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      Identification of cancer biomarkers of prognostic value using specific gene regulatory networks (GRN): a novel role of RAD51AP1 for ovarian and lung cancers

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          Abstract

          We provide evidence of how RAD51AP1 can be of importance as potential biomarker since it is overexpressed in both tissue and peripheral blood of ovarian and lung cancer patients. Silencing of the gene can also lead to decrease in cell proliferation in vitro, so a potential therapeutic target.

          Abstract

          To date, microarray analyses have led to the discovery of numerous individual ‘molecular signatures’ associated with specific cancers. However, there are serious limitations for the adoption of these multi-gene signatures in the clinical environment for diagnostic or prognostic testing as studies with more power need to be carried out. This may involve larger richer cohorts and more advanced analyses. In this study, we conduct analyses—based on gene regulatory network—to reveal distinct and common biomarkers across cancer types. Using microarray data of triple-negative and medullary breast, ovarian and lung cancers applied to a combination of glasso and Bayesian networks (BNs), we derived a unique network-containing genes that are uniquely involved: small proline-rich protein 1A (SPRR1A), follistatin like 1 (FSTL1), collagen type XII alpha 1 (COL12A1) and RAD51 associated protein 1 (RAD51AP1). RAD51AP1 and FSTL1 are significantly overexpressed in ovarian cancer patients but only RAD51AP1 is upregulated in lung cancer patients compared with healthy controls. The upregulation of RAD51AP1 was mirrored in the bloods of both ovarian and lung cancer patients, and Kaplan–Meier (KM) plots predicted poorer overall survival (OS) in patients with high expression of RAD51AP1. Suppression of RAD51AP1 by RNA interference reduced cell proliferation in vitro in ovarian (SKOV3) and lung (A549) cancer cells. This effect appears to be modulated by a decrease in the expression of mTOR-related genes and pro-metastatic candidate genes. Our data describe how an initial in silico approach can generate novel biomarkers that could potentially support current clinical practice and improve long-term outcomes.

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          Sparse inverse covariance estimation with the graphical lasso.

          We consider the problem of estimating sparse graphs by a lasso penalty applied to the inverse covariance matrix. Using a coordinate descent procedure for the lasso, we develop a simple algorithm--the graphical lasso--that is remarkably fast: It solves a 1000-node problem ( approximately 500,000 parameters) in at most a minute and is 30-4000 times faster than competing methods. It also provides a conceptual link between the exact problem and the approximation suggested by Meinshausen and Bühlmann (2006). We illustrate the method on some cell-signaling data from proteomics.
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            GeneCards: integrating information about genes, proteins and diseases.

            M Rebhan (1997)
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              High-dimensional graphs and variable selection with the Lasso

              The pattern of zero entries in the inverse covariance matrix of a multivariate normal distribution corresponds to conditional independence restrictions between variables. Covariance selection aims at estimating those structural zeros from data. We show that neighborhood selection with the Lasso is a computationally attractive alternative to standard covariance selection for sparse high-dimensional graphs. Neighborhood selection estimates the conditional independence restrictions separately for each node in the graph and is hence equivalent to variable selection for Gaussian linear models. We show that the proposed neighborhood selection scheme is consistent for sparse high-dimensional graphs. Consistency hinges on the choice of the penalty parameter. The oracle value for optimal prediction does not lead to a consistent neighborhood estimate. Controlling instead the probability of falsely joining some distinct connectivity components of the graph, consistent estimation for sparse graphs is achieved (with exponential rates), even when the number of variables grows as the number of observations raised to an arbitrary power.
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                Author and article information

                Journal
                Carcinogenesis
                Carcinogenesis
                carcin
                Carcinogenesis
                Oxford University Press (UK )
                0143-3334
                1460-2180
                March 2018
                08 November 2017
                08 November 2017
                : 39
                : 3
                : 407-417
                Affiliations
                [1 ]Institute for Environment, Health and Societies, Brunel University London, Uxbridge, UK
                [2 ]Department of Computer Science, Brunel University London, Uxbridge, UK
                [3 ]Mount Vernon Cancer Centre, Northwood, UK
                [4 ]Department of Cardiothoracic Surgery, Harefield Hospital, Royal Brompton and Harefield Trust, Harefield, UK
                [5 ]University of Thessaloniki Medical School, Thessaloniki, Greece
                [6 ]Cancer Research UK Cambridge Institute, University of Cambridge, Cambridge, UK
                [7 ]Department of Biological and Medical Sciences, Oxford Brookes University, Oxford, UK
                Author notes
                To whom correspondence should be addressed. Tel. +00441895265892, Fax: +0044 1895 269873, Email: Emmanouil.karteris@ 123456brunel.ac.uk
                Author information
                http://orcid.org/0000-0003-3231-7267
                Article
                bgx122
                10.1093/carcin/bgx122
                5862298
                29126163
                a8741ec3-6f50-4f73-b028-50991dfdc5d0
                © The Author(s) 2017. Published by Oxford University Press.

                This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License ( http://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com

                History
                : 20 April 2017
                : 07 November 2017
                : 25 September 2017
                Page count
                Pages: 11
                Categories
                Carcinogenesis

                Oncology & Radiotherapy
                Oncology & Radiotherapy

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