Comparison of artificial intelligence to the veterinary radiologist's diagnosis of canine cardiogenic pulmonary edema

Vet Radiol Ultrasound. 2022 May;63(3):292-297. doi: 10.1111/vru.13062. Epub 2022 Jan 19.

Abstract

Application of artificial intelligence (AI) to improve clinical diagnosis is a burgeoning field in human and veterinary medicine. The objective of this prospective, diagnostic accuracy study was to determine the accuracy, sensitivity, and specificity of an AI-based software for diagnosing canine cardiogenic pulmonary edema from thoracic radiographs, using an American College of Veterinary Radiology-certified veterinary radiologist's interpretation as the reference standard. Five hundred consecutive canine thoracic radiographs made after-hours by a veterinary Emergency Department were retrieved. A total of 481 of 500 cases were technically analyzable. Based on the radiologist's assessment, 46 (10.4%) of these 481 dogs were diagnosed with cardiogenic pulmonary edema (CPE+). Of these cases, the AI software designated 42 of 46 as CPE+ and four of 46 as cardiogenic pulmonary edema negative (CPE-). Accuracy, sensitivity, and specificity of the AI-based software compared to radiologist diagnosis were 92.3%, 91.3%, and 92.4%, respectively (positive predictive value, 56%; negative predictive value, 99%). Findings supported using AI software screening for thoracic radiographs of dogs with suspected cardiogenic pulmonary edema to assist with short-term decision-making when a radiologist is unavailable.

Keywords: Artificial intelligence; congestive heart failure; convolutional neural network; myxomatous mitral valve disease; thoracic radiograph.

MeSH terms

  • Animals
  • Artificial Intelligence
  • Dog Diseases* / diagnostic imaging
  • Dogs
  • Humans
  • Prospective Studies
  • Pulmonary Edema* / diagnostic imaging
  • Pulmonary Edema* / veterinary
  • Radiologists
  • Software