Development and validation of a prediction model for lymph node metastasis in thyroid cancer: integrating deep learning and radiomics features from intra- and peri-tumoral regions.

IF 1.6 3区 医学 Q3 SURGERY
Gland surgery Pub Date : 2025-07-31 Epub Date: 2025-07-28 DOI:10.21037/gs-2025-50
Lichang Zhong, Lin Shi, Xinpeng Liu, Yanna Zhao, Liping Gu, Wenkun Bai, Yuanyi Zheng
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引用次数: 0

Abstract

Background: Current preoperative imaging methods, such as ultrasound, are limited by operator dependency and suboptimal sensitivity for detecting central lymph node metastasis (CLNM). This study aimed to propose a method that integrates deep learning and radiomics to accurately predict lymph node metastasis in thyroid cancer by analyzing intra- and peri-tumoral imaging features, thereby improving the preoperative prediction accuracy.

Methods: From July 2020 to June 2022, 405 patients diagnosed with PTC were enrolled from two centers: Center 1 (Shanghai Sixth People's Hospital) with 294 patients divided into a training set (n=294) and an internal validation set, and Center 2 (Tongji Hospital Affiliated to Tongji University) with 111 patients as the external test set. Postoperative pathological confirmation served as the reference standard for CLNM diagnosis. A total of 1,561 radiomics features and 2,048 deep learning features were extracted from intra- and peri-tumoral regions of each ultrasound image. Feature selection was performed using analysis of variance (ANOVA) and least absolute shrinkage and selection operator (LASSO), resulting in the selection of relevant features for constructing support vector machine (SVM) models. Additionally, radiomics-deep learning fusion models were developed by combining selected radiomics and deep learning features.

Results: Among 405 patients (mean age: 46.59±12.74 years; 68.6% female), 171 exhibited CLNM, highlighting the clinical urgency for accurate prediction. Among the 405 patients, 171 exhibited CLNM. The radiomics models demonstrated area under the curve (AUC) values of 0.760 in internal validation and 0.748 in the external test cohort. The deep learning models demonstrated improved performance with AUCs of 0.794 and 0.756 in the internal and external test sets. Notably, the highest AUC values of 0.897 (internal validation) and 0.881 (external test set) were obtained by the radiomics-deep learning fusion SVM model incorporating both intra- and peri-tumoral regions. DeLong's test confirmed statistically significant improvements (P<0.05) of the fusion model over the intra-tumoral radiomics model (P=0.008), intra-tumoral deep learning model (P=0.005), and combined intra-tumoral radiomics-deep learning model (P=0.01). However, no significant differences were observed compared to the combined intra- and peri-tumoral deep learning model (P=0.17). Decision curve analysis indicated that the fusion model offers greater clinical utility in predicting CLNM.

Conclusions: The integration of radiomics and deep learning features significantly enhances the diagnostic performance for predicting CLNM in papillary thyroid carcinoma (PTC). The radiomics-deep learning fusion SVM model outperforms individual radiomics and deep learning models, demonstrating substantial potential for clinical application in improving surgical decision-making and patient management. The fusion model could reduce unnecessary central lymph node dissections (CLNDs) and improve surgical planning by providing personalized risk stratification.

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甲状腺癌淋巴结转移预测模型的建立和验证:整合肿瘤内和肿瘤周围区域的深度学习和放射组学特征。
背景:目前的术前影像学方法,如超声,受操作者依赖性和检测中央淋巴结转移(CLNM)的灵敏度不佳的限制。本研究旨在提出一种结合深度学习和放射组学的方法,通过分析甲状腺癌肿瘤内和肿瘤周围的影像学特征,准确预测甲状腺癌淋巴结转移,从而提高术前预测的准确性。方法:从2020年7月至2022年6月,从两个中心纳入405例确诊为PTC的患者:第一中心(上海市第六人民医院)294例患者分为训练集(n=294)和内部验证集,第二中心(同济大学附属同济医院)111例患者作为外部测试集。术后病理证实为CLNM诊断的参考标准。从每张超声图像的肿瘤内和肿瘤周围区域共提取了1561个放射组学特征和2048个深度学习特征。使用方差分析(ANOVA)和最小绝对收缩和选择算子(LASSO)进行特征选择,从而选择相关特征以构建支持向量机(SVM)模型。此外,通过结合选定的放射组学和深度学习特征,开发了放射组学-深度学习融合模型。结果:405例患者中,平均年龄46.59±12.74岁;68.6%女性),其中171例表现为CLNM,强调了准确预测的临床紧迫性。405例患者中,171例表现为CLNM。放射组学模型显示,内部验证的曲线下面积(AUC)值为0.760,外部测试队列的AUC值为0.748。深度学习模型在内部和外部测试集中的auc分别为0.794和0.756,表现出更好的性能。值得注意的是,结合肿瘤内和肿瘤周围区域的放射组学-深度学习融合SVM模型获得了最高的AUC值0.897(内部验证)和0.881(外部测试集)。结论:放射组学和深度学习特征的结合显著提高了对甲状腺乳头状癌(PTC)中CLNM的诊断性能。放射组学-深度学习融合支持向量机模型优于个体放射组学和深度学习模型,在改善手术决策和患者管理方面具有巨大的临床应用潜力。融合模型可以减少不必要的中央淋巴结清扫(CLNDs),并通过提供个性化的风险分层来改善手术计划。
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来源期刊
Gland surgery
Gland surgery Medicine-Surgery
CiteScore
3.60
自引率
0.00%
发文量
113
期刊介绍: Gland Surgery (Gland Surg; GS, Print ISSN 2227-684X; Online ISSN 2227-8575) being indexed by PubMed/PubMed Central, is an open access, peer-review journal launched at May of 2012, published bio-monthly since February 2015.
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