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Datafish Multiphase Data Mining Technique to Match Multiple Mutually Inclusive Independent Variables in Large PACS Databases

机译:在大型PACS数据库中匹配多个互斥自变量的Datafish多阶段数据挖掘技术

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摘要

Retrospective data mining has tremendous potential in research but is time and labor intensive. Current data mining software contains many advanced search features but is limited in its ability to identify patients who meet multiple complex independent search criteria. Simple keyword and Boolean search techniques are ineffective when more complex searches are required, or when a search for multiple mutually inclusive variables becomes important. This is particularly true when trying to identify patients with a set of specific radiologic findings or proximity in time across multiple different imaging modalities. Another challenge that arises in retrospective data mining is that much variation still exists in how image findings are described in radiology reports. We present an algorithmic approach to solve this problem and describe a specific use case scenario in which we applied our technique to a real-world data set in order to identify patients who matched several independent variables in our institution’s picture archiving and communication systems (PACS) database.
机译:回顾性数据挖掘在研究中具有巨大潜力,但需要大量时间和人力。当前的数据挖掘软件包含许多高级搜索功能,但其识别满足多个复杂独立搜索条件的患者的能力有限。当需要更复杂的搜索,或者对于多个相互包含的变量的搜索变得重要时,简单的关键字和布尔搜索技术将无效。当试图通过多种不同的成像方式来识别具有一组特定放射学发现或及时接近的患者时,尤其如此。回顾性数据挖掘中出现的另一个挑战是,放射学报告中描述影像发现的方式仍然存在很大差异。我们提出了一种解决该问题的算法,并描述了一个特定的用例场景,在该场景中,我们将我们的技术应用于实际数据集,以识别与我们机构的图片存档和通信系统(PACS)中多个独立变量匹配的患者数据库。

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