Главная
Study mode:
on
1
Introduction
2
Welcome
3
What keeps you alive
4
What are metabolites
5
Is it all about genes
6
Measuring metabolites
7
How did Tim get into this
8
The project
9
The Internet project
10
NMR spectra
11
Differential correlation networks
12
Future directions
13
Pathways
14
Interpretation
15
Example
16
Integration
17
Summary
18
Perspectives
19
Teaching
20
Family
21
Worklife balance
22
Questions
23
Limitations
24
Limitations of metabolomics
25
Multiomics pathway integration
26
Applications
27
Nonlinear correlations
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only! Grab it Explore the intersection of metabolism and machine learning in this inaugural lecture on computational metabolomics. Delve into the world of metabolites, their measurement techniques, and the role they play in biological systems. Discover how Professor Tim Ebbels applies data science to metabolomics, including projects involving the Internet, NMR spectra analysis, and differential correlation networks. Learn about future directions in the field, such as pathway analysis, interpretation methods, and integration with other omics data. Gain insights into the challenges and limitations of metabolomics, as well as its potential applications. The lecture also touches on teaching, work-life balance, and the importance of family in academic pursuits. Engage with thought-provoking questions and discussions on nonlinear correlations and multi-omics pathway integration.

Metabolism Meets Machine Learning: Computational Metabolomics

Imperial College London
Add to list