Risk Prediction of Cognitive Decline after Stroke.

Journal: Journal of stroke and cerebrovascular diseases : the official journal of National Stroke Association

Volume: 30

Issue: 8

Year of Publication: 2021

Affiliated Institutions:  LMDP, Cadi Ayyad University, Marrakech, Morocco; UMMISCO, IRD, France; Sorbonne University, Laboratoire Jacques-Louis Lions, Paris, France. Electronic address: youssef.hbid@etu.upmc.fr. King's College London, School of Population Health and Environmental Sciences, London, United Kingdom. Electronic address: fahey@kcl.ac.uk. King's College London, School of Population Health and Environmental Sciences, London, United Kingdom; National Institute for Health Research Biomedical Research Centre, Guy's and St Thomas' NHS Foundation Trust and King's College London, London, United Kingdom. King's College London, School of Population Health and Environmental Sciences, London, United Kingdom.

Abstract summary 

Cognitive decline is one of the major outcomes after stroke. We have developed and evaluated a risk predictive tool of post-stroke cognitive decline and assessed its clinical utility.In this population-based cohort, 4,783 patients with first-ever stroke from the South London Stroke Register (1995-2010) were included in developing the model. Cognitive impairment was measured using the Mini Mental State Examination (cut off 24/30) and the Abbreviated Mental Test (cut off 8/10) at 3-months and yearly thereafter. A penalised mixed-effects linear model was developed and temporal-validated in a new cohort consisted of 1,718 stroke register participants recruited from (2011-2018). Prediction errors on discrimination and calibration were assessed. The clinical utility of the model was evaluated using prognostic accuracy measurements and decision curve analysis.The overall predictive model showed good accuracy, with root mean squared error of 0.12 and R2 of 73%. Good prognostic accuracy for predicting severe cognitive decline was observed AUC: (88%, 95% CI [85-90]), (89.6%, 95% CI [86-92]), (87%, 95% CI [85-91]) at 3 months, one and 5 years respectively. Average predicted recovery patterns were analysed by age, stroke subtype, Glasgow-coma scale, and left-stroke and showed variability. DECISION: curve analysis showed an increased clinical benefit, particularly at threshold probabilities of above 15% for predictive risk of cognitive impairment.The derived prognostic model seems to accurately screen the risk of post-stroke cognitive decline. Such prediction could support the development of more tailored management evaluations and identify groups for further study and future trials.

Authors & Co-authors:  Hbid Youssef Y Fahey Marion M Wolfe Charles D A CDA Obaid Majed M Douiri Abdel A

Study Outcome 

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Statistics
Citations : 
Authors :  5
Identifiers
Doi : 10.1016/j.jstrokecerebrovasdis.2021.105849
SSN : 1532-8511
Study Population
Male,Female
Mesh Terms
Aged
Other Terms
Cognitive decline;Post-stroke;case mix;clinical prediction;mixed-effects model;monitoring;recovery;rehabilitation
Study Design
Cohort Study
Study Approach
,Mixed Methods
Country of Study
Publication Country
United States