315例吡嗪酰胺血药浓度监测结果分析
Journal of Clinical Pulmonary Medicine(2015)
Abstract
目的:分析吡嗪酰胺血药浓度监测结果,指导临床合理用药。方法采用回顾性分析的方法,收集我院2013年9月至2014年10月315例肺结核住院患者吡嗪酰胺的血药浓度检测结果,采用 SPSS 18.0软件进行统计学分析,计量资料采用 t 检验,计数资料采用χ2检验,以 P <0.05为差异有统计学意义。结果(1)315例结核病患者中,低于正常浓度11.7%(37/315),正常浓度46.7%(147/315),高于正常浓度45.2%(131/315)(2)男性血药浓度及每千克体质量剂量分别为(17.54±5.80)mg/ L、(24.99±3.17)mg/ kg,明显低于女性[分别为(23.38±8.22) mg/ L、(29.03±4.50) mg/ kg],差异有统计学意义(t 值分别为-6.586、-8.002,P 值分别为0.000、0.000)(3)不同年龄段患者的血药浓度无统计学差异(F =1.237,P =0.296)。结论加强血药浓度监测,实现合理用药。
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Key words
pyrazinamide,plasma concentration,tuberculosis
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