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Identification of Biomarkers with Different Classifiers in Urine Test*

机译:尿检中具有不同分类剂的生物标志物*

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Biomarkers in urine samples are widely used in clinical diagnosis. Involving image processing and data analysis, urinalysis is very popular in hospitals because of its convenience and speediness; and the most important reason is its high accuracy rating. This paper presents colorimetric recognition for urine test device with different algorithms aiming to find a good-performance classifier. Those algorithms can train a set of data and get a model to discriminate the test data. Almost the accuracy of each classifier is beyond 92%, even 99%. Although the classifier that has highest average accurate rate of recognition is K-Nearest Neighbor, we cannot overlook the performance of Support Vector Machine, which perform best in protein test. In order to compare these eight algorithms, we use Python simulation to validate the results and show the accuracy of each classifier.
机译:尿液样本中的生物标志物广泛用于临床诊断。涉及图像处理和数据分析,由于其便利性和速度,尿液在医院非常受欢迎;最重要的原因是其高精度等级。本文介绍了具有不同算法的尿液测试装置的比色识别,旨在找到良好的性能分类器。这些算法可以训练一组数据并获得模型以区分测试数据。几乎每个分类器的准确性超过92%,甚至为99%。虽然具有最高平均识别率的分类器是k最接近邻居,但我们不能忽视支持向量机的性能,这在蛋白质测试中表现最佳。为了比较这八种算法,我们使用Python仿真来验证结果并显示每个分类器的准确性。

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