Liu Yin, Zheng Xiaohe, Wang Dong, Fang Fei, Chen Yao, Hong Mengzhi, Wu Jiali, Zhang Chi, Qiao Yangyang, Izevbaye Iyare, Zhang Shihong
Department of Laboratory Medicine, The First Affiliated Hospital, Sun Yat-sen University, Guangzhou, China.
Department of Pathology and Laboratory Medicine, Emory University School of Medicine, Grady Health System, Atlanta, GA, USA.
Transl Androl Urol. 2024 Jun 30;13(6):1024-1036. doi: 10.21037/tau-24-189. Epub 2024 Jun 27.
Urine testing as a routine screening programme, abnormal test results can be suggestive to clinicians but can sometimes be overlooked, and the establishment of a diagnostic model can better assist clinicians in identifying potential problems. BLD (blood), LEU (leukocyte), PRO (protein) and GLU (glucose) are the four most important parameters in urine testing, and the accuracy of their results is a key concern for clinicians, so it is essential to verify the accuracy of their results. In this study, we evaluated the analytical and clinical performance of Mindray's automatic urine dry chemistry analyzer, the UA-5600 (Hereinafter referred to as the (UA-5600), and the test strips configured with the instrument, and developed a machine-learning (ML) model for kidney disease screening from the results of 11 parameters output from the UA-5600 with the aim of detecting abnormal urine test results.
Urine samples from outpatients and inpatients at The First Affiliated Hospital of Sun Yat-sen University were collected from August to September 2022 to evaluate the performance of the Mindray UA-5600 dry chemistry analyzer and test strips. The evaluation of the UA-5600 and its test strips focused on the agreement of the urine BLD and LEU readings with the RBC (red blood cell) and WBC (white blood cell) counts obtained by the Mindray EH-2090 urine formed element analyzer. We also compared the PRO and GLU readings with the results of the Mindray BS-2800M biochemistry analyzer. Urine samples from outpatients and inpatients were retrospectively analysed and grouped according to LIS diagnosis. Additionally, eight ML models for kidney disease screening were developed using 11 parameters measured by the UA-5600. And the model was validated by the validation set.
The UA-5600 had an 89.55% concordance rate for BLD and a 91.04% concordance rate for LEU compared to the EH-2090 analyzer. When benchmarked against the BS-2800M, the concordance rates for PRO and GLU were 94.14% and 95.20%, respectively. A total of 1,691 samples were used for the construction of the ML models, of which 346 patients (135 males and 211 females, age range: 18 to 98 years) diagnosed with renal disease, and 1,345 patients (397 males and 948 females, age range: 18 to 92 years) with non-renal disease diagnosed with other conditions. Notably, the Naïve Bayes (NB) model, which was built from the UA-5600 parameters, demonstrated superior predictive capabilities for renal disease, with an area under the receiver operating characteristic curve of 0.9470, a sensitivity of 0.7767, and a specificity of 0.9457.
The Mindray UA-5600 demonstrates robust detection abilities for both BLD and LEU, and its results for PRO and GLU align closely with those obtained from the chemistry analyzer. The NB model has a good screening ability and shows promise as an effective screening tool.
尿液检测作为一项常规筛查项目,异常检测结果虽能为临床医生提供提示,但有时可能被忽视,建立诊断模型有助于临床医生更好地识别潜在问题。尿潜血(BLD)、白细胞(LEU)、蛋白质(PRO)和葡萄糖(GLU)是尿液检测中四个最重要的参数,其结果准确性是临床医生关注的重点,因此验证这些参数结果的准确性至关重要。在本研究中,我们评估了迈瑞全自动尿液干化学分析仪UA - 5600(以下简称UA - 5600)及其配套试纸条的分析性能和临床性能,并基于UA - 5600输出的11项参数结果开发了用于肾脏疾病筛查的机器学习(ML)模型,旨在检测异常尿液检测结果。
收集中山大学附属第一医院2022年8月至9月门诊及住院患者的尿液样本,以评估迈瑞UA - 5600干化学分析仪及其试纸条的性能。对UA - 5600及其试纸条的评估重点在于尿液BLD和LEU读数与迈瑞EH - 2090尿液有形成分分析仪测得的红细胞(RBC)和白细胞(WBC)计数的一致性。我们还将PRO和GLU读数与迈瑞BS - 2800M生化分析仪的结果进行了比较。对门诊及住院患者的尿液样本进行回顾性分析,并根据实验室信息系统(LIS)诊断进行分组。此外,利用UA - 5600测量的11项参数开发了8个用于肾脏疾病筛查的ML模型,并通过验证集对模型进行验证。
与EH - 2090分析仪相比,UA - 5600的BLD一致性率为89.55%,LEU一致性率为91.04%。与BS - 2800M相比,PRO和GLU的一致性率分别为94.14%和95.20%。共1691份样本用于构建ML模型,其中346例患者(男性135例,女性211例,年龄范围:18至98岁)被诊断为肾脏疾病,1345例患者(男性397例,女性948例,年龄范围:18至92岁)被诊断为非肾脏疾病。值得注意的是,基于UA - 5600参数构建的朴素贝叶斯(NB)模型对肾脏疾病具有卓越的预测能力,其受试者工作特征曲线下面积为0.9470,灵敏度为0.7767,特异性为0.9457。
迈瑞UA - 5600对BLD和LEU均具有强大的检测能力,其PRO和GLU结果与生化分析仪的结果高度吻合。NB模型具有良好的筛查能力,有望成为一种有效的筛查工具。