Early diagnosis of Alzheimer's disease on ADNI data using novel longitudinal score based on functional principal component analysis.

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Shi, Haolun

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Ma, Da

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Nie, Yunlong

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Faisal Beg, Mirza

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Pei, Jian

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Cao, Jiguo

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Neuroimaging Initiative, The Alzheimer's Disease

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2025-12-02T03:20:29Z

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2025-12-02T03:20:29Z

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2021-03

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Methods: Alzheimer's disease (AD) is a worldwide prevalent age-related neurodegenerative disease with no available cure yet. Early prognosis is therefore crucial for planning proper clinical intervention. It is especially true for people diagnosed with mild cognitive impairment, to whom the prediction of whether and when the future disease onset would happen is particularly valuable. However, such prognostic prediction has been proven to be challenging, and previous studies have only achieved limited success. Approach: In this study, we seek to extract the principal component of the longitudinal disease progression trajectory in the early stage of AD, measured as the magnetic resonance imaging (MRI)-derived structural volume, to predict the onset of AD for mild cognitive impaired patients two years ahead. Results: Cross-validation results of LASSO regression using the longitudinal functional principal component (FPC) features show significant improved predictive power compared to training using the baseline volume 12 months before AD conversion [area under the receiver operating characteristic curve (AUC) of 0.802 versus 0.732] and 24 months before AD conversion (AUC of 0.816 versus 0.717). Conclusions: We present a framework using the FPCA to extract features from MRI-derived information collected from multiple timepoints. The results of our study demonstrate the advantageous predictive power of the population-based longitudinal features to predict the disease onset compared with using only cross-sectional data-based on volumetric features extracted from a single timepoint, demonstrating the improved prediction power using FPC-derived longitudinal features.

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20108RR

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2329-4302

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2329-4310

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https://hdl.handle.net/10161/33729

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eng

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SPIE-Intl Soc Optical Eng

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Journal of medical imaging (Bellingham, Wash.)

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10.1117/1.jmi.8.2.024502

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https://creativecommons.org/licenses/by-nc/4.0

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Alzheimer’s disease

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Alzheimer’s disease neuroimaging initiative

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dementia of the Alzheimer type

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early prediction

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functional principal component analysis

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longitudinal

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Early diagnosis of Alzheimer's disease on ADNI data using novel longitudinal score based on functional principal component analysis.

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Journal article

duke.contributor.orcid

Pei, Jian|0000-0002-2200-8711

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024502

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2

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Duke

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Pratt School of Engineering

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School of Medicine

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Trinity College of Arts & Sciences

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Basic Science Departments

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Biostatistics & Bioinformatics

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Electrical and Computer Engineering

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Computer Science

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Biostatistics & Bioinformatics, Division of Biostatistics

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Published

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8

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