IF 2.6 4区 生物学 Q2 BIOCHEMICAL RESEARCH METHODS
Hong Xu, Yiran Hua, Haiqin Li, Jianhua Wang, Gaohong Liu, Xiaochun Li
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引用次数: 0

摘要

慢性肾脏病(CKD)严重威胁人类健康。尿液的长期监测对于慢性肾脏病的治疗非常重要。目前,基于智能手机的尿液指标比色分析的准确性和稳定性受到限制,原因是不同的图像拍摄条件会对采集的尿液试纸数字图像产生影响。在此,我们提出了一种无附件比色校正分析系统(简称 CCAS),该系统由一个自行设计的尿液试纸阵列和一个集成了图像校正算法的安卓应用程序组成,用于对九种尿液指标进行定量分析。该系统在很大程度上纠正了图像拍摄条件对所拍摄数字图像的影响,从而提高了尿试纸数字图像比色分析的准确性和稳定性。肌酐、亚硝酸盐、尿钙、微量白蛋白、胆红素、蛋白质、pH 值、血红蛋白和葡萄糖的检测限分别为 1.607 mmol/L、1.232 μmol/L、0.297 mmol/L、11.116 mg/L、1.155 μmol/L、0.042 g/L、0.044、0.058 mg/L 和 0.122 mmol/L。通过分析人工尿液样本和 143 份临床尿液样本,验证了 CCAS 的准确性。作为一种准确、低成本和可靠的系统,CCAS满足了患者随时随地只需使用自己的智能手机就能监测尿液的特定需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smartphone-based colorimetric correction analysis system for long-term urine monitoring of chronic kidney disease.

The chronic kidney disease (CKD) poses a serious threat to human health. Long-term monitoring of urine is important in the management of CKD. Currently, the accuracy and stability of smartphone-based colorimetric analysis of urine indicators are limited due to the impact of different image-taking conditions on captured digital images of urine test strips. Herein, an attachment-free colorimetric correction analysis system (CCAS for short), consisting of a self-designed urine test strip array and an Android application integrated with an image calibration algorithm, were proposed for quantitative analysis of nine urine indicators. With this system the impact of image-taking conditions on captured digital image were largely corrected, and thus the accuracy and stability for digital image colorimetric analysis of urine test strip were improved. The limits of detection of creatinine, nitrite, urinary calcium, microalbumin, bilirubin, protein, pH, haemoglobin, and glucose were 1.607 mmol/L, 1.232 μmol/L, 0.297 mmol/L, 11.116 mg/L, 1.155 μmol/L, 0.042 g/L, 0.044, 0.058 mg/L, and 0.122 mmol/L, respectively. The accuracy of CCAS was validated by analyzing artificial urine samples and 143 clinical urine samples. As an accurate, low-cost and reliable system, CCAS addresses specific needs for patients to monitor their urine whenever and wherever possible with only their own smartphone.

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来源期刊
Analytical biochemistry
Analytical biochemistry 生物-分析化学
CiteScore
5.70
自引率
0.00%
发文量
283
审稿时长
44 days
期刊介绍: The journal''s title Analytical Biochemistry: Methods in the Biological Sciences declares its broad scope: methods for the basic biological sciences that include biochemistry, molecular genetics, cell biology, proteomics, immunology, bioinformatics and wherever the frontiers of research take the field. The emphasis is on methods from the strictly analytical to the more preparative that would include novel approaches to protein purification as well as improvements in cell and organ culture. The actual techniques are equally inclusive ranging from aptamers to zymology. The journal has been particularly active in: -Analytical techniques for biological molecules- Aptamer selection and utilization- Biosensors- Chromatography- Cloning, sequencing and mutagenesis- Electrochemical methods- Electrophoresis- Enzyme characterization methods- Immunological approaches- Mass spectrometry of proteins and nucleic acids- Metabolomics- Nano level techniques- Optical spectroscopy in all its forms. The journal is reluctant to include most drug and strictly clinical studies as there are more suitable publication platforms for these types of papers.
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