医学
可解释性
冰冻切片程序
病理
甲状腺癌
突变
淋巴结
淋巴结转移
转移
宫颈癌
癌症
特征(语言学)
放射科
个性化医疗
节点(物理)
肿瘤科
基因检测
深度学习
内科学
基因
颈淋巴结
作者
Mingxing Qiu,Jinbang li,Shujing Guo,Danyi Li,Chengyu Lu,Chenglong Zhao,Jiankun He,Hanxi Wang,Qiao Bai,Aihetaimu Aimaier,Zhijian Cen,Rui Mao,Zimo Ye,Jiaxue Zang,Zhining Zhuo,Lijuan Qu,Yueping Liu,Jing Cui,X H Yao,Xiuwu Bian
摘要
Abstract Precise evaluation of cervical lymph node metastasis (CLNM) and genetic mutations (BRAF V600E /TERT promoter, TERTp) is pivotal for tailoring surgical and prognostic evaluation and adjuvant strategies in thyroid cancer (TC). Although current methods have limitations, we aim to develop deep learning (DL) models to predict CLNM and genetic mutations from TC frozen sections. We developed a DL framework using 2499 frozen‐section whole‐slide images from 2176 TC patients across five centers. The model was trained with a transfer learning‐based feature extractor and an attention‐based multiple instance learning (MIL) classifier, and validated on both internal and external cohorts. StyleGAN3‐based data augmentation was employed to tackle class imbalance for TERTp prediction, while interpretability was assessed via attention heatmaps and Leiden clustering. The CLNM prediction model achieved a patient‐level AUROC of 0.918 internally and 0.803–0.885 across three external validation datasets. For BRAF V600E prediction, AUROCs attained 0.814 internally and spanned 0.750––0.811 in external validation. In TERTp mutation prediction, GAN‐based augmentation increased the AUROC to 0.804 (internal) and 0.732 (external), up from 0.782 and 0.724, respectively. Attention maps visualized CLNM correlations with invasive tumor margins, while mutations localized to specific cellular morphology features. Our DL models accurately predict CLNM and genetic mutations from TC frozen sections, potentially reducing unnecessary procedures and providing a rapid alternative to traditional molecular testing.
科研通智能强力驱动
Strongly Powered by AbleSci AI