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足底定位斜刺法在新生儿疾病筛查采血中的应用

宋成荣,于雯雯, 张潇强

Journal of Clinical Medical Literature (ElectronicEdition)(2018)

Cited 5|Views8
Abstract
目的 对新生儿疾病筛查采血过程中足底定位斜刺法的应用进行一定的探讨.方法 从我院接收的新生儿当中随机抽取102例最为本次研究的对象,结合具体的操作方法将他们分成参照组和实验组,每组当中包含了51例新生儿.参照组新生儿采用以往普通的采血方式;实验组新生儿则采用足底定位斜刺法进行采血,然后对两组幼儿的采血情况进行对比分析.结果 两组新生儿在穿刺点止血时间还有采血成功率方面都存在一定的差异.结论 对新生儿疾病晒拆采血过程中采用足底定位斜刺法可以有效提升采血成功率,同时还可以缩短止血时间,值得推广.
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