Please use this identifier to cite or link to this item: http://148.72.244.84/xmlui/handle/xmlui/16120
Title: Machine Learning Approaches to Classify and Predict Congenital Jaundice
Authors: Dr.Mohammad Mahmood Faqe Hussein
Soran Husen Mohamad, Bakhan Hoshyar
Keywords: Machine Learning, Categorization, Congenital jaundice, Model Evaluation, AUC-ROC Analysis
Issue Date: 20-Dec-2024
Publisher: KHAZAYIN OF ECONOMIC AND ADMINISTRATIVE SCIENCES
Citation: https://doi.org/10.69938/Keas.2401022
Series/Report no.: Khazayin Of Economic and Administrative Sciences Vol. 1, NO. 2, December 2024;52-64
Abstract: Neonatal Jaundice, a common condition in newborns, results from elevated bilirubin levels, leading to the characteristic yellowing of the skin and eyes. Timely and precise classification and prediction of neonatal jaundice are crucial for early medical intervention. Machine learning has emerged as a powerful tool in healthcare for creating predictive models. This abstract offers an overview of machine learning methods used to classify and predict neonatal jaundice, incorporating clinical, laboratory, and genetic data. The dataset used in this research has been collected from patients at the Sulaimani Children's Hospital. The sample was collected over 5 months, from 2022 to 2023. Number of rows: 130 (one for each patient's data)There are 8 attributes in each record with Y as the target attribute consisting of jaundice levels The remaining seven characteristics are what the algorithm uses to predict. All characteristics arediscrete. Table 1 / Dataset used in this study Full size table. Two types of machine learning algorithms are used: KNN and Naive Bayes. The assessment of model performance relies on metrics such as accuracy, sensitivity, specificity, and AUC-ROC, revealing encouraging outcomes. The results show that the classification of congenital jaundice using the KNN (k = 15) algorithm gives us accurate classification results when compared with the Naive Bayesian algorithm, and its classification percentage is equal to64.34%.
URI: http://148.72.244.84/xmlui/handle/xmlui/16120
ISSN: 2960-1363
3007-9020
Appears in Collections:خزائن للعلوم الاقتصادية والادارية Khazayin Of Economic and Administrative Sciences

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