Eskisehir Technical University Info Package Eskisehir Technical University Info Package
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About the Program Educational Objectives Key Learning Outcomes Course Structure Diagram with Credits Field Qualifications Matrix of Course& Program Qualifications Matrix of Program Outcomes&Field Qualifications
  • Institute of Graduate Programmes
  • Department of Computer Engineering
  • Artifical Intelligence (MS) (with Thesis) (English)
  • Course Structure Diagram with Credits
  • Artificial Intelligence in Healthcare
  • Description
  • Description
  • Learning Outcomes
  • Course's Contribution to Prog.
  • Learning Outcomes & Program Qualifications
  • ECTS Credit Load

Course Introduction Information

Code - Course Title BİL573 - Artificial Intelligence in Healthcare
Course Type Elective Courses
Language of Instruction İngilizce
Laboratory + Practice 3+0
ECTS 7.5
Course Instructor(s) DOKTOR ÖĞRETİM ÜYESİ SEMA CANDEMİR
Mode of Delivery in class
Prerequisites Knowledge in linear algebra, probability and statistics. Knowledge in computer programming. Python language will be used in class project. Knowledge in machine learning and image processing.
Courses Recomended The recommended courses are image processing and machine learning.
Required or Recommended Resources Recommended resources1) Deep Learning - Aaron Courville, Ian Goodfellow, and Yoshua Bengio https://www.deeplearningbook.org/ 2) Stanford University - Artificial Intelligence in Healthcare (Fall 2021-2022) (https://web.stanford.edu/class/biods220/) 3) O’Reilly - Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow: Concepts, Tools, and Techniques to Build Intelligent Systems
Recommended Reading List 1) Deep Learning - Aaron Courville, Ian Goodfellow, and Yoshua Bengio https://www.deeplearningbook.org/ 2) Convolutional neural networks: an overview and application in radiology - PubMed (nih.gov)3) O’Reilly - Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow: Concepts, Tools, and Techniques to Build Intelligent Systems4) Magician’s Corner: 9. Performance Metrics for Machine Learning Models | Radiology: Artificial Intelligence (rsna.org)5) S. H. Park, K. Han, Methodologic guide for evaluating clinical performance and effect of artificial intelligence technology for medical diagnosis and prediction, Radiology 286 (3) (2018) 800–809. 6) Deep Learning (Nature 2015) - Seminal review paper by LeCun, Bengio, and Hinton https://www.researchgate.net/publication/277411157_Deep_Learning 7) Convolutional Neural Networks for Radiologic Images: A Radiologist’s Guide | Radiology (rsna.org)
Assessment methods and criteria Midterm 30% Assignments 30% Final Exam 40%
Work Placement Homeworks - Students will describe a healthcare problem, propose a medical data analysis solution in image processing and machine learning disciplines, formulate and develop a method to solve the problem.
Sustainability Development Goals Quality Education , Industry, Innovation and Infrastructure

Content

Weeks Topics
Week - 1 Course Objective and Learning Outcomes; Digital Transformation in Healthcare, Research and Development; Basic Definitions: Computer vision, Medical data analysis, Machine Learning; Course Topics Summary.
Week - 2 Computational Model Development Definition; Computational Model Development Tools: Image processing, Computer Vision, Machine Learning, Probability and Statistics, Python, Anaconda, IDE Spyder; Data Analysis Libraries: NumPy, ScikitLearn, SciPy; Image Processing Libraries; Deep Learning Libraries: Keras, Tensorflow, Pytorch; Python Environment and Library Setup.
Week - 3 Computational Model Development Stages; Clinical Problem Definition; Data Curation; Data Annotation; Model Training Strategies: Supervised learning, Conventional learning, Data-driven Approach; Model evaluation and performance metrics.
Week - 4 Introduction to Deep Learning; Digital Neuron; Activation Function; Loss Function; Optimization; Deep Learning Software Platforms; Convolutional Neural Networks.
Week - 5 Medical Data and Examples; Medical Data Types: Imaging data, Text data, Demographics, Categorical data, Numerical data; PACS- Picture Archiving Communication Systems; Electronic Medical Health Records; DICOM; Publicly Available Dataset Repositories; Data Curation; Missing, Insufficient and Imbalance Data; Data privacy. Suggested Readings and Assignment.
Week - 6 Forms of Learning: Supervised learning, Semi-supervised, Transfer learning, Weakly supervised, Federated learning.
Week - 7 Deep Learning Model Training; Preparing Data for Model Training: Resizing, Segmentation, Normalization, Split data, Augmentation; Model Creation; Hyperpameters; Overfitting and Underfitting; Overfit Mitigating Techniques; Stop Training.
Week - 8 Medical Image Analysis Application: Classification; Example Applications.
Week - 9 Medical Image Analysis Application: Segmentation; U-Net; Segmentation Metrics; Example Applications.
Week - 10 Medical Image Analysis Application: Clinical Object Detection; Deep Learning Models: R-CNN, Yolo; Example Applications.
Week - 11 Medical Image Analysis Application: Advanced Models; 3-Dimensional Data and Video Analysis; Deep Learning Models: Recurrent NN, Long short term memory; Example Applications.
Week - 12 Multimodal Data Analysis; Multimodal Model Development; Merging Information from Multiple Sources and Modalities.
Week - 13 Medical Model Interpretability; Model Interpretation Techniques: Occlusion, LIME Technique, CAM, Grad-CAM, Shapley Value, Suggested Readings.
Week - 14 Course Project Presentations

Learning Activities and Teaching Methods

  • Teaching Methods
  • Lecture
  • Discussion
  • Question & Answer
  • Drill - Practise
  • Case Study
  • Problem Solving
  • Report Preparation and/or Presentation
  • Proje Design/Management
  • Competences
  • Productive
  • Rational
  • Questoning
  • Creative
  • Follow ethical and moral rules
  • Use time effectively
  • Eleştirel düşünebilme
  • Problem solving
  • Information Management
  • Elementary computing skills
  • Project Design and Management

Assessment Methods

Assessment Method and Passing Requirements
Quamtity Percentage (%)
1.Midterm Exam 1 30
Homework 1 25
Final Exam 1 45
Toplam (%) 100
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