脑膜瘤生物学成像:机器学习预测世卫组织 2/3 级脑膜瘤的综合风险评分。

IF 3.7 Q1 CLINICAL NEUROLOGY Neuro-oncology advances Pub Date : 2024-05-30 eCollection Date: 2024-01-01 DOI:10.1093/noajnl/vdae080
Olivia Kertels, Claire Delbridge, Felix Sahm, Felix Ehret, Güliz Acker, David Capper, Jan C Peeken, Christian Diehl, Michael Griessmair, Marie-Christin Metz, Chiara Negwer, Sandro M Krieg, Julia Onken, Igor Yakushev, Peter Vajkoczy, Bernhard Meyer, Daniel Zips, Stephanie E Combs, Claus Zimmer, David Kaul, Denise Bernhardt, Benedikt Wiestler
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引用次数: 0

摘要

背景:脑膜瘤是最常见的原发性脑肿瘤:脑膜瘤是最常见的原发性脑肿瘤。虽然大多数脑膜瘤是良性的(WHO 1 级),预后良好,但多达四分之一的脑膜瘤被归类为较高级别的肿瘤,属于 WHO 2 级或 3 级。最近,一项大型多中心研究开发了与肿瘤生物学相关的综合风险评分(IRS),并对其预后相关性进行了验证。我们假设成像数据可以反映 IRS。因此,我们评估了机器学习分类器利用术前磁共振成像(MRI)进行无创预测的潜力:本研究共纳入了来自两所大学中心的 160 名 WHO 2 级和 3 级脑膜瘤患者。所有患者均接受了包括甲基化分析在内的组织病理学检查。术前的核磁共振扫描会自动分割,并提取放射学参数。使用随机森林分类器,在训练集(120 名患者)中开发了 3 个机器学习分类器(1 个用于 IRS 的多分类器和 2 个分别用于低风险和高风险预测的二进制分类器),并在保留测试集(40 名患者)中进行了独立测试:多类 IRS 分类的测试集曲线下面积(AUC)为 0.7,主要原因是难以明确区分中危和高危患者。因此,预测低风险 IRS 与中/高风险的分类器的测试准确率非常高,达到 90%(AUC 0.88)。结论:结论:IRS,尤其是分子低风险,可以通过影像学数据进行高精度预测,这使得影像学可以进行这一重要的预后分类。
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Imaging meningioma biology: Machine learning predicts integrated risk score in WHO grade 2/3 meningioma.

Background: Meningiomas are the most common primary brain tumors. While most are benign (WHO grade 1) and have a favorable prognosis, up to one-fourth are classified as higher-grade, falling into WHO grade 2 or 3 categories. Recently, an integrated risk score (IRS) pertaining to tumor biology was developed and its prognostic relevance was validated in a large, multicenter study. We hypothesized imaging data to be reflective of the IRS. Thus, we assessed the potential of a machine learning classifier for its noninvasive prediction using preoperative magnetic resonance imaging (MRI).

Methods: In total, 160 WHO grade 2 and 3 meningioma patients from 2 university centers were included in this study. All patients underwent surgery with histopathological workup including methylation analysis. Preoperative MRI scans were automatically segmented, and radiomic parameters were extracted. Using a random forest classifier, 3 machine learning classifiers (1 multiclass classifier for IRS and 2 binary classifiers for low-risk and high-risk prediction, respectively) were developed in a training set (120 patients) and independently tested in a hold-out test set (40 patients).

Results: Multiclass IRS classification had a test set area under the curve (AUC) of 0.7, mostly driven by the difficulties in clearly separating medium-risk from high-risk patients. Consequently, a classifier predicting low-risk IRS versus medium-/high-risk showed a very high test accuracy of 90% (AUC 0.88). In particular, "sphericity" was associated with low-risk IRS classification.

Conclusion: The IRS, in particular molecular low-risk, can be predicted from imaging data with high accuracy, making this important prognostic classification accessible by imaging.

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