Double-Step Machine Learning Based Procedure for HFOs Detection and Classification

dc.contributor.author Nicolina Sciaraffa
dc.contributor.author Manousos A. Klados
dc.contributor.author Gianluca Borghini
dc.contributor.author Gianluca Di Flumeri
dc.contributor.author Fabio Babiloni
dc.contributor.author Pietro Aricò
dc.date.accessioned 2024-03-08T12:07:15Z
dc.date.available 2024-03-08T12:07:15Z
dc.date.issued 2020-04-08
dc.description.abstract The need for automatic detection and classification of high-frequency oscillations (HFOs) as biomarkers of the epileptogenic tissue is strongly felt in the clinical field. In this context, the employment of artificial intelligence methods could be the missing piece to achieve this goal. This work proposed a double-step procedure based on machine learning algorithms and tested it on an intracranial electroencephalogram (iEEG) dataset available online. The first step aimed to define the optimal length for signal segmentation, allowing for an optimal discrimination of segments with HFO relative to those without. In this case, binary classifiers have been tested on a set of energy features. The second step aimed to classify these segments into ripples, fast ripples and fast ripples occurring during ripples. Results suggest that LDA applied to 10 ms segmentation could provide the highest sensitivity (0.874) and 0.776 specificity for the discrimination of HFOs from no-HFO segments. Regarding the three-class classification, non-linear methods provided the highest values (around 90%) in terms of specificity and sensitivity, significantly different to the other three employed algorithms. Therefore, this machine-learning-based procedure could help clinicians to automatically reduce the quantity of irrelevant data.
dc.description.sponsorship This work is co-financed by the European Commission by Horizon2020 projects “HOPE: automatic detection and localization of High frequency Oscillation in Paediatric Epilepsy”(GA n. 823958); “WORKINGAGE: Smart Working environments for all Ages” (GA n. 826232); “SIMUSAFE”: Simulator Of Behavioural Aspects For Safer Transport (GA n. 723386); “SAFEMODE: Strengthening synergies between Aviation and maritime in the area of human Factors towards achieving more Efficient and resilient MODE of transportation” (GA n. 814961), “BRAINSAFEDRIVE: A Technology to detect Mental States during Drive for improving the Safety of the road” (Italy-Sweden collaboration) with a grant of Ministero dell’Istruzione dell’Università e della Ricerca della Repubblica Italiana.
dc.identifier.citation Sciaraffa N, Klados MA, Borghini G, Di Flumeri G, Babiloni F, Aricò P. Double-Step Machine Learning Based Procedure for HFOs Detection and Classification. Brain Sciences. 2020; 10(4):220. https://doi.org/10.3390/brainsci10040220
dc.identifier.other https://doi.org/10.3390/brainsci10040220
dc.identifier.uri https://ccdspace.eu/handle/123456789/182
dc.language.iso en
dc.publisher MDPI
dc.relation.ispartofseries Brain Sciences. 2020; 10(4):; 220
dc.title Double-Step Machine Learning Based Procedure for HFOs Detection and Classification
dc.type Article
dspace.entity.type
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