Optimizing Stroke Mortality Prediction: A Comprehensive Study on Risk Factors Analysis and Hyperparameter Tuning Techniques

TEM Journal Pub Date : 2024-02-27 DOI:10.18421/tem131-74
Imam Tahyudin, Ades Tikaningsih, Puji Lestari, Eko Winarto, Nazwan Hassa
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Abstract

Stroke is one of the major killer diseases in the world. Understanding the factors that influence the death of stroke patients is vital to improving patient care and outcomes. In this study, we used stroke patient data and machine learning techniques using a variety of algorithms, including Extreme Gradient Boosting, CatBoost, Extra Tree, Decision Tree, and Random Forest, to predict patient death after stroke. After performing hyperparameter settings, the XGBoost model achieved an accuracy of 86% with an AUC of 87. Significant improvements in the accuracy and predictive capability of this model after hyperparameter settings indicate a strong potential for clinical applications. In addition, our findings suggest that factors such as the patient's age, type of stroke, and blood pressure at the time of hospitalization have a significant impact on stroke patients' deaths. By understanding these factors, healthcare providers can improve patient intervention and management to reduce the risk of death after stroke. This research has made an important contribution to the development of a system for predicting the risk of death of stroke patients, which can help doctors and nurses identify high-risk patients and provide appropriate treatment.
优化中风死亡率预测:风险因素分析和超参数调整技术的综合研究
中风是全球主要致命疾病之一。了解影响中风患者死亡的因素对于改善患者护理和预后至关重要。在这项研究中,我们利用中风患者数据和机器学习技术,使用了多种算法,包括极梯度提升、CatBoost、额外树、决策树和随机森林,来预测中风后患者的死亡。在进行超参数设置后,XGBoost 模型的准确率达到了 86%,AUC 为 87。经过超参数设置后,该模型的准确率和预测能力有了显著提高,这表明该模型在临床应用方面具有很大的潜力。此外,我们的研究结果表明,患者的年龄、中风类型和住院时的血压等因素对中风患者的死亡有重大影响。通过了解这些因素,医疗服务提供者可以改进对患者的干预和管理,降低中风后的死亡风险。这项研究为开发预测中风患者死亡风险的系统做出了重要贡献,它可以帮助医生和护士识别高风险患者并提供适当的治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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