Cargando…

A Novel Multi-Omics Analysis Model for Diagnosis and Survival Prediction of Lower-Grade Glioma Patients

BACKGROUND: Lower-grade gliomas (LGGs) are characterized by remarkable genetic heterogeneity and different clinical outcomes. Classification of LGGs is improved by the development of molecular stratification markers including IDH mutation and 1p/19q chromosomal integrity, which are used as a hallmar...

Descripción completa

Detalles Bibliográficos
Autores principales: Wu, Wei, Wang, Yichang, Xiang, Jianyang, Li, Xiaodong, Wahafu, Alafate, Yu, Xiao, Bai, Xiaobin, Yan, Ge, Wang, Chunbao, Wang, Ning, Du, Changwang, Xie, Wanfu, Wang, Maode, Wang, Jia
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9133344/
https://www.ncbi.nlm.nih.gov/pubmed/35646656
http://dx.doi.org/10.3389/fonc.2022.729002
_version_ 1784713543913832448
author Wu, Wei
Wang, Yichang
Xiang, Jianyang
Li, Xiaodong
Wahafu, Alafate
Yu, Xiao
Bai, Xiaobin
Yan, Ge
Wang, Chunbao
Wang, Ning
Du, Changwang
Xie, Wanfu
Wang, Maode
Wang, Jia
author_facet Wu, Wei
Wang, Yichang
Xiang, Jianyang
Li, Xiaodong
Wahafu, Alafate
Yu, Xiao
Bai, Xiaobin
Yan, Ge
Wang, Chunbao
Wang, Ning
Du, Changwang
Xie, Wanfu
Wang, Maode
Wang, Jia
author_sort Wu, Wei
collection PubMed
description BACKGROUND: Lower-grade gliomas (LGGs) are characterized by remarkable genetic heterogeneity and different clinical outcomes. Classification of LGGs is improved by the development of molecular stratification markers including IDH mutation and 1p/19q chromosomal integrity, which are used as a hallmark of survival and therapy sensitivity of LGG patients. However, the reproducibility and sensitivity of the current classification remain ambiguous. This study aimed to construct more accurate risk-stratification approaches. METHODS: According to bioinformatics, the sequencing profiles of methylation and transcription and imaging data derived from LGG patients were analyzed and developed predictable risk score and radiomics score. Moreover, the performance of predictable models was further validated. RESULTS: In this study, we determined a cluster of 6 genes that were correlated with IDH mutation/1p19q co-deletion status. Risk score model was calculated based on 6 genes and showed gratifying sensitivity and specificity for survival prediction and therapy response of LGG patients. Furthermore, a radiomics risk score model was established to noninvasively assist judgment of risk score in pre-surgery. Taken together, a predictable nomogram that combined transcriptional signatures and clinical characteristics was established and validated to be preferable to the histopathological classification. Our novel multi-omics nomograms showed a satisfying performance. To establish a user-friendly application, the nomogram was further developed into a web-based platform: https://drw576223193.shinyapps.io/Nomo/, which could be used as a supporting method in addition to the current histopathological-based classification of gliomas. CONCLUSIONS: Our novel multi-omics nomograms showed the satisfying performance of LGG patients and assisted clinicians to draw up individualized clinical management.
format Online
Article
Text
id pubmed-9133344
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-91333442022-05-27 A Novel Multi-Omics Analysis Model for Diagnosis and Survival Prediction of Lower-Grade Glioma Patients Wu, Wei Wang, Yichang Xiang, Jianyang Li, Xiaodong Wahafu, Alafate Yu, Xiao Bai, Xiaobin Yan, Ge Wang, Chunbao Wang, Ning Du, Changwang Xie, Wanfu Wang, Maode Wang, Jia Front Oncol Oncology BACKGROUND: Lower-grade gliomas (LGGs) are characterized by remarkable genetic heterogeneity and different clinical outcomes. Classification of LGGs is improved by the development of molecular stratification markers including IDH mutation and 1p/19q chromosomal integrity, which are used as a hallmark of survival and therapy sensitivity of LGG patients. However, the reproducibility and sensitivity of the current classification remain ambiguous. This study aimed to construct more accurate risk-stratification approaches. METHODS: According to bioinformatics, the sequencing profiles of methylation and transcription and imaging data derived from LGG patients were analyzed and developed predictable risk score and radiomics score. Moreover, the performance of predictable models was further validated. RESULTS: In this study, we determined a cluster of 6 genes that were correlated with