Advancing Home Healthcare Through Machine Learning: Predicting Service Time for Enhanced Patient Care

Yagmur Selenay Selcuk, Elvin Çoban
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Abstract

Providing healthcare services at home is crucial for patients who require long-term care or face mobility or other health-related constraints that prevent them from traveling to healthcare facilities. Effective data analysis techniques are needed to optimize these services to understand patient needs and allocate resources efficiently. Machine learning algorithms can analyze big datasets generated from home healthcare services to identify patterns, trends, and predictive factors. By utilizing these techniques, predictive models for service time can be developed, leading to improved patient outcomes, increased efficiency, and reduced costs. This study explores the significance of various features in predicting service time for home healthcare services by analyzing real-life data using data analysis techniques. By developing a correlation matrix, healthcare providers can examine the relationships between features as well as their connections with the target value, thereby providing valuable managerial insights into improving the quality of home healthcare services through enhanced predictions of service time.
通过机器学习推进家庭医疗:预测服务时间以增强患者护理
对于需要长期护理或面临行动不便或其他健康相关限制而无法前往医疗机构的患者来说,在家中提供医疗保健服务至关重要。需要有效的数据分析技术来优化这些服务,以了解患者的需求并有效地分配资源。机器学习算法可以分析家庭医疗保健服务生成的大数据集,以识别模式、趋势和预测因素。通过利用这些技术,可以开发服务时间的预测模型,从而改善患者的治疗效果,提高效率并降低成本。本研究利用数据分析技术,分析现实生活中的数据,探讨各种特征在预测家庭医疗服务服务时间中的意义。通过开发相关矩阵,医疗保健提供者可以检查特征之间的关系以及它们与目标值的联系,从而提供有价值的管理见解,通过增强服务时间的预测来提高家庭医疗保健服务的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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