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Intelligent alert system for predicting invasive mechanical ventilation needs via noninvasive parameters: employing an integrated machine learning method with integration of multicenter databases
Intelligent alert system for predicting invasive mechanical ventilation needs via noninvasive parameters: employing an integrated machine learning method with integration of multicenter databases
Intelligent alert system for predicting invasive mechanical ventilation needs via noninvasive parameters: employing an integrated machine learning method with integration of multicenter databases
Med Biol Eng Comput
Zhang, Guang (author) / Xie, Qingyan (author) / Wang, Chengyi (author) / Xu, Jiameng (author) / Liu, Guanjun (author) / Su, Chen (author)
Medical & Biological Engineering & Computing ; 62 ; 3445-3458
2024-11-01
Article (Journal)
Electronic Resource
English
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