Machine learning can appropriately classify the collimation of ventrodorsal and dorsoventral thoracic radiographic images of dogs and cats

Author:

Tahghighi Peyman1,Appleby Ryan B.2,Norena Nicole2,Ukwatta Eranga1,Komeili Amin3

Affiliation:

1. School of Engineering, University of Guelph, Guelph, Ontario, Canada

2. Department of Clinical Studies, Ontario Veterinary College, University of Guelph, Guelph, Ontario, Canada

3. Department of Biomedical Engineering, University of Calgary, Calgary, Alberta, Canada

Abstract

Abstract OBJECTIVES To determine the feasibility of machine learning algorithms for the classification of appropriate collimation of the cranial and caudal borders in ventrodorsal and dorsoventral thoracic radiographs. SAMPLES 900 ventrodorsal and dorsoventral canine and feline thoracic radiographs were retrospectively acquired from the Picture Archiving and Communication system (PACs) system of the Ontario Veterinary College. PROCEDURES Radiographs acquired from April 2020 to May 2021 were labeled by 1 radiologist in Summer of 2022 as either appropriately or inappropriately collimated for the cranial and caudal borders. A machine learning model was trained to identify the appropriate inclusion of the entire lung field at both the cranial and caudal borders. Both individual models and a combined overall inclusion model were assessed based on the combined results of both the cranial and caudal border assessments. RESULTS The combined overall inclusion model showed a precision of 91.21% (95% CI [91, 91.4]), accuracy of 83.17% (95% CI [83, 83.4]), and F1 score of 87% (95% CI [86.8, 87.2]) for classification when compared with the radiologist’s quality assessment. The model took on average 6 ± 1 second to run. CLINICAL RELEVANCE Deep learning-based methods can classify small animal thoracic radiographs as appropriately or inappropriately collimated. These methods could be deployed in a clinical setting to improve the diagnostic quality of thoracic radiographs in small animal practice.

Publisher

American Veterinary Medical Association (AVMA)

Subject

General Veterinary,General Medicine

Reference27 articles.

1. Image postprocessing in digital radiology—a primer for technologists;Seeram E,2008

2. Assessment of the quality of radiographs in 44 veterinary clinics in Great Britain;Ewers RS,2000

3. Improving the diagnostic quality of thoracic radiographs of dogs and cats;Martin M,2013

4. Identification and effects of common errors and artifacts on the perceived quality of radiographs;Nuth EK,2014

5. Using machine learning to classify image features from canine pelvic radiographs: evaluation of partial least squares discriminant analysis and artificial neural network models: image classification using machine learning;McEvoy FJ,2013

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