Boissady Emilie, De La Comble Alois, Zhu Xiajuan, Abbott Jonathan, Adrien-Maxence Hespel
PicoxIA, Maisons-Alfort, France.
Office of Information Technology, The University of Tennessee, Knoxville, Knoxville, TN, United States.
Front Vet Sci. 2021 Dec 9;8:764570. doi: 10.3389/fvets.2021.764570. eCollection 2021.
Heart disease is a leading cause of death among cats and dogs. Vertebral heart scale (VHS) is one tool to quantify radiographic cardiac enlargement and to predict the occurrence of congestive heart failure. The aim of this study was to evaluate the performance of artificial intelligence (AI) performing VHS measurements when compared with two board-certified specialists. Ground truth consisted of the average of constituent VHS measurements performed by board-certified specialists. Thirty canine and 30 feline thoracic lateral radiographs were evaluated by each operator, using two different methods for determination of the cardiac short axis on dogs' radiographs: the original approach published by Buchanan and the modified approach proposed by the EPIC trial authors, and only Buchanan's method for cats' radiographs. Overall, the VHS calculated by the AI, radiologist, and cardiologist had a high degree of agreement in both canine and feline patients (intraclass correlation coefficient (ICC) = 0.998). In canine patients, when comparing methods used to calculate VHS by specialists, there was also a high degree of agreement (ICC = 0.999). When evaluating specifically the results of the AI VHS vs. the two specialists' readings, the agreement was excellent for both canine (ICC = 0.998) and feline radiographs (ICC = 0.998). Performance of AI trained to locate VHS reference points agreed with manual calculation by specialists in both cats and dogs. Such a computer-aided technique might be an important asset for veterinarians in general practice to limit interobserver variability and obtain more comparable VHS reading over time.
心脏病是猫和狗死亡的主要原因之一。脊椎心脏指数(VHS)是一种用于量化X线片上心脏增大情况并预测充血性心力衰竭发生的工具。本研究的目的是评估人工智能(AI)进行VHS测量时与两位获得委员会认证的专家相比的表现。真实数据由获得委员会认证的专家进行的组成VHS测量的平均值组成。每位操作人员使用两种不同方法对30张犬类和30张猫类胸部侧位X线片进行评估,在犬类X线片上确定心脏短轴的方法:Buchanan发表的原始方法和EPIC试验作者提出的改良方法,而在猫类X线片上仅使用Buchanan的方法。总体而言,AI、放射科医生和心脏病专家计算出的VHS在犬类和猫类患者中都有高度一致性(组内相关系数(ICC)=0.998)。在犬类患者中,比较专家用于计算VHS的方法时,也有高度一致性(ICC = 0.999)。当具体评估AI的VHS结果与两位专家的读数时,在犬类(ICC = 0.998)和猫类X线片(ICC = 0.998)上的一致性都非常好。经过训练以定位VHS参考点的AI的表现与猫和狗的专家手动计算结果一致。这种计算机辅助技术可能是一般临床实践中兽医的一项重要资产,可限制观察者间的变异性并随着时间推移获得更具可比性的VHS读数。