Integrative Clinical-Longitudinal AI Framework for Early Risk Stratification in Dementia and Related Disorders
ID:125 View Protection:ATTENDEE Updated Time:2025-12-23 13:12:29 Hits:359 Online

Start Time:2025-12-30 14:00(Asia/Amman)

Duration:15min

Session:S2 Track 2: IoT and applications » S2-2Track 2: IoT and applications

Video No Permission Presentation File

Tips: Only the registered participant can access the file. Please sign in first.

Abstract
Neurodegenerative conditions including dementia are a leading health challenge worldwide, and more often than not, progress implicitly, in a manner that they cannot be detected until very late in the disease. Risk prediction at an early stage thus becomes very essential to allow the provision of individualized care and even to curb cognitive impairment. The study proposes a multi-modal, federated AI and hierarchical attention  framework for  integrating clinical assessment, neuroimaging, genetic/omics biomarkers, digital behavior data and longitudinal electronic health records over 5-10 years across multi- center cohorts. The modalities are encoded by specialized deep learning decoders such as CNNs for imaging and clinical data, Transformers for behavioral data and graph neural networks for genetic/omic inputs. The modality-dependent embeddings get integrated by hierarchical attention operation to introduce trajectory-aware representations that realize temporal patient dynamics. Dynamic risk scores and time-to-event estimates are produced in a model-based optimization framework using recurrent neural networks and survival-transformers. The evaluation demonstrates robust performance with an AUC-ROC of 93.8 percent (95 percent CI) and a C-index of 0.87. The framework increases the predictive performance, interpretability, and privacy, and provides a clinically deployable tool of early dementia risk profiling and intervention planning.
Keywords
Dementia Risk Prediction; Multi-Modal Data Integration; federated learning; Survival Analysis; Neuroimaging; Genetic Biomarkers; Explainability
Speaker
Anto Lourdu Xavier Raj Arockia Selvarathinam
PhD researcher Department of Data Science and Analytics College of Computing Grand Valley State University Michigan, USA

Submission Author
Anto Lourdu Xavier Raj Arockia Selvarathinam Department of Data Science and Analytics College of Computing Grand Valley State University Michigan, USA
Naveenkumar Anbalagan Department of information Technology, Sona College of Technology, Salem, Tamil Nadu, India
Ayman Amer Faculty of Engineering; Jordan; Zarqa Univeristy
Zakaria Che Muda Malaysia;Faculty of Engineering and Quantity Surveying INTI-IU University Nilai
Yogesh Kumar Department of CSE, School of Technology, Pandit Deendayal Energy University, Gandhinagar, India
Muhammad Umair Manzoor School of Engineering RMIT University, Melbourne, Australia
Muhammad Fazal Ijaz Australia;Torrens University
Submit Comment
Verify Code Change Another
All Comments
Important Date
  • Conference Date

    Dec 29

    2025

    to

    Dec 31

    2025

  • Dec 20 2025

    Draft paper submission deadline

  • Dec 31 2025

    Contribution Submission Deadline

  • Dec 31 2025

    Registration deadline

Sponsored By
United Societies of Science
Organized By
Zarqa University
Previous Conferences