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Deep learning to diagnose Hashimoto's thyroiditis from sonographic images.

Qiang ZhangSheng ZhangYi PanLin SunJianxin LiYu QiaoJing ZhaoXiaoqing WangYixing FengYanhui ZhaoZhiming ZhengXiangming YangLixia LiuChunxin QinKe ZhaoXiaonan LiuCaixia LiLiuyang ZhangChunrui YangNa ZhuoHong ZhangJie LiuJinglei GaoXiaoling DiFanbo MengLinlei ZhangYuxuan WangYuansheng DuanHongru ShenYang LiMeng YangYichen YangXiaojie XinXi WeiXuan ZhouRui JinLun ZhangXudong WangFengju SongXiangqian ZhengMing GaoKe-Xin ChenXiangChun Li
Published in: Nature communications (2022)
Hashimoto's thyroiditis (HT) is the main cause of hypothyroidism. We develop a deep learning model called HTNet for diagnosis of HT by training on 106,513 thyroid ultrasound images from 17,934 patients and test its performance on 5051 patients from 2 datasets of static images and 1 dataset of video data. HTNet achieves an area under the receiver operating curve (AUC) of 0.905 (95% CI: 0.894 to 0.915), 0.888 (0.836-0.939) and 0.895 (0.862-0.927). HTNet exceeds radiologists' performance on accuracy (83.2% versus 79.8%; binomial test, p < 0.001) and sensitivity (82.6% versus 68.1%; p < 0.001). By integrating serologic markers with imaging data, the performance of HTNet was significantly and marginally improved on the video (AUC, 0.949 versus 0.888; DeLong's test, p = 0.004) and static-image (AUC, 0.914 versus 0.901; p = 0.08) testing sets, respectively. HTNet may be helpful as a tool for the management of HT.
Keyphrases
  • deep learning
  • end stage renal disease
  • convolutional neural network
  • artificial intelligence
  • newly diagnosed
  • ejection fraction
  • chronic kidney disease
  • magnetic resonance imaging
  • optical coherence tomography