NiReject:在功能性近红外光谱中实现自动不良通道检测。

IF 4.8 2区 医学 Q1 NEUROSCIENCES
Neurophotonics Pub Date : 2024-10-01 Epub Date: 2024-11-04 DOI:10.1117/1.NPh.11.4.045008
Christian Gerloff, Meryem A Yücel, Lena Mehlem, Kerstin Konrad, Vanessa Reindl
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引用次数: 0

摘要

意义重大:功能性近红外光谱仪(fNIRS)的样本量和通道密度不断增加,因此有必要对无法进行可靠分析的信号进行精确、可扩展的识别,以排除这些信号。尽管检测这些 "坏通道 "很有意义,但人们对 fNIRS 检测方法的行为知之甚少,无监督和半监督机器学习的潜力仍有待开发:我们进行了系统的文献检索,并证明了不良信道检测的影响。基于来自两个独立评级数据集的 29,924 个信号和一个包含各种现象的模拟场景空间,我们评估了 NiReject 模型、fNIRS 中最成熟的六种检测方法以及其他领域的 11 种著名方法:结果:尽管结果表明,缺乏适当的检测方法会严重影响研究结果,但只有 32% 的纳入研究报告了检测方法。半监督模型(特别是半监督 NiReject)的表现优于基于阈值的检测器和无监督检测器。混合 NiReject 利用人工反馈环路解决了半监督方法所面临的实际挑战,同时保持了精确的检测和较低的评级工作量:这项研究通过全面评估现有技术和引入基于机器学习的新型技术,概述了不良通道检测的实际注意事项,为实现更加自动化和可靠的 fNIRS 信号质量控制做出了贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NiReject: toward automated bad channel detection in functional near-infrared spectroscopy.

Significance: The increasing sample sizes and channel densities in functional near-infrared spectroscopy (fNIRS) necessitate precise and scalable identification of signals that do not permit reliable analysis to exclude them. Despite the relevance of detecting these "bad channels," little is known about the behavior of fNIRS detection methods, and the potential of unsupervised and semi-supervised machine learning remains unexplored.

Aim: We developed three novel machine learning-based detectors, unsupervised, semi-supervised, and hybrid NiReject, and compared them with existing approaches.

Approach: We conducted a systematic literature search and demonstrated the influence of bad channel detection. Based on 29,924 signals from two independently rated datasets and a simulated scenario space of diverse phenomena, we evaluated the NiReject models, six of the most established detection methods in fNIRS, and 11 prominent methods from other domains.

Results: Although the results indicated that a lack of proper detection can strongly bias findings, detection methods were reported in only 32% of the included studies. Semi-supervised models, specifically semi-supervised NiReject, outperformed both established thresholding-based and unsupervised detectors. Hybrid NiReject, utilizing a human feedback loop, addressed the practical challenges of semi-supervised methods while maintaining precise detection and low rating effort.

Conclusions: This work contributes toward more automated and reliable fNIRS signal quality control by comprehensively evaluating existing and introducing novel machine learning-based techniques and outlining practical considerations for bad channel detection.

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来源期刊
Neurophotonics
Neurophotonics Neuroscience-Neuroscience (miscellaneous)
CiteScore
7.20
自引率
11.30%
发文量
114
审稿时长
21 weeks
期刊介绍: At the interface of optics and neuroscience, Neurophotonics is a peer-reviewed journal that covers advances in optical technology applicable to study of the brain and their impact on the basic and clinical neuroscience applications.
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