Mrah Sofiane, Descoteaux Maxime, Wager Michel, Boré Arnaud, Rheault François, Thirion Bertrand, Mandonnet Emmanuel
1Department of Neurosurgery, Hôpital Lariboisière, AP-HP, Paris, France.
2Sherbrooke Connectivity Imaging Lab, Department of Computer Science, Faculty of Sciences, Université de Sherbrooke, Sherbrooke, Quebec, Canada.
J Neurosurg. 2022 Mar 4;137(5):1329-1337. doi: 10.3171/2022.1.JNS212257. Print 2022 Nov 1.
The aim of this study was to predict set-shifting deterioration after resection of low-grade glioma.
The authors retrospectively analyzed a bicentric series of 102 patients who underwent surgery for low-grade glioma. The difference between the completion times of the Trail Making Test parts B and A (TMT B-A) was evaluated preoperatively and 3-4 months after surgery. High dimensionality of the information related to the surgical cavity topography was reduced to a small set of predictors in four different ways: 1) overlap between surgical cavity and each of the 122 cortical parcels composing Yeo's 17-network parcellation of the brain; 2) Tractotron: disconnection by the cavity of the major white matter bundles; 3) overlap between the surgical cavity and each of Yeo's networks; and 4) disconets: signature of structural disconnection by the cavity of each of Yeo's networks. A random forest algorithm was implemented to predict the postoperative change in the TMT B-A z-score.
The last two network-based approaches yielded significant accuracies in left-out subjects (area under the receiver operating characteristic curve [AUC] approximately equal to 0.8, p approximately equal to 0.001) and outperformed the two alternatives. In single tree hierarchical models, the degree of damage to Yeo corticocortical network 12 (CC 12) was a critical node: patients with damage to CC 12 higher than 7.5% (cortical overlap) or 7.2% (disconets) had much higher risk to deteriorate, establishing for the first time a causal link between damage to this network and impaired set-shifting.
The authors' results give strong support to the idea that network-level approaches are a powerful way to address the lesion-symptom mapping problem, enabling machine learning-powered individual outcome predictions.
本研究旨在预测低级别胶质瘤切除术后的转换能力恶化情况。
作者回顾性分析了102例行低级别胶质瘤手术的双中心系列患者。术前及术后3 - 4个月评估连线测验B部分与A部分完成时间的差值(TMT B - A)。通过四种不同方式将与手术腔地形相关的高维信息简化为一小组预测因子:1)手术腔与构成Yeo脑17网络分割的122个皮质区域中每个区域的重叠情况;2)Tractotron:手术腔对主要白质束的离断;3)手术腔与Yeo每个网络的重叠情况;4)disconets:手术腔对Yeo每个网络的结构离断特征。采用随机森林算法预测术后TMT B - A z评分的变化。
基于网络的最后两种方法在留一法受试者中取得了显著的准确率(受试者操作特征曲线下面积[AUC]约等于0.8,p约等于0.001),且优于另外两种方法。在单树层次模型中,Yeo皮质 - 皮质网络12(CC 12)的损伤程度是一个关键节点:CC 12损伤高于7.5%(皮质重叠)或7.2%(disconets)的患者恶化风险高得多,首次建立了该网络损伤与转换能力受损之间的因果联系。
作者的结果有力支持了以下观点,即网络层面的方法是解决病变 - 症状映射问题的有效途径,能够实现基于机器学习的个体预后预测。