The increasing prevalence of thyroid cancer globally has led to the development of various computer-aided detection methods. Accurate segmentation of thyroid nodules is a critical first step in the development of AI-assisted clinical decision support systems. This study focuses on instance segmentation of thyroid nodules using YOLOv5 algorithms on ultrasound images. We evaluated multiple YOLOv5 variants (Nano, Small, Medium, Large, and XLarge) across two dataset versions, with and without doppler images. The YOLOv5-Large algorithm achieved the highest performance with a dice score of 91\% and mAP of 0.87 on the dataset including doppler images. Notably, our results demonstrate that doppler images, typically excluded by physicians, can significantly improve segmentation performance. The YOLOv5-Small model achieved 79\% dice score when doppler images were excluded, while including them improved performance across all model variants. These findings suggest that instance segmentation with YOLOv5 provides an effective real-time approach for thyroid nodule detection, with potential clinical applications in automated diagnostic systems.
翻译:全球甲状腺癌发病率的上升推动了多种计算机辅助检测方法的发展。甲状腺结节的精确分割是开发人工智能辅助临床决策支持系统的关键第一步。本研究聚焦于在超声图像上使用YOLOv5算法进行甲状腺结节的实例分割。我们在两个数据集版本(包含与不包含多普勒图像)上评估了多个YOLOv5变体(Nano、Small、Medium、Large和XLarge)。在包含多普勒图像的数据集上,YOLOv5-Large算法取得了最佳性能,其Dice分数为91%,mAP为0.87。值得注意的是,我们的结果表明,通常被医生排除在外的多普勒图像能显著提升分割性能。当排除多普勒图像时,YOLOv5-Small模型的Dice分数为79%,而包含多普勒图像后所有模型变体的性能均得到改善。这些发现表明,基于YOLOv5的实例分割为甲状腺结节检测提供了一种有效的实时方法,在自动化诊断系统中具有潜在的临床应用价值。