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Diagnosis of Parkinson's disease on the basis of clinical and genetic classification: A population-based modelling study

Authors :
Nalls, Mike A
McLean, Cory Y
Hardy, John
Seppi, Klaus
Reiter, Eva
Shill, Holly
Fernandez, Hubert
Ahmed, Anwar
Berg, Daniela
Wurster, Isabel
Mari, Zoltan
Brooks, David
Pavese, Nicola
Gasser, Thomas
Barone, Paolo
Isaacson, Stuart
Espay, Alberto
Rowe, Dominic
Brandabur, Melanie
Tetrud, James
Liang, Grace
Marder, Karen
Corvol, Jean-Christophe
Martí Masso, Jose Felix
Brice, Alexis
Tolosa, Eduardo
Aasly, Jan O
Giladi, Nir
Stefanis, Leonidas
Leary, Laura
Riordan, Cheryl
Rees, Linda
Sommerfeld, Barbara
Wood-Siverio, Cathy
Portillo, Alicia
Price, T Ryan
Lenahan, Art
Williams, Karen
Guthrie, Stephanie
Rawlins, Ashlee
Harlan, Sherry
Hunter, Christine
Tran, Baochan
Darin, Abigail
Linder, Carly
Todd, Gretchen
Nicolas, Aude
Thomas, Cathi-Ann
James, Raymond
Deeley, Cheryl
Bishop, Courtney
Sprenger, Fabienne
Willeke, Diana
Obradov, Sanja
Mule, Jennifer
Monahan, Nancy
Gauss, Katharina
Keller, Margaux F
Comyns, Kathleen
Fontaine, Deborah
Gigliotti, Christina
McCoy, Arita
Dunlop, Becky
Shah, Bina
Ainscough, Susan
James, Angela
Silverstein, Rebecca
Espay, Kristy
Molony, Cliona
Ranola, Madelaine
Santana, Helen M
Ngono, Nelly
Rezola, Elisabet
Rolan, Delores Vilas
Waro, Bjorg
Mirlman, Anat
Stamelou, Maria
Comery, Thomas
Papapetropoulos, Spyros
Gibbs, J Raphael
Ravina, Bernard
Grachev, Igor D
Dubow, Jordan S
Ahlijanian, Michael
Soares, Holly
Ostrowizki, Suzanne
Fontoura, Paulo
Chalker, Alison
Hewitt, David L
van der Brug, Marcel
Chen-Plotkin, Alice
Reith, Alastair D
Taylor, Peggy
Egebjerg, Jan
Minton, Mark
Siderowf, Andrew
Muglia, Pierandrea
Umek, Robert
Catafau, Ana
Suh, Eunran
Rick, Jacqueline
Letson, Christopher
Fiandaca, Massimo S
Mapstone, Mark
Federoff, Howard J
Noyce, Alastair J
Morris, Huw
Van Deerlin, Vivianna M
Weintraub, Daniel
Zabetian, Cyrus
Hernandez, Dena G
Eberly, Shirley
Lesage, Suzanne
Mullins, Meghan
Conley, Emily Drabant
Northover, Carrie A M
Frasier, Mark
Marek, Ken
Day-Williams, Aaron G
Stone, David J
Ioannidis, John P A
Singleton, Andrew B
Hutten, Samantha J
investigators, Parkinson's Disease Biomarkers Program and Parkinson's Progression Marker Initiative
Bowman, Dubois
Dawson, Ted
Dewey, Richard
German, Dwight Charles
Huang, Xuemei
Petyuk, Vladislav
Scherzer, Clemens
Vaillancourt, David
Gwinn, Katrina
West, Andrew
Zhang, Jing
Marek, Kenneth
Jennings, Danna
Lasch, Shirley
Tanner, Caroline
Simuni, Tanya
Coffey, Christopher
Kieburtz, Karl
Wilson, Renee
Sutherland, Margaret
Poewe, Werner
Mollenhauer, Brit
Galasko, Douglas
Foroud, Tatiana
Sherer, Todd
Chowdhury, Sohini
Kopil, Catherine
Arnedo, Vanessa
Casaceli, Cynthia
Martinez, Maria
Seibyl, John
Mendick, Susan
Schuff, Norbert
Caspell, Chelsea
Uribe, Liz
Foster, Eric
Gloer, Katherine
Yankey, Jon
Toga, Arthur
Crawford, Karen
Heutink, Peter
Smith, Danielle Elise
Casalin, Paola
Malferrari, Giulia
Trojanowski, John
Shaw, Les
Singleton, Andrew
Halter, Cheryl
Russell, David
Factor, Stewart
Hogarth, Penelope
Williams, Nigel M
Standaert, David
Hauser, Robert
Jankovic, Joseph
Stern, Matthew
Chahine, Lama
Hu, Shu-Ching
Frank, Samuel
Trenkwalder, Claudia
Oertel, Wolfgang
Richard, Irene
Source :
The Lancet. Neurology, vol 14, iss 10, The lancet / Neurology 14(10), 1002-1009 (2015). doi:10.1016/S1474-4422(15)00178-7
Publication Year :
2015

