Predicting functional outcome after stroke by modelling baseline clinical and CT variables
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2010
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Abstract
Abstract. Background: we aimed to assess whether the performance of stroke outcome models comprising simple clinical variables could be improved by the addition
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m.2010agepredicting
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| Authors | Reid, John M.;Gubitz, Gord J.;Dai, Dingwei;Kydd, David;Eskes, Gail;Reidy, Yvette;Christian, Christine;Counsell, Carl E.;Dennis, Martin;Phillips, Stephen J.; |
| Journal | age and ageing |
| Year | 2010 |
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