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这页已由机器翻译。其他页面可能仍然显示为英文。View in English
  1. 首页
  2. 研究领域
  3. 生物医学和临床科学
  4. 瘤学和致癌症
  5. 预测和预后标志物
  6. 侵袭性脑膜瘤患者的生存模式和死亡原因:从2000年到2019年的回顾性队列分析

侵袭性脑膜瘤患者的生存模式和死亡原因:从2000年到2019年的回顾性队列分析

Anas Elgenidy1, Khaled Saad2, Amir Aboelgheet2

  • 1Department of Neurology, Faculty of Medicine, Cairo University, Cairo 12613, Egypt.

Medical sciences (Basel, Switzerland)
|August 22, 2025

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在PubMed 上查看摘要

概括
此摘要是机器生成的。

膜瘤的存活率很高,但儿童患者面临的死亡风险最大. 脑血管疾病是导致非癌症死亡的首要原因,

科学领域:

  • 神经瘤学
  • 流行病学
  • 临床结果研究

背景情况:

关键词:
死亡原因中枢神经系统瘤这种瘤死亡率

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  • 膜瘤是主要的中枢神经系统 (CNS) 瘤.
  • 它们起源于大脑和脊髓中的体细胞.
  • 中枢神经系统瘤占所有瘤的3-6%.
  • 研究的目的:

    • 分析美国瘤生存模式.
    • 调查瘤患者的非癌症死亡原因.

    主要方法:

    • 使用SEER 17注册表 (2000年至2019年) 的回顾性研究
    • 评估表瘤发病率,生存率和死亡率的趋势.
    • 分析死亡原因,包括非癌症原因.

    主要成果:

    • 在3821名患者中发生了842例 (22%) 死亡.
    • 在诊断后的一年内,18岁以下的患者死亡率最高.
    • 主要死亡原因包括中枢神经系统癌症,脑血管疾病,肺炎,流感和败血症.
    • 一年,三年和五年生存率分别为94%,88%和84%.
    • 随着时间的推移,条件生存显著改善.

    结论:

    • 儿科患者 (< 18 岁) 的死亡率最高.
    • 脑血管疾病是主要的非癌症死亡原因.
    • 诊断后的生存时间越长,生存概率就越高.
    生存分析