PPV 和阴性预测值接近 100%。基于简单性、成本和性能,同时推荐 WST 和 SFMT 用于孟加拉国山羊亚临床乳腺炎的筛查。