用毫升对低体重儿病例进行早期预测

K. M, M. G L
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引用次数: 0

摘要

这项工作旨在根据用户的各种输入,预测婴儿出生时是健康还是体重不足。考虑到父母的健康状况、种族、教育背景和地区等特征--所有这些都会对医疗保健的可及性和环境因素产生影响--该研究承认出生体重与胎龄的关系非常重要。通过对包含这些生活方式和人口特征的大量数据集进行检查,医疗服务提供者可以改进产前护理和干预措施,更细致地关注高危人群。借助用户提供的数据,该预测工具提供了出生体重结果的概率估计,让父母和医疗专业人员放心并得到帮助。关键词低出生体重(LBW) 智能健康信息学 机器学习(ML)
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EARLY PREDICTION OF LOWBIRTH WEIGHT CASES USING ML
This work aims to predict, from a variety of user inputs, whether a baby will be born healthy or underweight. Taking into account characteristics including parental health, ethnicity, educational background, and region—all of which have an impact on healthcare accessibility and environmental factors—the study acknowledges the significance of birth weight in relation to gestational age. Through the examination of extensive datasets containing these lifestyle and demographic characteristics, health care providers can improve prenatal care and interventions, concentrating more carefully on populations that are at risk. With the help of user-supplied data, this prediction tool provides a probabilistic estimate of birth weight outcomes, giving parents and medical professionals peace of mind and assistance. Keyword: Low Birth weight (LBW), Smart health informatics, Machine Learning (ML).
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