牙科研究的对比语言图像检索搜索

Tanjida Kabir, Luyao Chen, M. Walji, L. Giancardo, Xiaoqian Jiang, Shayan Shams
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引用次数: 0

摘要

从牙科x光片中了解诊断特征和相关临床信息对牙科研究很重要。然而,缺乏专家注释的数据和方便的搜索工具带来了挑战。我们的主要目标是设计一个搜索工具,使用用户的查询进行口头相关的研究。提出的框架,对比语言图像检索搜索牙科研究,牙科克莱尔,利用根尖周围x光片和相关的临床细节,如牙周诊断,人口统计信息检索最匹配的图像基于文本查询。我们采用对比表示学习方法,通过最大化正对(真对)的相似分数和最小化负对(随机对)的相似分数来寻找用户文本描述的图像。我们的模型获得了96%的hit@3比率和0.82的平均倒数秩(MRR)。我们还设计了一个图形用户界面,允许研究人员通过交互来验证模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dental CLAIRES: Contrastive LAnguage Image REtrieval Search for Dental Research
Learning about diagnostic features and related clinical information from dental radiographs is important for dental research. However, the lack of expert-annotated data and convenient search tools poses challenges. Our primary objective is to design a search tool that uses a user's query for oral-related research. The proposed framework, Contrastive LAnguage Image REtrieval Search for dental research, Dental CLAIRES, utilizes periapical radiographs and associated clinical details such as periodontal diagnosis, demographic information to retrieve the best-matched images based on the text query. We applied a contrastive representation learning method to find images described by the user's text by maximizing the similarity score of positive pairs (true pairs) and minimizing the score of negative pairs (random pairs). Our model achieved a hit@3 ratio of 96% and a Mean Reciprocal Rank (MRR) of 0.82. We also designed a graphical user interface that allows researchers to verify the model's performance with interactions.
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