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首页> 外文期刊>Translational Engineering in Health and Medicine, IEEE Journal of >Multiple Linear Discriminant Models for Extracting Salient Characteristic Patterns in Capsule Endoscopy Images for Multi-Disease Detection
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Multiple Linear Discriminant Models for Extracting Salient Characteristic Patterns in Capsule Endoscopy Images for Multi-Disease Detection

机译:多疾病检测中提取胶囊内窥镜图像突出特性模式的多线性判别模型

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摘要

Background: Computer-aided disease detection schemes from wireless capsule endoscopy (WCE) videos have received great attention by the researchers for reducing physicians' burden due to the time-consuming and risky manual review process. While single disease classification schemes are greatly dealt by the researchers in the past, developing a unified scheme which is capable of detecting multiple gastrointestinal (GI) diseases is very challenging due to the highly irregular behavior of diseased images in terms of color patterns. Method: In this paper, a computer-aided method is developed to detect multiple GI diseases from WCE videos utilizing linear discriminant analysis (LDA) based region of interest (ROI) separation scheme followed by a probabilistic model fitting approach. Commonly in training phase, as pixel-labeled images are available in small number, only the image-level annotations are used for detecting diseases in WCE images, whereas pixel-level knowledge, although a major source for learning the disease characteristics, is left unused. In view of learning the characteristic disease patterns from pixel-labeled images, a set of LDA models are trained which are later used to extract the salient ROI from WCE images both in training and testing stages. The intensity patterns of ROI are then modeled by a suitable probability distribution and the fitted parameters of the distribution are utilized as features in a supervised cascaded classification scheme. Results: For the purpose of validation of the proposed multi-disease detection scheme, a set of pixel-labeled images of bleeding, ulcer and tumor are used to extract the LDA models and then, a large WCE dataset is used for training and testing. A high level of accuracy is achieved even with a small number of pixel-labeled images. Conclusion: Therefore, the proposed scheme is expected to help physicians in reviewing a large number of WCE images to diagnose different GI diseases.
机译:背景:来自无线胶囊内窥镜检查的计算机辅助疾病检测计划(WCE)视频由研究人员获得了极大的关注,以降低由于耗时和危险的手工评审过程而降低了医生的负担。虽然过去的研究人员,在过去的单一疾病分类方案大大处理,但由于在颜色图案方面的患病图像的高度不规则性行为,开发能够检测多种胃肠道(GI)疾病的统一计划是非常挑战性的。方法:在本文中,开发了一种计算机辅助方法以利用基于线性判别分析(LDA)的感兴趣区域(ROI)分离方案的WCE视频检测来自WCE视频的多种GI疾病。概率模型配合方法。通常在训练阶段,因为像素标记的图像少量可用,只有图像级注释用于检测WCE图像中的疾病,而像素级知识,尽管学习疾病特征的主要来源是未使用的。鉴于从像素标记图像的特征疾病模式学习,培训了一组LDA模型,后来用于从WCE图像中提取训练和测试阶段的突出投资回报率。然后通过合适的概率分布建模ROI的强度模式,并且分布的拟合参数用作监督级联分类方案中的特征。结果:出于验证所提出的多疾病检测方案,使用一组出血,溃疡和肿瘤的像素标记的图像来提取LDA模型,然后,大型WCE数据集用于训练和测试。即使具有少量像素标记的图像,也可以实现高水平的精度。结论:因此,预计拟议计划有助于医生审查大量WCE图像以诊断不同的GI疾病。

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