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A robust and automatic method for human parasite egg recognition in microscopic images

机译:一种用于显微图像中人寄生虫卵识别的强大且自动的方法

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摘要

With the accelerated movement of population, human parasitoses become an increasingly serious public health's problem. Currently, detections of parasite eggs through microscopic images are still the golden standard for diagnoses. However, this conventional method relies heavily on the experiences of inspectors, thus giving rise to misdiagnoses and missed diagnoses occasionally. And, as the number of clinical specimens increases rapidly, manual identification seems impractical. Hence, a fully automatic method is in desperate need. In this paper, we propose a robust method to segment and recognize the parasite eggs. Their contours are extracted using phase coherence technology, and the support vector machine (SVM) method based on shape and texture features is employed to classification of parasite eggs. Our novel method was comparable to the traditional method. The overall recognition rate was up to 95 %, and the overall robustness indexes, including si, fnvf, fvpf, tpvf, were 95.7, 4.9, 3.7, 95.1, respectively, suggesting that our method is effective and the robustness is good, which has great potential to become a diagnostic method in the parasitological clinic.
机译:随着人口流动的加快,人类寄生虫病成为日益严重的公共卫生问题。当前,通过显微图像检测寄生虫卵仍然是诊断的黄金标准。但是,这种常规方法在很大程度上依赖于检查员的经验,因此有时会引起误诊和漏诊。并且,随着临床标本数量的迅速增加,手动识别似乎不切实际。因此,迫切需要一种全自动方法。在本文中,我们提出了一种可靠的分割和识别寄生虫卵的方法。利用相位相干技术提取它们的轮廓,并基于形状和纹理特征的支持向量机(SVM)方法对寄生虫卵进行分类。我们的新方法可与传统方法媲美。总体识别率高达95%,包括si,fnvf,fvpf,tpvf在内的总体鲁棒性指标分别为95.7、4.9、3.7、95.1,表明我们的方法有效且鲁棒性好,具有成为寄生虫病临床诊断方法的巨大潜力。

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