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首页> 外文期刊>Chemometrics and Intelligent Laboratory Systems >Determination of the effect of red blood cell parameters in the discrimination of iron deficiency anemia and beta thalassemia via Neighborhood Component Analysis Feature Selection-Based machine learning
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Determination of the effect of red blood cell parameters in the discrimination of iron deficiency anemia and beta thalassemia via Neighborhood Component Analysis Feature Selection-Based machine learning

机译:通过邻域分析分析特征选择基于机器学习,测定红细胞参数在识别缺铁性贫血和β的β中途血症的影响

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摘要

Differential diagnosis of iron deficiency anemia (IDA) and beta-thalassemia is a time-taking and costly procedure. Complete blood count (CBC) is a quick, inexpensive, and easily accessible test which is used as the primary test for the diagnosis of anemia. However, as CBC cannot successfully discriminate between IDA and beta-thalassemia, advanced techniques are needed. To date, numerous red blood cell (RBC) indices have been investigated and various parameters have been proposed for each index. In the present study, a differential diagnosis of IDA and beta-thalassemia was performed by using RBC indices and machine learning techniques including Support Vector Machine (SVM) and K-Nearest Neighbor (KNN). The RBC indices were used as input parameters for the classifier and the performances of SVM and KNN were evaluated separately, in order to determine the effectivity of both techniques. Fewer parameters were given as an inputs to machine learning algorithms, and higher performance was achieved. On the other hand, a feature selection technique, the Neighborhood Component Analysis Feature Selection (NCA) algorithm, was used for selecting features from the datasets, and the parameters selected via NCA provided high performance (97% Area Under the ROC curve [AUC]. Taken together, the results indicated that the RBC indices used in the study showed higher performance compared to those reported in the literature. By using these indices, not only the individual effect of each index parameter on the machine learning model was investigated but also a different subset of features from those employed in the literature was established. In addition, as distinct from the literature, the study revealed that different CBC parameters were efficient in distinguishing between IDA and beta-thalassemia in male and female patients. Accordingly, the RBC indices employed in the study can be easily and inexpensively used in clinical and daily practice for the discrimination of IDA and beta-thalassemia.
机译:透析诊断缺铁性贫血(IDA)和β-地中海贫血是一种时间和昂贵的程序。完全血统(CBC)是一种快速,廉价,易于访问的测试,用作诊断贫血的主要测试。但是,由于CBC不能成功区分IDA和Beta-Thalassemia,因此需要先进的技术。迄今为止,已经研究了许多红细胞(RBC)指数,并为每个指数提出了各种参数。在本研究中,通过使用包括支持向量机(SVM)和K最近邻(KNN)的RBC指数和机器学习技术进行IDA和β-Thalassemia的差异诊断。 RBC指数用作分类器的输入参数,分别评估SVM和KNN的性能,以便确定两种技术的有效性。将参数较少作为机器学习算法的输入,实现更高的性能。另一方面,使用特征选择技术,邻域分量分析特征选择(NCA)算法用于从数据集中选择特征,并且通过NCA选择的参数提供了高性能(ROC曲线下的97%区域[AUC] 。结果表明,与文献中报道的那些相比,该研究中使用的RBC指数表现出更高的性能。通过使用这些指数,不仅调查了每个索引参数对机器学习模型的各个效果也是一个建立了文献中所采用的不同特征的不同特征。此外,如文献中的不同,该研究表明,不同的CBC参数在雄性和女性患者中区分IDA和β-地中海贫血症是有效的。因此,RBC指数在研究中,可以很容易且廉价地用于临床和日常实践,以识别IDA和Beta-Thalassemia 。

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