Graf Saber, Meyrand Pierre, Herry Cyril, Bem Tiaza, Tsai Feng-Sheng
Neurocentre Magendie, INSERM U1215, University Bordeaux, Bordeaux, France.
Nalecz Institute of Biocybernetics and Biomedical Engineering, Polish Academy of Sciences, Warsaw, Poland.
Sci Rep. 2025 Mar 5;15(1):7647. doi: 10.1038/s41598-025-90380-x.
In the field of electrophysiological signal analysis, the classification of time-series datasets is essential. However, these datasets are often compromised by the prevalent issue of incorrect attribution of labels, known as label noise, which may arise due to insufficient information, inappropriate assumptions, specialists' mistakes, and subjectivity, among others. This critically impairs the accuracy and reliability of data classification, presenting significant barriers to extracting meaningful insights. Addressing this challenge, our study innovatively applies self-supervised learning (SSL) for the classification of sharp wave ripples (SWRs), high-frequency oscillations involved in memory processing that were generated before or after the encoding of spatial information. This novel SSL methodology diverges from traditional label correction techniques. By utilizing SSL, we effectively relabel SWR data, leveraging the inherent structural patterns within time-series data to improve label quality without relying on external labeling. The application of SSL to SWR datasets has yielded a 10% increase in classification accuracy. While this improved classification accuracy does not directly enhance our understanding of SWRs, it opens up new pathways for research. The study's findings suggest the transformative capability of SSL in improving data quality across various domains reliant on precise time-series data classification.
在电生理信号分析领域,时间序列数据集的分类至关重要。然而,这些数据集常常受到标签错误归因这一普遍问题的影响,即所谓的标签噪声,其可能由于信息不足、假设不当、专家失误以及主观性等多种原因而产生。这严重损害了数据分类的准确性和可靠性,为提取有意义的见解带来了重大障碍。为应对这一挑战,我们的研究创新性地将自监督学习(SSL)应用于尖波涟漪(SWRs)的分类,SWRs是参与记忆处理的高频振荡,在空间信息编码之前或之后产生。这种新颖的SSL方法不同于传统的标签校正技术。通过利用SSL,我们有效地重新标记SWR数据,利用时间序列数据中的固有结构模式来提高标签质量,而无需依赖外部标记。将SSL应用于SWR数据集使分类准确率提高了10%。虽然这种提高的分类准确率并不能直接增进我们对SWRs的理解,但它为研究开辟了新途径。该研究结果表明,SSL在提高依赖精确时间序列数据分类的各个领域的数据质量方面具有变革能力。