Real Time Child Infant Mortality Analysis for Efficient Public Health Development

Q3 Chemistry
K. Sudha, G. Venkatesan
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引用次数: 0

Abstract

The problem of child health management and development has been well studied. There are number of methods available for the problem of child health development but suffers to achieve higher performance. To improve the performance, an efficient real time child infant mortality analysis for improved health development using multi feature covariance measure (MFCM). The method maintains number of data records of various child and infants from the age of 1 month to 15 years. For each child or infant, the method maintains continuous records of their health diagnosis. Using the data maintained, the method identifies and groups them according to the cause of death. Using the cluster generated, the method estimates health factor influence (HFI) for different features. Based on the value of HFI, a set of features which has higher HFI are selected and used to generate analysis. Further the method generates a prediction result on the future mortality and the reasons. The method improves the performance of mortality prediction and increases the accuracy also.
有效公共卫生发展的实时母婴死亡率分析
儿童健康管理和发展问题已经得到了很好的研究。有许多方法可用于解决儿童健康发展问题,但难以达到更高的效果。为了提高性能,使用多特征协方差测度(MFCM)对改善健康发展进行了有效的实时母婴死亡率分析。该方法保存了从1个月到15岁的各种儿童和婴儿的大量数据记录。对于每个儿童或婴儿,该方法保持其健康诊断的连续记录。该方法利用保存的数据,根据死亡原因对其进行识别和分组。使用生成的聚类,该方法估计不同特征的健康因素影响(HFI)。基于HFI的值,选择一组具有较高HFI的特征,并将其用于生成分析。此外,该方法生成关于未来死亡率和原因的预测结果。该方法提高了死亡率预测的性能,也提高了预测的准确性。
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来源期刊
Journal of Computational and Theoretical Nanoscience
Journal of Computational and Theoretical Nanoscience 工程技术-材料科学:综合
自引率
0.00%
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0
审稿时长
3.9 months
期刊介绍: Information not localized
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