人工智能助力心脏病早期检测

T. A. Mohanaprakash, A. P, Navaneethakrİshan. M, Savija J, Ramya M, Anbarasa Pandian A
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引用次数: 0

摘要

在医疗保健行业,机器学习(ML)在疾病预测中起着至关重要的作用。病人必须经过一系列检查才能确诊病情。然而,使用机器学习技术,测试的数量可以减少。这个简化的测试对时间和性能都有显著的影响。由于医疗和保健部门产生的数据量不断增加,早期患者护理受益于良好的医疗数据分析。在疾病数据的帮助下,大量的医疗数据可以被挖掘出隐藏的模式信息。本研究以心脏病为重点,利用SVM、MLR和RF算法等机器学习技术,评估并建议基于患者症状的心脏病预测。所提出的方法在准确性、预测速度和结果一致性方面优于目前使用的方法。使用经过训练的数据集对肺癌进行分类也是适当的,以便准确识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence Powered Early Detection of Heart Disease
In the healthcare industry, Machine Learning (ML) plays a crucial role in disease prediction. A patient must go through a series of tests before a condition can be diagnosed. However, using machine learning techniques, the number of tests can be reduced. This simplified test has a significant impact on both time and performance. Early patient care has benefited from sound medical data analysis due to the growing amount of data generated by the medical and healthcare sectors. With the help of disease data, massive amounts of medical data can be mined for hidden pattern information. With a focus on heart diseases, this study evaluates and suggests a heart disease prediction based on the patient's symptoms using machine learning techniques such as SVM, MLR, and RF algorithms. The proposed method outperforms those currently in use in terms of accuracy, forecast speed, and consistency of outcomes. It is also appropriate to classify lung cancers using trained datasets for accurate identification.
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