Predicting progression of Alzheimer's disease using ordinal regression

  • O.M. D
  • E. W
  • A.F. M
  • et al.
ISSN: 1932-6203
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Abstract

We propose a novel approach to predicting disease progression in Alzheimer's disease (AD) - multivariate ordinal regression - which inherently models the ordered nature of brain atrophy spanning normal aging (CTL) to mild cognitive impairment (MCI) to AD. Ordinal regression provides probabilistic class predictions as well as a continuous index of disease progression - the ORCHID (Ordinal Regression Characteristic Index of Dementia) score. We applied ordinal regression to 1023 baseline structural MRI scans from two studies: the US-based Alzheimer's Disease Neuroimaging Initiative (ADNI) and the European based AddNeuroMed program. Here, the acquired AddNeuroMed dataset was used as a completely independent test set for the ordinal regression model trained on the ADNI cohort providing an optimal assessment of model generalizability. Distinguishing CTL-like (CTL and stable MCI) from AD-like (MCI converters and AD) resulted in balanced accuracies of 82% (cross-validation) for ADNI and 79% (independent test set) for AddNeuroMed. For prediction of conversion from MCI to AD, balanced accuracies of 70% (AUC of 0.75) and 75% (AUC of 0.81) were achieved. The ORCHID score was computed for all subjects. We showed that this measure significantly correlated with MMSE at 12 months (ρ = -0.64, ADNI and ρ = -0.59, AddNeuroMed). Additionally, the ORCHID score can help fractionate subjects with unstable diagnoses (e.g. reverters and healthy controls who later progressed to MCI), moderately late converters (12-24 months) and late converters (24-36 months). A comparison with results in the literature and direct comparison with a binary classifier suggests that the performance of this framework is highly competitive.

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APA

O.M., D., E., W., A.F., M., P., M., B., V., M., T., … A., S. (2014). Predicting progression of Alzheimer’s disease using ordinal regression. PLoS ONE, 9(8). Retrieved from http://www.embase.com/search/results?subaction=viewrecord&from=export&id=L603699647 http://dx.doi.org/10.1371/journal.pone.0105542

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