The Diagnexia Computational Pathology Course

The Diagnexia Computational Pathology Course

Explore AI, image analysis, and deep learning in pathology. A one-day intensive course on computational techniques transforming diagnostics.

By Diagnexia UK Ltd

Date and time

Location

Reuben College

Parks Road Oxford OX1 3QP United Kingdom

Refund Policy

Refunds up to 30 days before event

About this event

  • Event lasts 8 hours 30 minutes

Diagnexia Computational Pathology Symposium

📍 Reuben College, Oxford
📅 Date: 2nd September

Morning Session

  • 09:00 AM - 09:05 AM | Welcome
  • 09:05 AM - 09:15 AM | Opening Remarks
  • 09:15 AM - 09:45 AM | Introduction to Computational Pathology: Concepts and Importance
    Overview of computational pathology, its key concepts, and its relevance to modern pathology practices.
  • 09:45 AM - 10:15 AM | Understanding Digital Images: The Building Blocks of Computational Pathology
    Explanation of images, pixels, resolution, color spaces, stain vector estimation, image representation, compression, whole slide imaging (WSI), and pyramidal images.
  • 10:15 AM - 10:45 AM | Image Processing in Pathology: Techniques and Whole Slide Imaging
    Fundamental image processing techniques such as thresholding, filtering, morphological operations, segmentation, object identification, and feature extraction.
  • 10:45 AM - 11:05 AM | ☕ Coffee Break (20 mins)
  • 11:05 AM - 11:35 AM | Feature Extraction in Computational Pathology: Feature Engineering
    Introduction to heuristic feature extraction techniques, including texture, shape, intensity, and morphology, and their applications in computational pathology.
  • 11:35 AM - 12:05 PM | Introduction to Deep Learning
    Overview of neural networks, forward and backward propagation, loss function, gradient descent, training, inference, validation, test datasets, and performance measurements in clinical contexts.
  • 12:05 PM - 12:35 PM | Neural Networks in Computational Pathology
    Introduction to convolutional networks (ConvNets), Transformers, Vision Transformers (ViTs), and their relevance in pathology.
  • 12:35 PM - 01:35 PM | 🍽️ Lunch Break (1 hour)

Afternoon Session

  • 01:35 PM - 02:05 PM | Data Preparation and Challenges in Computational Pathology
    Discussion on data preparation steps (digitization, annotation, cleaning) and challenges such as staining variability, dataset biases, and annotation requirements. Explain augmentation vs. real-world variation.
  • 02:05 PM - 02:35 PM | Building and Training Models in Computational Pathology
    Overview of training approaches, including fully-supervised, multiple instance learning (MIL), and unsupervised learning.
  • 02:35 PM - 03:05 PM | Validation and Regulation of Computational Pathology Tools
    Exploring validation requirements, regulatory approval processes (FDA, CE marking), and quality assurance.
  • 03:05 PM - 03:25 PM | ☕ Coffee Break (20 mins)
  • 03:25 PM - 03:55 PM | Pathology as a Data-Heavy Science
    Discussion on the vast data volumes in pathology compared to other medical disciplines and why pathologists must master data analysis techniques.
  • 03:55 PM - 04:25 PM | Emerging Trends and Future Technical Directions in Computational Pathology
    Highlighting cutting-edge innovations such as multimodal AI, chatbots, and the evolving role of pathologists in advancing the field.
  • 04:25 PM - 04:55 PM | Case Studies: Computational Pathology in Action
    Real-world applications of computational pathology in diagnostics, research, and prognostic analysis.
  • 04:55 PM - 05:25 PM | Ethics and the Future of Computational Pathology
    Discussion on ethical considerations, patient data privacy, medical responsibility, and training for a future with AI-assisted diagnostics.
  • 05:25 PM - 05:55 PM | Open Discussion & Q&A
    An interactive forum for participants to discuss key takeaways, ask questions, and share insights.
  • 05:55 PM - 06:00 PM | Closing Remarks

Tickets

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