论文标题
基于内容的医疗图像检索与对手班级自适应余量损失
Content-Based Medical Image Retrieval with Opponent Class Adaptive Margin Loss
论文作者
论文摘要
广泛使用具有数字存储的医学成像设备为策划大量数据存储库的道路铺平了道路。快速访问与可疑病例相似的图像样品可以帮助建立医疗保健专业人员的咨询系统,并改善诊断程序,同时最大程度地减少处理延迟。但是,大型数据存储库的手动查询是劳动密集型的。基于内容的图像检索(CBIR)提供了一种基于密集的嵌入向量的自动解决方案,该媒介表示图像特征以允许定量相似性评估。三胞胎学习已成为一种在CBIR中恢复嵌入的强大方法,尽管传统损失功能忽略了对手图像类之间的动态关系。在这里,我们介绍了一种基于新颖的对手自适应余量(OCAM)损失的三胞胎学习方法,用于自动查询医疗图像存储库。 OCAM使用可变的保证金值,该值在培训过程中不断更新,以维持最佳的判别表示。将OCAM的CBIR性能与三个公共数据库的代表性学习(胃肠道疾病,皮肤病变,肺部病)的最新损失函数进行了比较。每个应用领域的全面实验表明,OCAM在基线上的表现出色。
Broadspread use of medical imaging devices with digital storage has paved the way for curation of substantial data repositories. Fast access to image samples with similar appearance to suspected cases can help establish a consulting system for healthcare professionals, and improve diagnostic procedures while minimizing processing delays. However, manual querying of large data repositories is labor intensive. Content-based image retrieval (CBIR) offers an automated solution based on dense embedding vectors that represent image features to allow quantitative similarity assessments. Triplet learning has emerged as a powerful approach to recover embeddings in CBIR, albeit traditional loss functions ignore the dynamic relationship between opponent image classes. Here, we introduce a triplet-learning method for automated querying of medical image repositories based on a novel Opponent Class Adaptive Margin (OCAM) loss. OCAM uses a variable margin value that is updated continually during the course of training to maintain optimally discriminative representations. CBIR performance of OCAM is compared against state-of-the-art loss functions for representational learning on three public databases (gastrointestinal disease, skin lesion, lung disease). Comprehensive experiments in each application domain demonstrate the superior performance of OCAM against baselines.