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Computational Learning Approaches for Personalized Pregnancy Care

机译:个性化怀孕护理的计算学习方法

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摘要

The increasing use of interconnected sensors to monitor patients with chronic diseases, integrated with tools for the management of shared information, can guarantee a better performance of health information systems (HISs) by performing personalized healthcare. The early diagnosis of chronic diseases such as hypertensive disorders of pregnancy represents a significant challenge in women’s healthcare. Computational learning techniques are useful tools for pattern recognition in the assessment of an increasing amount of integrated data related to these diseases. Hence, in this paper, the use of machine learning (ML) techniques is proposed for the assessment of real data referred to hypertensive disorders in pregnancy. The results show that the averaged one-dependence estimator algorithm can help in the decision- making process in uncertain moments, thus improving the early detection of these chronic diseases. The best-evaluated computational learning algorithm improves the performance of HISs through its precise diagnosis. This method can be applied in electronic health (e-health) environments as a useful tool for handling uncertainty in the decision-making process related to high-risk pregnancy.
机译:互联传感器不断使用互联传感器监测慢性病患者,与用于管理共享信息的工具集成,可以保证通过执行个性化的医疗保健来更好地表现健康信息系统(HISS)。早期诊断慢性疾病如高血压障碍怀孕症是女性医疗保健的重大挑战。计算学习技术是在评估与这些疾病相关的综合数据量的评估中的模式识别的有用工具。因此,在本文中,提出了使用机器学习(ML)技术的使用,以评估怀孕中高血压障碍的真实数据。结果表明,平均依赖估计算法可以帮助在不确定时刻的决策过程中,从而改善这些慢性疾病的早期检测。最佳评估的计算算法通过其精确诊断来提高HIS的性能。该方法可以应用于电子健康(电子健康)环境中,作为处理与高风险怀孕相关的决策过程中不确定性的有用工具。

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