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Alzheimer's Imaging Consortium.

Swapnil Singh1,2, Marc D Rudolph2, Trey R Bateman2

  • 1Virginia Tech, Blacksburg, VA, USA.

Alzheimer'S & Dementia : the Journal of the Alzheimer'S Association
|December 23, 2025
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Summary
This summary is machine-generated.

This study combined MRI and PET scans using deep learning to predict Alzheimer's disease (AD) progression. The fused model significantly improved dementia risk prediction accuracy, showing potential for early AD detection.

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Area of Science:

  • Neuroimaging
  • Machine Learning
  • Biomarkers

Background:

  • Alzheimer's disease (AD) diagnosis relies on multi-domain biomarkers.
  • Machine learning models can benefit from integrating multiple data modalities.
  • Early detection of AD and prediction of dementia progression are critical.

Purpose of the Study:

  • To enhance deep learning model predictive power for AD using multi-modal neuroimaging data (T1-MRI and amyloid-PET).
  • To capture both amyloid (A) and atrophy (N) brain patterns.
  • To derive a dementia risk score (DRS) for predicting future dementia progression at early stages.

Main Methods:

  • Utilized multi-modal neuroimaging data from ADNI 1, 2, and GO datasets.
  • Trained classification models using T1-MRI and Amyloid-PET data with 5-fold cross-validation.
  • Fine-tuned ResNet50 models pre-trained on MedicalNet for independent MRI and PET classification, then fused for multi-modal DRS.

Main Results:

  • The fused multi-modal model achieved 97.29% balanced accuracy in classifying AD/CN, outperforming MRI-only (94.53%) and PET-only (86.53%) models.
  • For predicting Mild Cognitive Impairment (MCI) to dementia progression, the fused model reached 74.59% balanced accuracy, slightly improving over single-modal models (MRI: 71.17%, PET: 71.79%).

Conclusions:

  • Multi-modal deep learning models show significant potential for improving AD prediction accuracy and tracking disease progression.
  • T1-MRI and Amyloid-PET data demonstrate complementary strengths in AD prediction.
  • Further research is needed to optimize fusion strategies and explore other modalities for enhanced prediction of MCI progression.