Vandermeulen Joris, Bahr Claudia, Johnston Dayle, Earley Bernadette, Tullo Emanuela, Fontana Ilaria, Guarino Marcella, Exadaktylos Vasileios, Berckmans Daniel
M3-BIORES: Measure, Model & Manage Bioresponses, KU Leuven, Kasteelpark Arenberg 30, BE-3001 Heverlee, Belgium.
Teagasc, Animal & Grassland Research and Innovation Centre, Animal and Bioscience Research Department, Grange, Dunsany, Co. Meath, Ireland.
Comput Electron Agric. 2016 Nov 1;129:15-26. doi: 10.1016/j.compag.2016.07.014. Epub 2016 Sep 22.
Bovine respiratory disease (BRD) complex in calves impairs health and welfare and causes severe economic losses for the Stockperson. Early recognition of BRD should lead to earlier veterinary (antibiotic/anti-inflammatory) treatment interventions thereby reducing the severity of the disease and associated costs. Coughing is one of the clinical manifestations of BRD. It is believed that by automatically and continuously monitoring the sounds within calf houses, and analysing the coughing frequency, early recognition of BRD in calves is possible. Therefore, the objective of the present study was to develop an automated calf cough monitor and examine its potential as an early warning system for BRD in artificially reared dairy calves. The coughing sounds of 62 calves were continuously recorded by a microphone over a three-month period. A sound analysis algorithm was developed to distinguish calf coughs from other sounds (e.g. mechanical sounds). During the sound recording period the health of the calves was assessed and scored periodically per week by a trained human observer. Calves presenting with BRD received antibiotic and/or anti-inflammatory treatment and the dates of treatment were recorded. This treatment date reference served as a comparison for the investigation of whether an increase in coughing frequency could be related to calves developing BRD. The calf cough detection algorithm achieved 50.3% sensitivity, 99.2% specificity and 87.5% precision. Four out of five periods, where coughing frequency was observed to be increased, coincided with the development of BRD in more than one calf. This period of increased coughing frequency was always observed before the calves were treated. Therefore, the calf cough monitor has the potential to identify early onset of BRD in calves.
犊牛的牛呼吸道疾病(BRD)综合征会损害其健康和福利,并给饲养员造成严重的经济损失。早期识别BRD应能促使更早地进行兽医(抗生素/抗炎)治疗干预,从而降低疾病的严重程度和相关成本。咳嗽是BRD的临床表现之一。据信,通过自动持续监测犊牛舍内的声音,并分析咳嗽频率,有可能早期识别犊牛的BRD。因此,本研究的目的是开发一种自动犊牛咳嗽监测器,并检验其作为人工饲养奶牛犊BRD早期预警系统的潜力。在三个月的时间里,用麦克风持续记录了62头犊牛的咳嗽声音。开发了一种声音分析算法,以区分犊牛咳嗽声与其他声音(如机械声音)。在声音记录期间,由训练有素的人类观察者每周定期评估和记录犊牛的健康状况并打分。出现BRD的犊牛接受抗生素和/或抗炎治疗,并记录治疗日期。该治疗日期参考用于比较咳嗽频率增加是否与犊牛患BRD有关。犊牛咳嗽检测算法的灵敏度为50.3%,特异性为99.2%,精确度为87.5%。在观察到咳嗽频率增加的五个时间段中,有四个时间段与不止一头犊牛患BRD的情况同时出现。咳嗽频率增加的这段时间总是在犊牛接受治疗之前被观察到。因此,犊牛咳嗽监测器有潜力识别犊牛BRD的早期发作。