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基于概率机器学习的术前语言优势评估。

Probabilistic machine learning for the evaluation of presurgical language dominance.

机构信息

Functional Brain Center.

Functional Neurosurgery Unit, Department of Neurosurgery and.

出版信息

J Neurosurg. 2016 Aug;125(2):481-93. doi: 10.3171/2015.7.JNS142568. Epub 2016 Jan 1.

Abstract

OBJECTIVE Providing a reliable assessment of language lateralization is an important task to be performed prior to neurosurgery in patients with epilepsy. Over the last decade, functional MRI (fMRI) has emerged as a useful noninvasive tool for language lateralization, supplementing or replacing traditional invasive methods. In standard practice, fMRI-based language lateralization is assessed qualitatively by visual inspection of fMRI maps at a specific chosen activation threshold. The purpose of this study was to develop and evaluate a new computational technique for providing the probability of each patient to be left, right, or bilateral dominant in language processing. METHODS In 76 patients with epilepsy, a language lateralization index was calculated using the verb-generation fMRI task over a wide range of activation thresholds (from a permissive threshold, analyzing all brain regions, to a harsh threshold, analyzing only the strongest activations). The data were classified using a probabilistic logistic regression method. RESULTS Concordant results between fMRI and Wada lateralization were observed in 89% of patients. Bilateral and right-dominant groups showed similar fMRI lateralization patterns differentiating them from the left-dominant group but still allowing classification in 82% of patients. CONCLUSIONS These findings present the utility of a semi-supervised probabilistic learning approach for presurgical language-dominance mapping, which may be extended to other cognitive domains such as memory and attention.

摘要

目的

在癫痫患者进行神经外科手术前,对语言侧化进行可靠评估是一项重要任务。在过去的十年中,功能磁共振成像(fMRI)已成为语言侧化的一种有用的非侵入性工具,可补充或替代传统的侵入性方法。在标准实践中,通过在特定选择的激活阈值下对 fMRI 图进行视觉检查来定性评估基于 fMRI 的语言侧化。本研究旨在开发和评估一种新的计算技术,以提供每位患者在语言处理中为左侧、右侧或双侧优势的概率。

方法

在 76 例癫痫患者中,使用动词生成 fMRI 任务在广泛的激活阈值范围内计算语言侧化指数(从允许阈值分析所有脑区到严格阈值仅分析最强激活)。使用概率逻辑回归方法对数据进行分类。

结果

在 89%的患者中观察到 fMRI 和 Wada 侧化之间的一致结果。双侧和右侧优势组显示出相似的 fMRI 侧化模式,将其与左侧优势组区分开来,但仍可对 82%的患者进行分类。

结论

这些发现展示了一种用于术前语言优势映射的半监督概率学习方法的实用性,该方法可扩展到其他认知领域,如记忆和注意力。

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