Clustering of Cases from Di erent Subtypes of Breast Cancer Using a Hop eld Network Built from Multi-omic Data
Resumen
Despite scienti c advances, breast cancer still constitutes a worldwide major cause of death
among women. Given the great heterogeneity between cases, distinct classi cation schemes
have emerged. The intrinsic molecular subtype classi cation (luminal A, luminal B, HER2-
enriched and basal-like) accounts for the molecular characteristics and prognosis of tumors,
which provides valuable input for taking optimal treatment actions. Also, recent advancements
in molecular biology have provided scientists with high quality and diversity of omiclike
data, opening up the possibility of creating computational models for improving and
validating current subtyping systems. On this study, a Hop eld Network model for breast
cancer subtyping and characterization was created using data from The Cancer Genome
Atlas repository. Novel aspects include the usage of the network as a clustering mechanism
and the integrated use of several molecular types of data (gene mRNA expression, miRNA
expression and copy number variation). The results showed clustering capabilities for the
network, but even so, trying to derive a biological model from a Hop eld Network might
be di cult given the mirror attractor phenomena (every cluster might end up with an opposite).
As a methodological aspect, Hop eld was compared with kmeans and OPTICS
clustering algorithms. The last one, surprisingly, hints at the possibility of creating a high
precision model that di erentiates between luminal, HER2-enriched and basal samples using
only 10 genes. The normalization procedure of dividing gene expression values by their
corresponding gene copy number appears to have contributed to the results. This opens up
the possibility of exploring these kind of prediction models for implementing diagnostic tests
at a lower cost.
Descripción
Proyecto de Graduación (Maestría en Computación) Instituto Tecnológico de Costa Rica, Escuela de Ingeniería en Computación, 2018.
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- Maestría en Computación [107]