Over the past decades, the incidence of thyroid cancer has been increasing globally. Accurate and early diagnosis allows timely treatment and helps to avoid over-diagnosis. Clinically, a nodule is commonly evaluated from both transverse and longitudinal views using thyroid ultrasound. However, the appearance of the thyroid gland and lesions can vary dramatically across individuals. Identifying key diagnostic information from both views requires specialized expertise. Furthermore, finding an optimal way to integrate multi-view information also relies on the experience of clinicians and adds further difficulty to accurate diagnosis. To address these, we propose a personalized diagnostic tool that can customize its decision-making process for different patients. It consists of a multi-view classification module for feature extraction and a personalized weighting allocation network that generates optimal weighting for different views. It is also equipped with a self-supervised view-aware contrastive loss to further improve the model robustness towards different patient groups. Experimental results show that the proposed framework can better utilize multi-view information and outperform the competing methods.
翻译:在过去几十年里,甲状腺癌的发病率一直在全球范围内上升。准确和早期诊断有助于及时治疗,并有助于避免过度诊断。临床上,结核通常使用甲状腺超声波从横向和纵向角度对结核进行评估,但甲状腺的外观和损伤在个人之间差别很大。从两种观点中识别关键诊断信息需要专门知识。此外,找到一种最佳的多视信息整合方法也取决于临床医生的经验,并给准确诊断带来更多困难。为了解决这些问题,我们提议了一种个性化诊断工具,可以使不同病人的决策进程定制化。它由地貌提取多视分类模块和一个个性化加权分配网络组成,为不同观点带来最佳的加权。它也配备了一种自我监督的视觉对比损失,以进一步提高不同患者群体对模型的稳健性。实验结果表明,拟议的框架可以更好地利用多视信息,超越相互竞争的方法。