卒中后抑郁风险预测模型的研究进展

黄志强, 钟士江, 王兴平

武警医学 ›› 2025, Vol. 36 ›› Issue (11) : 993-997.

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武警医学 ›› 2025, Vol. 36 ›› Issue (11) : 993-997.
综述

卒中后抑郁风险预测模型的研究进展

  • 黄志强1, 钟士江2, 王兴平1
作者信息 +
文章历史 +

摘要

卒中后抑郁(PSD)是脑卒中患者最常见的并发症之一,对患者生活质量和预后产生不良影响。由于PSD发病机制尚未阐明,且缺乏特异性高的临床诊断工具,许多PSD患者并未得到及时诊断和治疗。风险预测模型通过建立影响因素与结局间的相关关系,有望解决PSD误诊率和漏诊率高的问题。笔者通过回顾国内外相关文献,分析PSD风险预测模型的现状,以期为临床医师采取预防性干预措施和开发完善PSD风险预测模型提供借鉴与启示。

关键词

卒中后抑郁 / 机器学习 / 抑郁症 / 预测模型

引用本文

导出引用
黄志强, 钟士江, 王兴平. 卒中后抑郁风险预测模型的研究进展[J]. 武警医学. 2025, 36(11): 993-997
中图分类号: R743.3   

参考文献

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