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Feasibility of identifying the ideal locations for motor intention decoding using unimodal and multimodal classification at 7T-fMRI

机译:在7T-fMRI上使用单峰和多峰分类识别运动意图解码的理想位置的可行性

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摘要

Invasive Brain-Computer Interfaces (BCIs) require surgeries with high health-risks. The risk-to-benefit ratio of the procedure could potentially be improved by pre-surgically identifying the ideal locations for mental strategy classification. We recorded high-spatiotemporal resolution blood-oxygenation-level-dependent (BOLD) signals using functional MRI at 7 Tesla in eleven healthy participants during two motor imagery tasks. BCI diagnostic task isolated the intent to imagine movements, while BCI simulation task simulated the neural states that may be yielded in a real-life BCI-operation scenario. Imagination of movements were classified from the BOLD signals in sub-regions of activation within a single or multiple dorsal motor network regions. Then, the participant’s decoding performance during the BCI simulation task was predicted from the BCI diagnostic task. The results revealed that drawing information from multiple regions compared to a single region increased the classification accuracy of imagined movements. Importantly, systematic unimodal and multimodal classification revealed the ideal combination of regions that yielded the best classification accuracy at the individual-level. Lastly, a given participant’s decoding performance achieved during the BCI simulation task could be predicted from the BCI diagnostic task. These results show the feasibility of 7T-fMRI with unimodal and multimodal classification being utilized for identifying ideal sites for mental strategy classification.
机译:侵入性脑机接口(BCI)需要具有高健康风险的手术。通过手术前确定心理策略分类的理想位置,可以潜在地提高该过程的风险收益率。我们在11位健康参与者的7特斯拉中使用功能性MRI在两个运动成像任务期间的11位健康参与者中记录了高时空分辨率的血液氧合水平依赖性(BOLD)信号。 BCI诊断任务隔离了想象运动的意图,而BCI模拟任务则模拟了在实际BCI操作场景中可能产生的神经状态。根据单个或多个背侧运动网络区域内激活子区域中的BOLD信号对运动的想象进行分类。然后,根据BCI诊断任务来预测参与者在BCI模拟任务期间的解码性能。结果表明,与单个区域相比,来自多个区域的绘图信息提高了想象的运动的分类精度。重要的是,系统的单峰和多峰分类揭示了理想的区域组合,从而在个体层面上产生了最佳的分类精度。最后,可以从BCI诊断任务中预测BCI模拟任务期间达到的给定参与者的解码性能。这些结果表明,利用单峰和多峰分类进行7T-fMRI的可行性,可用于确定心理策略分类的理想部位。

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