使用数值和分类特征的中风疾病预测的机器学习估计和新设计方法

S. Satapathy, A. Patel, Pushti Yadav, Y. Thacker, Dhaval Vaniya, Drashti Parmar
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引用次数: 2

摘要

今天,经过充分训练的机器学习算法可以在监控、医学和数据管理等领域得到广泛应用,以识别并提供解决方案,以解决没有解决方案的问题。中风是指大脑中的血管破裂,对大脑造成伤害。如果大脑的营养和血液供应中断,也可能发生这种情况。中风的严重程度可以通过早期识别许多预警症状来减轻。这是一项使用机器学习算法的研究,其中收集了儿童到成人的年龄数据,我们可以直接从他们的健康报告中提取数据,在收集了所有数据后,我们运行不同的算法模型,这些模型将从这些数据中学习,未来将向我们展示你患脑中风的可能性有多大。我们收集了5000人的数据进行处理,得出血糖水平较高的人患中风的风险更高,而年龄较大的女性患中风的风险更高。我们考虑的机器学习算法是随机森林算法(RF),决策树(DT),支持向量机(SVM)和逻辑回归(LR)算法,以训练不同的模型并比较最佳预测模型的结果。在所有算法中,RF、LR和SVM在DT分类器上的准确率最高,分别为94.50%和91.03%。本文中使用的机器学习技术可以为医疗专业人员和患者提供有用的分析信息,以及他们将来患脑中风的可能性。更大的数据集和属性选择策略可以提高研究的准确性,这可以通过从用户输入中获取数据来实现。”
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Approach for Estimation and Novel Design of Stroke Disease Predictions using Numerical and Categorical Features
Today, adequately trained machine learning algorithms can be significantly used in fields such as surveillance, medicine, and data management to identify and provide solutions to problems that do not have a solution answer current solutions are ineffective. A stroke is when blood arteries in the brain burst, harming the brain. It may also occur if the brain’s supply of nutrients and blood is interrupted. The severity of a stroke can be lessened by early recognition of numerous warning symptoms. This is a study using machine learning algorithms where children to adult age data have been taken in which we can extract data directly from their health report and after gathering all of the data, we run different algorithms models which will learn from this data and in future will show us how much is probability of you getting brain stroke. Five thousand people’s data were taken for processing, and we got that People with higher glucose levels are at increased risk of stroke, and high age Females are at risk of stroke. The machine learning algorithms we have considered are Random Forest Algorithm (RF), Decision Tree (DT), Support Vector Machine (SVM), and Logistic Regression (LR) Algorithm to train different models and compare the results for the best prediction model. Amongst all the algorithms, RF, LR, and SVM give us the best accuracy of 94.50% and 91.03% with the DT classifier. The Machine learning technique used in this article can assist medical professionals and patients with helpful analytical information and the probability of them getting a brain stroke in the future. Larger data sets and attribute selection strategies can enhance research with better accuracy, which can be achieved by taking data from the user’s input.”.
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