IDH mutation/1p19q co-deletion status. Risk score model was calculated based on 6 genes and showed gratifying sensitivity and specificity for survival prediction and therapy response of LGG patients. Furthermore, a radiomics risk score model was established to noninvasively assist judgment of risk score in pre-surgery. Taken together, a predictable nomogram that combined transcriptional signatures and clinical characteristics was established and validated to be preferable to the histopathological classification. Our novel multi-omics nomograms showed a satisfying performance. To establish a user-friendly application, the nomogram was further developed into a web-based platform: https://drw576223193.shinyapps.io/Nomo/, which could be used as a supporting method in addition to the current histopathological-based classification of gliomas. CONCLUSIONS: Our novel multi-omics nomograms showed the satisfying performance of LGG patients and assisted clinicians to draw up individualized clinical management. Frontiers Media S.A. 2022-05-12 /pmc/articles/PMC9133344/ /pubmed/35646656 http://dx.doi.org/10.3389/fonc.2022.729002 Text en Copyright © 2022 Wu, Wang, Xiang, Li, Wahafu, Yu, Bai, Yan, Wang, Wang, Du, Xie, Wang and Wang https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Oncology
Wu, Wei
Wang, Yichang
Xiang, Jianyang
Li, Xiaodong
Wahafu, Alafate
Yu, Xiao
Bai, Xiaobin
Yan, Ge
Wang, Chunbao
Wang, Ning
Du, Changwang
Xie, Wanfu
Wang, Maode
Wang, Jia
A Novel Multi-Omics Analysis Model for Diagnosis and Survival Prediction of Lower-Grade Glioma Patients
title A Novel Multi-Omics Analysis Model for Diagnosis and Survival Prediction of Lower-Grade Glioma Patients
title_full A Novel Multi-Omics Analysis Model for Diagnosis and Survival Prediction of Lower-Grade Glioma Patients
title_fullStr A Novel Multi-Omics Analysis Model for Diagnosis and Survival Prediction of Lower-Grade Glioma Patients
title_full_unstemmed A Novel Multi-Omics Analysis Model for Diagnosis and Survival Prediction of Lower-Grade Glioma Patients
title_short A Novel Multi-Omics Analysis Model for Diagnosis and Survival Prediction of Lower-Grade Glioma Patients
title_sort novel multi-omics analysis model for diagnosis and survival prediction of lower-grade glioma patients
topic Oncology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9133344/
https://www.ncbi.nlm.nih.gov/pubmed/35646656
http://dx.doi.org/10.3389/fonc.2022.729002
work_keys_str_mv AT wuwei anovelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT wangyichang anovelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT xiangjianyang anovelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT lixiaodong anovelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT wahafualafate anovelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT yuxiao anovelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT baixiaobin anovelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT yange anovelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT wangchunbao anovelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT wangning anovelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT duchangwang anovelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT xiewanfu anovelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT wangmaode anovelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT wangjia anovelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT wuwei novelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT wangyichang novelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT xiangjianyang novelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT lixiaodong novelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT wahafualafate novelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT yuxiao novelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT baixiaobin novelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT yange novelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT wangchunbao novelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT wangning novelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT duchangwang novelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT xiewanfu novelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT wangmaode novelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients
AT wangjia novelmultiomicsanalysismodelfordiagnosisandsurvivalpredictionoflowergradegliomapatients