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源自全脑磁共振波谱的代谢特征通过机器学习识别高级别胶质瘤的早期肿瘤进展。

Metabolic signatures derived from whole-brain MR-spectroscopy identify early tumor progression in high-grade gliomas using machine learning.

作者信息

Rivera Cameron A, Bhatia Shovan, Morell Alexis A, Daggubati Lekhaj C, Merenzon Martin A, Sheriff Sulaiman A, Luther Evan, Chandar Jay, S Levy Adam, Metzler Ashley R, Berke Chandler N, Goryawala Mohammed, Mellon Eric A, Bhatia Rita G, Nagornaya Natalya, Saigal Gaurav, I de la Fuente Macarena, Komotar Ricardo J, Ivan Michael E, Shah Ashish H

机构信息

Department of Neurosurgery, University of Miami Miller School of Medicine, Miami, FL, USA.

Department of Neurosurgery, University of Pittsburgh School of Medicine, Pittsburgh, PA, USA.

出版信息

J Neurooncol. 2024 Dec;170(3):579-589. doi: 10.1007/s11060-024-04812-1. Epub 2024 Aug 24.

Abstract

PURPOSE

Recurrence for high-grade gliomas is inevitable despite maximal safe resection and adjuvant chemoradiation, and current imaging techniques fall short in predicting future progression. However, we introduce a novel whole-brain magnetic resonance spectroscopy (WB-MRS) protocol that delves into the intricacies of tumor microenvironments, offering a comprehensive understanding of glioma progression to inform expectant surgical and adjuvant intervention.

METHODS

We investigated five locoregional tumor metabolites in a post-treatment population and applied machine learning (ML) techniques to analyze key relationships within seven regions of interest: contralateral normal-appearing white matter (NAWM), fluid-attenuated inversion recovery (FLAIR), contrast-enhancing tumor at time of WB-MRS (Tumor), areas of future recurrence (AFR), whole-brain healthy (WBH), non-progressive FLAIR (NPF), and progressive FLAIR (PF). Five supervised ML classification models and a neural network were developed, optimized, trained, tested, and validated. Lastly, a web application was developed to host our novel calculator, the Miami Glioma Prediction Map (MGPM), for open-source interaction.

RESULTS

Sixteen patients with histopathological confirmation of high-grade glioma prior to WB-MRS were included in this study, totaling 118,922 whole-brain voxels. ML models successfully differentiated normal-appearing white matter from tumor and future progression. Notably, the highest performing ML model predicted glioma progression within fluid-attenuated inversion recovery (FLAIR) signal in the post-treatment setting (mean AUC = 0.86), with Cho/Cr as the most important feature.

CONCLUSIONS

This study marks a significant milestone as the first of its kind to unveil radiographic occult glioma progression in post-treatment gliomas within 8 months of discovery. These findings underscore the utility of ML-based WB-MRS growth predictions, presenting a promising avenue for the guidance of early treatment decision-making. This research represents a crucial advancement in predicting the timing and location of glioblastoma recurrence, which can inform treatment decisions to improve patient outcomes.

摘要

目的

尽管进行了最大程度的安全切除和辅助放化疗,高级别胶质瘤的复发仍不可避免,且目前的成像技术在预测未来进展方面存在不足。然而,我们引入了一种新型的全脑磁共振波谱(WB-MRS)方案,该方案深入研究肿瘤微环境的复杂性,全面了解胶质瘤进展情况,为预期的手术和辅助干预提供依据。

方法

我们在治疗后的人群中研究了五种局部肿瘤代谢物,并应用机器学习(ML)技术分析七个感兴趣区域内的关键关系:对侧正常白质(NAWM)、液体衰减反转恢复(FLAIR)、WB-MRS时的强化肿瘤(肿瘤)、未来复发区域(AFR)、全脑健康区域(WBH)、非进展性FLAIR(NPF)和进展性FLAIR(PF)。开发、优化、训练、测试并验证了五个监督式ML分类模型和一个神经网络。最后,开发了一个网络应用程序来承载我们的新型计算器——迈阿密胶质瘤预测地图(MGPM),用于开源交互。

结果

本研究纳入了16例在WB-MRS之前经组织病理学证实为高级别胶质瘤的患者,共118,922个全脑体素。ML模型成功区分了正常白质与肿瘤及未来进展情况。值得注意的是,性能最佳的ML模型在治疗后环境中预测了液体衰减反转恢复(FLAIR)信号内的胶质瘤进展(平均AUC = 0.86),其中Cho/Cr是最重要的特征。

结论

本研究是同类研究中的首个重大里程碑,揭示了在发现后8个月内治疗后胶质瘤的影像学隐匿性胶质瘤进展情况。这些发现强调了基于ML的WB-MRS生长预测的实用性,为早期治疗决策指导提供了一条有前景的途径。这项研究代表了在预测胶质母细胞瘤复发的时间和位置方面的关键进展,可为治疗决策提供依据以改善患者预后。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/11e0/11614968/614615ade593/11060_2024_4812_Fig1_HTML.jpg

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