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基于极限学习机和正则化极限学习机的决策支持系统对β地中海贫血和缺铁性贫血的鉴别

Discrimination of β-thalassemia and iron deficiency anemia through extreme learning machine and regularized extreme learning machine based decision support system.

作者信息

Çil Betül, Ayyıldız Hakan, Tuncer Taner

机构信息

Firat University, Department of Computer Engineering, 23119 Elazig, Turkey.

Fethi Sekin Hospital, Department of Biochemistry, Elazig, Turkey.

出版信息

Med Hypotheses. 2020 May;138:109611. doi: 10.1016/j.mehy.2020.109611. Epub 2020 Feb 1.

Abstract

The symptoms of Iron Deficiency Anemia (IDA) and β-thalassemia (β-TT) disease are similar and the distinction between them is time consuming and costly. There are several indices used to differentiate IDA from β-thalassemia disease. Complete Blood Count (CBC) is a rapid, inexpensive and accessible test for the diagnosis of anemia and is used as a primary test. However, since CBC cannot fully distinguish between IDA and β-thalassemia, more advanced testing is required. These tests are not available in small centers and are performed on higher-cost devices. Moreover, it is important to differentiate between anemia and β-thalassemia medically for two reasons (IDA). First, if a patient with β-Thalassemia is diagnosed with IDA, the patient is given unnecessary iron supplementation as a result of the treatment, which is recommended by the doctor. Secondly, when the patient with β-thalassemia is diagnosed with IDA, children will have β-thalassemia patients in marriages. A decision support system to distinguish between β-Thalassemia and IDA has been developed. Logistic Regression, K-Nearest Neighbours, Support Vector Machine, Extreme Learning Machine and Regularized Extreme Learning Machine classification algorithms were used in the proposed system. Classification performance was evaluated with Accuracy, sensitivity, f-measure, Specificty parameters using Hemoglobin, RBC, HCT, MCV, MCH, MCHC and RDW parameters obtained from 342 patients. 96.30% accuracy for female, 94.37% for male, and 95.59% in co-evaluation of male and female patients were obtained.

摘要

缺铁性贫血(IDA)和β地中海贫血(β-TT)的症状相似,区分它们既耗时又昂贵。有几种指标可用于鉴别IDA和β地中海贫血。全血细胞计数(CBC)是一种快速、廉价且易于进行的贫血诊断测试,用作初步检查。然而,由于CBC无法完全区分IDA和β地中海贫血,因此需要更先进的检测。这些检测在小型中心无法进行,且需要使用成本更高的设备。此外,从医学角度区分贫血和β地中海贫血很重要,原因有两个(IDA)。首先,如果β地中海贫血患者被诊断为IDA,患者会因医生建议的治疗而接受不必要的铁补充。其次,当β地中海贫血患者被诊断为IDA时,儿童在婚姻中会出现β地中海贫血患者。已经开发了一种区分β地中海贫血和IDA的决策支持系统。所提出的系统使用了逻辑回归、K近邻、支持向量机、极限学习机和正则化极限学习机分类算法。使用从342名患者获得的血红蛋白、红细胞、血细胞比容、平均红细胞体积、平均红细胞血红蛋白含量、平均红细胞血红蛋白浓度和红细胞分布宽度参数,通过准确率、灵敏度、F值、特异性参数评估分类性能。女性准确率为96.30%,男性为94.37%,男女患者联合评估时为95.59%。

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