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Artificial intelligence defines protein-based classification of thyroid nodules.

Yaoting SunSathiyamoorthy SelvarajanZelin ZangWei LiuYi ZhuHao ZhangWanyuan ChenHao ChenLu LiXue CaiHuanhuan GaoZhicheng WuYongfu ZhaoLirong ChenXiaodong TengSangeeta MantooTony Kiat-Hon LimBhuvaneswari HariramanSerene YeowSyed Muhammad Fahmy AlkaffSze Sing LeeGuan RuanQiushi ZhangTiansheng ZhuYifan HuZhen DongWeigang GeQi XiaoWeibin WangGuangzhi WangJunhong XiaoYi HeZhihong WangWei SunYuan QinJiang ZhuXu ZhengLinyan WangXi ZhengKailun XuYingkuan ShaoShu ZhengKexin LiuRuedi AebersoldHaixia GuanXiaohong WuDingcun LuoWen TianStan Ziqing LiOi Lian KonNarayanan Gopalakrishna IyerTiannan Guo
Published in: Cell discovery (2022)
Determination of malignancy in thyroid nodules remains a major diagnostic challenge. Here we report the feasibility and clinical utility of developing an AI-defined protein-based biomarker panel for diagnostic classification of thyroid nodules: based initially on formalin-fixed paraffin-embedded (FFPE), and further refined for fine-needle aspiration (FNA) tissue specimens of minute amounts which pose technical challenges for other methods. We first developed a neural network model of 19 protein biomarkers based on the proteomes of 1724 FFPE thyroid tissue samples from a retrospective cohort. This classifier achieved over 91% accuracy in the discovery set for classifying malignant thyroid nodules. The classifier was externally validated by blinded analyses in a retrospective cohort of 288 nodules (89% accuracy; FFPE) and a prospective cohort of 294 FNA biopsies (85% accuracy) from twelve independent clinical centers. This study shows that integrating high-throughput proteomics and AI technology in multi-center retrospective and prospective clinical cohorts facilitates precise disease diagnosis which is otherwise difficult to achieve by other methods.
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