Regularized HessELM and Inclined Entropy Measurement for Congestive Heart Failure Prediction

12 Jul 2019  ·  Apdullah Yayık, Yakup Kutlu, Gökhan Altan ·

Our study concerns with automated predicting of congestive heart failure (CHF) through the analysis of electrocardiography (ECG) signals. A novel machine learning approach, regularized hessenberg decomposition based extreme learning machine (R-HessELM), and feature models; squared, circled, inclined and grid entropy measurement were introduced and used for prediction of CHF. This study proved that inclined entropy measurements features well represent characteristics of ECG signals and together with R-HessELM approach overall accuracy of 98.49% was achieved.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Congestive Heart Failure detection CHF database Inclined Entropy (R-HessELM) Accuracy 98.49 # 1
Precision 98.05 # 1
Sensitivity 98.3 # 1

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