NeuMORE: Ontology in stroke recovery

Christopher Townsend, Jingshan Huang, Dejing Dou, Haishan Liu, Lei He, Patrick Hayes, Robert Rudnick, Hardik Shah, Dennis Fell, Wei Liu
2010 2010 IEEE International Conference on Bioinformatics and Biomedicine Workshops (BIBMW)  
Hemiparesis is the most common impairment after stroke, and the initial severity of hemiparesis had been the strongest predictor of neuromotor functional recovery level. However, the intervention response of stroke survivors does not always correlate with their initial level of impairment, which implies the existence of other factors that may significantly affect stroke survivors' recovery process. It is critical to consider these factors in a principled, comprehensive way so that physical
more » ... ilitation (PR) researchers may predict which stroke survivors will respond best to therapy and, as a result, to determine if a particular type of therapy is a more optimal match. Currently, such prediction is primarily a manual process and remains a challenging task to PR researchers and clinicians. Based upon a domain-specific ontology, NeuMORE, we propose a computing framework that aims to facilitate knowledge acquisition from existing sources via semantics-enhanced data mining (SEDM) techniques. It will assist PR researchers and clinicians in better predicting stroke survivors' neuromotor functional recovery level, and will help physical therapists customize most effective intervention therapy plans for individual stroke survivors.
doi:10.1109/bibmw.2010.5703925 fatcat:6uih6msw7fdqjntdnhd4hmrniu