阿托品诱发青光眼治疗及护理价值分析
Journal of North Pharmacy(2021)
Abstract
目的:分析阿托品诱发青光眼治疗及护理价值.方法:选定本院收治的40例阿托品诱发青光眼患者,均予以20%甘露醇静脉滴注、典必殊滴眼液滴眼、2%硝酸毛果芸香碱滴眼液滴眼、口服醋氮酰胺,迅速控制眼压,同时配合优质护理,比较治疗前、后眼内压、视力、KP(白色角膜后沉着物)、HA-MA评分、HAMD评分,统计并发症总发生率.结果:治疗后眼内压、KP、HAMA评分、HAMD评分均比治疗前低,治疗后视力高于治疗前,P<0.05.40例患者1例滤过泡形成不良、1例前房积血、1例浅前房,并发症总发生率是7.50%.结论:阿托品诱发青光眼患者在接受20%甘露醇静脉滴注、典必殊滴眼液滴眼、2%硝酸毛果芸香碱滴眼液滴眼、口服醋氮酰胺治疗的同时配合优质护理,可有效降低眼内压,改善视力,减轻患者心理不良情绪,减少并发症.
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