Predicting functional outcome after stroke by modelling baseline clinical and CT variables
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ID: 274078
2010
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Abstract
this study demonstrates an externally validated stroke outcome prediction model using simple clinical variables. Outcome prediction was not significantly improved with CT-derived radiological variables or more complex clinical variables.
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| Reference Key |
jm2010agepredicting
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| Authors | Reid JM;Gubitz GJ;Dai D;Kydd D;Eskes G;Reidy Y;Christian C;Counsell CE;Dennis M;Phillips SJ;; |
| Journal | age and ageing |
| Year | 2010 |
| DOI |
DOI not found
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| URL | |
| Keywords |
National Center for Biotechnology Information
NCBI
NLM
MEDLINE
humans
pubmed abstract
nih
national institutes of health
national library of medicine
models
prognosis
research support
non-u.s. gov't
female
male
aged
middle aged
80 and over
Tomography
Activities of Daily Living
severity of illness index
acute disease
outcome assessment
survival rate
statistical*
predictive value of tests
roc curve
area under curve
health care / methods*
stroke rehabilitation*
x-ray computed*
pmid:20233732
doi:10.1093/ageing/afq027
john m reid
gord j gubitz
stephen j phillips
stroke / diagnostic imaging*
stroke / mortality
|
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