Cargando…

A Propensity Score-adjusted Analysis of the Effects of Ubiquitin E3 Ligase Copy Number Variation in Peripheral Blood Leukocytes on Colorectal Cancer Risk

Background: The ubiquitin ligases E3 (E3s) plays a key role in the specific protein degradation in many carcinogenic biological processes. Colorectal cancer (CRC) development may be affected by the copy number variation (CNV) of E3s. Prior studies may have underestimated the impact of potential conf...

Descripción completa

Detalles Bibliográficos
Autores principales: Bi, Haoran, Liu, Yupeng, Tian, Tian, Xia, Tingting, Pu, Rui, Zhang, Yiwei, Hu, Fulan, Zhao, Yashuang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Ivyspring International Publisher 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6603381/
https://www.ncbi.nlm.nih.gov/pubmed/31289601
http://dx.doi.org/10.7150/jca.29872
_version_ 1783431505364647936
author Bi, Haoran
Liu, Yupeng
Tian, Tian
Xia, Tingting
Pu, Rui
Zhang, Yiwei
Hu, Fulan
Zhao, Yashuang
author_facet Bi, Haoran
Liu, Yupeng
Tian, Tian
Xia, Tingting
Pu, Rui
Zhang, Yiwei
Hu, Fulan
Zhao, Yashuang
author_sort Bi, Haoran
collection PubMed
description Background: The ubiquitin ligases E3 (E3s) plays a key role in the specific protein degradation in many carcinogenic biological processes. Colorectal cancer (CRC) development may be affected by the copy number variation (CNV) of E3s. Prior studies may have underestimated the impact of potential confounding factors' effects on the association between gene CNV and CRC risk, and CRC risk predictive model integrating gene CNV patterns is lacking. Our research sought to assess the genes CNVs of MDM2, SKP2, FBXW7, β-TRCP, and NEDD4-1 and CRC risk by using propensity score (PS) adjustment and developing models that integrate CNV patterns for CRC risk predictions. Methods: This study comprising 1036 participants used traditional regression and different PS techniques to adjust the confounding factors to evaluate the relationships between five gene CNVs and CRC risk, and to establish a CRC risk predictive model. The AUC was applied to evaluate the effect of the model. The categorical net reclassification improvement (NRI) and the integrated discrimination improvement (IDI) were analyzed to evaluate the discriminatory accuracy improvement among the models. Results: Compared to variable adjustment, the odds ratios (ORs) tended to be conservative and accurate with narrow confidence intervals (CIs) after PS adjustment. After PS adjustment, MDM2 amplification was related to increased CRC risk (Amp-pattern: OR = 8.684, 95% CI: 1.213-62.155, P = 0.031), whereas SKP2 deletion and the (del+amp) genotype were associated with reduced CRC risk (Del-pattern: OR = 0.323, 95% CI: 0.106-0.979, P = 0.046; Var-pattern: OR = 0.339, 95% CI: 0.135-0.854, P = 0.024). The predictive model integrating the gene CNV pattern could correctly reclassify 1.7% of the subjects. Conclusions: MDM2 amplification and SKP2 CNVs are associated with increased and decreased CRC risk, respectively; abnormal CNV-integrated model is more precise for predicting CRC risk. Further studies are needed to verify these encouraging outcomes.
format Online
Article
Text
id pubmed-6603381
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher Ivyspring International Publisher
record_format MEDLINE/PubMed
spelling pubmed-66033812019-07-09 A Propensity Score-adjusted Analysis of the Effects of Ubiquitin E3 Ligase Copy Number Variation in Peripheral Blood Leukocytes on Colorectal Cancer Risk Bi, Haoran Liu, Yupeng Tian, Tian Xia, Tingting Pu, Rui Zhang, Yiwei Hu, Fulan Zhao, Yashuang J Cancer Research Paper Background: The ubiquitin ligases E3 (E3s) plays a key role in the specific protein degradation in many carcinogenic biological processes. Colorectal cancer (CRC) development may be affected by the copy number variation (CNV) of E3s. Prior studies may have underestimated the impact of potential confounding factors' effects on the association between gene CNV and CRC risk, and CRC risk predictive model integrating gene CNV patterns is lacking. Our research sought to assess the genes CNVs of MDM2, SKP2, FBXW7, β-TRCP, and NEDD4-1 and CRC risk by using propensity score (PS) adjustment and developing models that integrate CNV patterns for CRC risk predictions. Methods: This study comprising 1036 participants used traditional regression and different PS techniques to adjust the confounding factors to evaluate the relationships between five gene CNVs and CRC risk, and to establish a CRC risk predictive model. The AUC was applied to evaluate the effect of the model. The categorical net reclassification improvement (NRI) and the integrated discrimination improvement (IDI) were analyzed to evaluate the discriminatory accuracy improvement among the models. Results: Compared to variable adjustment, the odds ratios (ORs) tended to be conservative