A new algorithm for predicting time to disease endpoints in Alzheimer's disease patients.

TitleA new algorithm for predicting time to disease endpoints in Alzheimer's disease patients.
Publication TypeJournal Article
Year of Publication2014
AuthorsRazlighi QR, Stallard E, Brandt J, Blacker D, Albert M, Scarmeas N, Kinosian B, Yashin AI, Stern Y
JournalJ Alzheimers Dis
Volume38
Issue3
Pagination661-8
Date Published2014
ISSN1875-8908
KeywordsAged, Aged, 80 and over, Algorithms, Alzheimer Disease, Cohort Studies, Female, Humans, Kaplan-Meier Estimate, Male, Middle Aged, Predictive Value of Tests, Reproducibility of Results, Sex Factors, Time Factors
Abstract

BACKGROUND: The ability to predict the length of time to death and institutionalization has strong implications for Alzheimer's disease patients and caregivers, health policy, economics, and the design of intervention studies.

OBJECTIVE: To develop and validate a prediction algorithm that uses data from a single visit to estimate time to important disease endpoints for individual Alzheimer's disease patients.

METHOD: Two separate study cohorts (Predictors 1, N = 252; Predictors 2, N = 254), all initially with mild Alzheimer's disease, were followed for 10 years at three research centers with semiannual assessments that included cognition, functional capacity, and medical, psychiatric, and neurologic information. The prediction algorithm was based on a longitudinal Grade of Membership model developed using the complete series of semiannually-collected Predictors 1 data. The algorithm was validated on the Predictors 2 data using data only from the initial assessment to predict separate survival curves for three outcomes.

RESULTS: For each of the three outcome measures, the predicted survival curves fell well within the 95% confidence intervals of the observed survival curves. Patients were also divided into quintiles for each endpoint to assess the calibration of the algorithm for extreme patient profiles. In all cases, the actual and predicted survival curves were statistically equivalent. Predictive accuracy was maintained even when key baseline variables were excluded, demonstrating the high resilience of the algorithm to missing data.

CONCLUSION: The new prediction algorithm accurately predicts time to death, institutionalization, and need for full-time care in individual Alzheimer's disease patients; it can be readily adapted to predict other important disease endpoints. The algorithm will serve an unmet clinical, research, and public health need.

DOI10.3233/JAD-131142
Alternate JournalJ Alzheimers Dis
PubMed ID24064468
PubMed Central IDPMC3864687
Grant ListK01 AG044467 / AG / NIA NIH HHS / United States
P50 AG005146 / AG / NIA NIH HHS / United States
R01 AG007370 / AG / NIA NIH HHS / United States
R01-AG07370 / AG / NIA NIH HHS / United States
Related Institute: 
Brain Health Imaging Institute (BHII)

Weill Cornell Medicine
Department of Radiology
525 East 68th Street New York, NY 10065