Battaglia Filippo, Galanti Mattia, Gugliandolo Giovanni, Rampp Stefan, Remi Jan, Parashos Alexandra, Sharma Sonali, Bhatia Sonal, Dean Brian C, Kutluay Ekrem, Campbell Zeke, Schmitt Sarah, Donato Nicola, Halford Jonathan J, Campobello Giuseppe
Department of Engineering, University of Messina Messina, Italy.
School of Computing Clemson University Clemson, SC, USA.
IEEE Int Symp Med Meas Appl. 2024 Jun;2024. doi: 10.1109/memea60663.2024.10596834. Epub 2024 Jul 29.
In this paper we report experimental results on compression of neurophysiology signals obtained as part of the standardization activities conducted by the Working Group 32 (WG-32) of the Digital Imaging and Communications in Medicine (DICOM). WG-32 focuses on extending the DICOM standard for clinical neurophysiology data exchange. With this aim, several compression techniques specifically devised for neurophysiology signals, as well as audio codecs, have been investigated and compared using real-world datasets. Moreover, a web-based application, named EEGnet and developed specifically for viewing and annotating electroencephalography (EEG) data, has been exploited for determining the maximum distortion that can be tolerated on neurophysiology signals. Through the EEGnet framework, eight neurologists, affiliated to different universities and medical centers, identified signals where they observed a clinically-significant difference. As one of the main results of our study, we found that, in the case of EEG signals, a percentage root mean square difference (PRD) of 5% can be accepted by clinicians and experts. On the other hand, all experts agreed that distortion is unacceptable when the PRD is greater than 15%. Finally, surprisingly enough, experimental results showed that audio codecs provide performance levels that, in some cases, are comparable to those of state-of-the-art algorithms specifically devised for compression of EEG signals.
在本文中,我们报告了对神经生理学信号进行压缩的实验结果,这些信号是作为医学数字成像和通信(DICOM)工作组32(WG - 32)开展的标准化活动的一部分而获得的。WG - 32专注于扩展用于临床神经生理学数据交换的DICOM标准。为此,使用真实世界数据集对几种专门为神经生理学信号设计的压缩技术以及音频编解码器进行了研究和比较。此外,还利用了一个名为EEGnet的基于网络的应用程序,该程序是专门为查看和注释脑电图(EEG)数据而开发的,用于确定神经生理学信号可容忍的最大失真。通过EEGnet框架,来自不同大学和医疗中心的八位神经学家识别出了他们观察到具有临床显著差异的信号。作为我们研究的主要结果之一,我们发现,对于EEG信号,临床医生和专家可以接受5%的百分比均方根差(PRD)。另一方面,所有专家都一致认为,当PRD大于15%时,失真是不可接受的。最后,令人惊讶的是,实验结果表明,音频编解码器在某些情况下提供的性能水平与专门为压缩EEG信号而设计的最先进算法相当。