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首页> 外文期刊>Clinical chemistry and laboratory medicine: CCLM >UrineCART, a machine learning method for establishment of review rules based on UF-1000i flow cytometry and dipstick or reflectance photometer
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UrineCART, a machine learning method for establishment of review rules based on UF-1000i flow cytometry and dipstick or reflectance photometer

机译:UrineCART,一种基于UF-1000i流式细胞仪和量油尺或反射光度计的用于建立审阅规则的机器学习方法

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摘要

Background: Automated systems have been broadly used in the counting of particles in urine, while manual microscopic analyses are still required for confirming components of urine sediments, especially pathologic casts and other unknown particles. Good review rules can reduce the number of manual urine microscopy examinations safely, thereby increasing productivity. Although several methods have been proposed, establishment of microscopic review rules for flow cytometer remains challenging. Methods: A total of 3014 urine samples from outpatient and inpatient were examined using UF-1000i flow cytometry, Urisys-2400 dipstick and RS 2003 urine sediment workstation, respectively. Based on the results above, three supervised machine learning methods were employed to construct classifiers for screening urine samples. Results: Here, we propose a novel method for construction of microscopic review rules, termed UrineCART, which was based on a classification and regression tree (CART) method. With a cut-off value of 0.0745 for UrineCART, we obtained a sensitivity of 92.0%, a specificity of 81.5% and a total review rate of 32.4% on an independent test set. Comparisons with the existing methods showed that UrineCART gave the acceptable sensitivity and lower total review rate. Conclusions: An algorithm based on machine learning methods for review criteria can be achieved via systematic comparison of UF-1000i flow cytometry and microscopy. Using UrineCART, our microscopic review rate can be reduced to around 30%, while decreasing significant losses in urinalysis.
机译:背景:自动化系统已广泛用于尿液中颗粒的计数,而仍然需要手动显微镜分析来确认尿液沉积物的成分,尤其是病理性铸型和其他未知颗粒。良好的检查规则可以安全地减少手动尿液镜检的次数,从而提高生产率。尽管已经提出了几种方法,但是为流式细胞仪建立微观检查规则仍然具有挑战性。方法:分别用UF-1000i流式细胞仪,Urisys-2400试纸和RS 2003尿沉渣工作站对门诊和住院患者的3014份尿液样本进行了检查。基于以上结果,采用了三种有监督的机器学习方法来构建用于筛选尿液样本的分类器。结果:在这里,我们提出了一种基于分类和回归树(CART)方法的新颖的微观检查规则构建方法,称为UrineCART。 UrineCART的截断值为0.0745,在独立的测试集上,我们获得了92.0%的灵敏度,81.5%的特异性和32.4%的总评价率。与现有方法的比较表明,UrineCART提供了可接受的灵敏度,并降低了总审查率。结论:通过系统比较UF-1000i流式细胞仪和显微镜检查,可以实现基于机器学习方法的审查标准算法。使用UrineCART,我们的显微镜检查率可以降低到30%左右,同时减少尿液分析的重大损失。

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