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首页> 外文期刊>Arthritis research & therapy. >The classification of Crithidia luciliae immunofluorescence test (CLIFT) using a novel automated system
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The classification of Crithidia luciliae immunofluorescence test (CLIFT) using a novel automated system

机译:使用新型自动化系统对Critithia luciliae免疫荧光测试(CLIFT)进行分类

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Introduction: In recent years, there has been an increased demand for computer-aided diagnosis (CAD) tools to support clinicians in the field of indirect immunofluorescence. To this aim, academic and industrial research is focusing on detecting antinuclear, anti-neutrophil, and anti-double-stranded (anti-dsDNA) antibodies. Within this framework, we present a CAD system for automatic analysis of dsDNA antibody images using a multi-step classification approach. The final classification of a well is based on the classification of all its images, and each image is classified on the basis of the labeling of its cells.Methods: We populated a database of 342 images-74 positive (21.6%) and 268 negative (78.4%)- belonging to 63 consecutive sera: 15 positive (23.8%) and 48 negative (76.2%). We assessed system performance by using k-fold cross-validation. Furthermore, we successfully validated the recognition system on 83 consecutive sera, collected by using different equipment in a referral center, counting 279 images: 92 positive (33.0%) and 187 negative (67.0%).Results: With respect to well classification, the system correctly classified 98.4% of wells (62 out of 63). Integrating information from multiple images of the same wells recovers the possible misclassifications that occurred at the previous steps (cell and image classification). This system, validated in a clinical routine fashion, provides recognition accuracy equal to 100%.Conclusion: The data obtained show that automation is a viable alternative for Crithidia luciliae immunofluorescence test analysis.
机译:简介:近年来,对支持间接免疫荧光领域的临床医生的计算机辅助诊断(CAD)工具的需求不断增长。为了这个目的,学术和工业研究集中于检测抗核,抗中性粒细胞和抗双链(抗dsDNA)抗体。在此框架内,我们提出了使用多步骤分类方法自动分析dsDNA抗体图像的CAD系统。孔的最终分类基于其所有图像的分类,并且每个图像都根据其细胞的标签进行分类。方法:我们填充了一个包含342张图像的数据库,其中74张阳性(21.6%)和268张阴性(78.4%)-连续63份血清:15份阳性(23.8%)和48份阴性(76.2%)。我们通过使用k倍交叉验证来评估系统性能。此外,我们成功地验证了在转诊中心使用不同设备采集的连续83份血清的识别系统,计数了279幅图像:92幅阳性(33.0%)和187幅阴性(67.0%)。系统正确分类了98.4%的井(63个井中的62个)。整合来自同一孔的多个图像的信息可恢复在先前步骤(细胞和图像分类)中可能发生的错误分类。该系统以临床常规方式验证,可提供100%的识别准确度。结论:获得的数据表明,自动化操作可用于进行闪闪夜蛾免疫荧光测试分析。

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