异柠檬酸脱氢酶
正电子发射断层摄影术
胶质瘤
突变体
神经影像学
医学
无线电技术
转录组
IDH1
肿瘤科
病理
生物信息学
癌症研究
生物
基因
放射科
基因表达
神经科学
遗传学
生物化学
酶
作者
Tiffanie Chouleur,Christèle Etchegaray,Laura Villain,Antoine Lesur,Thomas Ferté,Marco Rossi,Laëtitia Andrique,Costanza Simoncini,Anne‐Sophie Giacobbi,Matteo Gambaretti,Egesta Lopci,Bethania Fernades,Gunnar Dittmar,Rolf Bjerkvig,Boris P. Hejblum,Rodolphe Thiébaut,Olivier Saut,Lorenzo Bello,Andréas Bikfalvi
摘要
Abstract Isocitrate dehydrogenase‐mutant gliomas are lethal brain cancers that impair quality of life in young adults. Although less aggressive than glioblastomas, IDH‐mutant gliomas invariably progress to incurable disease with unpredictable recurrence. A better classification of patient risk of recurrence is needed. Here, we describe a multimodal analytical pipeline integrating imaging, transcriptomic, and proteomic profiles using machine learning to improve patient stratification with novel signatures of patient risk of recurrence based on gene expression, protein level, and imaging. Additionally, we describe the biological characteristics of IDH‐mutant glioma subtypes categorized by positron emission tomography (PET) and histology, and we reinforce the integration of positron emission tomography (PET) metrics in the classification of IDH‐mutant gliomas. We identify a gene signature (KRT19, RUNX3, and SCRT2) and a protein signature (ATXN10, EIF4H, ITGAV, and NCAM1) associated with an increased risk of early recurrence. Furthermore, we integrated these markers with imaging‐derived features, obtaining a better stratification of IDH‐mutant glioma patients in comparison to histomolecular classification alone.
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