Cargando…

An individualized transcriptional signature to predict the epithelial-mesenchymal transition based on relative expression ordering

The epithelial-mesenchymal transition (EMT) process is involved in cancer cell metastasis and immune system activation. Hence, identification of gene expression signatures capable of predicting the EMT status of cancer cells is essential for development of therapeutic strategies. However, quantitati...

Descripción completa

Detalles Bibliográficos
Autores principales: Chen, Tingting, Zhao, Zhangxiang, Chen, Bo, Wang, Yuquan, Yang, Fan, Wang, Chengyu, Dong, Qi, Liu, Yaoyao, Liang, Haihai, Zhao, Wenyuan, Qi, Lishuang, Xu, Yan, Gu, Yunyan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Impact Journals 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7377874/
https://www.ncbi.nlm.nih.gov/pubmed/32639951
http://dx.doi.org/10.18632/aging.103407
_version_ 1783562300356034560
author Chen, Tingting
Zhao, Zhangxiang
Chen, Bo
Wang, Yuquan
Yang, Fan
Wang, Chengyu
Dong, Qi
Liu, Yaoyao
Liang, Haihai
Zhao, Wenyuan
Qi, Lishuang
Xu, Yan
Gu, Yunyan
author_facet Chen, Tingting
Zhao, Zhangxiang
Chen, Bo
Wang, Yuquan
Yang, Fan
Wang, Chengyu
Dong, Qi
Liu, Yaoyao
Liang, Haihai
Zhao, Wenyuan
Qi, Lishuang
Xu, Yan
Gu, Yunyan
author_sort Chen, Tingting
collection PubMed
description The epithelial-mesenchymal transition (EMT) process is involved in cancer cell metastasis and immune system activation. Hence, identification of gene expression signatures capable of predicting the EMT status of cancer cells is essential for development of therapeutic strategies. However, quantitative identification of EMT markers is limited by batch effects, the platform used, or normalization methods. We hypothesized that a set of EMT-related relative expression orderings are highly stable in epithelial samples yet are reversed in mesenchymal samples. To test this hypothesis, we analyzed transcriptome data for ovarian cancer cohorts from publicly available databases, to develop a qualitative 16-gene pair signature (16-GPS) that effectively distinguishes the mesenchymal from epithelial phenotype. Our method was superior to previous quantitative methods in terms of classification accuracy and applicability to individualized patients without requiring data normalization. Patients with mesenchymal-like ovarian cancer showed poorer overall survival compared to patients with epithelial-like ovarian cancer. Additionally, EMT score was positively correlated with expression of immune checkpoint genes and metastasis. We, therefore, established a robust EMT 16-GPS that is independent of detection platform, batch effects and individual variations, and which represents a qualitative signature for investigating the EMT and providing insights into immunotherapy for ovarian cancer patients.
format Online
Article
Text
id pubmed-7377874
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher Impact Journals
record_format MEDLINE/PubMed
spelling pubmed-73778742020-07-31 An individualized transcriptional signature to predict the epithelial-mesenchymal transition based on relative expression ordering Chen, Tingting Zhao, Zhangxiang Chen, Bo Wang, Yuquan Yang, Fan Wang, Chengyu Dong, Qi Liu, Yaoyao Liang, Haihai Zhao, Wenyuan Qi, Lishuang Xu, Yan Gu, Yunyan Aging (Albany NY) Research Paper The epithelial-mesenchymal transition (EMT) process is involved in cancer cell metastasis and immune system activation. Hence, identification of gene expression signatures capable of predicting the EMT status of cancer cells is essential for development of therapeutic strategies. However, quantitative identification of EMT markers is limited by batch effects, the platform used, or normalization methods. We hypothesized that a set of EMT-related relative expression orderings are highly stable in epithelial samples yet are reversed in mesenchymal samples. To test this hypothesis, we analyzed transcriptome data for ovarian cancer cohorts from publicly available databases, to develop a qualitative 16-gene pair signature (16-GPS) that effectively distinguishes the mesenchymal from epithelial phenotype. Our method was superior to previous quantitative methods in terms of classification accuracy and applicability to individualized patients without requiring data normalization. Patients with mesenchymal-like ovarian cancer showed poorer overall survival compared to patients with epithelial-like ovarian cancer. Additionally, EMT score was positively correlated with expression of immune checkpoint genes and metastasis. We, therefore, established a robust EMT 16-GPS that is independent of detection platform, batch effects and individual variations, and which represents a qualitative signature for investigating the EMT and providing insights into immunotherapy for ovarian cancer patients. Impact Journals 2020-07-08 /pmc/articles/PMC7377874/ /pubmed/32639951 http://dx.doi.org/10.18632/aging.103407 Text en Copyright © 2020 Chen et al. http://creativecommons.org/licenses/by/3.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY 3.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Paper
Chen, Tingting
Zhao, Zhangxiang
Chen, Bo
Wang, Yuquan
Yang, Fan
Wang, Chengyu
Dong, Qi
Liu, Yaoyao
Liang, Haihai
Zhao, Wenyuan
Qi, Lishuang
Xu, Yan
Gu, Yunyan
An individualized transcriptional signature to predict the epithelial-mesenchymal transition based on relative expression ordering
title An individualized transcriptional signature to predict the epithelial-mesenchymal transition based on relative expression ordering
title_full An individualized transcriptional signature to predict the epithelial-mesenchymal transition based on relative expression ordering
title_fullStr An individualized transcriptional signature to predict the epithelial-mesenchymal transition based on relative expression ordering
title_full_unstemmed An individualized transcriptional signature to predict the epithelial-mesenchymal transition based on relative expression ordering
title_short An individualized transcriptional signature to predict the epithelial-mesenchymal transition based on relative expression ordering
title_sort individualized transcriptional signature to predict the epithelial-mesenchymal transition based on relative expression ordering
topic Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7377874/
https://www.ncbi.nlm.nih.gov/pubmed/32639951
http://dx.doi.org/10.18632/aging.103407
work_keys_str_mv AT chentingting anindividualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT zhaozhangxiang anindividualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT chenbo anindividualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT wangyuquan anindividualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT yangfan anindividualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT wangchengyu anindividualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT dongqi anindividualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT liuyaoyao anindividualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT lianghaihai anindividualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT zhaowenyuan anindividualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT qilishuang anindividualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT xuyan anindividualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT guyunyan anindividualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT chentingting individualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT zhaozhangxiang individualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT chenbo individualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT wangyuquan individualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT yangfan individualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT wangchengyu individualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT dongqi individualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT liuyaoyao individualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT lianghaihai individualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT zhaowenyuan individualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT qilishuang individualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT xuyan individualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering
AT guyunyan individualizedtranscriptionalsignaturetopredicttheepithelialmesenchymaltransitionbasedonrelativeexpressionordering