About Course

This course addresses the concepts and hands-on implementation of neural networks as supervised techniques for analysis, classification, and prediction customized for bioinformatics and medical image processing applications.

Course abbreviation: DL-BIO

Instructor: Prof. Dr. Mohammed A.-Megeed Salem

Professor of Image & Vision Computing, German University in Cairo, GUC

Workload: 12 lectures, 3 hours each. Total workload: 42 hours: 36 hours of lectures and tutorials and 6 hours of self studies.

Entrance requirements: Computer science. Basic knowledge of Machine Learning.

Used media: PowerPoint presentation

Objectives

  • Understand neural networks and deep learning applications in bioinformatics and medical image processing
  • Apply deep learning to analysis, classification, prediction, medical image classification, and segmentation

Competences to be Developed

  • Simple supervised machine learning using conventional approaches
  • Binary classification of biomedical data using a single neuron
  • Feedforward neural networks for multi-class classification
  • Backpropagation algorithms
  • Hyperparameter tuning and neural network optimization
  • Building simple deep learning models for medical image classification
  • Adopting pretrained architectures for medical image segmentation and genomic data clustering

Assessment

  • Finalize a research project applying learned methods
  • Compile project outcomes into a high-quality research article ready for peer-review submission
  • Present and scientifically review all projects in the last lecture
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What Will You Learn?

  • Understand neural networks and deep learning applications in bioinformatics and medical image processing
  • Apply deep learning to analysis, classification, prediction, medical image classification, and segmentation
  • Simple supervised machine learning using conventional approaches
  • Binary classification of biomedical data using a single neuron
  • Feedforward neural networks for multi-class classification
  • Backpropagation algorithms

Course Content

Lecture 1: Course Info and Introduction

  • Course Info and Introduction
    00:00

Lecture 2: Supervised Machine Learning on Python

Lecture 3: Single Neuron for Biomedical Data Classification

Lecture 4: Python and Biomedical Data Wrap-up

Lecture 5: Multilayer Feedforward NN

Lecture 6: Feedforward Flow for Multiclass Classification with Python

Lecture 7: Backpropagation Algorithm I

Lecture 8: Backpropagation Algorithm II

Lecture 9: From Machine Learning to Deep Learning

Lecture 10: Deep Learning for Medical Image Classification

Lecture 11: Deep Learning for Medical Image Segmentation

Lecture 12: Project Wrap-Up

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