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Image classification for different imaging modalities in image-guided medical diagnosis model

机译:图像引导医学诊断模型中不同成像方式的图像分类

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Classifying images into meaningful categories according to their imaging modalities is beginning to play an increasing important role in producing an effective medical database management system. Since medical images often represent some form of diagnosis capabilities or patient's condition, the ability to follow-up and classify these images to support doctor's diagnosis for future queries, may serve as a secondary diagnosis tool of the future. While color-based, feature-based, shape-based and content-based classification has each present its importance in classifying medical images; a universal classification technique has yet emerged for classifying different modalities together. Thus, this paper is dedicated to introduce a universal classification method which could support classifying different imaging modalities, while exploiting the current available technique concentrating on each of the important visual attributes of these methods in connection with their imaging modalities.
机译:根据图像的成像方式将图像分类为有意义的类别,在产生有效的医学数据库管理系统中开始发挥越来越重要的作用。由于医学图像通常代表某种形式的诊断能力或患者状况,因此跟踪和分类这些图像以支持医生对未来查询的诊断的能力可能会成为将来的辅助诊断工具。基于颜色的分类,基于特征的分类,基于形状的分类和基于内容的分类在呈现医学图像的分类中均显示出其重要性。通用分类技术已经出现,可以将不同的模式一起分类。因此,本文致力于介绍一种通用分类方法,该方法可以支持对不同的成像方式进行分类,同时利用当前可用的技术,将这些方法的各个重要视觉属性与其成像方式相关联。

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