Classification and correlation of coughing sounds and disease status in fattening pigs

Q3 Veterinary
P. Yamsakul, T. Yano, K. Na Lampang, Manad Khamkong, L. Srikitjakarn
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引用次数: 0

Abstract

There have been attempts to use technology to distinguish pig coughs from other sounds on farms. Machine learning is being used to classify pig coughs via python. Sound files have been converted to images that are composed of wave plots,spectrograms and log power spectrograms for identification of those sounds. A recorder was used with a total of 45 healthy three-bred weaned piglets, wherein three replications of each were used with 15 weaning pigs per pen during different months. This process was set up within the housing unit at a ratio as 1:1 (recorder per pen). Sounds, blood samples and tonsil swabs were collected every month. Pig cough sounds were then classified from other sounds and a coughing index (CI) was established. Blood samples and tonsil swabs were utilized to determine respiratory diseases via laboratory tests that included ELISA, PCR and bacterial cultures. According to our results, pig coughs sound distinctly different from other sounds as had been classified by python. Moreover, the laboratory results of the seroprofile of Mycoplasma hyopneumoniae (M.hyo), Porcine Reproductive and Respiratory Syndrome virus (PRRSv), and Porcine Circovirus type 2 (PCV2), as was established by ELISA test, were employed in disease detection during the fattening period. Spearman rank correlations and Kappa analysis were used to establish correlation values between coughing and the results of laboratory tests. CI revealed a high correlation coefficient and agreement with the ELISA results of M.hyo, as well as the PCR results of PRRSv and PCV2 (p<0.05), while CI also revealed low correlation coefficient and agreement with the results of the Streptococcus spp. and Pasteurella spp. cultures (p>0.05). Therefore, the monitoring of coughing can be suited to detect respiratory problems and any potential relationships with M.hyo, PRRSv and PCV2 infections
育肥猪咳嗽声的分类及其与疾病状况的相关性
有人尝试用技术来区分猪的咳嗽声和农场里的其他声音。机器学习正被用于通过python对猪咳嗽进行分类。声音文件被转换成图像,这些图像由波浪图、谱图和对数功率谱图组成,用于识别这些声音。采用记录仪,选取健康的3种断奶仔猪45头,每组3个重复,每个栏15头仔猪,在不同月份进行试验。这个过程是在外壳单元内以1:1的比例设置的(每个笔记录)。每个月采集声音、血液样本和扁桃体拭子。然后将猪咳嗽声与其他声音进行分类,并建立咳嗽指数。血液样本和扁桃体拭子通过包括ELISA、PCR和细菌培养在内的实验室测试来确定呼吸道疾病。根据我们的研究结果,猪咳嗽的声音与蟒蛇分类的其他声音明显不同。采用ELISA法检测猪肺炎支原体(m.h o)、猪繁殖与呼吸综合征病毒(PRRSv)和猪圆环病毒2型(PCV2)的血清检测结果,用于育肥期的疾病检测。采用Spearman秩相关和Kappa分析建立咳嗽与实验室检查结果之间的相关值。CI与M.hyo的ELISA结果、PRRSv和PCV2的PCR结果具有较高的相关系数(p0.05)。因此,监测咳嗽可适用于发现呼吸问题以及与结核分枝杆菌、PRRSv和PCV2感染的任何潜在关系
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Veterinary Integrative Sciences
Veterinary Integrative Sciences Veterinary-Veterinary (all)
CiteScore
1.20
自引率
0.00%
发文量
9
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