Module CS4374-KP06
Medical Deep Learning (MDL)
Duration
1 Semester
Turnus of offer
each summer semester
Credit points
6
Course of studies, specific fields and terms:
- Master MES 2020, optional subject, computer science / electrical engineering
- Master Robotics and Autonomous Systems 2019, optional subject, Elective
- Master Medical Informatics 2014, optional subject, medical computer science
- Master MES 2014, optional subject, computer science / electrical engineering
- Master Medical Informatics 2019, advanced module, medical computer science
Classes and lectures:
- Medical Deep Learning (exercise, 2 SWS)
- Medical Deep Learning (lecture, 2 SWS)
Workload:
- 60 hours in-classroom work
- 80 hours private studies
- 40 hours exam preparation
Contents of teaching:
- Cardiac Healthcare:
- ECG signal analysis for arrhythmia detection or sleep apnea and for mobile low-cost devices
- MRI sequence analysis for anatomical segmentation and temporal modelling
- Multimodal Clinical Case Retrieval / Prediction:
- Pathology and Semantic Image Retrieval and Localisation
- Analysis of text / natural language (radiology reports/study articles) for multimodal data mining in Electronic Health Records (EHR)
- Computer Aided Detection and Disease Classification:
- CT Lung nodule detection for cancer screening with data augmentation and transfer learning
- Weakly-supervised abnormality detection and biomarker discovery
- Interpretable and reliable deep learning systems
- Human interaction and correction within deep learning models
- Visualisation of uncertainty and internally learned representations
- Deep Learning Concepts, Architectures and Hardware
- Convolutional Neural Networks, Layers, Deep Residual Learning
- Losses, Derivatives, Large-scale Stochastic Optimisation
- Directed Acyclic Graph Networks, Generative Adversarial Networks
- Cloud Computing, GPUs, Low Precision Computing, DL Frameworks
Qualification-goals/Competencies:
- Students know the importance of data security, patient anonymisation and ethics for clinical studies involving sensitive data
- They know methods and tools to collect, preprocess, store and annotate large datasets for deep learning from medical data
- They have an in-depth understanding of deep / convolutional neural networks for general data (signals / text / images) processing, their learning process and evaluation of their performance on unseen data
- They understand the principles of weakly-supervised learning, transfer learning, concept discovery and generative adversarial networks
- They know how to explore learned feature representations for retrieval and visualisation of high-dimensional abstract data
- They can implement modern network architectures in DL frameworks and are able to adapt and extend them to given problems in medicine
- They have a broad overview of current applications of deep learning in medicine in both research and clinical practice and can transfer their knowledge to newly emerging domains
Grading through:
- Oral examination
Responsible for this module:
Literature:
- Ian Goodfellow, Yoshua Bengio and Aaron Courville : Deep Learning The MIT Press
Language:
- English, except in case of only German-speaking participants
Notes:
Admission requirements for taking the module:- None
Admission requirements for taking module examination(s):
- Successful completion of exercise assignments and programming tasks as specified at the beginning of the semester.
Module Exam(s):
- CS4374-L1 Medical Deep Learning, , oral examination.
Last Updated:
24.09.2021