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Detection of mastitis and its stage of progression by automatic milking systems using artificial neural networks

机译:使用人工神经网络通过自动挤奶系统检测乳腺炎及其进展阶段

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Two types of artificial neural networks, multilayer perceptron (MLP) and self-organizing feature map (SOM) were used to detect mastitis by automatic milking systems (AMS) using a new mastitis indicator that combined two previously reported indicators based on higher electrical conductivity (EC) and lower quarter yield (QY). Four MLPs with four combinations of inputs were developed to detect infected quarters. One input combination involved principal components (PC) adopted for addressing multi-collinearity in the data. The PC-based MLP model was superior to other non-PC-based models in terms of less complexity and higher predictive accuracy. The overall correct classification rate (CCR), sensitivity and specificity of this model were 90.74%, 86.90% and 91.36%, respectively. The SOM detected the stage of progression of mastitis in a quarter within the mastitis spectrum and revealed that quarters form three clusters: healthy, moderately ill and severely ill. The clusters were validated using k-means clustering, ANOVA and least significant difference. Clusters reflected the characteristics of healthy and subclinical and clinical mastitis, respectively. We conclude that the PC based model based on EC and QY can be used in AMS to detect mastitis with high accuracy and that the SOM model can be used to monitor the health status of the herd for early intervention and possible treatment.
机译:两种类型的人工神经网络,多层感知器(MLP)和自组织特征图(SOM)被用于自动挤奶系统(AMS),使用一种新的乳腺炎指标来检测乳腺炎,该指标结合了两个先前报告的基于较高电导率的指标( EC)和较低的季度收益率(QY)。开发了具有四个输入组合的四个MLP,以检测感染的季度。一种输入组合涉及采用主成分(PC)来解决数据中的多重共线性问题。基于PC的MLP模型在降低复杂度和提高预测准确性方面优于其他非基于PC的模型。该模型的总体正确分类率(CCR),敏感性和特异性分别为90.74%,86.90%和91.36%。 SOM在乳腺炎频谱中的四分之一处检测到了乳腺炎的进展阶段,发现四分之一形成了三个簇:健康,中度和重度疾病。使用k均值聚类,ANOVA和最小显着差异对聚类进行了验证。簇分别反映了健康,亚临床和临床乳腺炎的特征。我们得出的结论是,基于EC和QY的基于PC的模型可用于AMS中,以高精度检测乳腺炎,并且SOM模型可用于监视畜群的健康状况,以便进行早期干预和可能的治疗。

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