Multimodal machine learning-based knee osteoarthritis progression prediction from plain radiographs and clinical data

183 indexed citations

Abstract

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This paper, published in 2019, received 183 indexed citations. Written by Aleksei Tiulpin, Stefan Klein, Sita Bierma‐Zeinstra, Jérôme Thevenot, Esa Rahtu, Joyce B. J. van Meurs, Edwin H. G. Oei and Simo Saarakkala covering the research area of Rheumatology and Surgery. It is primarily cited by scholars working on Rheumatology (114 citations), Surgery (59 citations) and Biomedical Engineering (49 citations). Published in University of Oulu Repository (University of Oulu).

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This paper is also available at doi.org/w1451338.

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