基于血清学试验和延迟超敏试验的犬利什曼病诊断新方法

Hanene Sahli, M. Diouani, M. Sayadi
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引用次数: 2

摘要

几种以血清学试验形式出现的反应可用于检测犬的利什曼原虫感染,如酶联免疫吸附试验(ELISA)、间接免疫荧光法(IIF)和延迟超敏试验(DHST)。本文提出了一种基于行列式判据的判别检验方法。因此,减少特征的数量可以提高犬利什曼病(CanL)的诊断。此外,应用人工神经网络(多层感知神经网络)将受试者分为两组:阳性(生病)和阴性(未生病)。实验对象的生理和病理状态之间的关系是通过多次尝试来确定的。这些方法是通过考虑经验链获得的,这些经验链允许相当可靠和高度有效的结果,使我们能够开发一种有效的方法来估计这种疾病的诊断。经过多次实验,我们发现三种测试的最佳组合是DHST和IIF测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new approach based on the serological tests and the Delayed Hyper Sensitivity Tests for the diagnosis of canine leishmaniasis
Several responses in the form of serological tests ELISA (Enzyme Linked Immuno Sorbent Assay), IIF (Indirect Immuno Fluoresence) and DHST (Delayed Hyper Sensitivity Tests) can be used to detect leishmania parasite infection in dogs. In this paper, we propose a new method to select the most discriminative tests based on determinant criterion. So, the diagnosis of canine leishmaniasis (CanL) can be improved by reducing the number of features. Moreover, an artificial neural networks (the Multilayer Preceptron neural network) is applied to classify subjects into two groups: positive (sick) and negative (not sick). The correlation between the physical and the pathological state of subjects is specified with multiple attempts. These methods are obtained with considering chain of experiences that allow for fairly reliable and highly effective results which enable us to develop an efficient way to estimate the diagnosis of this disease. After many experiments, we notice that the best combination of the three studied tests is the DHST and IIF tests.
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