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Machine learning applications in computational oncology

Date: 
Thursday, April 1, 2021 - 11:00
Speaker: 
Ewa Szczurek
Address: 
https://zoom.us/j/97653700758?pwd=elVMUExaZ0dyMjk3Z1Y1QTBBM05YUT09 ID de réunion : 976 5370 0758 Code secret : i6tqV1
Affiliation: 
Institute of Informatics, University of Warsaw Banacha 2, Warsaw, (Poland)
Abstract: 

I will describe two projects going on in my lab: 1) CACTUS: integrating clonal architecture with genomic clustering and transcriptome profiling of single tumor cells and 2) Interpretable deep recommender system model for prediction of kinase inhibitor efficacy across cancer cell lines. Below I provide a short summary for both of them.
1) CACTUS: integrating clonal architecture with genomic clustering and transcriptome profiling of single tumor cells
 

Drawing genotype-to-phenotype maps in tumors is of paramount importance for understanding tumor heterogeneity. Assignment of single cells to their tumor clones of origin can be approached by matching the genotypes of the clones to the mutations found in RNA sequencing of the cells. CACTUS is a probabilistic model that leverages the information from an independent genomic clustering of cells and exploits the scarce single cell RNA sequencing data to map single cells to given imperfect genotypes of tumor clones. We apply CACTUS to two follicular lymphoma patient samples, integrating three measurements: whole exome sequencing, single cell RNA sequencing, and B-cell receptor sequencing. CACTUS outperforms a predecessor model by confidently assigning cells and B-cell receptor clonotypes to the tumor clones.  CACTUS opens the avenue to study the functional implications of tumor heterogeneity, and origins of resistance to targeted therapies.

2) Interpretable deep recommender system model for prediction of kinase inhibitor efficacy across cancer cell lines.

Computational models for drug sensitivity prediction have the potential to significantly improve personalized cancer medicine. Drug sensitivity assays, combined with profiling of cancer cell lines and drugs become increasingly available for training such models.  In this work, we develop DEERS, a neural network recommender system for kinase inhibitor sensitivity prediction. The model utilizes molecular features of the cancer cell lines and kinase inhibition profiles of the drugs. DEERS incorporates two autoencoders to project cell line and drug features into 10-dimensional hidden representations and a feed-forward neural network to combine them into response prediction. We propose a novel interpretability approach, which in addition to  the set of modeled features considers also the genes and processes outside of this set. 

Type: 
Interdisciplinary Seminar

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