Munsell Brent C, Wee Chong-Yaw, Keller Simon S, Weber Bernd, Elger Christian, da Silva Laura Angelica Tomaz, Nesland Travis, Styner Martin, Shen Dinggang, Bonilha Leonardo
Department of Computer Science, College of Charleston, Charleston, SC, USA.
Department of Radiology and BRIC, University of North Carolina at Chapel Hill, NC, USA.
Neuroimage. 2015 Sep;118:219-30. doi: 10.1016/j.neuroimage.2015.06.008. Epub 2015 Jun 6.
The objective of this study is to evaluate machine learning algorithms aimed at predicting surgical treatment outcomes in groups of patients with temporal lobe epilepsy (TLE) using only the structural brain connectome. Specifically, the brain connectome is reconstructed using white matter fiber tracts from presurgical diffusion tensor imaging. To achieve our objective, a two-stage connectome-based prediction framework is developed that gradually selects a small number of abnormal network connections that contribute to the surgical treatment outcome, and in each stage a linear kernel operation is used to further improve the accuracy of the learned classifier. Using a 10-fold cross validation strategy, the first stage in the connectome-based framework is able to separate patients with TLE from normal controls with 80% accuracy, and second stage in the connectome-based framework is able to correctly predict the surgical treatment outcome of patients with TLE with 70% accuracy. Compared to existing state-of-the-art methods that use VBM data, the proposed two-stage connectome-based prediction framework is a suitable alternative with comparable prediction performance. Our results additionally show that machine learning algorithms that exclusively use structural connectome data can predict treatment outcomes in epilepsy with similar accuracy compared with "expert-based" clinical decision. In summary, using the unprecedented information provided in the brain connectome, machine learning algorithms may uncover pathological changes in brain network organization and improve outcome forecasting in the context of epilepsy.
本研究的目的是评估机器学习算法,该算法旨在仅使用大脑结构连接组来预测颞叶癫痫(TLE)患者群体的手术治疗结果。具体而言,大脑连接组是利用术前扩散张量成像的白质纤维束重建的。为实现我们的目标,开发了一个基于连接组的两阶段预测框架,该框架逐步选择少量有助于手术治疗结果的异常网络连接,并且在每个阶段使用线性核运算来进一步提高所学习分类器的准确性。使用10折交叉验证策略,基于连接组的框架的第一阶段能够以80%的准确率将TLE患者与正常对照区分开,基于连接组的框架的第二阶段能够以70%的准确率正确预测TLE患者的手术治疗结果。与使用体素形态学测量(VBM)数据的现有最先进方法相比,所提出的基于连接组的两阶段预测框架是一种具有可比预测性能的合适替代方法。我们的结果还表明,与“基于专家”的临床决策相比,仅使用结构连接组数据的机器学习算法能够以相似的准确率预测癫痫的治疗结果。总之,利用大脑连接组中提供的前所未有的信息,机器学习算法可能揭示大脑网络组织中的病理变化,并改善癫痫背景下的结果预测。