Cargando…

Quantitative Proteomic Approach for MicroRNA Target Prediction Based on (18)O/(16)O Labeling

MOTIVATION: Among many large-scale proteomic quantification methods, (18)O/(16)O labeling requires neither specific amino acid in peptides nor label incorporation through several cell cycles, as in metabolic labeling; it does not cause significant elution time shifts between heavy- and light-labeled...

Descripción completa

Detalles Bibliográficos
Autores principales: Ma, Xuepo, Zhu, Ying, Huang, Yufei, Tegeler, Tony, Gao, Shou-Jiang, Zhang, Jianqiu
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Libertas Academica 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5147440/
https://www.ncbi.nlm.nih.gov/pubmed/27980386
http://dx.doi.org/10.4137/CIN.S30563
_version_ 1782473688439848960
author Ma, Xuepo
Zhu, Ying
Huang, Yufei
Tegeler, Tony
Gao, Shou-Jiang
Zhang, Jianqiu
author_facet Ma, Xuepo
Zhu, Ying
Huang, Yufei
Tegeler, Tony
Gao, Shou-Jiang
Zhang, Jianqiu
author_sort Ma, Xuepo
collection PubMed
description MOTIVATION: Among many large-scale proteomic quantification methods, (18)O/(16)O labeling requires neither specific amino acid in peptides nor label incorporation through several cell cycles, as in metabolic labeling; it does not cause significant elution time shifts between heavy- and light-labeled peptides, and its dynamic range of quantification is larger than that of tandem mass spectrometry-based quantification methods. These properties offer (18)O/(16)O labeling the maximum flexibility in application. However, (18)O/(16)O labeling introduces large quantification variations due to varying labeling efficiency. There lacks a processing pipeline that warrants the reliable identification of differentially expressed proteins (DEPs). This motivates us to develop a quantitative proteomic approach based on (18)O/(16)O labeling and apply it on Kaposi sarcoma-associated herpesvirus (KSHV) microRNA (miR) target prediction. KSHV is a human pathogenic γ-herpesvirus strongly associated with the development of B-cell proliferative disorders, including primary effusion lymphoma. Recent studies suggest that miRs have evolved a highly complex network of interactions with the cellular and viral transcriptomes, and relatively few KSHV miR targets have been characterized at the functional level. While the new miR target prediction method, photoactivatable ribonucleoside-enhanced cross-linking and immunoprecipitation (PAR-CLIP), allows the identification of thousands of miR targets, the link between miRs and their targets still cannot be determined. We propose to apply the developed proteomic approach to establish such links. METHOD: We integrate several (18)O/(16)O data processing algorithms that we published recently and identify the messenger RNAs of downregulated proteins as potential targets in KSHV miR-transfected human embryonic kidney 293T cells. Various statistical tests are employed for picking DEPs, and we select the best test by examining the enrichment of PAR-CLIP-reported targets with seed match to the miRs of interest among top ranked DEPs returned by statistical tests. Subsequently, the list of DEPs picked by the selected statistical test is filtered with the criteria that they must have downregulated gene expressions, must have reported as targets by an miR target prediction algorithm SVMcrio, and must have reported as targets by PAR-CLIP. RESULT: We test the developed approach in the problem of finding targets of KSHV miR-K1. The RNAs of three DEPs are identified as miR-K1 targets, among which RAB23 and HNRNPU are novel. Results from both Western blotting and Luciferase reporter assays confirm the novel targets. These results show that the developed quantitative approach based on (18)O/(16)O labeling can be combined with genomic, PAR-CLIP, and target prediction algorithms for the confident identification of KSHV miR targets. The developed approach could also be applied in other applications.
format Online
Article
Text
id pubmed-5147440
institution National Center for Biotechnology Information
language English
publishDate 2016
publisher Libertas Academica
record_format MEDLINE/PubMed
