Predicting Cognitive Recovery of Stroke Patients from the Structural MRI Connectome Using a Naïve Bayesian Tree Classifier

R. Dacosta-Aguayo, C. Stephan-Otto, T. Auer, Inmaculada Clemente, A. Dávalos, N. Bargalló, M. Mataró, M. Klados
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引用次数: 2

Abstract

Successful post-stroke prognosis and recovery strategies are heavily dependent on our understanding about how the damage to one specific region may impact to other remote regions, as well as the various functional networks involved in efficient cognitive function. In this study, 27 consecutive ischemic stroke patients were recruited. Stroke patients underwent two complete neuropsychological assessments between the first 72 hours after stroke arrival and three months later. They were further evaluated with a MRI protocol at 3 months. Patients were splitted into two groups according to their level of cognitive recovery. A data mining technique was then applied to the probabilistic tractography data in order to determine whether the structural connectivity features can efficiently classify good from poor recovery. We found that the connectivity probability between the left Superior Parietal Gyrus and the left Angular Gyrus can describe the cognitive classification (good versus poor recovery) after stroke. Both regions are involved in higher cognitive functioning and their dysfunction has been related to mild cognitive impairment and dementia. Our findings suggest that cognitive prognosis, in stroke patients, mainly depends on the connection of these two regions. An accurate model for the early prediction of stroke recovery as the one presented herein is fundamental to develop early personalized rehabilitation strategies.
利用Naïve贝叶斯树分类器预测脑卒中患者结构MRI连接组的认知恢复
成功的中风后预后和恢复策略在很大程度上取决于我们对一个特定区域的损伤如何影响其他远程区域的理解,以及参与有效认知功能的各种功能网络。在本研究中,连续招募27例缺血性脑卒中患者。中风患者在中风后72小时和三个月后接受了两次完整的神经心理学评估。3个月时通过MRI进一步评估。根据患者的认知恢复程度将患者分为两组。然后将数据挖掘技术应用于概率轨迹图数据,以确定结构连通性特征是否能够有效地区分好与坏的恢复。我们发现左顶叶上回和左角回之间的连通性概率可以描述脑卒中后的认知分类(恢复好与恢复差)。这两个区域都与高级认知功能有关,它们的功能障碍与轻度认知障碍和痴呆有关。我们的研究结果表明,脑卒中患者的认知预后主要取决于这两个区域的连接。一个准确的模型,早期预测中风的恢复,如本文提出的是制定早期个性化康复策略的基础。
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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