and accurate with narrow confidence intervals (CIs) after PS adjustment. After PS adjustment, MDM2 amplification was related to increased CRC risk (Amp-pattern: OR = 8.684, 95% CI: 1.213-62.155, P = 0.031), whereas SKP2 deletion and the (del+amp) genotype were associated with reduced CRC risk (Del-pattern: OR = 0.323, 95% CI: 0.106-0.979, P = 0.046; Var-pattern: OR = 0.339, 95% CI: 0.135-0.854, P = 0.024). The predictive model integrating the gene CNV pattern could correctly reclassify 1.7% of the subjects. Conclusions: MDM2 amplification and SKP2 CNVs are associated with increased and decreased CRC risk, respectively; abnormal CNV-integrated model is more precise for predicting CRC risk. Further studies are needed to verify these encouraging outcomes. Ivyspring International Publisher 2019-06-02 /pmc/articles/PMC6603381/ /pubmed/31289601 http://dx.doi.org/10.7150/jca.29872 Text en © Ivyspring International Publisher This is an open access article distributed under the terms of the Creative Commons Attribution (CC BY-NC) license (https://creativecommons.org/licenses/by-nc/4.0/). See http://ivyspring.com/terms for full terms and conditions.
spellingShingle Research Paper
Bi, Haoran
Liu, Yupeng
Tian, Tian
Xia, Tingting
Pu, Rui
Zhang, Yiwei
Hu, Fulan
Zhao, Yashuang
A Propensity Score-adjusted Analysis of the Effects of Ubiquitin E3 Ligase Copy Number Variation in Peripheral Blood Leukocytes on Colorectal Cancer Risk
title A Propensity Score-adjusted Analysis of the Effects of Ubiquitin E3 Ligase Copy Number Variation in Peripheral Blood Leukocytes on Colorectal Cancer Risk
title_full A Propensity Score-adjusted Analysis of the Effects of Ubiquitin E3 Ligase Copy Number Variation in Peripheral Blood Leukocytes on Colorectal Cancer Risk
title_fullStr A Propensity Score-adjusted Analysis of the Effects of Ubiquitin E3 Ligase Copy Number Variation in Peripheral Blood Leukocytes on Colorectal Cancer Risk
title_full_unstemmed A Propensity Score-adjusted Analysis of the Effects of Ubiquitin E3 Ligase Copy Number Variation in Peripheral Blood Leukocytes on Colorectal Cancer Risk
title_short A Propensity Score-adjusted Analysis of the Effects of Ubiquitin E3 Ligase Copy Number Variation in Peripheral Blood Leukocytes on Colorectal Cancer Risk
title_sort propensity score-adjusted analysis of the effects of ubiquitin e3 ligase copy number variation in peripheral blood leukocytes on colorectal cancer risk
topic Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6603381/
https://www.ncbi.nlm.nih.gov/pubmed/31289601
http://dx.doi.org/10.7150/jca.29872
work_keys_str_mv AT bihaoran apropensityscoreadjustedanalysisoftheeffectsofubiquitine3ligasecopynumbervariationinperipheralbloodleukocytesoncolorectalcancerrisk
AT liuyupeng apropensityscoreadjustedanalysisoftheeffectsofubiquitine3ligasecopynumbervariationinperipheralbloodleukocytesoncolorectalcancerrisk
AT tiantian apropensityscoreadjustedanalysisoftheeffectsofubiquitine3ligasecopynumbervariationinperipheralbloodleukocytesoncolorectalcancerrisk
AT xiatingting apropensityscoreadjustedanalysisoftheeffectsofubiquitine3ligasecopynumbervariationinperipheralbloodleukocytesoncolorectalcancerrisk
AT purui apropensityscoreadjustedanalysisoftheeffectsofubiquitine3ligasecopynumbervariationinperipheralbloodleukocytesoncolorectalcancerrisk
AT zhangyiwei apropensityscoreadjustedanalysisoftheeffectsofubiquitine3ligasecopynumbervariationinperipheralbloodleukocytesoncolorectalcancerrisk
AT hufulan apropensityscoreadjustedanalysisoftheeffectsofubiquitine3ligasecopynumbervariationinperipheralbloodleukocytesoncolorectalcancerrisk
AT zhaoyashuang apropensityscoreadjustedanalysisoftheeffectsofubiquitine3ligasecopynumbervariationinperipheralbloodleukocytesoncolorectalcancerrisk
AT bihaoran propensityscoreadjustedanalysisoftheeffectsofubiquitine3ligasecopynumbervariationinperipheralbloodleukocytesoncolorectalcancerrisk
AT liuyupeng propensityscoreadjustedanalysisoftheeffectsofubiquitine3ligasecopynumbervariationinperipheralbloodleukocytesoncolorectalcancerrisk
AT tiantian propensityscoreadjustedanalysisoftheeffectsofubiquitine3ligasecopynumbervariationinperipheralbloodleukocytesoncolorectalcancerrisk
AT xiatingting propensityscoreadjustedanalysisoftheeffectsofubiquitine3ligasecopynumbervariationinperipheralbloodleukocytesoncolorectalcancerrisk
AT purui propensityscoreadjustedanalysisoftheeffectsofubiquitine3ligasecopynumbervariationinperipheralbloodleukocytesoncolorectalcancerrisk
AT zhangyiwei propensityscoreadjustedanalysisoftheeffectsofubiquitine3ligasecopynumbervariationinperipheralbloodleukocytesoncolorectalcancerrisk
AT hufulan propensityscoreadjustedanalysisoftheeffectsofubiquitine3ligasecopynumbervariationinperipheralbloodleukocytesoncolorectalcancerrisk
AT zhaoyashuang propensityscoreadjustedanalysisoftheeffectsofubiquitine3ligasecopynumbervariationinperipheralbloodleukocytesoncolorectalcancerrisk