Fully automated MR-based virtual biopsy of primary CNS lymphomas.

IF 3.7 Q1 CLINICAL NEUROLOGY
Neuro-oncology advances Pub Date : 2024-03-14 eCollection Date: 2024-01-01 DOI:10.1093/noajnl/vdae022
Vicky Parmar, Johannes Haubold, Luca Salhöfer, Mathias Meetschen, Karsten Wrede, Martin Glas, Maja Guberina, Tobias Blau, Denise Bos, Anisa Kureishi, René Hosch, Felix Nensa, Michael Forsting, Cornelius Deuschl, Lale Umutlu
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引用次数: 0

Abstract

Background: Primary central nervous system lymphomas (PCNSL) pose a challenge as they may mimic gliomas on magnetic resonance imaging (MRI) imaging, compelling precise differentiation for appropriate treatment. This study focuses on developing an automated MRI-based workflow to distinguish between PCNSL and gliomas.

Methods: MRI examinations of 240 therapy-naive patients (141 males and 99 females, mean age: 55.16 years) with cerebral gliomas and PCNSLs (216 gliomas and 24 PCNSLs), each comprising a non-contrast T1-weighted, fluid-attenuated inversion recovery (FLAIR), and contrast-enhanced T1-weighted sequence were included in the study. HD-GLIO, a pre-trained segmentation network, was used to generate segmentations automatically. To validate the segmentation efficiency, 237 manual segmentations were prepared (213 gliomas and 24 PCNSLs). Subsequently, radiomics features were extracted following feature selection and training of an XGBoost algorithm for classification.

Results: The segmentation models for gliomas and PCNSLs achieved a mean Sørensen-Dice coefficient of 0.82 and 0.80 for whole tumors, respectively. Three classification models were developed in this study to differentiate gliomas from PCNSLs. The first model differentiated PCNSLs from gliomas, with an area under the curve (AUC) of 0.99 (F1-score: 0.75). The second model discriminated between high-grade gliomas and PCNSLs with an AUC of 0.91 (F1-score: 0.6), and the third model differentiated between low-grade gliomas and PCNSLs with an AUC of 0.95 (F1-score: 0.89).

Conclusions: This study serves as a pilot investigation presenting an automated virtual biopsy workflow that distinguishes PCNSLs from cerebral gliomas. Prior to clinical use, it is necessary to validate the results in a prospective multicenter setting with a larger number of PCNSL patients.

基于磁共振的原发性中枢神经系统淋巴瘤全自动虚拟活检。
背景:原发性中枢神经系统淋巴瘤(PCNSL)在磁共振成像(MRI)上可能会与胶质瘤相似,这给精确区分以进行适当治疗带来了挑战。本研究的重点是开发一种基于磁共振成像的自动化工作流程,以区分 PCNSL 和胶质瘤:研究纳入了 240 名未接受治疗的脑胶质瘤和 PCNSL 患者(男性 141 名,女性 99 名,平均年龄 55.16 岁)的 MRI 检查(216 名胶质瘤患者和 24 名 PCNSL 患者),每名患者都接受了非对比 T1 加权、液体增强反转恢复(FLAIR)和对比增强 T1 加权序列检查。HD-GLIO 是一个预先训练好的分割网络,用于自动生成分割结果。为了验证分割效率,研究人员准备了 237 个人工分割结果(213 个胶质瘤和 24 个 PCNSL)。随后,经过特征选择和 XGBoost 算法分类训练,提取了放射组学特征:胶质瘤和 PCNSL 的分割模型对整个肿瘤的平均 Sørensen-Dice 系数分别为 0.82 和 0.80。本研究开发了三种分类模型来区分胶质瘤和 PCNSL。第一个模型可将 PCNSL 与胶质瘤区分开来,其曲线下面积(AUC)为 0.99(F1-分数:0.75)。第二个模型可区分高级别胶质瘤和 PCNSL,AUC 为 0.91(F1-分数:0.6);第三个模型可区分低级别胶质瘤和 PCNSL,AUC 为 0.95(F1-分数:0.89):本研究作为一项试点调查,展示了一种能区分 PCNSL 和脑胶质瘤的自动化虚拟活检工作流程。在临床应用之前,有必要在前瞻性多中心环境中对更多 PCNSL 患者进行验证。
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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来源期刊
CiteScore
6.20
自引率
0.00%
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审稿时长
12 weeks
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