Ontology-Guided Approach to Retrieving Disease Manifestation Images for Health Image Base Construction

Yang Chen, Xiaofeng Ren, Guo-Qiang Zhang, Rong Xu
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引用次数: 1

Abstract

Building a comprehensive medical image database, in the spirit of the UMLS, can be beneficial for assisting diagnosis, patient education and self-care. However, a highly curated, comprehensive image database is difficult to collect as well as to annotate. We present an approach to combine visual object detection technologies with medical ontology to automatically mine web photos and retrieve a large number of disease manifestation images with minimal manual labeling. Comparing to a supervised approach, our ontology-guided approach reduces manual labeling effort to 1/10 on a variety of eye/ear/mouth diseases and improves the precision of retrieval by over 10% in many cases.
面向健康图像库构建的疾病表现图像检索方法
本着UMLS的精神,建立一个全面的医学图像数据库,有助于协助诊断、患者教育和自我保健。然而,一个高度策划的、全面的图像数据库很难收集和注释。提出了一种将视觉对象检测技术与医学本体相结合的方法,以最少的人工标注,自动挖掘网络照片,检索大量疾病表现图像。与监督方法相比,我们的本体引导方法将各种眼/耳/口疾病的人工标记工作量减少到1/10,并且在许多情况下将检索精度提高了10%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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