Journal Medical Informatics Technology
Volume 1 No. 1, March 2023

Logistic Regression with Hyper Parameter Tuning Optimization for Heart Failure Prediction

Teguh Herwanto (Universitas Nusa Mandiri Jakarta)
Wan Ahmad Gazali Kodri (Universitas Nusa Mandiri Jakarta)
Faruq Aziz (Universitas Nusa Mandiri Jakarta)
Alya Shafira Hewiz (Universitas Airlangga)
Dwiza Riana (Universitas Nusa Mandiri Jakarta)



Article Info

Publish Date
31 Mar 2023

Abstract

Heart failure is a major public health concern that causes a substantial number of deaths worldwide. Risk factor analysis is required to diagnose and treat patients with heart failure. The logistic regression with hyper parameter tuning optimization is presented in this research, with ejection fraction, high blood pressure, age, and  serum creatinine as relevant risk factors. This study indicates that better data preparation utilizing Deep Learning with hyper parameter adjustment be used to determine the best parameter that has a substantial influence as a risk factor for heart failure. The experiments employed data from the Faisalabad Institute of Cardiology and Allied  Hospital in Faisalabad (Punjab, Pakistan), which included 299 samples. The experimental findings reveal that the proposed approach obtains a recall of 63.16% greater than related works.

Copyrights © 2023






Journal Info

Abbrev

medinftech

Publisher

Subject

Computer Science & IT Dentistry Engineering Medicine & Pharmacology Public Health

Description

Journal Medical Informatics Technology publishes papers on innovative applications, development of new technologies and efficient solutions in Health Professions, Medicine, Neuroscience, Nursing, Dentistry, Immunology, Pharmacology, Toxicology, Psychology, Pharmaceutics, Medical Records, Disease ...