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62. Development of an unsupervised machine learning algorithm for the prognostication of walking ability in spinal cord injury patients. DeVries Z; Hoda M; Rivers CS; Maher A; Wai E; Moravek D; Stratton A; Kingwell S; Fallah N; Paquet J; Phan P; Spine J; 2020 Feb; 20(2):213-224. PubMed ID: 31525468 [TBL] [Abstract][Full Text] [Related]
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