Hennessey Erin, DiFazio Matthew, Hennessey Ryan, Cassel Nicky
Department of Clinical Sciences, College of Veterinary Medicine, Kansas State University, Manhattan, Kansas, USA.
Army Medical Department, Student Detachment, San Antonio, Texas, USA.
Vet Radiol Ultrasound. 2022 Dec;63 Suppl 1:851-870. doi: 10.1111/vru.13163. Epub 2022 Dec 5.
Artificial intelligence in veterinary medicine is an emerging field. Machine learning, a subfield of artificial intelligence, allows computer programs to analyze large imaging datasets and learn to perform tasks relevant to veterinary diagnostic imaging. This review summarizes the small, yet growing body of artificial intelligence literature in veterinary imaging, provides necessary background to understand these papers, and provides author commentary on the state of the field. To date, less than 40 peer-reviewed publications have utilized machine learning to perform imaging-associated tasks across multiple anatomic regions in veterinary clinical and biomedical research. Major challenges in this field include collection and cleaning of sufficient image data, selection of high-quality ground truth labels, formation of relationships between veterinary and machine learning professionals, and closure of the gap between academic uses of artificial intelligence and currently available commercial products. Further development of artificial intelligence has the potential to help meet the growing need for radiological services through applications in workflow, quality control, and image interpretation for both general practitioners and radiologists.
人工智能在兽医学领域是一个新兴领域。机器学习作为人工智能的一个子领域,使计算机程序能够分析大型影像数据集,并学习执行与兽医诊断成像相关的任务。这篇综述总结了兽医学影像领域中数量虽少但不断增长的人工智能文献,提供理解这些论文所需的背景知识,并对该领域的现状给出作者的评论。迄今为止,在兽医临床和生物医学研究中,利用机器学习在多个解剖区域执行与成像相关任务的同行评审出版物不到40篇。该领域的主要挑战包括收集和清理足够的图像数据、选择高质量的真实标签、建立兽医和机器学习专业人员之间的关系,以及缩小人工智能学术应用与现有商业产品之间的差距。人工智能的进一步发展有可能通过在工作流程、质量控制以及为全科医生和放射科医生进行图像解读方面的应用,帮助满足对放射学服务日益增长的需求。