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Developing a Predictive Model of Stroke using Support Vector Machine

机译:用支持向量机建立中风预测模型

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Health is a fundamental human right of all the Filipinos in the Philippines, as stated by the Philippine Constitution of 1987. Based on the data published by the World Health Organization in 2018, there are 41 million deaths occurred because of stroke and its complications. Thus, given the parameters for the variables of risk factors of stroke, a predictive model is developed for the occurrence of stroke based on the medical records of the patient. To ensure quality data, the medical data of the patients underwent data pre- processing, principal component analysis is used for dimension reduction. The model is evaluated using accuracy, precision, recall, F1 score, and area under curve. The study used datasets of 1500 patients from Cavite, Philippines. This study used 60 percent for training the model, and 30 percent is used for testing the model and 10 percent for validating the model. The SVM model achieved an accuracy of 99% for training the data, 98.89% for testing, and 97.33% for validation. The results of the model show the potential use of the predictive model for stroke, thus, remains relevant for researchers and practitioners in the medical and health sciences field.
机译:根据1987年菲律宾宪法的规定,健康是菲律宾所有菲律宾人的一项基本人权。根据世界卫生组织2018年发布的数据,由于中风及其并发症,有4100万人死亡。因此,给定中风危险因素变量的参数,基于患者的病历,为中风的发生建立了预测模型。为了确保质量数据,对患者的医学数据进行了数据预处理,主成分分析用于减少尺寸。使用准确性,准确性,召回率,F1得分和曲线下面积评估模型。该研究使用了来自菲律宾卡维特的1500名患者的数据集。该研究使用60%的模型进行训练,使用30%的模型进行测试,并使用10%的模型进行验证。 SVM模型的数据训练精度为99%,测试为98.89%,验证为97.33%。该模型的结果表明该预测模型可用于卒中,因此与医学和健康科学领域的研究人员和从业人员仍然相关。

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