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Incorporating human knowledge in automated celiac disease diagnosis

机译:将人类知识纳入自动乳糜泻诊断中

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Recently, computer-aided celiac disease diagnosis has been promoted to provide an objective opinion besides histological examination of biopsies and visual assessment of macroscopic mucosal tissue. State-of-the-art techniques, however, are not accurate enough to provide incentive for clinical deployment. In this work, we answer two questions: Do computers and human experts make similar classification errors and can expert knowledge be utilized to increase the accuracy of computer-aided methods. Three experts were asked to perform visual classification of a large number of images. The experts decisions were combined with nine different state-of-the-art image representations. Experimentation showed that the correlations between two computer-based methods were higher than the correlations between an expert and a computer-based method. Furthermore, the inclusion of expert knowledge led to statistically significant (p <; 0.05) improvements in 69 out of 108 investigated settings.
机译:近来,计算机辅助性腹腔疾病的诊断已得到发展,以提供除活检组织学检查和肉眼可见的粘膜组织的视觉评估以外的客观意见。但是,最先进的技术不够准确,无法为临床部署提供动力。在这项工作中,我们回答两个问题:计算机和人类专家是否会犯类似的分类错误,并且可以利用专家知识来提高计算机辅助方法的准确性。要求三名专家对大量图像进行视觉分类。专家的决定与九种不同的最新图像表示相结合。实验表明,两种基于计算机的方法之间的相关性高于专家和基于计算机的方法之间的相关性。此外,专家知识的纳入导致在108个被调查的环境中有69个在统计学上有显着性改善(p <; 0.05)。

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