An MRI radiomics approach to predict survival and tumour-infiltrating macrophages in gliomas

Preoperative MRI is one of the most important clinical results for the diagnosis and treatment of glioma patients. The objective of this study was to construct a stable and validatable preoperative T2-weighted MRI-based radiomics model for predicting the survival of gliomas. A total of 652 glioma pa...

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Veröffentlicht in:Brain (London, England : 1878) England : 1878), 2022-04, Vol.145 (3), p.1151-1161
Hauptverfasser: Li, Guanzhang, Li, Lin, Li, Yiming, Qian, Zenghui, Wu, Fan, He, Yufei, Jiang, Haoyu, Li, Renpeng, Wang, Di, Zhai, You, Wang, Zhiliang, Jiang, Tao, Zhang, Jing, Zhang, Wei
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container_issue 3
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container_title Brain (London, England : 1878)
container_volume 145
creator Li, Guanzhang
Li, Lin
Li, Yiming
Qian, Zenghui
Wu, Fan
He, Yufei
Jiang, Haoyu
Li, Renpeng
Wang, Di
Zhai, You
Wang, Zhiliang
Jiang, Tao
Zhang, Jing
Zhang, Wei
description Preoperative MRI is one of the most important clinical results for the diagnosis and treatment of glioma patients. The objective of this study was to construct a stable and validatable preoperative T2-weighted MRI-based radiomics model for predicting the survival of gliomas. A total of 652 glioma patients across three independent cohorts were covered in this study including their preoperative T2-weighted MRI images, RNA-seq and clinical data. Radiomic features (1731) were extracted from preoperative T2-weighted MRI images of 167 gliomas (discovery cohort) collected from Beijing Tiantan Hospital and then used to develop a radiomics prediction model through a machine learning-based method. The performance of the radiomics prediction model was validated in two independent cohorts including 261 gliomas from the The Cancer Genomae Atlas database (external validation cohort) and 224 gliomas collected in the prospective study from Beijing Tiantan Hospital (prospective validation cohort). RNA-seq data of gliomas from discovery and external validation cohorts were applied to establish the relationship between biological function and the key radiomics features, which were further validated by single-cell sequencing and immunohistochemical staining. The 14 radiomic features-based prediction model was constructed from preoperative T2-weighted MRI images in the discovery cohort, and showed highly robust predictive power for overall survival of gliomas in external and prospective validation cohorts. The radiomic features in the prediction model were associated with immune response, especially tumour macrophage infiltration. The preoperative T2-weighted MRI radiomics prediction model can stably predict the survival of glioma patients and assist in preoperatively assessing the extent of macrophage infiltration in glioma tumours.
doi_str_mv 10.1093/brain/awab340
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The objective of this study was to construct a stable and validatable preoperative T2-weighted MRI-based radiomics model for predicting the survival of gliomas. A total of 652 glioma patients across three independent cohorts were covered in this study including their preoperative T2-weighted MRI images, RNA-seq and clinical data. Radiomic features (1731) were extracted from preoperative T2-weighted MRI images of 167 gliomas (discovery cohort) collected from Beijing Tiantan Hospital and then used to develop a radiomics prediction model through a machine learning-based method. The performance of the radiomics prediction model was validated in two independent cohorts including 261 gliomas from the The Cancer Genomae Atlas database (external validation cohort) and 224 gliomas collected in the prospective study from Beijing Tiantan Hospital (prospective validation cohort). RNA-seq data of gliomas from discovery and external validation cohorts were applied to establish the relationship between biological function and the key radiomics features, which were further validated by single-cell sequencing and immunohistochemical staining. The 14 radiomic features-based prediction model was constructed from preoperative T2-weighted MRI images in the discovery cohort, and showed highly robust predictive power for overall survival of gliomas in external and prospective validation cohorts. The radiomic features in the prediction model were associated with immune response, especially tumour macrophage infiltration. The preoperative T2-weighted MRI radiomics prediction model can stably predict the survival of glioma patients and assist in preoperatively assessing the extent of macrophage infiltration in glioma tumours.</description><identifier>ISSN: 0006-8950</identifier><identifier>EISSN: 1460-2156</identifier><identifier>DOI: 10.1093/brain/awab340</identifier><identifier>PMID: 35136934</identifier><language>eng</language><publisher>England: Oxford University Press</publisher><subject>Glioma - diagnostic imaging ; Glioma - pathology ; Humans ; Macrophages - pathology ; Magnetic Resonance Imaging - methods ; Original ; Prospective Studies ; Retrospective Studies</subject><ispartof>Brain (London, England : 1878), 2022-04, Vol.145 (3), p.1151-1161</ispartof><rights>The Author(s) (2021). Published by Oxford University Press on behalf of the Guarantors of Brain.</rights><rights>The Author(s) (2021). 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RNA-seq data of gliomas from discovery and external validation cohorts were applied to establish the relationship between biological function and the key radiomics features, which were further validated by single-cell sequencing and immunohistochemical staining. The 14 radiomic features-based prediction model was constructed from preoperative T2-weighted MRI images in the discovery cohort, and showed highly robust predictive power for overall survival of gliomas in external and prospective validation cohorts. The radiomic features in the prediction model were associated with immune response, especially tumour macrophage infiltration. 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subjects Glioma - diagnostic imaging
Glioma - pathology
Humans
Macrophages - pathology
Magnetic Resonance Imaging - methods
Original
Prospective Studies
Retrospective Studies
title An MRI radiomics approach to predict survival and tumour-infiltrating macrophages in gliomas
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