Evaluation of the clinical effect of an artificial intelligence-assisted diagnosis andtreatment system for neonatal seizures in the real world: a multicenter clinical studyprotocol
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    Abstract:

    Neonatal seizures are the most common clinical manifestations of critically ill neonates and often suggest serious diseases and complicated etiologies.The precise diagnosis of this disease can optimize the use of anti-seizure medication,reduce hospital costs,and improve the long-term neurodevelopmental outcomes.Currently,a few artificial intelligence-assisted diagnosis and treatment systems have been developed for neonatal seizures,but there is still a lack of high-level evidence for the diagnosis and treatment value in the real world.Based on an artificial intelligence-assisted diagnosis and treatment systems that has been developed for neonatal seizures,this study plans to recruit 370 neonates at a high risk of seizures from 6 neonatal intensive care units(NICUs)in China,in order to evaluate the effect of the system on the diagnosis,treatment,and prognosis of neonatal seizures in neonates with different gestational ages in the NICU.In this study,a diagnostic study protocol is used to evaluate the diagnostic value of the system,and a randomized parallel-controlled trial is designed to evaluate the effect of the system on the treatment and prognosis of neonates at a high risk of seizures.This multicenter prospective study will provide high-level evidence for the clinical application of artificial intelligence-assisted diagnosis and treatment systems for neonatal seizures in the real world.

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肖甜甜,窦亚兰,庄德义,胡旭红,康文清,郭琳,赵晓芬,张鹏,严恺,严卫丽,程国强,周文浩.新生儿惊厥智能诊疗系统真实场景临床实施效果综合评价的多中心临床研究方案[J].中国当代儿科杂志英文版,2022,(2):197-203

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  • Received:December 27,2021
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  • Online: August 02,2023
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