IIF图像模式识别的无监督聚类方法

L. Vivona, Donato Cascio, S. Bruno, A. Fauci, V. Taormina, A. Elgaaied, Y. Gorgi, R. Triki, M. B. Ahmed, S. Yalaoui, Maria Catanzaro, I. Brusca, G. Amato, G. Friscia, F. Fauci, G. Raso
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引用次数: 4

摘要

自身免疫性疾病是一个有80多种慢性疾病的家族,通常是致残的,当免疫系统的潜在缺陷导致身体攻击自身的器官、组织和细胞时,就会发展成这种疾病。自身免疫病变的诊断是基于间接免疫荧光(IIF)方法对抗核抗体(ANA)的研究和鉴定,并通过分析模式和荧光强度来完成。本文提出了一种基于细胞上着丝粒分组的聚类k均值算法来自动分类着丝粒模式的方法。在公共数据库(MIVIA)上对所描述的方法进行了测试。测试结果显示准确度为(92.0±1.0)%。将我们的结果与在MIVIA数据库上获得的结果进行比较,可以注意到我们的方法具有与所获得的三个最佳值相当的性能。实际上,本文提出的方法允许对图像中的细胞进行自动分割和计数,而比赛的参与者则接受由专家已经分割的细胞的原始图像组成的训练集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised clustering method for pattern recognition in IIF images
Autoimmune diseases are a family of more than 80 chronic, and often disabling, illnesses that develop when underlying defects in the immune system lead the body to attack its own organs, tissues, and cells. Diagnosis of autoimmune pathologies is based on research and identification of antinuclear antibodies (ANA) through indirect immunofluorescence (IIF) method and is performed by analyzing patterns and fluorescence intensity. We propose here a method to automatically classify the centromere pattern based on the grouping of centromeres on the cells through a clustering K-means algorithm. The described method was tested on a public database (MIVIA). The results of the test showed an Accuracy equal to (92.0 ± 1.0)%. Comparing our results with the results obtained on the MIVIA database it is possible to note that our method has a performance comparable with the three best values obtained. Indeed, the method here proposed allows an automatic segmentation and counting of the cells in the images, while the participants to the contest received the training set with the original images of the cells already segmented by specialists.
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