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2024
DOI: 10.3389/fncom.2024.1357607
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Identification of Smith–Magenis syndrome cases through an experimental evaluation of machine learning methods

Raúl Fernández-Ruiz,
Esther Núñez-Vidal,
Irene Hidalgo-delaguía
et al.

Abstract: This research work introduces a novel, nonintrusive method for the automatic identification of Smith–Magenis syndrome, traditionally studied through genetic markers. The method utilizes cepstral peak prominence and various machine learning techniques, relying on a single metric computed by the research group. The performance of these techniques is evaluated across two case studies, each employing a unique data preprocessing approach. A proprietary data “windowing” technique is also developed to derive a more r… Show more

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