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A Computational Method for Computing an Alzheimer’s Disease Progression Score; Experiments and Validation With the ADNI Dataset
Neurobiology of Aging (2014)
  • Bruno M. Jedynak, Portland State University
  • Bo Liu, Johns Hopkins University
  • Andrew Lang, Johns Hopkins University
  • Yulia Gel, Johns Hopkins University
  • Jerry L. Prince, Johns Hopkins University
Abstract
Understanding the time-dependent changes of biomarkers related to Alzheimer’s disease (AD) is a key to assessing disease progression and to measuring the outcomes of disease-modifying therapies. In this paper, we validate an Alzheimer’s disease progression score model which uses multiple biomarkers to quantify the AD progression of subjects following three assumptions: (1) there is a unique disease progression for all subjects, (2) each subject has a different age of onset and rate of progression, and (3) each biomarker is sigmoidal as a function of disease progression. Fitting the parameters of this model is a challenging problem which we approach using an alternating least squares optimization algorithm. In order to validate this optimization scheme under realistic conditions, we use the Alzheimer’s Disease Neuroimaging Initiative (ADNI) cohort. With the help of Monte Carlo simulations, we show that most of the global parameters of the model are tightly estimated, thus enabling an ordering of the biomarkers that fit the model well, ordered as: the Rey auditory verbal learning test with 30 minutes delay, the sum of the two lateral hippocampal volumes divided by the intra-cranial volume, followed by (the clinical dementia rating sum of boxes score and the mini mental state examination score) in no particular order and lastly the Alzheimer’s disease assessment scale-cognitive subscale.

Publication Date
October 17, 2014
DOI
10.1016/j.neurobiolaging.2014.03.043
Citation Information
Bruno M. Jedynak, Bo Liu, Andrew Lang, Yulia Gel, Jerry L. Prince, A computational method for computing an Alzheimer's disease progression score; experiments and validation with the ADNI data set, Neurobiology of Aging, Volume 36, Supplement 1, January 2015, Pages S178-S184.