Part of this study was presented in abstract form at the 16th International Veterinary Radiology Association meeting, Bursa, Turkey, 2012.
USING MACHINE LEARNING TO CLASSIFY IMAGE FEATURES FROM CANINE PELVIC RADIOGRAPHS: EVALUATION OF PARTIAL LEAST SQUARES DISCRIMINANT ANALYSIS AND ARTIFICIAL NEURAL NETWORK MODELS
Article first published online: 10 DEC 2012
© 2012 Veterinary Radiology & Ultrasound
Veterinary Radiology & Ultrasound
Volume 54, Issue 2, pages 122–126, March/April 2013
How to Cite
McEvoy, F. J. and Amigo, J. M. (2013), USING MACHINE LEARNING TO CLASSIFY IMAGE FEATURES FROM CANINE PELVIC RADIOGRAPHS: EVALUATION OF PARTIAL LEAST SQUARES DISCRIMINANT ANALYSIS AND ARTIFICIAL NEURAL NETWORK MODELS. Veterinary Radiology & Ultrasound, 54: 122–126. doi: 10.1111/vru.12003
Funding source: Chemometric Analysis Center (CHANCE), University of Copenhagen, Copenhagen, Denmark.
- Issue published online: 13 MAR 2013
- Article first published online: 10 DEC 2012
- Manuscript Accepted: 3 OCT 2012
- Manuscript Received: 11 MAY 2012
- Chemometric Analysis Center (CHANCE)
- University of Copenhagen
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