An Early Thyroid Screening Model Based on Transformer and Secondary Transfer Learning for Chest and Thyroid CT Images.

IF 2.7 4区 医学 Q3 ONCOLOGY
Technology in Cancer Research & Treatment Pub Date : 2025-01-01 Epub Date: 2025-03-31 DOI:10.1177/15330338251323168
Na Han, Rui Miao, Dongwei Chen, Jinrui Fan, Lin Chen, Siyao Yue, Tao Tan, Bowen Yang, Yapeng Wang
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引用次数: 0

Abstract

IntroductionThyroid cancer is a common malignant tumor, and early diagnosis and timely treatment are crucial to improve patient prognosis. With the increasing use of enhanced CT scans, a new opportunity for early thyroid cancer screening has emerged. However, existing CT-based models face challenges due to limited datasets, small sample sizes, and high noise.MethodsTo address these challenges, we collected enhanced CT scan image data from 240 patients in Guangdong and Xinjiang, China, and established a CT dataset for early thyroid cancer screening. We propose a deep learning model, the DVT model, which combines transformer DNN and transfer learning techniques to integrate time series data and address small sample sizes and high noise.ResultsThe experimental results show that the DVT model achieves a prediction accuracy of 0.96, AUROC of 0.97, specificity of 1, and sensitivity of 0.94. These results indicate that the DVT model is a highly effective tool for early thyroid cancer screening.ConclusionThe DVT model has the potential to assist clinicians in identifying potential thyroid cancer patients and reducing patient expenses. Our study provides a new approach to thyroid cancer screening using enhanced CT scans and demonstrates the effectiveness of deep learning techniques in addressing the challenges associated with CT-based models.

基于变压器和二次迁移学习的胸部和甲状腺CT早期甲状腺筛查模型。
甲状腺癌是一种常见的恶性肿瘤,早期诊断、及时治疗对改善患者预后至关重要。随着增强CT扫描的使用越来越多,早期甲状腺癌筛查的新机会已经出现。然而,现有的基于ct的模型由于数据集有限、样本量小、噪声大而面临挑战。为了应对这些挑战,我们收集了中国广东和新疆240例患者的增强CT扫描图像数据,并建立了早期甲状腺癌筛查的CT数据集。我们提出了一种深度学习模型,即DVT模型,它结合了变压器DNN和迁移学习技术来整合时间序列数据,并解决了小样本量和高噪声的问题。结果DVT模型预测准确率为0.96,AUROC为0.97,特异性为1,敏感性为0.94。这些结果表明DVT模型是早期甲状腺癌筛查的一种非常有效的工具。结论DVT模型有可能帮助临床医生识别潜在的甲状腺癌患者并减少患者的费用。我们的研究提供了一种使用增强CT扫描进行甲状腺癌筛查的新方法,并证明了深度学习技术在解决与基于CT的模型相关的挑战方面的有效性。
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来源期刊
CiteScore
4.40
自引率
0.00%
发文量
202
审稿时长
2 months
期刊介绍: Technology in Cancer Research & Treatment (TCRT) is a JCR-ranked, broad-spectrum, open access, peer-reviewed publication whose aim is to provide researchers and clinicians with a platform to share and discuss developments in the prevention, diagnosis, treatment, and monitoring of cancer.
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