Clinically, the accurate annotation of lesions/tissues can significantly facilitate the disease diagnosis. For example, the segmentation of optic disc/cup (OD/OC) on fundus image would facilitate the glaucoma diagnosis, the segmentation of skin lesions on dermoscopic images is helpful to the melanoma diagnosis, etc. With the advancement of deep learning techniques, a wide range of methods proved the lesions/tissues segmentation can also facilitate the automated disease diagnosis models. However, existing methods are limited in the sense that they can only capture static regional correlations in the images. Inspired by the global and dynamic nature of Vision Transformer, in this paper, we propose Segmentation-Assisted diagnosis Transformer (SeATrans) to transfer the segmentation knowledge to the disease diagnosis network. Specifically, we first propose an asymmetric multi-scale interaction strategy to correlate each single low-level diagnosis feature with multi-scale segmentation features. Then, an effective strategy called SeA-block is adopted to vitalize diagnosis feature via correlated segmentation features. To model the segmentation-diagnosis interaction, SeA-block first embeds the diagnosis feature based on the segmentation information via the encoder, and then transfers the embedding back to the diagnosis feature space by a decoder. Experimental results demonstrate that SeATrans surpasses a wide range of state-of-the-art (SOTA) segmentation-assisted diagnosis methods on several disease diagnosis tasks.
翻译:在临床中,对损伤/问题进行准确的注解可以极大地促进疾病诊断,例如,对Fundus图像的光碟/光碟/光碟(OD/OC)进行分解将有助于光谱诊断,对脱温图像的皮肤损伤进行分解有助于对乳腺瘤进行诊断等。随着深层学习技术的进步,大量方法证明,损伤/问题分解也有助于自动疾病诊断模型。但是,现有方法有限,因为它们只能捕捉图像中的静态区域相关关系。受Vision变异器全球和动态特性的启发,我们在本文件中提议分解分析诊断变异器(SeATranser)将分解知识转移到疾病诊断网络。具体地说,我们首先提出一个不对称的多尺度互动战略,将每个低层次诊断特征与多尺度分解特征联系起来。然后,采用一个称为SeA-SeA-refreirefreial的策略,通过相关分解特征将诊断特征转化为诊断特征。通过诊断的分解分解-诊断、SeA-degrationalalalalalalal-traction转换一个基于空间分解的分解、Seal-deal-dealexal-deal-dealal-extraction-extratratradudeal-exalal-exal-exaltratraal-extraction-exal-ex-ex-ex-ex-exalation-extraction-extraction-ex-ex-extraction-exxxxxxxxxxxxxxxxxxxisxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx