A New Artificial Intelligence Approach Using Extreme Learning Machine as the Potentially Effective Model to Predict and Analyze the Diagnosis of Anemia

被引:24
|
作者
Saputra, Dimas Chaerul Ekty [1 ]
Sunat, Khamron [1 ]
Ratnaningsih, Tri [2 ]
机构
[1] Khon Kaen Univ, Coll Comp, Dept Comp Sci & Informat Technol, Khon Kaen 40000, Thailand
[2] Univ Gadjah Mada, Fac Med, Dept Clin Pathol & Lab Med, Yogyakarta 55281, Indonesia
关键词
anemia; extreme learning machine; beta thalassemia trait; iron deficiency anemia; hemoglobin E; complete blood count; IRON-DEFICIENCY; FEEDFORWARD NETWORKS; HEALTH; CLASSIFICATION; APPROXIMATION; PREVALENCE; INDONESIA; CELLS; GIRLS; CARE;
D O I
10.3390/healthcare11050697
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
The procedure to diagnose anemia is time-consuming and resource-intensive due to the existence of a multitude of symptoms that can be felt physically or seen visually. Anemia also has several forms, which can be distinguished based on several characteristics. It is possible to diagnose anemia through a quick, affordable, and easily accessible laboratory test known as the complete blood count (CBC), but the method cannot directly identify different kinds of anemia. Therefore, further tests are required to establish a gold standard for the type of anemia in a patient. These tests are uncommon in settings that offer healthcare on a smaller scale because they require expensive equipment. Moreover, it is also difficult to discern between beta thalassemia trait (BTT), iron deficiency anemia (IDA), hemoglobin E (HbE), and combination anemias despite the presence of multiple red blood cell (RBC) formulas and indices with differing optimal cutoff values. This is due to the existence of several varieties of anemia in individuals, making it difficult to distinguish between BTT, IDA, HbE, and combinations. Therefore, a more precise and automated prediction model is proposed to distinguish these four types to accelerate the identification process for doctors. Historical data were retrieved from the Laboratory of the Department of Clinical Pathology and Laboratory Medicine, Faculty of Medicine, Public Health, and Nursing, Universitas Gadjah Mada, Yogyakarta, Indonesia for this purpose. Furthermore, the model was developed using the algorithm for the extreme learning machine (ELM). This was followed by the measurement of the performance using the confusion matrix and 190 data representing the four classes, and the results showed 99.21% accuracy, 98.44% sensitivity, 99.30% precision, and an F1 score of 98.84%.
引用
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页数:25
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