The results of the modelling of respiratory muscles strength proper values by means of artificial intelligence methods

B. Geltser (Vladivostok, Russian Federation), ?. Shahgeldyan (Vladivostok, Russian Federation), I. Kurpatov (Vladivostok, Russian Federation)

Source: International Congress 2018 – Respiratory physiology and measurements
Session: Respiratory physiology and measurements
Session type: Thematic Poster
Number: 1409
Disease area: Airway diseases

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B. Geltser (Vladivostok, Russian Federation), ?. Shahgeldyan (Vladivostok, Russian Federation), I. Kurpatov (Vladivostok, Russian Federation). The results of the modelling of respiratory muscles strength proper values by means of artificial intelligence methods. 1409

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