PetCaseFinder

Peer-reviewed veterinary case report

Deep learning detects narrowed disc spaces on dog spine X-rays

By Park, Junseol et al.·Published in Frontiers in veterinary science·2024·Department of Veterinary Medical Imaging, South Korea·View original on PubMed

PetCaseFinder translated the abstract of this peer-reviewed paper into plain English so pet owners can read it. We do not publish original research — every detail traces back to the citation above. How we work →

Original publication title: Development of a deep learning model for automatic detection of narrowed intervertebral disc space sites in caudal thoracic and lumbar lateral X-ray images of dogs.

Species:
dog

Plain-English summary

A study developed a computer program to help veterinarians automatically detect narrowed spaces between the vertebrae in dogs' spines using X-ray images. This condition, known as intervertebral disc disease, can cause serious problems like pain and mobility issues. The program was tested on X-ray images from 142 dogs and showed a high level of accuracy, matching well with the assessments made by veterinarians. This technology could assist in quickly identifying spinal issues in dogs, making it easier for vets to diagnose and treat intervertebral disc disease.

People also search for: dog back pain · intervertebral disc disease in dogs · dog spine X-ray results · how to treat dog spinal problems

Abstract

Intervertebral disc disease is the most common spinal cord-related disease in dogs, caused by disc material protrusion or extrusion that compresses the spinal cord, leading to clinical symptoms. Diagnosis involves identifying radiographic signs such as intervertebral disc space narrowing, increased opacity of the intervertebral foramen, spondylosis deformans, and magnetic resonance imaging findings like spinal cord compression and lesions, alongside clinical symptoms and neurological examination findings. Intervertebral disc space narrowing on radiographs is the most common finding in intervertebral disc extrusion. This study aimed to develop a deep learning model to automatically recognize narrowed intervertebral disc space on caudal thoracic and lumbar X-ray images of dogs. In total, 241 caudal thoracic and lumbar lateral X-ray images from 142 dogs were used to develop and evaluate the model, which quantified intervertebral disc space distance and detected narrowing using a large-kernel one-dimensional convolutional neural network. When comparing veterinary clinicians and the deep learning model, the kappa value was 0.780, with 81.5% sensitivity and 95.6% specificity, showing substantial agreement. In conclusion, the deep learning model developed in this study, automatically and accurately quantified intervertebral disc space distance and detected narrowed sites in dogs, aiding in the initial screening of intervertebral disc disease and lesion localization.

Find similar cases for your pet

PetCaseFinder finds other peer-reviewed reports of pets with the same symptoms, plus a plain-English summary of what was tried across them.

Search related cases →

Original publication on PubMed: https://pubmed.ncbi.nlm.nih.gov/39664893/