CVJul 4, 2023

K-complex Detection Using Fourier Spectrum Analysis In EEG

arXiv:2307.01754v1h-index: 9
Originality Incremental advance
AI Analysis

This work addresses the need for efficient and accurate K-complex detection in clinical and research EEG analysis, though it appears incremental as it builds on existing automation efforts with a focus on alternative metrics and methods.

The paper tackled the problem of automating K-complex detection in EEG for sleep scoring by proposing two new methods based on fast Fourier transform, achieving detection quality similar or superior to previous methods including neural networks while requiring less computational power.

K-complexes are an important marker of brain activity and are used both in clinical practice to perform sleep scoring, and in research. However, due to the size of electroencephalography (EEG) records, as well as the subjective nature of K-complex detection performed by somnologists, it is reasonable to automate K-complex detection. Previous works in this field of research have relied on the values of true positive rate and false positive rate to quantify the effectiveness of proposed methods, however this set of metrics may be misleading. The objective of the present research is to find a more accurate set of metrics and use them to develop a new method of K-complex detection, which would not rely on neural networks. Thus, the present article proposes two new methods for K-complex detection based on the fast Fourier transform. The results achieved demonstrated that the proposed methods offered a quality of K-complex detection that is either similar or superior to the quality of the methods demonstrated in previous works, including the methods employing neural networks, while requiring less computational power, meaning that K-complex detection does not require the use of neural networks. The proposed methods were evaluated using a new set of metrics, which is more representative of the quality of K-complex detection.

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