Department of Data-Analysis, Faculty of Psychology and Educational Sciences, Ghent University, Belgium.
Charité - Universitätsmedizin Berlin, Corporate Member of Freie Universität Berlin, Humboldt-Universität zu Berlin, And Berlin Institute of Health, Dept. of Neurology, Germany; Bernstein Focus State Dependencies of Learning & Bernstein Center for Computational Neuroscience, Berlin, Germany.
Neuroimage. 2020 Jun;213:116738. doi: 10.1016/j.neuroimage.2020.116738. Epub 2020 Mar 16.
Brain tumor patients scheduled for tumor resection often face significant uncertainty, as the outcome of neurosurgery is difficult to predict at the individual patient level. Recently, simulation of the activity of neural populations connected according to the white matter fibers, producing personalized brain network models, has been introduced as a promising tool for this purpose. The Virtual Brain provides a robust open source framework to implement these models. However, brain network models first have to be validated, before they can be used to predict brain dynamics. In prior work, we optimized individual brain network model parameters to maximize the fit with empirical brain activity. In this study, we extend this line of research by examining the stability of fitted parameters before and after tumor resection, and compare it with baseline parameter variability using data from healthy control subjects. Based on these findings, we perform the first "virtual neurosurgery", mimicking patient's actual surgery by removing white matter fibers in the resection mask and simulating again neural activity on this new connectome. We find that brain network model parameters are relatively stable over time in brain tumor patients who underwent tumor resection, compared with baseline variability in healthy control subjects. Concerning the virtual neurosurgery analyses, use of the pre-surgery model implemented on the virtually resected structural connectome resulted in improved similarity with post-surgical empirical functional connectivity in some patients, but negligible improvement in others. These findings reveal interesting avenues for increasing interactions between computational neuroscience and neuro-oncology, as well as important limitations that warrant further investigation.
计划进行肿瘤切除术的脑肿瘤患者通常面临着巨大的不确定性,因为神经外科手术的结果在个体患者层面上很难预测。最近,模拟根据白质纤维连接的神经群体的活动,产生个性化的脑网络模型,已被引入作为一种有前途的工具。Virtual Brain 提供了一个强大的开源框架来实现这些模型。然而,在将脑网络模型用于预测脑动力学之前,首先必须对其进行验证。在之前的工作中,我们优化了个体脑网络模型参数,以最大程度地拟合经验脑活动。在本研究中,我们通过检查肿瘤切除前后拟合参数的稳定性,并将其与健康对照组的基线参数变异性进行比较,扩展了这一研究方向。基于这些发现,我们进行了第一次“虚拟神经外科手术”,通过在切除掩模中去除白质纤维并在这个新的连接体上模拟再次神经活动,模拟患者的实际手术。我们发现,与健康对照组的基线变异性相比,接受肿瘤切除术的脑肿瘤患者的脑网络模型参数随时间相对稳定。关于虚拟神经外科手术分析,在实际上进行切除的结构连接体上实施术前模型,在一些患者中导致与术后经验性功能连接的相似性得到了改善,但在其他患者中几乎没有改善。这些发现揭示了计算神经科学和神经肿瘤学之间增加相互作用的有趣途径,以及需要进一步研究的重要限制。