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A novel GLM-based method for the Automatic IDentification of functional Events (AIDE) in fNIRS data recorded in naturalistic environments

机译:一种基于GLM的基于GLM的方法,用于自动识别自然主义环境中的FNIRS数据中的功能事件(辅助)

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摘要

Recent technological advances have allowed the development of portable functional Near-Infrared Spectroscopy (fNIRS) devices that can be used to perform neuroimaging in the real-world. However, as real-world experiments are designed to mimic everyday life situations, the identification of event onsets can be extremely challenging and time-consuming. Here, we present a novel analysis method based on the general linear model (GLM) least square fit analysis for the Automatic IDentification of functional Events (or AIDE) directly from real-world fNIRS neuroimaging data. In order to investigate the accuracy and feasibility of this method, as a proof-of-principle we applied the algorithm to (i) synthetic fNIRS data simulating both block-, event-related and mixed-design experiments and (ii) experimental fNIRS data recorded during a conventional lab-based task (involving maths). AIDE was able to recover functional events from simulated fNIRS data with an accuracy of 89%, 97% and 91% for the simulated block-, event-related and mixed-design experiments respectively. For the lab-based experiment, AIDE recovered more than the 66.7% of the functional events from the fNIRS experimental measured data. To illustrate the strength of this method, we then applied AIDE to fNIRS data recorded by a wearable system on one participant during a complex real-world prospective memory experiment conducted outside the lab. As part of the experiment, there were four and six events (actions where participants had to interact with a target) for the two different conditions respectively (condition 1: social-interact with a person; condition 2: non-social-interact with an object). AIDE managed to recover 3/4 events and 3/6 events for conditions 1 and 2 respectively. The identified functional events were then corresponded to behavioural data from the video recordings of the movements and actions of the participant. Our results suggest that "brain-first" rather than "behaviour-first" analysis is possible and that the present method can provide a novel solution to analyse real-world fNIRS data, filling the gap between real-life testing and functional neuroimaging.
机译:最近的技术进步允许开发可用于在现实世界中进行神经影像的便携式功能近红外光谱(FNIRS)设备的开发。然而,随着现实世界的实验旨在模仿日常生活情况,识别事件持续的识别可能是极具挑战性和耗时的。在这里,我们提出了一种基于一般线性模型(GLM)最小二乘拟合分析的新型分析方法,用于直接来自现实世界FNIR的神经影像数据自动识别功能事件(或助手)。为了研究该方法的准确性和可行性,作为原则校验,我们将算法应用于(i)综合Fnirs数据,模拟块,事件相关和混合设计实验和(ii)实验Fnirs数据在传统的基于实验室的任务(涉及数学)期间录制。 AIDE能够从模拟的FNIRS数据中恢复功能性事件,精度分别为模拟块,与事件相关和混合设计实验的高度为89%,97%和91%。对于基于实验室的实验,助手从FNIRS实验测量数据中恢复超过66.7%的功能事件。为了说明这种方法的强度,我们在实验室外部进行的复杂现实世界预期记忆实验期间将辅助穿着可穿戴系统记录的FNIRS数据。作为实验的一部分,分别有四个和六个事件(参与者必须与目标互动的行动)分别为两个不同的条件(条件1:与人的社交互动;条件2:与一个非社交互动目的)。 AIDE分别设法分别恢复3/4事件和3/6事件1和2。然后,所识别的功能事件与来自参与者的运动的视频记录和动作的行为数据相对应。我们的结果表明,“大脑第一”而不是“行为首先”分析,并且本方法可以提供一种新的解决方案来分析现实世界的FNIR数据,填补现实寿命测试与功能性神经影像之间的差距。

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