Multi-Source Data Interpretation For Field Scale Precision Management In Healthcare Industry

Zhiying Huang, Shaoxiong Hu, Yanqing Liang
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Abstract

Precision management is a critical component of healthcare, where access to accurate and timely data is essential for effective decision-making. In the healthcare industry, precision management involves the use of multiple data sources to understand patient needs and improve health outcomes. Multi-source data interpretation, specifically at the field scale, is becoming increasingly popular as a means to obtain a comprehensive view of patient care. Field scale precision management in healthcare involves the integration of data from various sources, including electronic health records, patient-generated data, and social determinants of health. Through the use of advanced analytics and machine learning algorithms, this data can be processed and interpreted to identify patterns, trends, and insights that can help healthcare providers make more informed decisions. The application of multi-source data interpretation in healthcare is particularly important because it allows for a more holistic view of patient health, taking into account factors beyond traditional medical metrics. For example, social determinants of health, such as access to healthy food and safe housing, can have a significant impact on patient health outcomes, and these factors can be identified through the analysis of non-medical data sources. Overall, the use of multi-source data interpretation for field scale precision management in healthcare has the potential to significantly improve patient outcomes by providing healthcare providers with a more complete understanding of patient needs and circumstances. With advances in technology and analytics, healthcare providers can better harness the power of data to optimize patient care and improve health outcomes at scale.
医疗保健行业现场规模精确管理的多源数据解释
精确管理是医疗保健的一个关键组成部分,在医疗保健中,获得准确及时的数据对于有效决策至关重要。在医疗保健行业,精确管理涉及使用多个数据源来了解患者需求并改善健康结果。多源数据解释,特别是在现场范围内,作为获得患者护理全面视图的一种手段,越来越受欢迎。医疗保健领域规模的精确管理涉及整合各种来源的数据,包括电子健康记录、患者生成的数据和健康的社会决定因素。通过使用先进的分析和机器学习算法,可以对这些数据进行处理和解释,以确定模式、趋势和见解,帮助医疗保健提供者做出更明智的决策。多源数据解释在医疗保健中的应用尤为重要,因为它可以更全面地了解患者健康,同时考虑传统医疗指标之外的因素。例如,健康的社会决定因素,如获得健康食品和安全住房,可能对患者的健康结果产生重大影响,这些因素可以通过分析非医疗数据来源来确定。总的来说,在医疗保健领域使用多源数据解释进行现场规模的精确管理,有可能通过让医疗保健提供者更全面地了解患者的需求和情况,显著改善患者的结果。随着技术和分析的进步,医疗保健提供者可以更好地利用数据的力量来优化患者护理并大规模改善健康结果。
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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