261-5120-00L Machine Learning for Health Care (Spring 2022)

Abstract

The course will review the most relevant methods and applications of Machine Learning in Biomedicine, discuss the main challenges they present and their current technical problems.

Objective

During the last years, we have observed a rapid growth in the field of Machine Learning (ML), mainly due to improvements in ML algorithms, the increase of data availability and a reduction in computing costs. This growth is having a profound impact in biomedical applications, where the great variety of tasks and data types enables us to get benefit of ML algorithms in many different ways. In this course we will review the most relevant methods and applications of ML in biomedicine, discuss the main challenges they present and their current technical solutions.

Content

The course will consist of several topic clusters that will cover the most relevant applications of ML in Biomedicine:

  1. Analysis of medical imagesImages are a fundamental piece of information in many medical disciplines. We will study how to train ML algorithms with them.
  2. Analysis of genomics data: ML in genomics is still an emerging subfield, but given that genomics data are arguably the most extensive and complex datasets that can be found in biomedicine, it is expected that many relevant ML applications will arise in the near future. We will review and discuss current applications and challenges.
  3. Analysis of text and representation learning: Vast amount of medical observations are stored in the form of free text, we will analyze strategies for extracting knowledge from them.
  4. Analysis of time series and sequence data: Temporal time series or sequential data often appear in biomedical datasets, presenting challenges as containing variables with different periodicities, being conditioned by static data, etc.
  5. Interpretability & Privacy of ML methods. We will discuss the need for interpretable ML models, and we will discuss how differential private data can be generated e.g. by using GANs.

 

Prerequisites / Notice

Data Structures & Algorithms, Introduction to Machine Learning, Statistics/Probability, Programming in Python, Unix Command Line.

It is helpful but not essential to attend Computational Biomedicine before attending Machine Learning for Health Care.

Location

Tue 10-12 HG D 7.2

Tue 13-14 HG D 7.2

Course Overview

Date Topic Course Materials
22.02.2022 Introduction
01.03.2022 Imaging
08.03.2022 Time-Series
15.03.2022 Representation Learning
22.03.2022 NLP
29.03.2022 Interpretability 1
05.04.2022 -- No Lecture --
12.04.2022 Intepretability 2
19.04.2022 -- Easter Break --
26.04.2022 Genetics Supervised
03.05.2022 Genetics Unsupervised
10.05.2022 Survival Analysis
17.05.2022 Privacy
24.05.2022 Ethics
31.05.2022 Exam/Polls/Feedbacks/etc