Mansoor Ahmed

Ph.D. Student

GitHub
Google Scholar
Email
mahmed76obfuscate@student.gsu.edu

Overview

Mansoor Ahmed is a Ph.D. student in the Department of Computer Science at Georgia State University. His research focuses on Machine Learning, Deep Learning, Neuroimaging, and Bioinformatics. He specializes in developing predictive models for neuroscience applications, including brain age estimation, Alzheimer’s disease detection, and multi-site MRI harmonization.


Research Interests

  • Neuroimaging: Developing machine learning models for brain age estimation, Alzheimer’s disease detection, and multi-site MRI harmonization.
  • Bioinformatics: Designing computational pipelines for antibody-antigen interaction prediction and protein sequence analysis.
  • Deep Learning: Applying deep learning techniques to analyze multimodal MRI and fMRI data for disorder classification and predictive modeling.
  • Federated Learning: Developing decentralized algorithms for privacy-preserving analysis of healthcare data.

  • Graduate Teaching Assistant
    Georgia State University, Atlanta, GA, USA
  • Jan 2025 – Present
    Course: Advanced Machine Learning (CSC 8850)
  • Sep 2024 – Dec 2024
    Course: Spatial and Scientific Databases (CSC 8713)
  • Lahore University of Management Sciences, Lahore, Pakistan
    Sep 2022 – Dec 2022
    Course: Mathematical Foundations for Machine Learning and Data Science (EE 212)

Selected Publications

  • Exploring the Impact of Embedding Methods on Graph-based Antibody-aware Epitope Prediction
    Mansoor Ahmed, Sarwan Ali, Avais Jan, Murray Patterson, Imdad Ullah Khan
    Presented at ICCABS 2025. Slides | GitHub
    • Developed a GCN framework for antibody-antigen interaction prediction using 3D structural data.
    • Achieved state-of-the-art performance on the AsEP benchmark dataset.
  • Robust Brain Age Estimation via Regression Models and MRI-derived Features
    Mansoor Ahmed, Usama Sardar, Sarwan Ali, Shafiq Alam, Murray Patterson, Imdad Ullah Khan
    ICCCI 2023. Paper | Slides | GitHub
    • Integrated volumetric measurements from T1-weighted MRIs to estimate brain age.
    • Achieved an MAE of 3.25 years.

Education

  • Ph.D. in Computer Science
    Georgia State University, Atlanta, GA, USA
    Sep 2024 – Present