University of Applied Sciences Western Switzerland (HES-SO), Sierre, Switzerland.
Comput Med Imaging Graph. 2015 Jan;39:46-54. doi: 10.1016/j.compmedimag.2014.04.004. Epub 2014 Apr 24.
Retrieval systems can supply similar cases with a proven diagnosis to a new example case under observation to help clinicians during their work. The ImageCLEFmed evaluation campaign proposes a framework where research groups can compare case-based retrieval approaches. This paper focuses on the case-based task and adds results of the compound figure separation and modality classification tasks. Several fusion approaches are compared to identify the approaches best adapted to the heterogeneous data of the task. Fusion of visual and textual features is analyzed, demonstrating that the selection of the fusion strategy can improve the best performance on the case-based retrieval task.
检索系统可以为观察中的新示例病例提供具有明确诊断的类似病例,以帮助临床医生在工作中。ImageCLEFmed 评估活动提出了一个框架,研究小组可以在该框架中比较基于病例的检索方法。本文侧重于基于病例的任务,并添加了复合图像分离和模态分类任务的结果。比较了几种融合方法,以确定最适合任务异构数据的方法。分析了视觉和文本特征的融合,结果表明,融合策略的选择可以提高基于病例检索任务的最佳性能。