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  2. メキシコの病院での既知の原因と未知の原因による先天性異常の調査:因果的異質性に関する注釈
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  2. メキシコの病院での既知の原因と未知の原因による先天性異常の調査:因果的異質性に関する注釈

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メキシコの病院での既知の原因と未知の原因による先天性異常の調査:因果的異質性に関する注釈

Victor M Salinas-Torres1,2,3, Rafael A Salinas-Torres4, Jesus S Velarde-Felix1,5

  • 1Department of Genomic Medicine, Servicios de Salud del Instituto Mexicano del Seguro Social para el Bienestar, Hospital General Culiacán, Culiacán, MEX.

Cureus
|August 22, 2025

PubMed で要約を見る

まとめ
この要約は機械生成です。

生まれつきの異常 (CA) は,メキシコの出生の約4.2%に影響します. 症例の41.8%は既知の原因であるが,多くの症例は未知のままであり,さらなる調査の必要性を強調している.

キーワード:
原因関係生まれつきの異常エチオロジーメキシコ妊娠の結果

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科学分野:

  • 医学
  • 公衆衛生
  • 遺伝学

背景:

  • 生まれつきの異常 (CA) は,世界的に乳児死亡の重要な原因です.
  • CAの危険因子は母親と胎児の特徴によって異なります.
  • ヒスパニック系住民のCA病因に関する研究は限られている.

研究 の 目的:

  • メキシコ人集団におけるCAの潜在的な病因を調査する.
  • 妊娠の結果,胎児/乳児の性別,母親の年齢グループにおけるCAのエチオロジックプロフィールを比較する.

主な方法:

  • デュランゴ総合病院 (2022年-2024年) の病院内監視プログラムでは,CA症例が特定されました.
  • 既知の病因と未知の病因について,有病率と信頼区間を計算した.
  • 統計的分析 (ピアソンのチ二乗,フィッシャーの正確なテスト) は,人口統計と結果群のエチオロギープロフィールを比較した.

主要な成果:

  • 11608人の出産者の中で497人のCA症例が確認された (4. 2%の罹患率).
  • 31. 1% の症例で決定的な原因が特定され,原因不明の症例では10. 6% の症例で病原性プロセスが特定された.
  • 胎児の喪失,男性乳児,母親の年齢の低さ (20歳未満) がCA症例においてより一般的であった. 妊娠の結果,性別,母親の年齢のグループによって,エチオロジーの有意な違いが観察されました.

結論:

  • このコホートにおけるCAの潜在的原因は41. 8%であった.
  • この研究ではCAの因果的異質性と臨床的特徴との関連が明らかになった.
  • 原因不明の割合が高いにもかかわらず,CAの臨床試験は極めて重要です.