Abstract

Summary Background Accurate diagnosis and early detection of complex diseases, such as Parkinson's disease, has the potential to be of great benefit for researchers and clinical practice. We aimed to create a non-invasive, accurate classification model for the diagnosis of Parkinson's disease, which could serve as a basis for future disease prediction studies in longitudinal cohorts. Methods We developed a model for disease classification using data from the Parkinson's Progression Marker Initiative (PPMI) study for 367 patients with Parkinson's disease and phenotypically typical imaging data and 165 controls without neurological disease. Olfactory function, genetic risk, family history of Parkinson's disease, age, and gender were algorithmically selected by stepwise logistic regression as significant contributors to our classifying model. We then tested the model with data from 825 patients with Parkinson's disease and 261 controls from five independent cohorts with varying recruitment strategies and designs: the Parkinson's Disease Biomarkers Program (PDBP), the Parkinson's Associated Risk Study (PARS), 23andMe, the Longitudinal and Biomarker Study in PD (LABS-PD), and the Morris K Udall Parkinson's Disease Research Center of Excellence cohort (Penn-Udall). Additionally, we used our model to investigate patients who had imaging scans without evidence of dopaminergic deficit (SWEDD). Findings In the population from PPMI, our initial model correctly distinguished patients with Parkinson's disease from controls at an area under the curve (AUC) of 0·923 (95% CI 0·900–0·946) with high sensitivity (0·834, 95% CI 0·711–0·883) and specificity (0·903, 95% CI 0·824–0·946) at its optimum AUC threshold (0·655). All Hosmer-Lemeshow simulations suggested that when parsed into random subgroups, the subgroup data matched that of the overall cohort. External validation showed good classification of Parkinson's disease, with AUCs of 0·894 (95% CI 0·867–0·921) in the PDBP cohort, 0·998 (0·992–1·000) in PARS, 0·955 (no 95% CI available) in 23andMe, 0·929 (0·896–0·962) in LABS-PD, and 0·939 (0·891–0·986) in the Penn-Udall cohort. Four of 17 SWEDD participants who our model classified as having Parkinson's disease converted to Parkinson's disease within 1 year, whereas only one of 38 SWEDD participants who were not classified as having Parkinson's disease underwent conversion (test of proportions, p=0·003). Interpretation Our model provides a potential new approach to distinguish participants with Parkinson's disease from controls. If the model can also identify individuals with prodromal or preclinical Parkinson's disease in prospective cohorts, it could facilitate identification of biomarkers and interventions. Funding National Institute on Aging, National Institute of Neurological Disorders and Stroke, and the Michael J Fox Foundation.

Details

Language :
English
Database :
OpenAIRE
Journal :
The Lancet. Neurology, vol 14, iss 10, The lancet <London> / Neurology 14(10), 1002-1009 (2015). doi:10.1016/S1474-4422(15)00178-7
Accession number :
edsair.doi.dedup.....8d70ecd0e8adfe539fb17351966e636b