中华护理杂志 ›› 2023, Vol. 58 ›› Issue (11): 1403-1409.DOI: 10.3761/j.issn.0254-1769.2023.11.019
• 综述 • 上一篇
收稿日期:
2022-11-25
出版日期:
2023-06-10
发布日期:
2023-06-09
通讯作者:
钟竹青,E-mail:zhongzhuqing@126.com作者简介:
姚自强:女,本科(硕士在读),E-mail:2732465509@qq.com
基金资助:
YAO Ziqiang(), QIN Ning, SHI Shuangjiao, ZHONG Zhuqing()
Received:
2022-11-25
Online:
2023-06-10
Published:
2023-06-09
摘要:
高血压是导致居民心血管疾病发病和死亡风险增加的首要且可改变的危险因素。全面有效的药物管理是帮助患者控制血压的重要策略。目前研究多集中于数字化健康管理与血压监测,对于数字健康技术在高血压患者药物管理的相关报告较少。该文综述了数字健康技术在高血压患者用药评估、用药干预、血压监测、用药咨询与转诊、随访中的应用,为护理人员对高血压患者进行数字化药物管理提供参考。
姚自强, 秦宁, 石双姣, 钟竹青. 数字健康技术在高血压患者药物管理中的应用进展[J]. 中华护理杂志, 2023, 58(11): 1403-1409.
YAO Ziqiang, QIN Ning, SHI Shuangjiao, ZHONG Zhuqing. Application progress of digital health technology in the medication management of hypertensive patients[J]. Chinese Journal of Nursing, 2023, 58(11): 1403-1409.
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