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基于近红外光谱的脑机接口的显性和隐性语音分类。

Classification of Overt and Covert Speech for Near-Infrared Spectroscopy-Based Brain Computer Interface.

机构信息

Centre for Robotics Research, Department of Informatics, King's College London, London WC2B 4BG, UK.

Basque Center on Cognition, Brain and Language, 20009 Donostia, Spain.

出版信息

Sensors (Basel). 2018 Sep 7;18(9):2989. doi: 10.3390/s18092989.

Abstract

People suffering from neuromuscular disorders such as locked-in syndrome (LIS) are left in a paralyzed state with preserved awareness and cognition. In this study, it was hypothesized that changes in local hemodynamic activity, due to the activation of Broca's area during overt/covert speech, can be harnessed to create an intuitive Brain Computer Interface based on Near-Infrared Spectroscopy (NIRS). A 12-channel square template was used to cover inferior frontal gyrus and changes in hemoglobin concentration corresponding to six aloud (overtly) and six silently (covertly) spoken words were collected from eight healthy participants. An unsupervised feature extraction algorithm was implemented with an optimized support vector machine for classification. For all participants, when considering overt and covert classes regardless of words, classification accuracy of 92.88 ± 18.49% was achieved with oxy-hemoglobin (O2Hb) and 95.14 ± 5.39% with deoxy-hemoglobin (HHb) as a chromophore. For a six-active-class problem of overtly spoken words, 88.19 ± 7.12% accuracy was achieved for O2Hb and 78.82 ± 15.76% for HHb. Similarly, for a six-active-class classification of covertly spoken words, 79.17 ± 14.30% accuracy was achieved with O2Hb and 86.81 ± 9.90% with HHb as an absorber. These results indicate that a control paradigm based on covert speech can be reliably implemented into future Brain⁻Computer Interfaces (BCIs) based on NIRS.

摘要

患有神经肌肉疾病(如闭锁综合征)的患者会处于瘫痪状态,但意识和认知保持完好。在本研究中,假设由于布罗卡区在言语表达/言语产生时的激活,局部血液动力学活动的变化可以被利用来创建基于近红外光谱(NIRS)的直观脑机接口。使用 12 通道的正方形模板覆盖额下回,并从 8 名健康参与者中收集与 6 个大声(表达性)和 6 个轻声(产生性)单词相对应的血红蛋白浓度变化。实现了一种无监督的特征提取算法,并结合优化的支持向量机进行分类。对于所有参与者,当考虑到无论单词如何的表达性和产生性类别时,使用氧合血红蛋白(O2Hb)的分类准确率为 92.88 ± 18.49%,使用脱氧血红蛋白(HHb)的分类准确率为 95.14 ± 5.39%。对于表达性单词的六个活跃类问题,O2Hb 的准确率为 88.19 ± 7.12%,HHb 的准确率为 78.82 ± 15.76%。同样,对于产生性单词的六个活跃类分类,O2Hb 的准确率为 79.17 ± 14.30%,HHb 的准确率为 86.81 ± 9.90%。这些结果表明,基于产生性言语的控制范式可以可靠地应用于基于 NIRS 的未来脑机接口(BCI)。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c55d/6164385/a2696e85df72/sensors-18-02989-g001.jpg

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