Lysitsas Marios, Botsoglou Georgios, Dimitriadis Dimitris, Termatzidou Sofia, Kazana Panagiota, Tsoumakas Grigorios, Tsokana Constantina N, Malissiova Eleni, Spyrou Vassiliki, Billinis Charalambos, Valiakos George
Faculty of Veterinary Science, University of Thessaly, 43100 Karditsa, Greece.
School of Informatics, Aristotle University of Thessaloniki, 54124 Thessaloniki, Greece.
Vet Sci. 2024 Dec 22;11(12):676. doi: 10.3390/vetsci11120676.
This study aimed to investigate the incidence of subclinical mastitis (SCM), the implicated pathogens, and their impact on milk quality in dairy sheep in Greece. Furthermore, we preliminarily evaluated infrared thermography and the application of AI tools for the early, non-invasive diagnosis of relevant cases. In total, 660 milk samples and over 2000 infrared thermography images were obtained from 330 phenotypically healthy ewes. Microbiological investigations, a somatic cell count (SCC), and milk chemical analyses were performed. Infrared images were analyzed using the FLIR Research Studio software (version 3.0.1). The You Only Look Once version 8 (YOLOv8) algorithm was employed for the automatic detection of the udder's region of interest. A total of 157 mammary glands with SCM were identified in 122/330 ewes (37.0%). The most prevalent pathogen was staphylococci (136/160, 86.6%). Considerable resistance was detected to tetracycline (29.7%), ampicillin (28.6%), and sulfamethoxazole-trimethoprim (23.6%). SCM correlated with high total mesophilic count (TMC) values and decreased milk fat, lactose, and protein content. A statistically significant variation ( < 0.001) was identified in the unilateral SCM cases by evaluating the mean temperatures of the udder region between the teats in the thermal images. Finally, the YOLOv8 algorithm was employed for the automatic detection of the udder's region of interest (ROI), achieving 84% accuracy in defining the ROI in this preliminary evaluation. This demonstrates the potential of infrared thermography combined with AI tools for the diagnosis of ovine SCM. Nonetheless, more extensive sampling is essential to optimize this diagnostic approach.
本研究旨在调查希腊奶羊亚临床乳腺炎(SCM)的发病率、相关病原体及其对牛奶质量的影响。此外,我们初步评估了红外热成像技术以及人工智能工具在相关病例早期非侵入性诊断中的应用。总共从330只表型健康的母羊中采集了660份牛奶样本和2000多张红外热成像图像。进行了微生物学调查、体细胞计数(SCC)和牛奶化学分析。使用FLIR Research Studio软件(版本3.0.1)分析红外图像。采用You Only Look Once版本8(YOLOv8)算法自动检测乳房的感兴趣区域。在122/330只母羊(37.0%)中,共鉴定出157个患有亚临床乳腺炎的乳腺。最常见的病原体是葡萄球菌(136/160,86.6%)。检测到对四环素(29.7%)、氨苄青霉素(28.6%)和磺胺甲恶唑-甲氧苄啶(23.6%)有相当高的耐药性。亚临床乳腺炎与高总嗜温菌数(TMC)值以及牛奶脂肪、乳糖和蛋白质含量降低相关。通过评估热成像图像中乳头之间乳房区域的平均温度,在单侧亚临床乳腺炎病例中发现了具有统计学意义的差异(<0.001)。最后,采用YOLOv8算法自动检测乳房的感兴趣区域(ROI),在本次初步评估中定义ROI的准确率达到84%。这证明了红外热成像技术结合人工智能工具在诊断绵羊亚临床乳腺炎方面的潜力。尽管如此,为了优化这种诊断方法,进行更广泛的采样至关重要。