4.5 Article

Deep learning based on ultrasound to differentiate pathologically proven atypical and typical medullary thyroid carcinoma from follicular thyroid adenoma

Journal

EUROPEAN JOURNAL OF RADIOLOGY
Volume 156, Issue -, Pages -

Publisher

ELSEVIER IRELAND LTD
DOI: 10.1016/j.ejrad.2022.110547

Keywords

Ultrasonography; Deep learning; Medullary thyroid carcinoma; Follicular thyroid adenoma

Funding

  1. Clinical and Translational Medical Research Fund of the Chinese Academy of Medical Sciences
  2. National Natural Science Foundation of China
  3. [T-B-072]
  4. [82171965]

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This study investigates the feasibility and value of using deep learning based on grayscale ultrasonography to differentiate atypical and typical medullary thyroid carcinoma from follicular thyroid adenoma. The results show that the ResNet-34 model has higher diagnostic ability compared to the junior sonographer, and successfully identifies a significant number of atypical MTC cases.
Objectives: To investigate the feasibility and value of deep learning based on grayscale ultrasonography in the differentiation of pathologically proven atypical and typical medullary thyroid carcinoma (MTC) from follicular thyroid adenoma (FTA).Methods: The preoperative 770 ultrasound images consisted of 354 MTCs (66% were typical MTCs with a high suspicion sonographic pattern, 34% were atypical MTCs with a suspicion pattern of intermediate or less) and 416 FTAs. All images were delineated manually by a senior sonographer to achieve the regions of interest. Two deep neural networks of ResNet-34 and ResNet-18 were performed on the training set (n = 690). The test data set (n = 80) was subsequently evaluated by the two models and two sonographers, their diagnostic performances and misdiagnosis lesions were compared and analyzed.Results: The ResNet-34 model shows higher diagnostic ability than the junior sonographer with an area under the receiver operating curve of 0.992 (95% CI: 0.840-0.970)versus 0.754 (95% CI:0.645-0.843). Moreover, 12 of 16 atypical MTCs were successfully identified by the ResNet-34, which is significantly better than the senior and junior sonographer, suggesting that these patients could benefit from timely serological examination and surgical strategy at an earlier stage.Conclusion: Deep learning to differentiate MTC from FTA on grayscale ultrasound may be a useful diagnostic support tool, especially in atypical MTC and FTA. Moreover, the computing time of deep learning is short, which will help to incorporate it into real-time ultrasound diagnosis.

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