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Deep Learning with PyTorch for Medical Image Analysis

A rigorous and practical course for applying deep learning to real-world medical imaging challenges using PyTorch.

access

Lifetime

level

Beginner

certificate

Certificate of completion

language

English

What will you in Deep Learning with PyTorch for Medical Image Analysis Course

  • Understand deep learning principles and their application in medical imaging.

  • Implement CNNs using PyTorch for tasks like classification, segmentation, and detection.

  • Work with DICOM, NIfTI, and other medical imaging formats.

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  • Apply pre-processing and augmentation techniques to medical datasets.

  • Build full pipelines for medical image analysis using real-world examples.

Program Overview

Module 1: Introduction to Deep Learning & PyTorch

⏳ 45 minutes

  • Overview of deep learning basics and medical imaging context.

  • PyTorch setup, tensors, and basic operations.

Module 2: Medical Imaging Formats & Preprocessing

⏳ 60 minutes

  • Introduction to DICOM, NIfTI, and data loading with pydicom, nibabel.

  • Image normalization, resizing, and augmentation for medical datasets.

Module 3: Convolutional Neural Networks (CNNs)

⏳ 60 minutes

  • Building basic CNN models in PyTorch.

  • Activation functions, pooling, and backpropagation.

Module 4: Classification with CNNs in Medical Imaging

⏳ 75 minutes

  • Training models for binary and multi-class classification.

  • Evaluation metrics like accuracy, AUC, and confusion matrix.

Module 5: Semantic Segmentation

⏳ 90 minutes

  • U-Net and encoder-decoder architectures.

  • Implementing pixel-level segmentation for medical scans.

Module 6: Object Detection & Localization

⏳ 60 minutes

  • Bounding box techniques in medical imaging.

  • Integrating detection with classification for full pipelines.

Module 7: Model Evaluation & Optimization

⏳ 45 minutes

  • Loss functions, overfitting control, and model regularization.

  • Saving models, checkpointing, and performance tuning.

Module 8: Project: End-to-End Medical Image Analysis

⏳ 90 minutes

  • Applying learned techniques on a real dataset.

  • Full workflow: loading → training → evaluation → inference.

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Job Outlook

  • High Demand: Medical AI is growing in diagnostics, radiology, and pathology.

  • Career Advancement: Prepares learners for roles in medical AI, computer vision, and research.

  • Salary Potential: AI roles in healthcare offer $90K–$150K+, especially with domain expertise.

  • Freelance Opportunities: Opportunities in building models for hospitals, startups, and academic projects.

9.6Expert Score
Highly Recommended
A rigorous and practical course for applying deep learning to real-world medical imaging challenges using PyTorch.
Value
9.3
Price
9.5
Skills
9.7
Information
9.6
PROS
  • Specialized focus on medical imaging and PyTorch.
  • End-to-end pipelines with real-world examples.
  • Covers multiple tasks: classification, segmentation, detection.
CONS
  • Requires Python and deep learning fundamentals.
  • Lacks certification for medical industry compliance.

Specification: Deep Learning with PyTorch for Medical Image Analysis

access

Lifetime

level

Beginner

certificate

Certificate of completion

language

English

Deep Learning with PyTorch for Medical Image Analysis
Deep Learning with PyTorch for Medical Image Analysis
Course | Career Focused Learning Platform
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