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mansour2002/README.md

Hi there 👋, I am Mansour

About Me

I am currently dedicated to developing multimodal foundation models that integrate diverse clinical and imaging data (PET/CT/MRI) for advanced prostate cancer applications.
My expertise spans working with various imaging modalities, including PET, CT, MRI, OCT, and OCTA, to address challenges in disease detection, prognosis, and treatment planning.
I leverage advanced architectures such as Vision Transformers (ViTs), Convolutional Neural Networks (CNNs), and modern foundation models, alongside traditional machine learning methods.
My work involves extensive use of OpenCV for robust image processing and classical computer vision techniques.
I am deeply passionate about the real-world impact and applications of AI, constantly exploring new frontiers.
I am also actively working with Large Language Models (LLMs), Vision-Language Models (VLMs), and Large Multimodal Models (LMMs) to deepen my expertise.

Key Expertise

  • Languages: Python, C++, MATLAB
  • Domains: Medical Imaging, Multimodal AI, Deep Learning, Computer Vision

Pinned Loading

  1. PSMA-Lesion-Segmentation PSMA-Lesion-Segmentation Public

    Deep learning framework for automated lesion segmentation in PSMA PET/CT imaging using modified UNETR

    Python

  2. CFZ-Net-training CFZ-Net-training Public

    Deep Learning for Capillary Free Zones (CFZ) Segmentation using OCTA Images with Python and PyTorch.

    Jupyter Notebook 1 1

  3. TransUnet-for-CFZ-Segmentation TransUnet-for-CFZ-Segmentation Public

    TransUnet for Capillary Free Zones (CFZ) Segmentation using PyTorch.

    Jupyter Notebook

  4. AVA-Net AVA-Net Public

    Deep Learning for Arterial-Venous-Area (AVA) Segmentation using OCTA images with Python and TensorFlow.

    Python 6 1

  5. MF-AV-NET MF-AV-NET Public

    Python

  6. Digital-Pathology-Segmentation Digital-Pathology-Segmentation Public

    Cell Nuclei Instance Segmentation on Cancer Instance Segmentation (PanNuke) Dataset Using Python and PyTorch.

    Jupyter Notebook 1