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Network-based stratification of tumor mutations Matan Hofree
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Page 1: Network-based stratification of tumor mutations Matan Hofree.

Network-based stratification of tumor mutations

Matan Hofree

Page 2: Network-based stratification of tumor mutations Matan Hofree.

Goal

• Tumor stratification: to divide a heterogeneous population into clinically and biologically meaningful subtypes based on molecular profiles

Page 3: Network-based stratification of tumor mutations Matan Hofree.

Previous attempts

• Glioblastma and breast cancer – mRNA expression data

• Colorectal adenocarcinoma and small-cell lung cancer – expression data not correlate with clinical phenotype

Page 4: Network-based stratification of tumor mutations Matan Hofree.

Somatic mutation profile

• Compare the genome or exome of a patient’s tumor to that of the germ line

• Sparse

Page 5: Network-based stratification of tumor mutations Matan Hofree.

Overview of network-based stratification

Binary (1,0)

Public Interaction network

Page 6: Network-based stratification of tumor mutations Matan Hofree.
Page 7: Network-based stratification of tumor mutations Matan Hofree.

Network smoothing

• Ft+1 = αFtA + (1-α)F0

F0: patients * genes matrix

A: adjacency matrix of the gene interaction network (STRING, HumanNet and PathwayCommons)α: tuning factor that determines how far a mutation signal can diffuse

Page 8: Network-based stratification of tumor mutations Matan Hofree.

Network-regularized NMF• Min || F – WH ||2 + trace(WtKW)

Patient * gene matrix

W: a collection of basis vectors, “metagenes”H: the basis of vector loadingTrace(WtKW): constrain the basis vectors(W) to respect local network neighborhoodsK: derived from the original network

Page 9: Network-based stratification of tumor mutations Matan Hofree.

Simulation Assessment K=4Driver mutation f: 0% to 15%The size of network modules: 10-250

Page 10: Network-based stratification of tumor mutations Matan Hofree.

Results- NBS of somatic tumor mutations

Page 11: Network-based stratification of tumor mutations Matan Hofree.
Page 12: Network-based stratification of tumor mutations Matan Hofree.

Results-Predictive power and overlap of subtypes derived from different TCGA datasets

Page 13: Network-based stratification of tumor mutations Matan Hofree.

Network view of genes with high network-smoothed mutation scores in HumanNet ovarian

cancer type 1

Page 14: Network-based stratification of tumor mutations Matan Hofree.

From mutation-derived subtypes to expression signatures

Page 15: Network-based stratification of tumor mutations Matan Hofree.

Effects of different types of mutations on stratification