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  1. 首页
  2. 研究领域
  3. 人类社会
  4. 人口统计
  5. 死亡率
  6. 美国因特定原因的死亡率,种族和种族,2000-19:健康差异的系统分析

美国因特定原因的死亡率,种族和种族,2000-19:健康差异的系统分析

    Lancet (London, England)
    |August 6, 2023

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    在PubMed 上查看摘要

    概括
    此摘要是机器生成的。

    美国各个县和各个健康状况都存在种族差异. 美国印第安人/阿拉斯加原住民和黑人人口的死亡率高于白人人口, 这凸显了结构变革的迫切需要.

    科学领域:

    • 公共卫生
    • 流行病学
    • 健康差异研究

    背景情况:

    • 美国各个种族和地区的死亡率存在显著差异.
    • 这些差异的交叉位置和死亡原因的理解是有限的.

    研究的目的:

    • 根据美国的种族,族群,县和死亡原因来估计年龄标准化的死亡率.
    • 描述不同健康状况的种族和地方死亡差异之间的相互作用.

    主要方法:

    • 使用美国国家生命统计死亡数据和国家卫生统计中心人口数据 (2000-2019) 的小区域估计模型.
    • 分类种族/种族为非西班牙裔AIAN,亚裔,黑人,拉丁裔和白人.
    • 调整为种族/种族错误报告,并根据2010年美国人口普查标准化.

    主要成果:

    • 在所有19个广泛的死亡原因和3110个美国县中观察到广泛的种族种族差异.
    • 美国印第安人/阿拉斯加原住民和黑人人口的死亡率明显高于白人人口.
    • 根据死亡原因和地理位置,死亡率差异有很大差异,有些模式几乎在各个县普遍存在.

    结论:

    • 种族和民族之间的死亡率差异在美国各地和健康状况中无处不在.

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  • 迫切需要解决导致这些持续差异的基础结构因素.