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Prediction of cognition in Parkinson's disease with a clinical–genetic score: a longitudinal analysis of nine cohorts

Authors :
Liu, Ganqiang
Locascio, Joseph J
Winder-Rhodes, Sophie
Vidailhet, Marie
Bonnet, Anne-Marie
Bonnet, Cecilia
Corvol, Jean-Christophe
Elbaz, Alexis
Grabli, David
Hartmann, Andreas
Klebe, Stephan
Lacomblez, Lucette
Mangone, Graziella
Tanner, Caroline M
Bourdain, Frédéric
Brandel, Jean-Philippe
Derkinderen, Pascal
Durif, Franck
Mesnage, Valérie
Pico, Fernando
Rascol, Olivier
Brefel-Courbon, Christine
Ory-Magne, Fabienne
Lang, Anthony E
Forlani, Sylvie
Lesage, Suzanne
Tahiri, Khadija
Albin, Roger
Alcalay, Roy
Ascherio, Alberto
Bowman, Dubois
Chen-Plotkin, Alice
Dawson, Ted
Eberly, Shirley
Dewey, Richard
German, Dwight
Saunders-Pullman, Rachel
Scherzer, Clemens
Vaillancourt, David
Petyuk, Vladislav
West, Andy
Zhang, Jing
Brice, Alexis
Ravina, Bernard
Shoulson, Ira
Cormier-Dequaire, Florence
Heutink, Peter
van Hilten, Jacobus J
Barker, Roger A
Williams-Gray, Caroline H
Marinus, Johan
Scherzer, Clemens R
HBS
CamPaIGN
PICNICS
PROPARK
Boot, Brendon
PSG
DIGPD
PDBP
Hyman, Bradley T
Ivinson, Adrian J
Trisini-Lipsanopoulos, Ana
Franco, Daly
Burke, Kyle
Sudarsky, Lewis R
Liao, Zhixiang
Hayes, Michael T
Umeh, Chizoba C
Sperling, Reisa
Growdon, John H
Schwarzschild, Michael A
Hung, Albert Y
Flaherty, Alice W
Blacker, Deborah
Wills, Anne-Marie
Sohur, U Shivraj
Page, Kara
Mejia, Nicte I
Viswanathan, Anand
Gomperts, Stephen N
Khurana, Vikram
Albers, Mark W
Alora-Palli, Maria
McGinnis, Scott
Sharma, Nutan
Dickerson, Bradford
Frosch, Matthew
Gomez-Isla, Teresa
Greenberg, Steven
Gusella, James
Hedden, Trey
Hedley-Whyte, E Tessa
Koenig, Aaron
Marquis-Sayagues, Marta
Marshall, Gad
Okereke, Olivia
Stemmer-Rachaminov, Anat
Kloppenburg, Jessica
Schlossmacher, Michael G
Selkoe, Dennis J
Yi, Thomas
Li, Haining
Stalberg, Gabriel
Jansen, Iris E
Barker, Roger
Foltynie, Tom
Williams-Gray, Caroline
Robbins, Trevor
Brayne, Carol
Mason, Sarah
Breen, David P
Cummins, Gemma
Evans, Jonathan
Mallet, Alain
Neurology
Amsterdam Neuroscience - Neurodegeneration
Human genetics
Source :
The Lancet Neurology, 16(8), 620-629. Lancet Publishing Group, The lancet / Neurology 16(8), 620-629 (2017). doi:10.1016/S1474-4422(17)30122-9, Liu, G, Locascio, J J, Corvol, J C, Boot, B, Liao, Z, Page, K, Franco, D, Burke, K, Jansen, I E, Trisini-Lipsanopoulos, A, Winder-Rhodes, S, Tanner, C M, Lang, A E, Eberly, S, Elbaz, A, Brice, A, Mangone, G, Ravina, B, Shoulson, I, Cormier-Dequaire, F, Heutink, P, van Hilten, J J, Barker, R A, Williams-Gray, C H, Marinus, J & Scherzer, C R 2017, ' Prediction of cognition in Parkinson's disease with a clinical–genetic score : a longitudinal analysis of nine cohorts ', The Lancet Neurology, vol. 16, no. 8, pp. 620-629 . https://doi.org/10.1016/S1474-4422(17)30122-9, The Lancet Neurology, 16(8), 620-629
Publication Year :
2017

