信息化、规范化管理在儿童哮喘中应用的评价
Shenzhen Journal of Integrated Traditional Chinese and Western Medicine(2018)
Abstract
目的:探讨在儿童哮喘患儿中采用信息化、规范化管理的应用效果.方法:选择2015年1月至2017年9月佛山市妇幼保健院收治的儿童哮喘患儿180例,随机将其分为观察组与对照组,各90例;观察组予信息化、规范化管理模式,对照组予哮喘日记管理模式;比较两组哮喘控制情况与肺功能改善情况.结果:实施1、3个月后观察组患儿哮喘控制测试(ACT)评分显著高于对照组;实施3个月后择期复查肺功能,观察组患儿呼气峰值流速(PEFR)、第一秒用力呼气量(FEV1)与1秒用力呼气容积占预计值百分比(FEV1% prep)水平均明显高于对照组,组间比较,差异具有统计学意义(P<0.05).结论:在儿童哮喘中采用信息化、规范化管理能有效控制惠儿病情,减少哮喘发作次数,改善其肺功能.
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