Yang Renbing, Cheng Wenbo, Chen Xifeng, Qian Qin, Zhang Qiang, Pan Yujun, Duan Peng, Miao Peng
CAS Key Lab of Bio-Medical Diagnostics, Suzhou Institute of Biomedical Engineering and Technology, Chinese Academy of Sciences, Suzhou 215163, P. R. China.
State Key Lab of Optical Technologies on Nano-Fabrication and Micro-Engineering, Institute of Optics and Electronics, Chinese Academy of Sciences, Chengdu 610209, P. R. China.
ACS Omega. 2018 Sep 30;3(9):12141-12146. doi: 10.1021/acsomega.8b01270. Epub 2018 Sep 27.
Urine strips are widely applied for rapid analysis of various indexes of urine for clinical examinations. The tests mainly rely on the application of a urine analyzer, which suffers several drawbacks and cannot meet the requirements of point-of-care testing (POCT). The integration of a smartphone with a biosensor has recently attracted great attention. We herein propose a human vision-based smartphone algorithm for colorimetric analysis of various urine indexes. A CIEDE2000 formula in CIELab color space is applied for the evaluation of color difference, which may greatly improve the analytical performances of urine strips. The proposed algorithm also possesses merits such as good accuracy, quantitative analysis, and limited calculation task, which is suitable for the application with smartphone platform. Experimental results demonstrate that the proposed method shows excellent reliability compared with the urine analyzer and some other algorithms. In addition, human real samples are successfully analyzed with excellent accuracy. Therefore, this work provides a convenient colorimetric tool for POCT urine analysis.
尿试纸条广泛应用于临床检查中尿液各项指标的快速分析。这些检测主要依赖于尿液分析仪,但该仪器存在若干缺点,无法满足即时检验(POCT)的要求。智能手机与生物传感器的集成最近引起了极大关注。我们在此提出一种基于人类视觉的智能手机算法,用于对各种尿液指标进行比色分析。在CIELab颜色空间中应用CIEDE2000公式来评估色差,这可能会大大提高尿试纸条的分析性能。所提出的算法还具有准确性高、定量分析和计算任务有限等优点,适用于智能手机平台的应用。实验结果表明,与尿液分析仪和其他一些算法相比,所提出的方法具有出色的可靠性。此外,成功地以极高的准确性对人体实际样本进行了分析。因此,这项工作为POCT尿液分析提供了一种便捷的比色工具。