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Enhancing <i>BRAF</i> V600E mutation prediction in thyroid cancer through interpretable deep learning models combining clinical and ultrasound-based radiomics features.

June 10, 2026pubmed logopapers

Authors

Zhang L,Huang C,Chen Z,Ying Y,Jiang N,Zhong X,Chen F,Guo Y,Luo S

Affiliations (4)

  • Department of Ultrasound, Guangdong Provincial People's Hospital, Guangdong Academy of Medical Sciences, Southern Medical University, Guangzhou, China.
  • School of Artificial Intelligence, Sun Yat-sen University, Zhuhai, China.
  • School of Computer Science, Guangdong University of Foreign Studies South China Business College, Guangzhou, China.
  • Department of Ultrasound, The Third Affiliated Hospital of Southern Medical University, Academy of Orthopedics, Guangzhou, China.

Abstract

<i>BRAF</i> V600E mutation, the most prevalent driver alteration in papillary thyroid carcinoma, is associated with aggressive clinicopathological features, including macroscopic extrathyroidal extension, lymph node metastasis, and high-risk histological features. <i>BRAF</i> V600E mutation is determined by tissue biopsy/surgery and gene sequencing, which are invasive and costly. The study aimed to develop an interpretable prediction model based on clinical and ultrasound characteristics via radiomics and deep learning (DL) methods to noninvasively predict the <i>BRAF</i> V600E mutation in patients with thyroid cancer. A total of 6,703 ultrasound images from 1,257 lesions in 1,202 patients with thyroid cancer were retrospectively collected. Since multiple ultrasound images were available for each lesion, the lesion-level prediction was derived as the average of the image-level outputs. Univariate and multivariate logistic regression were adopted to construct the clinical model. Six machine learning models were compared to identify the optimal one. A ResNet50-32x4d model was fine-tuned to build the DL model. The extreme gradient boosting (XGBoost) algorithm was employed to integrate the optimal radiomics score (radscore), DL scores, and clinical factors for combined model construction. The Shapley additive explanations (SHAP) algorithm and gradient-weighted class activation mapping technique were applied for interpretability. Multivariate analysis identified the significant predictive variables to be sex [odds ratio (OR) =0.61; 95% confidence interval (CI): 0.54-0.69; P<0.001], age (OR =1.01; 95% CI: 1.00-1.01; P<0.001), tumor size (OR =0.54; 95% CI: 0.50-0.58; P<0.001), and multifocality (OR =0.66; 95% CI: 0.57-0.75; P<0.001). Among the six machine learning models, the XGBoost model demonstrated the best performance, with an area under the curve (AUC) of 0.809 and 0.745 in the training and test sets at the lesion level, respectively. The DL model outperformed the XGBoost model, achieving an AUC of 0.807 in the test set at the lesion level. The combined model exhibited comparable performance to that of the DL model, with AUCs of 0.845 and 0.814 in training and test sets at the lesion level, respectively. SHAP analysis revealed that DL scores and radscores were key contributors in predicting mutation status. The combined model integrating clinical and ultrasound data can effectively predict <i>BRAF</i> V600E mutation status in patients with thyroid cancer.

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Journal Article

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