JOURNAL OF INTELLIGENT SYSTEMS WITH APPLICATIONS

Year: 2020, Volume: 3, Number: 1
Published : Jan 29, 2026

Detection of Heart Disease Risk Utilizing Correlation Matrix, Random Forest and Permutation Feature Importance Approaches

Sude Pehlivan (1), Yalcin Isler (2)

(1) Department of Biomedical Technologies, Izmir Katip Celebi University, Izmir
(2) Department of Biomedical Engineering, Izmir Katip Celebi University, Izmir
Fulltext View | Download
Abstract

Surface EEG measurements that can be performed in hospitals and laboratories have reached a wearable and portable level with the development of today's technologies. Artificial intelligence-assisted brain-computer interface (BCI) systems play an important role in individuals with disabilities to process EEG signals and interact with the outside world. In particular, the research is becoming widespread to meet the basic needs of individuals in need of home care with an increasing population. In this study, it is aimed to design the BCI system that will detect the hunger and satiety status of the people on the computer platform through EEG measurements. In this context, a database was created by recording EEG signals with eyes open and eyes closed by 20 healthy participants in the first stage of the study. The noise of the EEG signal is eliminated by using a low pass, high pass, and notch filters. In the classification, using Wavelet Packet Transform (WPT) with Coiflet 1 and Daubechies 4 wavelets, 77.50% accuracy was achieved in eyes closed measurement, and 81% in eyes open measurement.

Managed by Open Journal System