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Predicting missing biomarker data in a longitudinal study of Alzheimer disease

Authors :
Lo, Raymond Y.
Jagust, William J.
Aisen, Paul
Jack, Clifford R.
Toga, Arthur W.
Beckett, Laurel
Gamst, Anthony
Soares, Holly
C. Green, Robert
Montine, Tom
Thomas, Ronald G.
Donohue, Michael
Walter, Sarah
Dale, Anders
Bernstein, Matthew
Felmlee, Joel
Fox, Nick
Thompson, Paul
Schuff, Norbert
Alexander, Gene
DeCarli, Charles
Bandy, Dan
Chen, Kewei
Morris, John
Lee, Virginia M.-Y.
Korecka, Magdalena
Crawford, Karen
Neu, Scott
Harvey, Danielle
Kornak, John
Saykin, Andrew J.
Foroud, Tatiana M.
Potkin, Steven
Shen, Li
Buckholtz, Neil
Kaye, Jeffrey
Dolen, Sara
Quinn, Joseph
Schneider, Lon
Pawluczyk, Sonia
Spann, Bryan M.
Brewer, James
Vanderswag, Helen
Heidebrink, Judith L.
Lord, Joanne L.
Petersen, Ronald
Johnson, Kris
Doody, Rachelle S.
Villanueva-Meyer, Javier
Chowdhury, Munir
Stern, Yaakov
Honig, Lawrence S.
Bell, Karen L.
Morris, John C.
Mintun, Mark A.
Schneider, Stacy
Marson, Daniel
Griffith, Randall
Clark, David
Grossman, Hillel
Tang, Cheuk
Marzloff, George
Toledo-Morrell, Leylade
Shah, Raj C.
Duara, Ranjan
Varon, Daniel
Roberts, Peggy
Albert, Marilyn S.
Pedroso, Julia
Toroney, Jaimie
Rusinek, Henry
de Leon, Mony J
De Santi, Susan M
Doraiswamy, P. Murali
Petrella, Jeffrey R.
Aiello, Marilyn
Clark, Christopher M.
Pham, Cassie
Nunez, Jessica
Smith, Charles D.
Given, Curtis A.
Hardy, Peter
Lopez, Oscar L.
Oakley, MaryAnn
Simpson, Donna M.
Ismail, M. Saleem
Brand, Connie
Richard, Jennifer
Mulnard, Ruth A.
Thai, Gaby
Mc-Adams-Ortiz, Catherine
Diaz-Arrastia, Ramon
Martin-Cook, Kristen
DeVous, Michael
Levey, Allan I.
Lah, James J.
Cellar, Janet S.
Burns, Jeffrey M.
Anderson, Heather S.
Laubinger, Mary M.
Bartzokis, George
Silverman, Daniel H.S.
Lu, Po H.
Graff-Radford MBBCH, Neill R
Parfitt, Francine
Johnson, Heather
Farlow, Martin
Herring, Scott
Hake, Ann M.
van Dyck, Christopher H.
MacAvoy, Martha G.
Benincasa, Amanda L.
Chertkow, Howard
Bergman, Howard
Hosein, Chris
Black, Sandra
Graham, Simon
Caldwell, Curtis
Hsiung, Ging-Yuek Robin
Feldman, Howard
Assaly, Michele
Kertesz, Andrew
Rogers, John
Trost, Dick
Bernick, Charles
Munic, Donna
Wu, Chuang-Kuo
Johnson, Nancy
Mesulam, Marsel
Sadowsky, Carl
Martinez, Walter
Villena, Teresa
Turner, Scott
Johnson, Kathleen B.
Behan, Kelly E.
Sperling, Reisa A.
Rentz, Dorene M.
Johnson, Keith A.
Rosen, Allyson
Tinklenberg, Jared
Ashford, Wes
Sabbagh, Marwan
Connor, Donald
Jacobson, Sandra
Killiany, Ronald
Norbash, Alexander
Nair, Anil
Obisesan, Thomas O.
Jayam-Trouth, Annapurni
Wang, Paul
Lerner, Alan
Hudson, Leon
Ogrocki, Paula
Fletcher, Evan
Carmichael, Owen
Kittur, Smita
Mirje, Seema
Borrie, Michael
Lee, T-Y
Bartha, Dr Rob
Johnson, Sterling
Asthana, Sanjay
Carlsson, Cynthia M.
Potkin, Steven G.
Preda, Adrian
Nguyen, Dana
Tariot, Pierre
Fleisher, Adam
Reeder, Stephanie
Bates, Vernice
Capote, Horacio
Rainka, Michelle
Hendin, Barry A.
Scharre, Douglas W.
Kataki, Maria
Zimmerman, Earl A.
Celmins, Dzintra
Brown, Alice D.
Gandy, Sam
Marenberg, Marjorie E.
Rovner, Barry W.
Pearlson, Godfrey
Anderson, Karen
Santulli, Robert B.
Englert, Jessica
Williamson, Jeff D.
Sink, Kaycee M.
Watkins, Franklin
Ott, Brian R.
Cohen, Ronald
Salloway, Stephen
Malloy, Paul
Correia, Stephen
Rosen, Howard J.
Miller, Bruce L.
Mintzer, Jacobo
Source :
Lo, Raymond Y.; Jagust, William J.; Aisen, Paul; Jack, Clifford R.; Toga, Arthur W.; Beckett, Laurel; et al.(2012). Predicting missing biomarker data in a longitudinal study of Alzheimer disease. Neurology, 78(18), 1376-1382. UC Irvine: Institute for Clinical and Translational Science. Retrieved from: http://www.escholarship.org/uc/item/6000433n
Publication Year :
2012
Publisher :
eScholarship, University of California, 2012.

Abstract

Objective:To investigate predictors of missing data in a longitudinal study of Alzheimer disease (AD).Methods:The Alzheimer's Disease Neuroimaging Initiative (ADNI) is a clinic-based, multicenter, longitudinal study with blood, CSF, PET, and MRI scans repeatedly measured in 229 participants with normal cognition (NC), 397 with mild cognitive impairment (MCI), and 193 with mild AD during 2005–2007. We used univariate and multivariable logistic regression models to examine the associations between baseline demographic/clinical features and loss of biomarker follow-ups in ADNI.Results:CSF studies tended to recruit and retain patients with MCI with more AD-like features, including lower levels of baseline CSF Aβ42. Depression was the major predictor for MCI dropouts, while family history of AD kept more patients with AD enrolled in PET and MRI studies. Poor cognitive performance was associated with loss of follow-up in most biomarker studies, even among NC participants. The presence of vascular risk factors seemed more critical than cognitive function for predicting dropouts in AD.Conclusion:The missing data are not missing completely at random in ADNI and likely conditional on certain features in addition to cognitive function. Missing data predictors vary across biomarkers and even MCI and AD groups do not share the same missing data pattern. Understanding the missing data structure may help in the design of future longitudinal studies and clinical trials in AD.

Details

Language :
English
Database :
OpenAIRE
Journal :
Lo, Raymond Y.; Jagust, William J.; Aisen, Paul; Jack, Clifford R.; Toga, Arthur W.; Beckett, Laurel; et al.(2012). Predicting missing biomarker data in a longitudinal study of Alzheimer disease. Neurology, 78(18), 1376-1382. UC Irvine: Institute for Clinical and Translational Science. Retrieved from: http://www.escholarship.org/uc/item/6000433n
Accession number :
edsair.od.......325..915b75df61fa8e896b5a34960c17597c