spelling pubmed-51474402016-12-15 Quantitative Proteomic Approach for MicroRNA Target Prediction Based on (18)O/(16)O Labeling Ma, Xuepo Zhu, Ying Huang, Yufei Tegeler, Tony Gao, Shou-Jiang Zhang, Jianqiu Cancer Inform Original Research MOTIVATION: Among many large-scale proteomic quantification methods, (18)O/(16)O labeling requires neither specific amino acid in peptides nor label incorporation through several cell cycles, as in metabolic labeling; it does not cause significant elution time shifts between heavy- and light-labeled peptides, and its dynamic range of quantification is larger than that of tandem mass spectrometry-based quantification methods. These properties offer (18)O/(16)O labeling the maximum flexibility in application. However, (18)O/(16)O labeling introduces large quantification variations due to varying labeling efficiency. There lacks a processing pipeline that warrants the reliable identification of differentially expressed proteins (DEPs). This motivates us to develop a quantitative proteomic approach based on (18)O/(16)O labeling and apply it on Kaposi sarcoma-associated herpesvirus (KSHV) microRNA (miR) target prediction. KSHV is a human pathogenic γ-herpesvirus strongly associated with the development of B-cell proliferative disorders, including primary effusion lymphoma. Recent studies suggest that miRs have evolved a highly complex network of interactions with the cellular and viral transcriptomes, and relatively few KSHV miR targets have been characterized at the functional level. While the new miR target prediction method, photoactivatable ribonucleoside-enhanced cross-linking and immunoprecipitation (PAR-CLIP), allows the identification of thousands of miR targets, the link between miRs and their targets still cannot be determined. We propose to apply the developed proteomic approach to establish such links. METHOD: We integrate several (18)O/(16)O data processing algorithms that we published recently and identify the messenger RNAs of downregulated proteins as potential targets in KSHV miR-transfected human embryonic kidney 293T cells. Various statistical tests are employed for picking DEPs, and we select the best test by examining the enrichment of PAR-CLIP-reported targets with seed match to the miRs of interest among top ranked DEPs returned by statistical tests. Subsequently, the list of DEPs picked by the selected statistical test is filtered with the criteria that they must have downregulated gene expressions, must have reported as targets by an miR target prediction algorithm SVMcrio, and must have reported as targets by PAR-CLIP. RESULT: We test the developed approach in the problem of finding targets of KSHV miR-K1. The RNAs of three DEPs are identified as miR-K1 targets, among which RAB23 and HNRNPU are novel. Results from both Western blotting and Luciferase reporter assays confirm the novel targets. These results show that the developed quantitative approach based on (18)O/(16)O labeling can be combined with genomic, PAR-CLIP, and target prediction algorithms for the confident identification of KSHV miR targets. The developed approach could also be applied in other applications. Libertas Academica 2016-12-08 /pmc/articles/PMC5147440/ /pubmed/27980386 http://dx.doi.org/10.4137/CIN.S30563 Text en © 2015 the author(s), publisher and licensee Libertas Academica Ltd. This is an open-access article distributed under the terms of the Creative Commons CC-BY-NC 3.0 License.
spellingShingle Original Research
Ma, Xuepo
Zhu, Ying
Huang, Yufei
Tegeler, Tony
Gao, Shou-Jiang
Zhang, Jianqiu
Quantitative Proteomic Approach for MicroRNA Target Prediction Based on (18)O/(16)O Labeling
title Quantitative Proteomic Approach for MicroRNA Target Prediction Based on (18)O/(16)O Labeling
title_full Quantitative Proteomic Approach for MicroRNA Target Prediction Based on (18)O/(16)O Labeling
title_fullStr Quantitative Proteomic Approach for MicroRNA Target Prediction Based on (18)O/(16)O Labeling
title_full_unstemmed Quantitative Proteomic Approach for MicroRNA Target Prediction Based on (18)O/(16)O Labeling
title_short Quantitative Proteomic Approach for MicroRNA Target Prediction Based on (18)O/(16)O Labeling
title_sort quantitative proteomic approach for microrna target prediction based on (18)o/(16)o labeling
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5147440/
https://www.ncbi.nlm.nih.gov/pubmed/27980386
http://dx.doi.org/10.4137/CIN.S30563
work_keys_str_mv AT maxuepo quantitativeproteomicapproachformicrornatargetpredictionbasedon18o16olabeling
AT zhuying quantitativeproteomicapproachformicrornatargetpredictionbasedon18o16olabeling
AT huangyufei quantitativeproteomicapproachformicrornatargetpredictionbasedon18o16olabeling
AT tegelertony quantitativeproteomicapproachformicrornatargetpredictionbasedon18o16olabeling
AT gaoshoujiang quantitativeproteomicapproachformicrornatargetpredictionbasedon18o16olabeling
AT zhangjianqiu quantitativeproteomicapproachformicrornatargetpredictionbasedon18o16olabeling