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首页> 外文期刊>Plant Pathology >Estimation of the accuracy of two diagnostic methods for the detection of Plum pox virus in nursery blocks by latent class models
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Estimation of the accuracy of two diagnostic methods for the detection of Plum pox virus in nursery blocks by latent class models

机译:用潜在类模型估算两种用于检测苗圃中李子痘病毒的诊断方法的准确性

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摘要

The control of Plum pox virus (PPV), the most important viral disease that affects stone fruit trees, requires the use of reliable detection methods. The effectiveness of spot real-time reverse transcriptase polymerase chain reaction (RT-PCR) for the detection of PPV in samples collected from nursery blocks was compared with a validated PPV detection technique, the double antibody sandwich indirect enzyme-linked immunosorbent assay (DASI-ELISA) using the PPV-specific monoclonal antibody 5B-IVIA/AMR. In total, 5047 nursery plants were analysed by both techniques. The agreement between the techniques was almost perfect (Cohen's kappa index of 0·88 ± 0·01). The diagnostic parameters (sensitivity, specificity and likelihood ratios) of both techniques were simultaneously evaluated in 2473 nursery plants by latent class models using maximum likelihood functions and a Bayesian approach. The sensitivity and specificity of both techniques did not vary according to the latent model applied. Spot real-time RT-PGR was more sensitive while DASI-ELISA was more specific for PPV detection. In addition, the findings demonstrate that latent class models are a flexible and potent statistical method to estimate the accuracy of diagnostic tests for plant pathology.
机译:控制李子痘病毒(PPV)是影响核果树的最重要的病毒性疾病,需要使用可靠的检测方法。将现场实时逆转录酶聚合酶链反应(RT-PCR)检测从苗圃块中收集的样品中的PPV的有效性与经过验证的PPV检测技术,双抗体夹心间接酶联免疫吸附测定(DASI- ELISA),使用PPV特异性单克隆抗体5B-IVIA / AMR。两种技术共分析了5047个苗圃植物。两种技术之间的一致性几乎是完美的(科恩的kappa指数为0·88±0·01)。使用最大似然函数和贝叶斯方法,通过隐性类模型在2473个苗圃中同时评估了这两种技术的诊断参数(敏感性,特异性和似然比)。两种技术的敏感性和特异性均不会因所应用的潜在模型而异。实时RT-PGR实时检测更灵敏,而DASI-ELISA对PPV检测更具有特异性。此外,研究结果表明,潜在类别模型是一种灵活而有效的统计方法,可用于估计植物病理学诊断测试的准确性。

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