Matthew Antony Manoj, Kommi Madhuri, Keelukuppa Anusha, K. Sree
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引用次数: 2
摘要
任何疾病长期不治疗,直接影响人体健康,影响人体各主要器官。强烈建议及时治疗慢性病,以避免将来出现重大医疗问题。本文介绍了一种基于混合SMLT (Split Multi - Link trunking)技术的慢性心脏病发作预测系统。该系统考虑了机器学习算法,其中对Logistic回归(LR)、基于神经网络的多级感知器(MLP)、CatBoost回归(CB)算法和随机森林回归算法(RF)进行了比较测试。考虑到所提供的数据集,使用Python IDE实现了所提出的方法,并在Google Collab的IoT(物联网)屏幕中进行了模拟。对各种机器学习算法进行比较分析,有助于在较短的时间内利用鲁棒方法进行准确的处理。进一步不同的机器学习技术,具有多个特征被认为是实现的范围。提出的方法是创建一个机器学习模型,可以预测一个人是否会心脏病发作。在对多种技术进行比较后,采用最佳模型预测结果。
Design and Analysis of Heart Attack Prediction System Using ML
Any diseases that is kept untreated for a long period of time directly impacts the human health and effect all the major organs of the body. Treating the chronic diseases in timely basis is highly recommended to avoid major medical problems coming over the way. On implementing Chronic Heart Attack prediction system using Hybrid SMLT (Split Multi Link trunking) technique is presented here. The proposed system considers machine learning algorithm in which Logistic regression (LR), multi-level perceptron (MLP) based on neural network, CatBoost regression (CB) algorithm and Random Forest regression algorithm (RF) is comparatively tested. Considering the data set provided, the presented approach is implemented using Python IDE and simulated in IoT (Internet of things) screen of Google Collab. A comparative analysis of various Machine learning algorithm is helpful to make the accurate processing with the help of robust method in short span of time. Further different machine learning techniques, with multiple features are considered as scope of implementation. The proposed approach is creating a machine learning model that can predict whether or not a person will experience a heart attack. The best model is used to forecast the result after many techniques have been compared.