Combining curriculum learning and weakly supervised attention for enhanced thyroid nodule assessment in ultrasound imaging.

IF 2.3 2区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Quantitative Imaging in Medicine and Surgery Pub Date : 2025-09-01 Epub Date: 2025-08-18 DOI:10.21037/qims-24-2431
Chadaporn Keatmanee, Dittapong Songsaeng, Songphon Klabwong, Yoichi Nakaguro, Alisa Kunapinun, Mongkol Ekpanyapong, Matthew N Dailey
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引用次数: 0

Abstract

Background: The accurate assessment of thyroid nodules, which are increasingly common with age and lifestyle factors, is essential for early malignancy detection. Ultrasound imaging, the primary diagnostic tool for this purpose, holds promise when paired with deep learning. However, challenges persist with small datasets, where conventional data augmentation can introduce noise and obscure essential diagnostic features. To address dataset imbalance and enhance model generalization, this study integrates curriculum learning with a weakly supervised attention network to improve diagnostic accuracy for thyroid nodule classification.

Methods: This study integrates curriculum learning with attention-guided data augmentation to improve deep learning model performance in classifying thyroid nodules. Using verified datasets from Siriraj Hospital, the model was trained progressively, beginning with simpler images and gradually incorporating more complex cases. This structured learning approach is designed to enhance the model's diagnostic accuracy by refining its ability to distinguish benign from malignant nodules.

Results: Among the curriculum learning schemes tested, schematic IV achieved the best results, with a precision of 100% for benign and 70% for malignant nodules, a recall of 82% for benign and 100% for malignant, and F1-scores of 90% and 83%, respectively. This structured approach improved the model's diagnostic sensitivity and robustness.

Conclusions: These findings suggest that automated thyroid nodule assessment, supported by curriculum learning, has the potential to complement radiologists in clinical practice, enhancing diagnostic accuracy and aiding in more reliable malignancy detection.

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结合课程学习与弱监督注意,强化甲状腺结节超声影像评估。
背景:随着年龄和生活方式的变化,甲状腺结节越来越常见,准确评估甲状腺结节对于早期发现恶性肿瘤至关重要。超声成像是用于这一目的的主要诊断工具,与深度学习相结合,前景广阔。然而,小数据集仍然存在挑战,传统的数据增强可能会引入噪声并模糊基本诊断特征。为了解决数据不平衡和增强模型泛化,本研究将课程学习与弱监督注意网络相结合,以提高甲状腺结节分类的诊断准确性。方法:本研究将课程学习与注意引导数据增强相结合,提高深度学习模型在甲状腺结节分类中的性能。使用来自Siriraj医院的经过验证的数据集,逐步训练该模型,从简单的图像开始,逐渐纳入更复杂的病例。这种结构化的学习方法旨在通过改进其区分良性和恶性结节的能力来提高模型的诊断准确性。结果:在测试的课程学习方案中,方案IV的效果最好,良性结节的准确率为100%,恶性结节的准确率为70%,良性结节的召回率为82%,恶性结节的召回率为100%,f1评分分别为90%和83%。这种结构化方法提高了模型的诊断灵敏度和鲁棒性。结论:这些发现表明,在课程学习的支持下,甲状腺结节的自动评估有可能在临床实践中补充放射科医生,提高诊断准确性并帮助更可靠的恶性肿瘤检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Quantitative Imaging in Medicine and Surgery
Quantitative Imaging in Medicine and Surgery Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
4.20
自引率
17.90%
发文量
252
期刊介绍: Information not localized
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