Automatic computation of apnea – Hipopnea index in patients with sleep apnea based on multivariate adaptive regression splines

T. Ruiz Albi, F. del Campo, R. Hornero, V.J. Marcos, D. Alvarez, M. Gonzalez (Valladolid, Spain)

Source: Annual Congress 2012 - Technology, screening and questionnaires in OSA
Session: Technology, screening and questionnaires in OSA
Session type: Thematic Poster Session
Number: 900
Disease area: Sleep and breathing disorders

Congress or journal article abstractE-poster

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T. Ruiz Albi, F. del Campo, R. Hornero, V.J. Marcos, D. Alvarez, M. Gonzalez (Valladolid, Spain). Automatic computation of apnea – Hipopnea index in patients with sleep apnea based on multivariate adaptive regression splines. Eur Respir J 2012; 40: Suppl. 56, 900

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