首页> 外文会议>Conference on Optical Techniques in Neurosurgery, Neurophotonics, and Optogenetics >K-means clustering for unsupervised participant grouping from fNIRS brain signal in working memory task
【24h】

K-means clustering for unsupervised participant grouping from fNIRS brain signal in working memory task

机译:K-Means群集用于从Fnirs脑信号中的无监督参与者在工作记忆任务中进行分组

获取原文

摘要

Functional near-infrared spectroscopy (fNIRS) images the changes in oxygenated and deoxygenated hemoglobin blood concentration on the cortical surface of the brain. This technology has been widely used to assess human perceptual and cognitive functions, with many studies showing a positive correlation between working memory (WM) task difficulty and the hemodynamic response measured in frontal regions of the brain. In this work, an unsupervised machine learning (ML) method, k-means clustering, was used to study the relationship between WM task difficulty, user performance, and hemodynamic brain response. We used an fNIRS data set, derived from 25 healthy participants performing a WM task with four difficulty levels, with data collected using a portable fNIRS device. For each participant, the raw fNIRS time-series data were processed and block-averaged to find hemodynamic responses in the four WM task conditions. A k-means clustering ML algorithm was used to identify clusters of participants based on hemodynamic responses across the four conditions. The elbow method suggested three optimal clusters (groups). We studied the task-induced hemodynamic response variation in the three groups as well as task performance (accuracy and reaction time). Clusters were related to WM task performance. At increasing task difficulty levels (1-back, 2-back), cluster membership predicted changes in task performance. Specifically, higher hemodynamic responses in the 2-back condition predicted poorer performance outcomes in the 1-back and 2-back conditions. At higher task difficulty levels, the hemodynamic response signals greater metabolic costs associated with diminishing performance, suggesting future directions for closed-loop systems for monitoring and predicting performance outcomes.
机译:功能近红外光谱(Fnirs)图像在脑皮质表面上的氧化和脱氧血红蛋白血液浓度的变化。该技术已被广泛用于评估人类感知和认知功能,许多研究显示了工作记忆(WM)任务难度与在大脑前部区域测量的血流动力学反应之间的正相关性。在这项工作中,用于研究WM任务难度,用户性能和血液动力学脑反应之间的关系的无监督机器学习我们使用了Fnirs数据集,从25个健康的参与者派生,使用四个难度级别执行WM任务,使用便携式Fnirs设备收集的数据。对于每个参与者,加工了原始的FNIR时间序列数据并在四个WM任务条件下找到血液动力学响应。 K-Means聚类ML算法用于识别基于四种条件的血流动力学反应的参与者的集群。肘部方法建议三个最佳簇(组)。我们研究了三个组的任务诱导的血液动力学响应变化以及任务性能(准确性和反应时间)。集群与WM任务表现有关。在增加任务难度级别(1返回,2返回)时,群集成员资格预测任务性能的变化。具体地,2背部条件下的血流动力学反应预测了1次和2背部条件中的较差的性能结果。在较高的任务难度级别下,血液动力学响应会使性能减少相关的代谢成本,表明用于监测和预测性能结果的闭环系统的未来方向。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号