概化理论
甲状腺结节
医学
过度诊断
结核(地质)
深度学习
甲状腺
临床实习
放射科
细胞病理学
人工智能
诊断准确性
医疗保健系统
队列
病理
医疗保健
假阳性悖论
医学物理学
模式治疗法
医学影像学
甲状腺癌
作者
Yuanzheng Lou,Yongjian Su,Haoda Lu,Wencai Li,Weihua Yin,Shengnan Li,Huobiao Zhu,Kok Haur Ong,Gang Chen,Yong Jiang,Yifei Liu,Shenglei Li,Manchun Yang,Zhengyu Zhang,Xiaoyan Wang,Xiaohui Zhu,Xinmi Huo,Longjie Li,Chao Wang,Nanyan Zhang
标识
DOI:10.1002/advs.202511369
摘要
The rising prevalence of thyroid nodules is straining limited cytopathology resources, resulting in excessive overdiagnosis and overtreatment with significant patient and healthcare consequences. To address this, AI-TFNA is developed, a robust artificial intelligence platform leveraging extensive clinical data to enhance diagnostic accuracy and clinical efficiency. A total of 20,803 thyroid samples are collected from seven medical centers across different regions in China. Of these, 4,421 thyroid fine-needle aspiration (TFNA) samples from three hospitals are used to train AI-TFNA, ensuring strong generalizability across diverse clinical settings. For the internal validation, AI-TFNA demonstrates exceptional performance: the overall accuracy of TBS I is 93.27%, the sensitivity of TBS V and TBS VI reaches 85.37% and 83.78%, while the specificity of TBS II is 97.13%. Consistent results are observed in an external cohort of 2,153 samples, demonstrating robust generalizability. The incorporation of BRAF mutation data into AI-TFNA and the development of a multi-modal model further improve precision by significantly improving the differentiation between benign and malignant thyroid nodules. Image Appearance Migration (IAM) is an innovative technique that substantially improves cross-institutional model generalizability, increasing AI-TFNA sensitivity by 1.90% and specificity by 8.12%. AI-TFNA offers rapid, reliable decision support, advancing thyroid nodule diagnostics.
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