Publication | Closed Access
An efficient clinical support system for heart disease prediction using TANFIS classifier
125
Citations
31
References
2021
Year
Search OptimizationHeart FailureEngineeringMachine LearningIntelligent DiagnosticsDiagnosisFeature ExtractionHeart DiseaseIntelligent SystemsDisease ClassificationHeart Disease PredictionHealth Monitoring (Structural Health Monitoring)Health Monitoring (Biomedical Engineering)Computational MedicineData ScienceData MiningPattern RecognitionTanfis ClassifierBiostatisticsInternet Of ThingsCardiologyFuzzy LogicPredictive AnalyticsLearning Classifier SystemDecision Support SystemsClinical Decision SupportComputer ScienceIntelligent ClassificationIntelligent Data ProcessingData ClassificationCardiovascular DiseaseNeuro-fuzzy SystemMedicineClinical Decision Support SystemHealth InformaticsEmergency MedicineIntelligent Systems Engineering
Abstract In today's world, the advancement of telediagnostic equipment plays an essential role to monitor heart disease. The earlier diagnosis of heart disease proliferates the compatibility of treatment of patients and predominantly provides an expeditious diagnostic recommendation from clinical experts. However, the feature extraction is a major challenge for heart disease prediction where the high dimensional data increases the learning time for existing machine learning classifiers. In this article, a novel efficient Internet of Things‐based tuned adaptive neuro‐fuzzy inference system (TANFIS) classifier has been proposed for accurate prediction of heart disease. Here, the tuning parameters of the proposed TANFIS are optimized through Laplace Gaussian mutation‐based moth flame optimization and grasshopper optimization algorithm. The simulation scenario can be carried out using11 different datasets from the UCI repository. The proposed method obtains an accuracy of 99.76% for heart disease prediction and it has been improved upto 5.4% as compared with existing algorithms.
| Year | Citations | |
|---|---|---|
Page 1
Page 1