Combining Pathway Identification and Breast Cancer Survival Prediction via Screening-Network Methods

Breast cancer is one of the most common invasive tumors causing high mortality among women. It is characterized by high heterogeneity regarding its biological and clinical characteristics. Several high-throughput assays have been used to collect genome-wide information for many patients in large col...

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Main Authors: Antonella Iuliano, Annalisa Occhipinti, Claudia Angelini, Italia De Feis, Pietro Liò
Format: Article
Language:English
Published: Frontiers Media S.A. 2018-06-01
Series:Frontiers in Genetics
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/fgene.2018.00206/full
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spelling doaj-b4c09cfef94a45a09a87d6e80eeab7862020-11-24T22:35:56ZengFrontiers Media S.A.Frontiers in Genetics1664-80212018-06-01910.3389/fgene.2018.00206371112Combining Pathway Identification and Breast Cancer Survival Prediction via Screening-Network MethodsAntonella Iuliano0Antonella Iuliano1Annalisa Occhipinti2Claudia Angelini3Italia De Feis4Pietro Liò5Istituto per le Applicazioni del Calcolo “Mauro Picone”, Consiglio Nazionale delle Ricerche, Naples, ItalyTelethon Institute of Genetics and Medicine, Pozzuoli, ItalyComputer Laboratory, University of Cambridge, Cambridge, United KingdomIstituto per le Applicazioni del Calcolo “Mauro Picone”, Consiglio Nazionale delle Ricerche, Naples, ItalyIstituto per le Applicazioni del Calcolo “Mauro Picone”, Consiglio Nazionale delle Ricerche, Naples, ItalyComputer Laboratory, University of Cambridge, Cambridge, United KingdomBreast cancer is one of the most common invasive tumors causing high mortality among women. It is characterized by high heterogeneity regarding its biological and clinical characteristics. Several high-throughput assays have been used to collect genome-wide information for many patients in large collaborative studies. This knowledge has improved our understanding of its biology and led to new methods of diagnosing and treating the disease. In particular, system biology has become a valid approach to obtain better insights into breast cancer biological mechanisms. A crucial component of current research lies in identifying novel biomarkers that can be predictive for breast cancer patient prognosis on the basis of the molecular signature of the tumor sample. However, the high dimension and low sample size of data greatly increase the difficulty of cancer survival analysis demanding for the development of ad-hoc statistical methods. In this work, we propose novel screening-network methods that predict patient survival outcome by screening key survival-related genes and we assess the capability of the proposed approaches using METABRIC dataset. In particular, we first identify a subset of genes by using variable screening techniques on gene expression data. Then, we perform Cox regression analysis by incorporating network information associated with the selected subset of genes. The novelty of this work consists in the improved prediction of survival responses due to the different types of screenings (i.e., a biomedical-driven, data-driven and a combination of the two) before building the network-penalized model. Indeed, the combination of the two screening approaches allows us to use the available biological knowledge on breast cancer and complement it with additional information emerging from the data used for the analysis. Moreover, we also illustrate how to extend the proposed approaches to integrate an additional omic layer, such as copy number aberrations, and we show that such strategies can further improve our prediction capabilities. In conclusion, our approaches allow to discriminate patients in high-and low-risk groups using few potential biomarkers and therefore, can help clinicians to provide more precise prognoses and to facilitate the subsequent clinical management of patients at risk of disease.https://www.frontiersin.org/article/10.3389/fgene.2018.00206/fullbreast cancercox regressionhigh-dimensionalitynetwork-penalized methodsscreening techniquessurvival analysis
collection DOAJ
language English
format Article
sources DOAJ
author Antonella Iuliano
Antonella Iuliano
Annalisa Occhipinti
Claudia Angelini
Italia De Feis
Pietro Liò
spellingShingle Antonella Iuliano
Antonella Iuliano
Annalisa Occhipinti
Claudia Angelini
Italia De Feis
Pietro Liò
Combining Pathway Identification and Breast Cancer Survival Prediction via Screening-Network Methods
Frontiers in Genetics
breast cancer
cox regression
high-dimensionality
network-penalized methods
screening techniques
survival analysis
author_facet Antonella Iuliano
Antonella Iuliano
Annalisa Occhipinti
Claudia Angelini
Italia De Feis
Pietro Liò
author_sort Antonella Iuliano
title Combining Pathway Identification and Breast Cancer Survival Prediction via Screening-Network Methods
title_short Combining Pathway Identification and Breast Cancer Survival Prediction via Screening-Network Methods
title_full Combining Pathway Identification and Breast Cancer Survival Prediction via Screening-Network Methods
title_fullStr Combining Pathway Identification and Breast Cancer Survival Prediction via Screening-Network Methods
title_full_unstemmed Combining Pathway Identification and Breast Cancer Survival Prediction via Screening-Network Methods
title_sort combining pathway identification and breast cancer survival prediction via screening-network methods
publisher Frontiers Media S.A.
series Frontiers in Genetics
issn 1664-8021
publishDate 2018-06-01
description Breast cancer is one of the most common invasive tumors causing high mortality among women. It is characterized by high heterogeneity regarding its biological and clinical characteristics. Several high-throughput assays have been used to collect genome-wide information for many patients in large collaborative studies. This knowledge has improved our understanding of its biology and led to new methods of diagnosing and treating the disease. In particular, system biology has become a valid approach to obtain better insights into breast cancer biological mechanisms. A crucial component of current research lies in identifying novel biomarkers that can be predictive for breast cancer patient prognosis on the basis of the molecular signature of the tumor sample. However, the high dimension and low sample size of data greatly increase the difficulty of cancer survival analysis demanding for the development of ad-hoc statistical methods. In this work, we propose novel screening-network methods that predict patient survival outcome by screening key survival-related genes and we assess the capability of the proposed approaches using METABRIC dataset. In particular, we first identify a subset of genes by using variable screening techniques on gene expression data. Then, we perform Cox regression analysis by incorporating network information associated with the selected subset of genes. The novelty of this work consists in the improved prediction of survival responses due to the different types of screenings (i.e., a biomedical-driven, data-driven and a combination of the two) before building the network-penalized model. Indeed, the combination of the two screening approaches allows us to use the available biological knowledge on breast cancer and complement it with additional information emerging from the data used for the analysis. Moreover, we also illustrate how to extend the proposed approaches to integrate an additional omic layer, such as copy number aberrations, and we show that such strategies can further improve our prediction capabilities. In conclusion, our approaches allow to discriminate patients in high-and low-risk groups using few potential biomarkers and therefore, can help clinicians to provide more precise prognoses and to facilitate the subsequent clinical management of patients at risk of disease.
topic breast cancer
cox regression
high-dimensionality
network-penalized methods
screening techniques
survival analysis
url https://www.frontiersin.org/article/10.3389/fgene.2018.00206/full
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