Does Whole Brain Radiomics on Multimodal Neuroimaging Make Sense in Neuro-Oncology? A Proof of Concept Study.

Gleb Danilov, Diana Kalaeva, Nina Vikhrova, Svetlana Shugay, Ekaterina Telysheva, Sergey Goraynov, Alexandra Kosyrkova, Galina Pavlova, Igor Pronin, Dmitriy Usachev
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Abstract

Employing a whole-brain (WB) mask as a region of interest for extracting radiomic features is a feasible, albeit less common, approach in neuro-oncology research. This study aims to evaluate the relationship between WB radiomic features, derived from various neuroimaging modalities in patients with gliomas, and some key baseline characteristics of patients and tumors such as sex, histological tumor type, WHO Grade (2021), IDH1 mutation status, necrosis lesions, contrast enhancement, T/N peak value and metabolic tumor volume. Forty-one patients (average age 50 ± 15 years, 21 females and 20 males) with supratentorial glial tumors were enrolled in this study. A total of 38,720 radiomic features were extracted. Cluster analysis revealed that whole-brain images of biologically different tumors could be distinguished to a certain extent based on their imaging biomarkers. Machine learning capabilities to detect image properties like contrast-enhanced or necrotic zones validated radiomic features in objectifying image semantics. Furthermore, the predictive capability of imaging biomarkers in determining tumor histology, grade and mutation type underscores their diagnostic potential. Whole-brain radiomics using multimodal neuroimaging data appeared to be informative in neuro-oncology, making research in this area well justified.

多模态神经影像学全脑放射组学对神经肿瘤学有意义吗?概念验证研究。
在神经肿瘤学研究中,采用全脑(WB)掩膜作为感兴趣的区域提取放射学特征是一种可行的方法,尽管不太常见。本研究旨在评估脑胶质瘤患者各种神经影像学方式得出的WB放射学特征与患者和肿瘤的一些关键基线特征(如性别、组织学肿瘤类型、WHO分级(2021)、IDH1突变状态、坏死病变、对比增强、T/N峰值和代谢肿瘤体积)之间的关系。本研究共纳入41例幕上神经胶质肿瘤患者(平均年龄50±15岁,女性21例,男性20例)。总共提取了38,720个放射学特征。聚类分析结果显示,生物学上不同肿瘤的全脑图像可以根据其成像生物标志物在一定程度上进行区分。机器学习功能可以检测图像属性,如对比度增强或坏死区域,从而在物化图像语义中验证放射学特征。此外,成像生物标志物在确定肿瘤组织学、分级和突变类型方面的预测能力强调了它们的诊断潜力。使用多模态神经成像数据的全脑放射组学似乎在神经肿瘤学中提供了信息,使该领域的研究得到了很好的证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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