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Early Prediction of Cardiovascular Diseases Using Feature Selection and Machine Learning Techniques

机译:采用特征选择和机器学习技术早期预测心血管疾病

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cardiovascular disease is one of the most important diseases that affects the heart and blood vessels. The loss of lives is mostly linked to a lack of early disease detection, and a preemptive prediction of cardiovascular disease risk will greatly alleviate the situation. Due to the increasing amount of data growth in the health care industry, therefor Machine Learning techniques predict the disease depends on the severity of the patient's side effect. This research work proposes a model to perform early prediction of cardiovascular disease by using different machine learning algorithms, which are used for different prediction purposes. For feature selection purposes, Random Forest algorithm is used to select suitable attributes for the prediction process. The proposed model is assessed based on evaluation metrics; accuracy, precision, recall (sensitivity), f1- score, and specificity. In this exploration of predicting cardiovascular disease, the XGBoost machine learning classifier accomplished a higher rate of accuracy 75.10%. Also, this model provides a higher rate for other evaluation metrics for all the evaluation metrics 76.64%, 69.88%, 79.32%, 78.16%, and 72.84% for precision, sensitivity, specificity, and f1-score, respectively in the case of early cardiovascular diseases prediction.
机译:心血管疾病是影响心脏和血管最重要的疾病之一。生命的丧失大多是与缺乏早期疾病检测相关的,并且对心血管疾病风险的先发制人预测将极大地减轻这种情况。由于医疗保健行业的数据增长越来越高,机器学习技术预测疾病取决于患者副作用的严重程度。该研究工作提出了一种通过使用不同的机器学习算法来对心血管疾病进行早期预测的模型,这些算法用于不同的预测目的。对于特征选择目的,随机林算法用于选择预测过程的合适属性。基于评估度量评估所提出的模型;准确性,精度,召回(灵敏度),F1分数和特异性。在预测心血管疾病的探索中,XGBoost机器学习分类器实现了更高的精度75.10%。此外,该模型对于所有评价度量的其他评估指标提供更高的速度76.64%,69.88%,79.32%,78.16%,72.84%,分别在提前的情况下分别为精确,敏感性,特异性和F1分数。心血管疾病预测。

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