Comparison of error rates between four pretrained DenseNet convolutional neural network models and 13 board‐certified veterinary radiologists when evaluating 15 labels of canine thoracic radiographs
Autor: | Hespel Adrien‐Maxence, Boissady Emilie, De La Comble Alois, Acierno Michelle, Alexander Kate, Auger Mylene, Biller David, de Swarte Marie, Fuerst Jason, Green Eric, Hoey Séamus, Koernig Kevin, Lee Alison, MacLellan Megan, McAllister Hester, Rechy Jr Jaime, Xiaojuan Zhu, Zarelli Micaela, Morandi Federica |
---|---|
Rok vydání: | 2022 |
Předmět: | |
Zdroj: | Veterinary Radiology & Ultrasound. 63:456-468 |
ISSN: | 1740-8261 1058-8183 |
DOI: | 10.1111/vru.13069 |
Popis: | Convolutional neural networks (CNNs) are commonly used as artificial intelligence (AI) tools for evaluating radiographs, but published studies testing their performance in veterinary patients are currently lacking. The purpose of this retrospective, secondary analysis, diagnostic accuracy study was to compare the error rates of four CNNs to the error rates of 13 veterinary radiologists for evaluating canine thoracic radiographs using an independent gold standard. Radiographs acquired at a referral institution were used to evaluate the four CNNs sharing a common architecture. Fifty radiographic studies were selected at random. The studies were evaluated independently by three board-certified veterinary radiologists for the presence or absence of 15 thoracic labels, thus creating the gold standard through the majority rule. The labels included "cardiovascular," "pulmonary," "pleural," "airway," and "other categories." The error rates for each of the CNNs and for 13 additional board-certified veterinary radiologists were calculated on those same studies. There was no statistical difference in the error rates among the four CNNs for the majority of the labels. However, the CNN's training method impacted the overall error rate for three of 15 labels. The veterinary radiologists had a statistically lower error rate than all four CNNs overall and for five labels (33%). There was only one label ("esophageal dilation") for which two CNNs were superior to the veterinary radiologists. Findings from the current study raise numerous questions that need to be addressed to further develop and standardize AI in the veterinary radiology environment and to optimize patient care. |
Databáze: | OpenAIRE |
Externí odkaz: |