Comparative Analysis of Prognostic Model for Risk Classification of Neonatal Jaundice using Machine Learning Algorithms

Journal Title: Computer Reviews Journal - Year 2019, Vol 3, Issue 0

Abstract

This study focused on the development of a prediction model using identified classification factors in order to classify the risk of jaundice in selected neonates. Historical dataset on the distribution of the classification of risk of jaundice among neonates was collected using questionnaires following the identification of associated classification factors of risk of jaundice from medical practitioners. The dataset containing information about the classification factors identified and collected from the neonates were used to formulate predictive model for the classification of risk of jaundice using 2 machine learning algorithm – Naïve Bayes’ classifier and the multi-layer perceptron.The predictive model development using the decision trees algorithm was formulated and simulated using the WEKA software.The predictive model developed using the multi-layer perceptron and Naïve Bayes’ classifier algorithms were compared in order to determine the algorithm with the best performance.The result shows that 10 variables were identified by the medical expert to be necessary in predicting jaundice in neonates for which a dataset containing information of 23 neonates alongside their respective jaundice diagnosis (Low, Moderate and High) was also provided with 22 attributes following the identification of the required variables.The 10-fold cross validation method was used to train the predictive model developed using the machine learning algorithms and the performance of the models evaluated The multi-layer perceptron algorithm proved to be an effective algorithm for predicting the diagnosis of jaundice in Nigerian neonates

Authors and Affiliations

Peter Adebayo Idowu, Ngozi Chidozie Egejuru, Jeremiah Ademola Balogun, Olusegun Ajibola Sarumi

Keywords

Related Articles

Why Estimation Method of Recurrence Time Transition Probabilities with Regard to Genetic Algorithms Without Bit Mutation?

Respecting genetic algorithms without bit mutation, our study is to submit unprecedented algorithm to procure tentative and notional results respecting recurrence time transition probabilities estimation for transient st...

Robust RLS Wiener Fixed-Lag Smoother for Discrete-Time Stochastic Systems with Uncertain Parameters

This paper, by combining the robust recursive least-squares (RLS) Wiener filter and the RLS Wiener fixed-lag smoothing algorithm, proposes the robust RLS Wiener fixed-lag smoothing algorithm. In the robust estimation pro...

Micro Finance Development Though WSHGs: A study of Odisha Tegion

In measuring satisfaction, it was estimated that, even though the model fit looks positive, the significant predictor i.e. age factor, which is actually contribute a more towards satisfaction, because it shown a high sta...

RLS Filter Using Covariance Information and RLS Wiener Type Filter based on Innovation Theory for Linear Discrete-Time Stochastic Descriptor Systems

It is known that the stochastic descriptor systems are transformed into the conventional state equation, the observation equation and the other equation, by using the singular value decomposition. Based on the preliminar...

Housekeeping Inspection and Inventory Analysis are the Primary Responses of Engineering and Logistics Operations in Hospitality Industry- An Intensive case study of Professional Research on Sheraton Gateway Hotel in Toronto Pearson International Airport

Housekeeping inspection maintains a chronological checklist and it has the major practice at the hospitality industry. Hospitality industry manages an imaging services to restaurants, lodging, event planning, theme parks...

Download PDF file
  • EP ID EP655257
  • DOI -
  • Views 98
  • Downloads 0

How To Cite

Peter Adebayo Idowu, Ngozi Chidozie Egejuru, Jeremiah Ademola Balogun, Olusegun Ajibola Sarumi (2019). Comparative Analysis of Prognostic Model for Risk Classification of Neonatal Jaundice using Machine Learning Algorithms. Computer Reviews Journal, 3(0), 122-146. https://europub.co.uk/articles/-A-655257