Design of a multi-signature ensemble classifier predicting neuroblastoma patients' outcome

<p>Abstract</p> <p>Background</p> <p>Neuroblastoma is the most common pediatric solid tumor of the sympathetic nervous system. Development of improved predictive tools for patients stratification is a crucial requirement for neuroblastoma therapy. Several studies utiliz...

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Main Authors: Cornero Andrea, Acquaviva Massimo, Fardin Paolo, Versteeg Rogier, Schramm Alexander, Eva Alessandra, Bosco Maria, Blengio Fabiola, Barzaghi Sara, Varesio Luigi
Format: Article
Language:English
Published: BMC 2012-03-01
Series:BMC Bioinformatics
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spelling doaj-9d39f4a975e8473e8c571a41eb0b1c4f2020-11-24T23:36:35ZengBMCBMC Bioinformatics1471-21052012-03-0113Suppl 4S1310.1186/1471-2105-13-S4-S13Design of a multi-signature ensemble classifier predicting neuroblastoma patients' outcomeCornero AndreaAcquaviva MassimoFardin PaoloVersteeg RogierSchramm AlexanderEva AlessandraBosco MariaBlengio FabiolaBarzaghi SaraVaresio Luigi<p>Abstract</p> <p>Background</p> <p>Neuroblastoma is the most common pediatric solid tumor of the sympathetic nervous system. Development of improved predictive tools for patients stratification is a crucial requirement for neuroblastoma therapy. Several studies utilized gene expression-based signatures to stratify neuroblastoma patients and demonstrated a clear advantage of adding genomic analysis to risk assessment. There is little overlapping among signatures and merging their prognostic potential would be advantageous. Here, we describe a new strategy to merge published neuroblastoma related gene signatures into a single, highly accurate, Multi-Signature Ensemble (MuSE)-classifier of neuroblastoma (NB) patients outcome.</p> <p>Methods</p> <p>Gene expression profiles of 182 neuroblastoma tumors, subdivided into three independent datasets, were used in the various phases of development and validation of neuroblastoma NB-MuSE-classifier. Thirty three signatures were evaluated for patients' outcome prediction using 22 classification algorithms each and generating 726 classifiers and prediction results. The best-performing algorithm for each signature was selected, validated on an independent dataset and the 20 signatures performing with an accuracy > = 80% were retained.</p> <p>Results</p> <p>We combined the 20 predictions associated to the corresponding signatures through the selection of the best performing algorithm into a single outcome predictor. The best performance was obtained by the Decision Table algorithm that produced the NB-MuSE-classifier characterized by an external validation accuracy of 94%. Kaplan-Meier curves and log-rank test demonstrated that patients with good and poor outcome prediction by the NB-MuSE-classifier have a significantly different survival (p < 0.0001). Survival curves constructed on subgroups of patients divided on the bases of known prognostic marker suggested an excellent stratification of localized and stage 4s tumors but more data are needed to prove this point.</p> <p>Conclusions</p> <p>The NB-MuSE-classifier is based on an ensemble approach that merges twenty heterogeneous, neuroblastoma-related gene signatures to blend their discriminating power, rather than numeric values, into a single, highly accurate patients' outcome predictor. The novelty of our approach derives from the way to integrate the gene expression signatures, by optimally associating them with a single paradigm ultimately integrated into a single classifier. This model can be exported to other types of cancer and to diseases for which dedicated databases exist.</p>
collection DOAJ
language English
format Article
sources DOAJ
author Cornero Andrea
Acquaviva Massimo
Fardin Paolo
Versteeg Rogier
Schramm Alexander
Eva Alessandra
Bosco Maria
Blengio Fabiola
Barzaghi Sara
Varesio Luigi
spellingShingle Cornero Andrea
Acquaviva Massimo
Fardin Paolo
Versteeg Rogier
Schramm Alexander
Eva Alessandra
Bosco Maria
Blengio Fabiola
Barzaghi Sara
Varesio Luigi
Design of a multi-signature ensemble classifier predicting neuroblastoma patients' outcome
BMC Bioinformatics
author_facet Cornero Andrea
Acquaviva Massimo
Fardin Paolo
Versteeg Rogier
Schramm Alexander
Eva Alessandra
Bosco Maria
Blengio Fabiola
Barzaghi Sara
Varesio Luigi
author_sort Cornero Andrea
title Design of a multi-signature ensemble classifier predicting neuroblastoma patients' outcome
title_short Design of a multi-signature ensemble classifier predicting neuroblastoma patients' outcome
title_full Design of a multi-signature ensemble classifier predicting neuroblastoma patients' outcome
title_fullStr Design of a multi-signature ensemble classifier predicting neuroblastoma patients' outcome
title_full_unstemmed Design of a multi-signature ensemble classifier predicting neuroblastoma patients' outcome
title_sort design of a multi-signature ensemble classifier predicting neuroblastoma patients' outcome
publisher BMC
series BMC Bioinformatics
issn 1471-2105
publishDate 2012-03-01
description <p>Abstract</p> <p>Background</p> <p>Neuroblastoma is the most common pediatric solid tumor of the sympathetic nervous system. Development of improved predictive tools for patients stratification is a crucial requirement for neuroblastoma therapy. Several studies utilized gene expression-based signatures to stratify neuroblastoma patients and demonstrated a clear advantage of adding genomic analysis to risk assessment. There is little overlapping among signatures and merging their prognostic potential would be advantageous. Here, we describe a new strategy to merge published neuroblastoma related gene signatures into a single, highly accurate, Multi-Signature Ensemble (MuSE)-classifier of neuroblastoma (NB) patients outcome.</p> <p>Methods</p> <p>Gene expression profiles of 182 neuroblastoma tumors, subdivided into three independent datasets, were used in the various phases of development and validation of neuroblastoma NB-MuSE-classifier. Thirty three signatures were evaluated for patients' outcome prediction using 22 classification algorithms each and generating 726 classifiers and prediction results. The best-performing algorithm for each signature was selected, validated on an independent dataset and the 20 signatures performing with an accuracy > = 80% were retained.</p> <p>Results</p> <p>We combined the 20 predictions associated to the corresponding signatures through the selection of the best performing algorithm into a single outcome predictor. The best performance was obtained by the Decision Table algorithm that produced the NB-MuSE-classifier characterized by an external validation accuracy of 94%. Kaplan-Meier curves and log-rank test demonstrated that patients with good and poor outcome prediction by the NB-MuSE-classifier have a significantly different survival (p < 0.0001). Survival curves constructed on subgroups of patients divided on the bases of known prognostic marker suggested an excellent stratification of localized and stage 4s tumors but more data are needed to prove this point.</p> <p>Conclusions</p> <p>The NB-MuSE-classifier is based on an ensemble approach that merges twenty heterogeneous, neuroblastoma-related gene signatures to blend their discriminating power, rather than numeric values, into a single, highly accurate patients' outcome predictor. The novelty of our approach derives from the way to integrate the gene expression signatures, by optimally associating them with a single paradigm ultimately integrated into a single classifier. This model can be exported to other types of cancer and to diseases for which dedicated databases exist.</p>
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