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中华肺部疾病杂志(电子版) ›› 2026, Vol. 19 ›› Issue (01) : 160 -163. doi: 10.3877/cma.j.issn.1674-6902.2026.01.026

短篇论著

低剂量CT肺结节体积测量联合AI辅助诊断在87例肺癌早筛中的临床应用
李彬1,(), 惠桧2, 肖俏2, 王晶3, 詹秋里3, 邱颖3   
  1. 1234000 宿州,安徽医科大学附属宿州医院(宿州市立医院) 影像中心
    2234000 宿州,皖北卫生职业学院影像教研室
    3234000 宿州,安徽医科大学附属宿州医院(宿州市立医院) 呼吸科
  • 收稿日期:2025-10-13 出版日期:2026-02-25
  • 通信作者: 李彬

Clinical application of low­dose CT nodule volume measurement combined with AI­assisted diagnosis in early screening of 87 lung cancer patients

Bin Li(), hui Hui, Qiao Xiao   

  • Received:2025-10-13 Published:2026-02-25
  • Corresponding author: Bin Li
引用本文:

李彬, 惠桧, 肖俏, 王晶, 詹秋里, 邱颖. 低剂量CT肺结节体积测量联合AI辅助诊断在87例肺癌早筛中的临床应用[J/OL]. 中华肺部疾病杂志(电子版), 2026, 19(01): 160-163.

Bin Li, hui Hui, Qiao Xiao. Clinical application of low­dose CT nodule volume measurement combined with AI­assisted diagnosis in early screening of 87 lung cancer patients[J/OL]. Chinese Journal of Lung Diseases(Electronic Edition), 2026, 19(01): 160-163.

表1 两组肺结节患者临床资料结果比较[n(%)]
图1 肺结节患者组织病理学结果。图A为肺腺癌病理学染色图,镜下可见癌细胞呈腺管状排列,细胞核增大、染色质增多,可见核仁,符合中分化肺腺癌病理特征;图B为肺鳞癌病理学染色图,镜下可见癌细胞呈巢状分布,中央可见角化珠形成,细胞间可见细胞间桥,细胞核多形性明显,符合高分化肺鳞癌病理特征;图C为炎性结节病理学染色图,镜下可见肺组织内弥漫性淋巴细胞、浆细胞浸润,肺泡间隔增厚,肺泡上皮轻度增生,未见肿瘤细胞,符合慢性炎性结节病理特征;图D为肺错构瘤病理学染色图,镜下可见软骨组织、脂肪组织及纤维组织混合存在,各成分分化成熟,无细胞异型性及核分裂象,符合肺错构瘤病理特征
表2 两组肺结节患者影像学结果比较
表3 肺癌早期筛查多因素Logistic回归分析
表4 肺癌早期筛查ROC曲线分析
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