Abstract

This paper explains the use of the Random Forest Algorithm to investigate the Case of Acute Coronary Syndrome (ACS). The objectives of this study are to review the evaluation of the use of data science techniques and machine learning algorithms in creating a model that can classify whether or not cases of acute coronary syndrome occur. The research method used in this study refers to the IBM Foundational Methodology for Data Science, include: i) inventorying dataset about ACS, ii) preprocessing for the data into four sub-processes, i.e. requirements, collection, understanding, and preparation, iii) determination of RFA, i.e. the "n" of the tree which will form a forest and forming trees from the random forest that has been created, and iv) determination of the model evaluation and result in analysis based on Python programming language. Based on the experiments that the learning have been conducted using a random forest machine-learning algorithm with an n-estimator value of 100 and each tree's depth (max depth) with a value of 4, learning scenarios of 70:30, 80:20, and 90:10 on 444 cases of acute coronary syndrome data. The results show that the 70:30 scenario model has the best results, with an accuracy value of 83.45%, a precision value of 85%, and a recall value of 92.4%. Conclusions obtained from the experiment results were evaluated with various statistical metrics (accuracy, precision, and recall) in each learning scenario on 444 cases of acute coronary syndrome data with a cross-validation value of 10 fold.

Highlights

  • Introduction for predictingParkinson's disease with Mild CognitivePrevious studies that used the random forest algorithm in solving health cases, such as the detection of congestive heart failure using ECG waves using the random forest algorithm where the study was an experiment that produced various statistical measures against the use of the random forest algorithm for the case of detection of congestive heart failure

  • It can be concluded that the random forest algorithm produces a performance that is considered significant in detecting the disease being studied and Disorders from Parkinson's Disease with normal cognition [3]

  • Antoniadi et al present prediction of caregiver burden in amyotrophic lateral sclerosis: a machine learning approach using random forests applied to a cohort study [4]

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Summary

Introduction

Previous studies that used the random forest algorithm in solving health cases, such as the detection of congestive heart failure using ECG waves using the random forest algorithm where the study was an experiment that produced various statistical measures against the use of the random forest algorithm for the case of detection of congestive heart failure. From these studies, it can be concluded that the random forest algorithm produces a performance that is considered significant in detecting the disease being studied and Disorders from Parkinson's Disease with normal cognition [3]. Iwendi et al used a RFA to predict patients' health exposed to Covid-19 [7]

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