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Analysis of urinary non-formed components at home based on machine learning algorithms

Yifei Bai, Rongguo Yan, Yuqing Yang, Chengang Mao


School of Health Science and Engineering, University of Shanghai for Science and Technology, Shanghai 200093, China.


Address correspondence to: Rongguo Yan, School of Health Sciences and Engineering, University of Shanghai for Science and Technology, No.516 Jungong Road, Shanghai 200093, China. E-mail: yanrongguo@usst.edu.cn.


DOI: https://doi.org/10.61189/846307fkxccq


Received April 12, 2024; Accepted July 11, 2024; Published September 30, 2024


Highlights

●The study evaluated five machine learning algorithms in analyzing urinary non-formed components. Among them, the Random Forests model demonstrated the highest accuracy, precision, recall, and F1 score, suggesting its effectiveness in analyzing urinary non-formed components.

●A technological innovation is introduced for home urinalysis, offering the potential to enhance medical efficiency and patient experience.


Abstract

Objective: Machine learning can automatically extract valuable insights from vast datasets, predict and classify diseases, and evaluate drug efficacy. To assess the effectiveness of machine learning algorithms in analyzing non-formed components in urine, real medical data were processed and annotated. Methods: Five models, including K-Nearest Neighbors, Decision Trees, Random Forests, Support Vector Machines, and Gaussian distributions,were constructed to quantitatively analyze 12 non-formed urine components, such as vitamin C, white blood cells, and urinary bilirubin. The efficacy of these models was then compared. Results: It was found that the RandomForest model outperformed others, achieving the lowest mean squared error, high recall rate, accuracy, and areaunder the curve. Conclusions: These findings indicate that machine learning offers significant potential for studying non-formed urine components, potentially enhancing the precision and effectiveness of disease detection andproviding valuable support for clinical decision-making.

Keywords: Home urine component analysis, machine learning models, quantitative results

Bai YF, Yan RG, Yang YQ, et al. Analysis of urinary non-formed components at home based on machine learning algorithms. Prog in Med Devices. 2024 Sept;2(3):116-123. doi: 10.61189/846307fkxccq.
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