Litcius/Paper detail

Hybrid K-means and Principal Component Analysis (PCA) forDiabetes Prediction

Ahmed Abed Mohammed, Putra Sumari, Kassem Al Attabi

2024International Journal of Computing and Digital Systems9 citationsDOIOpen Access PDF

Abstract

Diabetes is the "silent killer," stealing the lives of millions of people worldwide.There are many reasons for diabetes, such as increasing glucose, Cholesterol, systolic BP, and Age.These are considered to be the four primary causes of diabetes.The challenge in diabetes is predicting the human illness early to start treatment immediately after discovering diabetes; this can be the most challenging thing in diabetes discovery because tens of features may cause diabetes.This study proposes a model consisting of data mining and Machine Learning (ML) algorithms to predict if humans can have diabetes or not in the future.The prediction is made up of compensating two datasets; one dataset is used to reconfirm the other dataset in order to make a more accurate prediction.This can be performed using the k-means-PCA hybrid model and the highest weight selection of features that widely cause diabetes.The selected features help the ML algorithm predict the model's accuracy, which indicates the prediction model's accuracy.Simulation results show that the number of predict-diabetic patients increased from 53 from the original datasets to 142 after applying the proposed model.Simulation outcomes also prove that the Random Forest ML model gives the highest accuracy of other ML models, reaching 95.2%.

Topics & Concepts

Diabetes mellitusRandom forestPrincipal component analysisArtificial intelligenceComputer sciencePredictive modellingMachine learningData miningMedicineEndocrinologyArtificial Intelligence in HealthcareImbalanced Data Classification TechniquesData Mining Algorithms and Applications