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首页> 外文期刊>International Journal of Population Data Science >Exploratory versus experimental design: overcoming the prejudice of ‘data dredging’.
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Exploratory versus experimental design: overcoming the prejudice of ‘data dredging’.

机译:探索性与实验设计:克服“数据疏浚”的偏见。

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As part of its most recent Efficiency Research Programme, which sought to advance understanding of workforce retention in health and social care, the Health Foundation have provided funding to a team within the Centre for Social Care, Health and Related Research at Birmingham City University. This project proposes to utilise exploratory data analysis techniques to investigate the underpinning contributory factors to nurse retention and ultimately patient safety across 10 acute and 10 mental healthcare providers. Exploratory data analysis techniques do not conform to the accepted hypothesis setting and testing associated with the traditional experimental research design within medicine and consequently, can be subject to criticism. However, these techniques afford bountiful opportunity to generate insight from real-world data; insight that could not be gleamed from experimental designs, therefore they warrant further investigation before being written off as ‘data dredging’.Exploratory data analysis techniques applied to large datasets that are routinely collected as part of standard care have the potential to revolutionise healthcare. Machine learning and artificial intelligence are becoming common place in everyday life but have been relatively slow to be adopted as a mechanism for improving healthcare. An aspect of the medical community’s reluctance to accept these techniques is a perceived lack of robustness in determining relationships, as hypotheses aren’t typically generated in advance and therefore the process exposes itself to unscrupulous actions where analyses are undertaken until a relationship is found. An element of this programme of work is to develop a set of standards for the application of these techniques to healthcare-generated data including, but not limited to and housing data in open access formats to improve transparency and reporting on findings.This session seeks to explore these issues with colleagues across disciplines, generating debate regarding novel approaches to complex issues.
机译:作为其最近效率研究计划的一部分,该计划试图推进对卫生和社会护理的劳动力保留的理解,卫生基金会为伯明翰城市大学社会护理,卫生和相关研究中心提供资金。该项目建议利用探索性数据分析技术来调查资本贡献因素,以便在10急性和10个心理医疗保健提供者中调查护士保留和最终患者安全性。探索性数据分析技术不符合与医学中传统的实验研究设计相关的公认的假设设置和测试,因此可能会受到批评。但是,这些技术提供了丰富的机会,可以从真实数据中产生洞察力;无法从实验设计中闪闪发光的洞察力,因此他们在被撰写为“数据疏浚的数据疏浚”之前进行进一步调查。应用于作为标准护理的一部分的大型数据集应用于大型数据集的技术有可能彻底改变医疗保健。机器学习和人工智能在日常生活中成为共同的地方,但被采用相对缓慢地被采用作为改善医疗保健的机制。医学界不愿接受这些技术的一个方面是在确定关系时感知缺乏鲁棒性,因为假设通常不提前生成,因此该过程暴露于在发现关系之前对分析进行的肆无忌惮的行动。该工作方案的一个元素是开发一组用于将这些技术应用于医疗保健的数据的标准,包括但不限于开放访问格式的和住房数据,以提高关于调查结果的透明度和报告。此次会话旨在探讨跨学科的同事探讨这些问题,就复杂问题的新方法产生辩论。

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