EXPLORATORY DATA ANALYSIS OF CLINICAL HEART FAILURE USING A SUPPORT VECTOR MACHINE

Putri tua Sinaga, Salda Sari Purba, David Wiranto, Okta Jaya Maharja, Evta Indra
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Abstract

This study aims to explore the clinical data of patients diagnosed with heart failure using the Support Vector Machine (SVM) algorithm as a classification method. Clinical data from verified patients has been collected and analyzed to identify patterns, associations, and risk factors contributing to heart failure risk. The exploratory data analysis results reveal essential clinical data characteristics and provide initial insight into patient profiles and clinical variables that can influence heart failure risk. The SVM model was built to predict the risk of heart failure based on clinical data. This model is evaluated using classification metrics such as F1-Score and accuracy. Evaluation results show good performance with an F1-Score reaching 0.83, which indicates a reasonable degree of accuracy and balance in predicting the risk of heart failure. The conclusion of this study shows the potential of the classification model as a tool in managing heart failure patients. This model can help medical personnel identify high-risk patients and provide appropriate treatment to prevent disease progression and improve prognosis. However, these results need further verification with more in-depth analysis and validation using broader data. This model can help medical personnel identify high-risk patients and provide appropriate treatment to prevent disease progression and improve prognosis. However, these results need further verification with more in-depth analysis and validation using broader data. This model can help medical personnel identify high-risk patients and provide appropriate treatment to prevent disease progression and improve prognosis. However, these results need further verification with more in-depth analysis and validation using broader data. Keywords: Exploratory Data Analysis, Heart Failure, Classification, Python, Support Vector Machine
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应用支持向量机对临床心力衰竭的探索性数据分析
本研究旨在利用支持向量机(Support Vector Machine, SVM)算法对心力衰竭患者的临床数据进行分类。收集并分析了经证实的患者的临床数据,以确定导致心力衰竭风险的模式、关联和危险因素。探索性数据分析结果揭示了基本的临床数据特征,并为可能影响心力衰竭风险的患者概况和临床变量提供了初步见解。基于临床数据,建立支持向量机模型预测心衰风险。使用F1-Score和准确性等分类指标对该模型进行评估。评价结果表现较好,F1-Score达到0.83,表明对心力衰竭风险的预测具有合理的准确性和平衡性。本研究的结论显示了分类模型作为一种管理心力衰竭患者的工具的潜力。该模型可以帮助医务人员识别高危患者,并提供适当的治疗,预防疾病进展,改善预后。然而,这些结果需要通过更深入的分析和更广泛的数据来进一步验证。该模型可以帮助医务人员识别高危患者,并提供适当的治疗,预防疾病进展,改善预后。然而,这些结果需要通过更深入的分析和更广泛的数据来进一步验证。该模型可以帮助医务人员识别高危患者,并提供适当的治疗,预防疾病进展,改善预后。然而,这些结果需要通过更深入的分析和更广泛的数据来进一步验证。关键词:探索性数据分析,心力衰竭,分类,Python,支持向量机
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