HEALTH PREDICTION USING MACHINE LEARNING

SAURABH MISHRA,
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引用次数: 0

Abstract

Machine learning techniques have transformed healthcare by enabling precise and timely disease prediction. The capacity to forecast multiple diseases simultaneously can greatly enhance early diagnosis and treatment, leading to improved patient outcomes and lower healthcare expenses. This research paper delves into the use of machine learning algorithms for predicting various diseases, highlighting their advantages, challenges, and prospects. It provides a comprehensive overview of different machine learning models and the data sources frequently employed in disease prediction. Furthermore, it emphasises the importance of feature selection, model evaluation, and the integration of diverse data types to improve prediction accuracy. The findings underscore the significant potential of machine learning in predicting multiple diseases and its impact on public health. Specifically, the study demonstrates the application of a machine learning model to determine if an individual is affected by certain diseases. This model is trained using sample data to enhance its predictive capabilities. Key Words: Disease Prediction, Disease data, Machine Learning.
利用机器学习进行健康预测
机器学习技术通过实现精确、及时的疾病预测,改变了医疗保健。同时预测多种疾病的能力可大大提高早期诊断和治疗的效率,从而改善患者的治疗效果并降低医疗费用。本研究论文深入探讨了机器学习算法在预测各种疾病方面的应用,重点介绍了其优势、挑战和前景。它全面概述了不同的机器学习模型和疾病预测中经常使用的数据源。此外,它还强调了特征选择、模型评估和整合不同数据类型以提高预测准确性的重要性。研究结果强调了机器学习在预测多种疾病方面的巨大潜力及其对公共卫生的影响。具体来说,该研究展示了如何应用机器学习模型来确定个人是否受到某些疾病的影响。该模型使用样本数据进行训练,以增强其预测能力。关键字疾病预测 疾病数据 机器学习
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