Frontiers in Endocrinology (Aug 2022)

Ultrasound-based radiomics nomogram combined with clinical features for the prediction of central lymph node metastasis in papillary thyroid carcinoma patients with Hashimoto’s thyroiditis

  • Peile Jin,
  • Peile Jin,
  • Jifan Chen,
  • Jifan Chen,
  • Yiping Dong,
  • Yiping Dong,
  • Chengyue Zhang,
  • Chengyue Zhang,
  • Yajun Chen,
  • Yajun Chen,
  • Cong Zhang,
  • Cong Zhang,
  • Fuqiang Qiu,
  • Fuqiang Qiu,
  • Chao Zhang,
  • Chao Zhang,
  • Pintong Huang,
  • Pintong Huang,
  • Pintong Huang

DOI
https://doi.org/10.3389/fendo.2022.993564
Journal volume & issue
Vol. 13

Abstract

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BackgroundHashimoto thyroiditis (HT) is the most common autoimmune thyroid disease and is considered an independent risk factor for papillary thyroid carcinoma (PTC), with a higher incidence of PTC in patients with HT.ObjectiveTo build an integrated nomogram using clinical information and ultrasound-based radiomics features in patients with papillary thyroid carcinoma (PTC) with Hashimoto thyroiditis (HT) to predict central lymph node metastasis (CLNM).MethodsIn total, 235 patients with PTC with HT were enrolled in this study, including 101 with CLNM and 134 without CLNM. They were divided randomly into training and validation datasets with a 7:3 ratio for developing and evaluating clinical features plus conventional ultrasound features (Clin-CUS) model and clinical features plus radiomics scores (Clin-RS) model, respectively. In the Clin-RS model, the Pyradiomics package (V1.3.0) was used to extract radiomics variables, and LASSO regression was used to select features and construct radiomics scores (RS). The Clin-CUS and Clin-RS nomogram models were built using logistic regression analysis.ResultsTwenty-seven CLNM-associated radiomics features were selected using univariate analysis and LASSO regression from 1488 radiomics features and were calculated to construct the RS. The integrated model (Clin-RS) had better diagnostic performance than the Clin-CUS model for differentiating CLNM in the training dataset (AUC: 0.845 vs. 0.778) and the validation dataset (AUC: 0.808 vs. 0.751), respectively.ConclusionOur findings suggest that applying an ultrasound-based radiomics approach can effectively predict CLNM in patients with PTC with HT. By incorporating clinical information and RS, the Clin-RS model can achieve a high diagnostic performance in diagnosing CLNM in patients with PTC with HT.

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