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Identifying the Uncertainty in Physician Practice Location through Spatial Analytics and Text Mining

机译:通过空间分析和文本挖掘识别医师执业地点的不确定性

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摘要

In response to the widespread concern about the adequacy, distribution, and disparity of access to a health care workforce, the correct identification of physicians’ practice locations is critical to access public health services. In prior literature, little effort has been made to detect and resolve the uncertainty about whether the address provided by a physician in the survey is a practice address or a home address. This paper introduces how to identify the uncertainty in a physician’s practice location through spatial analytics, text mining, and visual examination. While land use and zoning code, embedded within the parcel datasets, help to differentiate resident areas from other types, spatial analytics may have certain limitations in matching and comparing physician and parcel datasets with different uncertainty issues, which may lead to unforeseen results. Handling and matching the string components between physicians’ addresses and the addresses of the parcels could identify the spatial uncertainty and instability to derive a more reasonable relationship between different datasets. Visual analytics and examination further help to clarify the undetectable patterns. This research will have a broader impact over federal and state initiatives and policies to address both insufficiency and maldistribution of a health care workforce to improve the accessibility to public health services.
机译:由于人们普遍担心获得医疗保健服务的人员是否充足,分布和不平等,正确确定医生的执业地点对于获得公共卫生服务至关重要。在现有文献中,几乎没有做出努力来检测和解决关于由医生在调查中提供的地址是诊所地址还是家庭地址的不确定性。本文介绍如何通过空间分析,文本挖掘和视觉检查来确定医师执业地点的不确定性。虽然嵌入在宗地数据集中的土地使用和分区代码有助于将居民区与其他类型区分开,但空间分析在匹配和比较具有不同不确定性问题的医师和宗地数据集时可能会有某些限制,这可能导致无法预料的结果。处理和匹配医师地址与包裹地址之间的字符串成分可以识别空间不确定性和不稳定性,从而在不同数据集之间得出更合理的关系。视觉分析和检查进一步有助于弄清无法检测的模式。这项研究将对联邦和州解决医疗保健劳动力不足和分配不均的倡议和政策产生更广泛的影响,以改善公共卫生服务的可及性。

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