The Identification and Categorization of Anemia Through Artificial Neural Networks: A Comparative Analysis of Three Models
- URL: http://arxiv.org/abs/2404.04690v1
- Date: Sat, 6 Apr 2024 17:37:45 GMT
- Title: The Identification and Categorization of Anemia Through Artificial Neural Networks: A Comparative Analysis of Three Models
- Authors: Mohammed A. A. Elmaleeh,
- Abstract summary: This paper presents different neural network-based algorithms for diagnosing and classifying Anemia.
The proposed neural network features nine inputs (age, gender, RBC, HGB, HCT, MCV, MCH, MCHC, WBCs) and one output.
The simulation outcomes for diverse patients demonstrate that the suggested artificial neural network rapidly and accurately detects the presence of the disease.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper presents different neural network-based classifier algorithms for diagnosing and classifying Anemia. The study compares these classifiers with established models such as Feed Forward Neural Network (FFNN), Elman network, and Non-linear Auto-Regressive Exogenous model (NARX). Experimental evaluations were conducted using data from clinical laboratory test results for 230 patients. The proposed neural network features nine inputs (age, gender, RBC, HGB, HCT, MCV, MCH, MCHC, WBCs) and one output. The simulation outcomes for diverse patients demonstrate that the suggested artificial neural network rapidly and accurately detects the presence of the disease. Consequently, the network could be seamlessly integrated into clinical laboratories for automatic generation of Anemia patients' reports Additionally, the suggested method is affordable and can be deployed on hardware at low costs.
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