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Using Deep Learning to Detect Spinal Cord Diseases on Thoracolumbar Magnetic Resonance Images of Dogs.
Biercher, Anika; Meller, Sebastian; Wendt, Jakob; Caspari, Norman; Schmidt-Mosig, Johannes; De Decker, Steven; Volk, Holger Andreas.
Afiliación
  • Biercher A; Department of Small Animal Medicine and Surgery, University of Veterinary Medicine, Hannover, Germany.
  • Meller S; Department of Small Animal Medicine and Surgery, University of Veterinary Medicine, Hannover, Germany.
  • Wendt J; Caspari, Schmidt-Mosig u. Wendt-vetvise GbR, Hannover, Germany.
  • Caspari N; Caspari, Schmidt-Mosig u. Wendt-vetvise GbR, Hannover, Germany.
  • Schmidt-Mosig J; Caspari, Schmidt-Mosig u. Wendt-vetvise GbR, Hannover, Germany.
  • De Decker S; Department of Clinical Science and Services, Royal Veterinary College, London, United Kingdom.
  • Volk HA; Department of Small Animal Medicine and Surgery, University of Veterinary Medicine, Hannover, Germany.
Front Vet Sci ; 8: 721167, 2021.
Article en En | MEDLINE | ID: mdl-34796224
Deep Learning based Convolutional Neural Networks (CNNs) are the state-of-the-art machine learning technique with medical image data. They have the ability to process large amounts of data and learn image features directly from the raw data. Based on their training, these networks are ultimately able to classify unknown data and make predictions. Magnetic resonance imaging (MRI) is the imaging modality of choice for many spinal cord disorders. Proper interpretation requires time and expertise from radiologists, so there is great interest in using artificial intelligence to more quickly interpret and diagnose medical imaging data. In this study, a CNN was trained and tested using thoracolumbar MR images from 500 dogs. T1- and T2-weighted MR images in sagittal and transverse planes were used. The network was trained with unremarkable images as well as with images showing the following spinal cord pathologies: intervertebral disc extrusion (IVDE), intervertebral disc protrusion (IVDP), fibrocartilaginous embolism (FCE)/acute non-compressive nucleus pulposus extrusion (ANNPE), syringomyelia and neoplasia. 2,693 MR images from 375 dogs were used for network training. The network was tested using 7,695 MR images from 125 dogs. The network performed best in detecting IVDPs on sagittal T1-weighted images, with a sensitivity of 100% and specificity of 95.1%. The network also performed very well in detecting IVDEs, especially on sagittal T2-weighted images, with a sensitivity of 90.8% and specificity of 98.98%. The network detected FCEs and ANNPEs with a sensitivity of 62.22% and a specificity of 97.90% on sagittal T2-weighted images and with a sensitivity of 91% and a specificity of 90% on transverse T2-weighted images. In detecting neoplasms and syringomyelia, the CNN did not perform well because of insufficient training data or because the network had problems differentiating different hyperintensities on T2-weighted images and thus made incorrect predictions. This study has shown that it is possible to train a CNN in terms of recognizing and differentiating various spinal cord pathologies on canine MR images. CNNs therefore have great potential to act as a "second eye" for imagers in the future, providing a faster focus on the altered image area and thus increasing workflow in radiology.
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Texto completo: 1 Base de datos: MEDLINE Idioma: En Revista: Front Vet Sci Año: 2021 Tipo del documento: Article

Texto completo: 1 Base de datos: MEDLINE Idioma: En Revista: Front Vet Sci Año: 2021 Tipo del documento: Article