Automated selection of signal frequency filtering parameters for monitoring sensory evoked potentials: a pilot study


Автоматизированный выбор параметров частотной фильтрации сигнала для мониторинга сенсорных вызванных потенциалов: пилотное исследование
Levin E.A. Pisarev Y.V. Mukhina I.G. Glushaeva A.A. Kilchukov M.G.
2025Meshalkin National Medical Research Center

Patologiya Krovoobrashcheniya i Kardiokhirurgiya
2025#29Issue 147 - 60 pp.

Introduction: The monitoring of somatosensory, visual and auditory evoked potentials (EP) is used to control the preservation of the corresponding functions. To detect promptly signs of their impairment, it is necessary to minimize the time intervals between consecutive recordings of EP. However, the low amplitude of the latter forces researchers to resort to averaging at recording them that involves the longterm accumulation of tens or hundreds of responses to repeated stimuli. Frequency filtering improves the signaltonoise ratio and reduces the number of required averagings, but its optimal parameters vary among patients and their selection requires considerable time and highly qualified personnel. Objective: The study aimed to develop and test a method for automated selection of signal frequency filtering parameters using real data from intraoperative monitoring (IOM) of somatosensory and visual EPs and compare the results of automated selection with the choice made by an experienced neurophysiologist during surgery. Methods: The automated frequency filter selection technique was implemented in our own program, qt5-eeg-filters. It loads unfiltered EPs, filters them using a userdefined set of filters, compares the filtering results taking into account the reproducibility and amplitudes of the EPs, and provides the user with the recommended passband of the frequency filter. Unfiltered EPs of 23 patients (79 records) who underwent intraoperative neuromonitoring with personalized selection of filtering parameters were automatically analyzed using four variants of the filter optimality criterion. These variants were obtained by combining two parameters: (1) the method of assessing the reproducibility of EPs only by characteristics of the peaks (PV) or by a curve segment (CV) and (2) the peak amplitude values used, namely absolute (Abs) or relative values compared to background oscillations (Rel). For each variant, the correlation coefficients of the filtering parameters proposed by the program with those actually selected during IOM were calculated, and their differences were assessed. In addition, the proposed filters were evaluated by a neurophysiologist on a fivepoint scale for subsequent comparison of the four variants of the optimality criterion with each other. Nonparametric methods were used for statistical analysis: Spearman correlation and Friedman/Wilcoxon test. Results: With the optimality criteria of the AbsCV, RelCV, and RelPV types, the lower limit of the passband was higher than that selected by the neurophysiologist during IOM: p=0.00002, p=0.00003, and p=0.056, respectively, for visual EP (VEP), and p<0.00001, p<0.00001, and p=0.00002, respectively, for somatosensory EP (SSEP). With the same criteria, the upper limit of the passband was lower than that selected during IOM: p=0.00029, p=0.00002, and p=0.00037, respectively, for VEP, and p<0.00001, p<0.00001, and p=0.0002, respectively, for SSEP. Thus, with all these criteria, the program suggested using more aggressive filtering than the neurophysiologist actually used during the IOM (hereinafter referred to as IOM filter). With the optimality criterion of the AbsPV type, no clear trend was revealed; at the same time, the quality assessments of both SSEP and VEP selected with this criterion were the worst. The best quality assessments of the filters were obtained using the RelCV criterion for VEP (they did not differ significantly from the assessments for the IOM filter, p = 0.22) and AbsCV for SSEP (they were, however, worse than for the IOM filter, p = 0.0025). For both VEP and SSEP, positive correlations were observed between the quality assessments when using the IOM filter and the filters proposed by the program. For VEP they were 0.74 (p=0.00014), 0.72 (p=0.0003), 0.74 (p=0.00016) and 0.56 (p=0.019) when comparing the IOM filter with the filters obtained using the RelCV, AbsCV, RelPV and AbsPV criteria, respectively. For SSEP the corresponding correlations were 0.23 (p=0.085), 0.49 (p=0.00014), 0.45 (p=0.00050) and 0.57 (p=0.00001). In all cases when there were events that impaired the monitored function during IOM, the changes in EPs were reliably identified using both the IOM filters and the filters proposed by the program. However, the number of such events was insufficient for statistical analysis. Conclusion: We demonstrated the possibility of automated selection of frequency filtering parameters for sensory evoked potentials using a dataset obtained during real intraoperative neuromonitoring sessions. Prospects for the development of the method are associated with the extension of the analysis to the singletrial level.

BandPass Filter , Evoked Potentials , Intraoperative Neurophysiological Monitoring , Personalized Medicine , SignaltoNoise Ratio

Text of the article Перейти на текст статьи

Meshalkin National Medical Research Center, Ministry of Health of the Russian Federation, Novosibirsk, Russian Federation
Almaty, Kazakhstan

Meshalkin National Medical Research Center
Almaty

10 лет помогаем публиковать статьи Международный издатель

Книга Публикация научной статьи Волощук 2026 Book Publication of a scientific article 2026