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肺がん患者の診断から治療までの時間に関するブルガリアの調査分析 (Beat) - 患者の診断から治療までの経路と時間に関する遡及的データベース研究
Assen Dudov1, Nikolay Conev2, Mila Petrova3
1Acibadem City Clinic Mladost, Sofia, Bulgaria.
BMC cancer
|August 27, 2025
PubMed で要約を見る
まとめ
肺がんはブルガリアで主要な死因です. この研究では,2020年から2022年の患者データを分析し,診断から治療への遅れを明らかにし,スクリーニングの改善と公平なケアへのアクセスを強調した.
科学分野:
- 腫瘍学
- 公衆衛生
- 医療サービス研究
背景:
- 2020年のGlobocanのデータによると,肺がんはブルガリアで3番目に多く発生し,最も致命的な悪性腫瘍である.
- 現実世界のデータ分析は 患者の経路と治療の時間軸を理解するために不可欠です
研究 の 目的:
- ブルガリアの肺がん患者の経路を 現実世界のデータを使って分析する
- 肺がん患者の診断から治療開始までの時間を決定する.
主な方法:
- 2020年から2022年の二次データを利用した観測データベースの研究.
- 主なアウトカムには,診断から治療までの時間 (日数) が含まれ,地域,治療の種類,および年によって層分化されました.
- 記述的統計はデータ分析に使用された.
主要な成果:
- 2020年から2022年の間に8,585例の肺がんが新たに診断され,年間平均は2,861例でした.
- 非小細胞肺がんは64%を占め,61%がステージIVで診断された.
- 診断から最初の治療までの平均時間は,手術の場合は7〜40日,併用治療の場合は26〜85日,全身治療の平均時間は42日でした.
結論:
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