Abstract

Summary Background Cognitive decline is a debilitating manifestation of disease progression in Parkinson's disease. We aimed to develop a clinical–genetic score to predict global cognitive impairment in patients with the disease. Methods In this longitudinal analysis, we built a prediction algorithm for global cognitive impairment (defined as Mini Mental State Examination [MMSE] ≤25) using data from nine cohorts of patients with Parkinson's disease from North America and Europe assessed between 1986 and 2016. Candidate predictors of cognitive decline were selected through a backward eliminated Cox's proportional hazards analysis using the Akaike's information criterion. These were used to compute the multivariable predictor on the basis of data from six cohorts included in a discovery population. Independent replication was attained in patients from a further three independent longitudinal cohorts. The predictive score was rebuilt and retested in 10 000 training and test sets randomly generated from the entire study population. Findings 3200 patients with Parkinson's disease who were longitudinally assessed with 27 022 study visits between 1986 and 2016 in nine cohorts from North America and Europe were assessed for eligibility. 235 patients with MMSE ≤25 at baseline and 135 whose first study visit occurred more than 12 years from disease onset were excluded. The discovery population comprised 1350 patients (after further exclusion of 334 with missing covariates) from six longitudinal cohorts with 5165 longitudinal visits over 12·8 years (median 2·8, IQR 1·6–4·6). Age at onset, baseline MMSE, years of education, motor exam score, sex, depression, and β-glucocerebrosidase ( GBA ) mutation status were included in the prediction model. The replication population comprised 1132 patients (further excluding 14 patients with missing covariates) from three longitudinal cohorts with 19 127 follow-up visits over 8·6 years (median 6·5, IQR 4·1–7·2). The cognitive risk score predicted cognitive impairment within 10 years of disease onset with an area under the curve (AUC) of more than 0·85 in both the discovery (95% CI 0·82–0·90) and replication (95% CI 0·78–0·91) populations. Patients scoring in the highest quartile for cognitive risk score had an increased hazard for global cognitive impairment compared with those in the lowest quartile (hazard ratio 18·4 [95% CI 9·4–36·1]). Dementia or disabling cognitive impairment was predicted with an AUC of 0·88 (95% CI 0·79–0·94) and a negative predictive value of 0·92 (95% 0·88–0·95) at the predefined cutoff of 0·196. Performance was stable in 10 000 randomly resampled subsets. Interpretation Our predictive algorithm provides a potential test for future cognitive health or impairment in patients with Parkinson's disease. This model could improve trials of cognitive interventions and inform on prognosis. Funding National Institutes of Health, US Department of Defense.

Details

Language :
English
ISSN :
14744422
Database :
OpenAIRE
Journal :
The Lancet Neurology, 16(8), 620-629. Lancet Publishing Group, The lancet <London> / Neurology 16(8), 620-629 (2017). doi:10.1016/S1474-4422(17)30122-9, Liu, G, Locascio, J J, Corvol, J C, Boot, B, Liao, Z, Page, K, Franco, D, Burke, K, Jansen, I E, Trisini-Lipsanopoulos, A, Winder-Rhodes, S, Tanner, C M, Lang, A E, Eberly, S, Elbaz, A, Brice, A, Mangone, G, Ravina, B, Shoulson, I, Cormier-Dequaire, F, Heutink, P, van Hilten, J J, Barker, R A, Williams-Gray, C H, Marinus, J &amp; Scherzer, C R 2017, &#39; Prediction of cognition in Parkinson&#39;s disease with a clinical–genetic score : a longitudinal analysis of nine cohorts &#39;, The Lancet Neurology, vol. 16, no. 8, pp. 620-629 . https://doi.org/10.1016/S1474-4422(17)30122-9, The Lancet Neurology, 16(8), 620-629
Accession number :
edsair.doi.dedup.....ae7ad22cbe182392732b4b0ecb12076e