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Presenter: Soyeon Kim
August 1st, 2019
Kim Lab Journal Club
Metabolomics study
• Metabolomics study
• Identify and quantify metabolites/correlate their changes with pathological
states or external influencing factors
* Image from Davis VW et al. J Surg Oncol. (2011)
Metabolomics study
• How to interpret metabolomics data?
• Metabolic pathway analysis
• network-based visualization
• The multi-level integration is
fundamental!
• However, challenges in complexity and
heterogeneity
MetaboAnalyst (https://www.metaboanalyst.ca/)
Metabolomics study
• Targeted metabolomics
• Detection and precise quantification (in nM, or mg/mL) of a small set of
known compounds
• Need to clearly define “standards”
• Untargeted metabolomics (metabolite fingerprinting)
• “complete” metabolome comparison (many metabolites as possible)
• Technical limitations, bias toward the most abundant molecules
• How to handle unknown metabolites?
PIUMet
PIUMet
1. Compile a PPMI network
Edge has a weight reflecting
confidence of the interaction
Interactome
PIUMet
2. Link disease features to metabolites with the same mass
PIUMet
3. Infer a subnetwork connecting disease
features using Prize-collecting Steiner
forest (PCSF) optimization
• Maximize the sum of prizes (significance of
dysregulation) from connected disease features
• Minimize the edge costs (anti-correlated with
edge confidence)
• disease features ↑, low-confidence edges ↓
Node penalties Edge costs
Minimize
Input The possible PCSF solution
PIUMet
4. Eliminate bias for highly connected nodes by assigning a penalty
5. Merge inferred family of networks from many runs by adding a
random noise to capture metabolic network complexity
6. Calculate disease-specific scores for each node and a network by
generating networks from random data mimicking the experimental
data
Experiments in HD
115 metabolite
features
P
31 proteins
m/z
M M M
37 metabolite peaks
(disease feature)
296 metabolites
PIUMet can detect many disease features
compared to targeted ones
PIUMet identifies dysregulated pathways in HD
Control Disease
cells cells
PIUMet identifies dysregulated pathways in HD
Steroid metabolic process Fatty acid metabolic process
Novel features
Integrating with other omics
Integrative analysis can detect many
novel disease features
Node scores increase with
a joint analysis of multi-omics
Conclusion
• Challenges in global metabolite identification in untargeted
metabolomics
• PIUMet, a network-based PCSF algorithm for integrative analysis of
untargeted metabolomics
• Identify novel disease-associated metabolites and proteins that
cannot be found in individual data using PPMI network
• No prior assumptions, it can be generally used in other disease data
PIUMet is available online!
• http://fraenkel-nsf.csbi.mit.edu/piumet2/

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Revealing disease-associated pathways by network integration of untargeted metabolomics

  • 1. Presenter: Soyeon Kim August 1st, 2019 Kim Lab Journal Club
  • 2. Metabolomics study • Metabolomics study • Identify and quantify metabolites/correlate their changes with pathological states or external influencing factors * Image from Davis VW et al. J Surg Oncol. (2011)
  • 3. Metabolomics study • How to interpret metabolomics data? • Metabolic pathway analysis • network-based visualization • The multi-level integration is fundamental! • However, challenges in complexity and heterogeneity MetaboAnalyst (https://www.metaboanalyst.ca/)
  • 4. Metabolomics study • Targeted metabolomics • Detection and precise quantification (in nM, or mg/mL) of a small set of known compounds • Need to clearly define “standards” • Untargeted metabolomics (metabolite fingerprinting) • “complete” metabolome comparison (many metabolites as possible) • Technical limitations, bias toward the most abundant molecules • How to handle unknown metabolites?
  • 6. PIUMet 1. Compile a PPMI network Edge has a weight reflecting confidence of the interaction Interactome
  • 7. PIUMet 2. Link disease features to metabolites with the same mass
  • 8. PIUMet 3. Infer a subnetwork connecting disease features using Prize-collecting Steiner forest (PCSF) optimization • Maximize the sum of prizes (significance of dysregulation) from connected disease features • Minimize the edge costs (anti-correlated with edge confidence) • disease features ↑, low-confidence edges ↓ Node penalties Edge costs Minimize Input The possible PCSF solution
  • 9. PIUMet 4. Eliminate bias for highly connected nodes by assigning a penalty 5. Merge inferred family of networks from many runs by adding a random noise to capture metabolic network complexity 6. Calculate disease-specific scores for each node and a network by generating networks from random data mimicking the experimental data
  • 10. Experiments in HD 115 metabolite features P 31 proteins m/z M M M 37 metabolite peaks (disease feature) 296 metabolites PIUMet can detect many disease features compared to targeted ones
  • 11. PIUMet identifies dysregulated pathways in HD Control Disease cells cells
  • 12. PIUMet identifies dysregulated pathways in HD Steroid metabolic process Fatty acid metabolic process Novel features
  • 13. Integrating with other omics Integrative analysis can detect many novel disease features Node scores increase with a joint analysis of multi-omics
  • 14. Conclusion • Challenges in global metabolite identification in untargeted metabolomics • PIUMet, a network-based PCSF algorithm for integrative analysis of untargeted metabolomics • Identify novel disease-associated metabolites and proteins that cannot be found in individual data using PPMI network • No prior assumptions, it can be generally used in other disease data
  • 15. PIUMet is available online! • http://fraenkel-nsf.csbi.mit.edu/piumet2/