The heterogeneity of Alzheimer’s disease contributes to the high failure rate of prior clinical trials. We analyzed 5-year longitudinal outcomes and biomarker data from 562 subjects with mild cognitive impairment (MCI) from two national studies (ADNI) using a novel multilayer clustering algorithm. The algorithm identified homogenous clusters of MCI subjects with markedly different prognostic cognitive trajectories. A cluster of 240 rapid decliners had 2-fold greater atrophy and progressed to dementia at almost 5 times the rate of a cluster of 184 slow decliners. A classifier for identifying rapid decliners in one study showed high sensitivity and specificity in the second study. Characterizing subgroups of at risk subjects, with diverse pro...
OBJECTIVE: To identify potential predictors for outcome in individuals with mild cognitive impairmen...
Aim: The mini-mental state examination, commonly used to measure cognitive impairment of Alzheimer’s...
A hierarchical clustering algorithm was applied to magnetic resonance images (MRI) of a cohort of 75...
Understanding Alzheimer’s disease (AD) heterogeneity is important for understanding the underlying p...
Background/Aims: To identify prodromal Alzheimer's disease (AD) subjects using a data-driven approac...
Alzheimer’s disease (AD) is a highly heterogeneous disorder. Untangling this variability could lead ...
Alzheimer's disease (AD) neuropathology is extremely heterogeneous, and the evolution from preclinic...
Introduction Patients with Alzheimer's disease (AD) show heterogeneity in profile of cognitive impai...
Alzheimer’s disease (AD) is a highly heterogeneous disorder. Untangling this variability could lead ...
IntroductionPatients with Alzheimer's disease (AD) show heterogeneity in profile of cognitive impair...
Objective: To identify potential predictors for outcome in individuals with mild cognitive impairmen...
Subjective memory decline (SMD) is a heterogeneous condition. While SMD might be the earliest sign o...
Subjective memory decline (SMD) is a heterogeneous condition. While SMD might be the earliest sign o...
OBJECTIVE: To identify potential predictors for outcome in individuals with mild cognitive impairmen...
Aim: The mini-mental state examination, commonly used to measure cognitive impairment of Alzheimer’s...
A hierarchical clustering algorithm was applied to magnetic resonance images (MRI) of a cohort of 75...
Understanding Alzheimer’s disease (AD) heterogeneity is important for understanding the underlying p...
Background/Aims: To identify prodromal Alzheimer's disease (AD) subjects using a data-driven approac...
Alzheimer’s disease (AD) is a highly heterogeneous disorder. Untangling this variability could lead ...
Alzheimer's disease (AD) neuropathology is extremely heterogeneous, and the evolution from preclinic...
Introduction Patients with Alzheimer's disease (AD) show heterogeneity in profile of cognitive impai...
Alzheimer’s disease (AD) is a highly heterogeneous disorder. Untangling this variability could lead ...
IntroductionPatients with Alzheimer's disease (AD) show heterogeneity in profile of cognitive impair...
Objective: To identify potential predictors for outcome in individuals with mild cognitive impairmen...
Subjective memory decline (SMD) is a heterogeneous condition. While SMD might be the earliest sign o...
Subjective memory decline (SMD) is a heterogeneous condition. While SMD might be the earliest sign o...
OBJECTIVE: To identify potential predictors for outcome in individuals with mild cognitive impairmen...
Aim: The mini-mental state examination, commonly used to measure cognitive impairment of Alzheimer’s...
A hierarchical clustering algorithm was applied to magnetic resonance images (MRI) of a cohort of 75...