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Comparison of methods to identify aberrant expression patterns in individual patients: augmenting our toolkit for precision medicine

BACKGROUND: Patient-specific aberrant expression patterns in conjunction with functional screening assays can guide elucidation of the cancer genome architecture and identification of therapeutic targets. Since most statistical methods for expression analysis are focused on differences between exper...

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Autores principales: Bottomly, Daniel, Ryabinin, Peter A, Tyner, Jeffrey W, Chang, Bill H, Loriaux, Marc M, Druker, Brian J, McWeeney, Shannon K, Wilmot, Beth
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3971350/
https://www.ncbi.nlm.nih.gov/pubmed/24286512
http://dx.doi.org/10.1186/gm509
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author Bottomly, Daniel
Ryabinin, Peter A
Tyner, Jeffrey W
Chang, Bill H
Loriaux, Marc M
Druker, Brian J
McWeeney, Shannon K
Wilmot, Beth
author_facet Bottomly, Daniel
Ryabinin, Peter A
Tyner, Jeffrey W
Chang, Bill H
Loriaux, Marc M
Druker, Brian J
McWeeney, Shannon K
Wilmot, Beth
author_sort Bottomly, Daniel
collection PubMed
description BACKGROUND: Patient-specific aberrant expression patterns in conjunction with functional screening assays can guide elucidation of the cancer genome architecture and identification of therapeutic targets. Since most statistical methods for expression analysis are focused on differences between experimental groups, the performance of approaches for patient-specific expression analyses are currently less well characterized. A comparison of methods for the identification of genes that are dysregulated relative to a single sample in a given set of experimental samples, to our knowledge, has not been performed. METHODS: We systematically evaluated several methods including variations on the nearest neighbor based outlying degree method, as well as the Zscore and a robust variant for their suitability to detect patient-specific events. The methods were assessed using both simulations and expression data from a cohort of pediatric acute B lymphoblastic leukemia patients. RESULTS: We first assessed power and false discovery rates using simulations and found that even under optimal conditions, high effect sizes (>4 unit differences) were necessary to have acceptable power for any method (>0.9) though high false discovery rates (>0.1) were pervasive across simulation conditions. Next we introduced a technical factor into the simulation and found that performance was reduced for all methods and that using weights with the outlying degree could provide performance gains depending on the number of samples and genes affected by the technical factor. In our use case that highlights the integration of functional assays and aberrant expression in a patient cohort (the identification of gene dysregulation events associated with the targets from a siRNA screen), we demonstrated that both the outlying degree and the Zscore can successfully identify genes dysregulated in one patient sample. However, only the outlying degree can identify genes dysregulated across several patient samples. CONCLUSION: Our results show that outlying degree methods may be a useful alternative to the Zscore or Rscore in a personalized medicine context especially in small to medium sized (between 10 and 50 samples) expression datasets with moderate to high sample-to-sample variability. From these results we provide guidelines for detection of aberrant expression in a precision medicine context.
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spelling pubmed-39713502014-04-11 Comparison of methods to identify aberrant expression patterns in individual patients: augmenting our toolkit for precision medicine Bottomly, Daniel Ryabinin, Peter A Tyner, Jeffrey W Chang, Bill H Loriaux, Marc M Druker, Brian J McWeeney, Shannon K Wilmot, Beth Genome Med Research BACKGROUND: Patient-specific aberrant expression patterns in conjunction with functional screening assays can guide elucidation of the cancer genome architecture and identification of therapeutic targets. Since most statistical methods for expression analysis are focused on differences between experimental groups, the performance of approaches for patient-specific expression analyses are currently less well characterized. A comparison of methods for the identification of genes that are dysregulated relative to a single sample in a given set of experimental samples, to our knowledge, has not been performed. METHODS: We systematically evaluated several methods including variations on the nearest neighbor based outlying degree method, as well as the Zscore and a robust variant for their suitability to detect patient-specific events. The methods were assessed using both simulations and expression data from a cohort of pediatric acute B lymphoblastic leukemia patients. RESULTS: We first assessed power and false discovery rates using simulations and found that even under optimal conditions, high effect sizes (>4 unit differences) were necessary to have acceptable power for any method (>0.9) though high false discovery rates (>0.1) were pervasive across simulation conditions. Next we introduced a technical factor into the simulation and found that performance was reduced for all methods and that using weights with the outlying degree could provide performance gains depending on the number of samples and genes affected by the technical factor. In our use case that highlights the integration of functional assays and aberrant expression in a patient cohort (the identification of gene dysregulation events associated with the targets from a siRNA screen), we demonstrated that both the outlying degree and the Zscore can successfully identify genes dysregulated in one patient sample. However, only the outlying degree can identify genes dysregulated across several patient samples. CONCLUSION: Our results show that outlying degree methods may be a useful alternative to the Zscore or Rscore in a personalized medicine context especially in small to medium sized (between 10 and 50 samples) expression datasets with moderate to high sample-to-sample variability. From these results we provide guidelines for detection of aberrant expression in a precision medicine context. BioMed Central 2013-11-29 /pmc/articles/PMC3971350/ /pubmed/24286512 http://dx.doi.org/10.1186/gm509 Text en Copyright © 2013 Bottomly et al.; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research
Bottomly, Daniel
Ryabinin, Peter A
Tyner, Jeffrey W
Chang, Bill H
Loriaux, Marc M
Druker, Brian J
McWeeney, Shannon K
Wilmot, Beth
Comparison of methods to identify aberrant expression patterns in individual patients: augmenting our toolkit for precision medicine
title Comparison of methods to identify aberrant expression patterns in individual patients: augmenting our toolkit for precision medicine
title_full Comparison of methods to identify aberrant expression patterns in individual patients: augmenting our toolkit for precision medicine
title_fullStr Comparison of methods to identify aberrant expression patterns in individual patients: augmenting our toolkit for precision medicine
title_full_unstemmed Comparison of methods to identify aberrant expression patterns in individual patients: augmenting our toolkit for precision medicine
title_short Comparison of methods to identify aberrant expression patterns in individual patients: augmenting our toolkit for precision medicine
title_sort comparison of methods to identify aberrant expression patterns in individual patients: augmenting our toolkit for precision medicine
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3971350/
https://www.ncbi.nlm.nih.gov/pubmed/24286512
http://dx.doi.org/10.1186/gm509
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