AI for Medical Diagnosis Course Syllabus
Full curriculum breakdown — modules, lessons, estimated time, and outcomes.
Overview: This course provides a practical introduction to applying deep learning in medical diagnosis, focusing on real-world applications in medical imaging. You'll learn to build and evaluate convolutional neural networks for disease detection in chest X-rays and 3D MRI scans. The curriculum emphasizes hands-on learning through coding assignments and projects, with a focus on overcoming challenges like class imbalance and limited datasets. Total time commitment is approximately 28 hours, designed for flexible, self-paced study on Coursera.
Module 1: Disease Detection with Computer Vision
Estimated time: 8 hours
- Introduction to medical image diagnosis using deep learning
- Building and training CNN models for disease classification
- Handling class imbalance in medical datasets
- Multi-task learning for detecting multiple pathologies
Module 2: Evaluating Models
Estimated time: 4 hours
- Implementing evaluation metrics for medical AI models
- Understanding sensitivity, specificity, and AUC
- Techniques for model validation in clinical contexts
- Testing models under real-world diagnostic constraints
Module 3: 3D Medical Imaging
Estimated time: 8 hours
- Working with 3D MRI scans for brain disorder diagnosis
- Applying 3D CNNs to volumetric data
- Segmentation techniques for 3D medical images
- Addressing challenges in processing large volumetric datasets
Module 4: Addressing Data Challenges
Estimated time: 4 hours
- Strategies for working with limited medical data
- Data augmentation specific to medical imaging
- Transfer learning in low-data regimes
Module 5: Best Practices in Medical AI
Estimated time: 4 hours
- Training deep learning models with clinical reliability
- Validating models for healthcare applications
- Evaluating models for safety and fairness
Module 6: Final Project
Estimated time: 8 hours
- Diagnose lung disorders using chest X-ray images
- Apply 3D CNNs to classify brain disorders from MRI scans
- Submit a comprehensive model evaluation report
Prerequisites
- Familiarity with deep learning concepts and neural networks
- Proficiency in Python programming
- Basic understanding of machine learning frameworks like TensorFlow or PyTorch
What You'll Be Able to Do After
- Develop CNN models for medical image classification
- Diagnose lung and brain disorders using X-rays and MRI scans
- Address class imbalance and data scarcity in medical datasets
- Apply best practices in training and validating medical AI models
- Evaluate model performance using clinical metrics like sensitivity and specificity