Eri Furukawa, Yojiro Yanagawa, Akira Matsuzaki, Heejin Kim, Hanako Bai, Masashi Takahashi, Seiji Katagiri, Shogo Higaki
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However, two cow subgroups were identified: cows with a late and small rRT decrease (Cluster 1, n = 9) and those with an early and large rRT decrease (Cluster 2, n = 15). A calving prediction model was developed using five features extracted from the sensor data (indicative of prepartum rRT changes) through a support vector machine. Cross-validation showed that calving within 24 h was predicted with a sensitivity of 87.5% (21/24) and precision of 77.8% (21/27). A significant difference in sensitivity was observed between Clusters 1 and 2 (66.7 vs. 100%, respectively), while none was observed for precision. 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引用次数: 0
摘要
本研究探讨了基于监督式机器学习的奶牛瘤胃温度数据产犊预测模型的适用性。还研究了奶牛准备期RT变化亚组的存在性,并比较了这些亚组之间模型的预测性能。利用RT传感器系统每隔10分钟采集24头荷斯坦奶牛的RT数据。计算每小时平均RT,并用残差RT表示(rRT =实际RT -前三天同一时间的平均RT)。平均rRT在产犊前约48小时开始下降,在产犊前5小时降至-0.5°C的低点。然而,我们发现了两个奶牛亚组:晚期和较小的rRT下降的奶牛(集群1,n = 9)和早期和较大的rRT下降的奶牛(集群2,n = 15)。利用支持向量机从传感器数据中提取的5个特征(指示准备期rRT变化)建立了产犊预测模型。交叉验证表明,预测24 h内产犊的灵敏度为87.5%(21/24),精度为77.8%(21/27)。在第1类和第2类之间观察到敏感性的显著差异(分别为66.7 vs 100%),而在精度方面没有观察到任何差异。因此,基于RT数据和监督机器学习的模型具有有效预测产犊的潜力,尽管需要对特定的奶牛亚群进行改进。
Analysis of sequential ruminal temperature sensor data from dairy cows to identify cow subgroups by clustering and predict calving through supervised machine learning.
The present study investigated the applicability of a calving prediction model based on supervised machine learning of ruminal temperature (RT) data in dairy cows. The existence of cow subgroups for prepartum RT changes was also examined, and the predictive performance of the model was compared among these subgroups. RT data were collected from 24 Holstein cows at 10 min intervals using an RT sensor system. The average hourly RT was calculated and data were expressed as residual RTs (rRT = actual RT - mean RT for the same time on the previous three days). The mean rRT decreased beginning at approximately 48 h before calving to a low of -0.5°C at 5 h before calving. However, two cow subgroups were identified: cows with a late and small rRT decrease (Cluster 1, n = 9) and those with an early and large rRT decrease (Cluster 2, n = 15). A calving prediction model was developed using five features extracted from the sensor data (indicative of prepartum rRT changes) through a support vector machine. Cross-validation showed that calving within 24 h was predicted with a sensitivity of 87.5% (21/24) and precision of 77.8% (21/27). A significant difference in sensitivity was observed between Clusters 1 and 2 (66.7 vs. 100%, respectively), while none was observed for precision. Therefore, the model based on RT data with supervised machine learning has the potential to efficiently predict calving, although improvements for specific cow subgroups are required.
期刊介绍:
Accounts of Chemical Research presents short, concise and critical articles offering easy-to-read overviews of basic research and applications in all areas of chemistry and biochemistry. These short reviews focus on research from the author’s own laboratory and are designed to teach the reader about a research project. In addition, Accounts of Chemical Research publishes commentaries that give an informed opinion on a current research problem. Special Issues online are devoted to a single topic of unusual activity and significance.
Accounts of Chemical Research replaces the traditional article abstract with an article "Conspectus." These entries synopsize the research affording the reader a closer look at the content and significance of an article. Through this provision of a more detailed description of the article contents, the Conspectus enhances the article's discoverability by search engines and the exposure for the research.