Objective: This article proposes a method to automatically identify and label event-related potential (ERP) components with high accuracy and precision.Methods: We present a framework, referred to as peak-picking Dynamic Time Warping (ppDTW), where a priori knowledge about the ERPs under investigation is used to define a reference signal. We developed a combination of peak-picking and Dynamic Time Warping (DTW) that makes the temporal intervals for peak-picking adaptive on the basis of the morphology of the data. We tested the procedure oil experimental data recorded from a control group and from children diagnosed with developmental dyslexia.Results: We compared our results with the traditional peak-picking. We demonstrated that our method achieves better performance than peak-picking, with an overall precision, recall and F-score of 93%, 86% and 89%, respectively, versus 93%, 80% and 85% achieved by peak-picking.Conclusion: We showed that our hybrid method outperforms peak-picking, when dealing with data involving several peaks of interest.Significance: The proposed method can reliably identify and label ERP components in challenging event-related recordings, thus assisting the clinician in ail objective assessment of amplitudes and latencies of peaks of clinical interest.
Automated identification of ERP peaks through Dynamic Time Warping: an application to developmental dyslexia / Assecondi, S; Bianchi, A. M.; H., Hallez; S., Staelens; S., Casarotto; I., Lemahieu; Chiarenza, G. A.. - In: CLINICAL NEUROPHYSIOLOGY. - ISSN 1388-2457. - 120:(2009), pp. 1819-1827. [10.1016/j.clinph.2009.06.023]
Automated identification of ERP peaks through Dynamic Time Warping: an application to developmental dyslexia
ASSECONDI S;
2009-01-01
Abstract
Objective: This article proposes a method to automatically identify and label event-related potential (ERP) components with high accuracy and precision.Methods: We present a framework, referred to as peak-picking Dynamic Time Warping (ppDTW), where a priori knowledge about the ERPs under investigation is used to define a reference signal. We developed a combination of peak-picking and Dynamic Time Warping (DTW) that makes the temporal intervals for peak-picking adaptive on the basis of the morphology of the data. We tested the procedure oil experimental data recorded from a control group and from children diagnosed with developmental dyslexia.Results: We compared our results with the traditional peak-picking. We demonstrated that our method achieves better performance than peak-picking, with an overall precision, recall and F-score of 93%, 86% and 89%, respectively, versus 93%, 80% and 85% achieved by peak-picking.Conclusion: We showed that our hybrid method outperforms peak-picking, when dealing with data involving several peaks of interest.Significance: The proposed method can reliably identify and label ERP components in challenging event-related recordings, thus assisting the clinician in ail objective assessment of amplitudes and latencies of peaks of clinical interest.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione