糖尿病患者并发脑血栓的临床特征分析
China Health Care & Nutrition(2019)
Abstract
目的:探究分析糖尿病患者并发脑血栓的临床特征.方法:从2016年3月至2018年4月我院收治的糖尿病并发脑血栓患者中抽选51例列为实验组;同期抽选非糖尿病合并脑血栓患者51例列为对照组,对两组患者的临床特征进行分析.结果:实验组患者重度神经功能缺损概率(45.10%)、中度神经功能缺损概率(41.18%)均明显高于对照组(19.61%、21.57%),且实验组酮症酸中毒(27.45%)、肺部感染(25.49%)、冠心病(15.69%)等概率均明显高于对照组(1.96%、1.96%、1.96%),P<0.05,差异具有统计学意义.结论:糖尿病合并脑血栓患者临床特征与非糖尿病合并脑血栓患者存在一定的差异,其预后与治疗效果更差,临床上做好糖尿病合并脑血栓的研究与预防尤为重要,能够有效改善预后,降低并发症发生情况,值得临床推广.
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