非结构化医疗数据的可扩展查询框架——一种大数据方法

Sarmad Istephan, Mohammad-Reza Siadat
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引用次数: 9

摘要

随着医学图像扫描量的不断增加,有一个可扩展的框架来挖掘这种非结构化数据是至关重要的。这样一个框架将为医学研究人员在验证和检验假设方面提供灵活性。这类框架的重要特点包括准确性、高效性和可扩展性。这项工作的目标是在大数据范例中构建这样一个框架的初步实现。为此,对结构化数据建立临床数据仓库,并创建一组模块对非结构化内容进行分析。该框架包含内置模块,但允许用户灵活地导入自己的模块,从而使其具有可扩展性。此外,该框架在Hadoop集群中运行模块,利用大数据方法的分布式计算能力,使其高效。为了测试这个框架,他们创建了1000名患者的模拟数据以及他们的海马体图像。结果表明,该框架使用内置模块,准确地将所有15例同侧海马切除术患者的海马大小小于对侧海马大小的20%的患者返回到手术。此外,该框架允许用户使用前面的输出运行不同的模块,以进一步分析非结构化数据。最后,该框架还允许用户导入新模块。本研究为展示该框架以准确、高效和可扩展的方式处理非结构化医疗数据的可行性铺平了道路。
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Extensible Query Framework for Unstructured Medical Data -- A Big Data Approach
With the ever increasing amount of medical image scans, it is critical to have an extensible framework that allows for mining such unstructured data. Such a framework would provide a medical researcher the flexibility in validating and testing hypotheses. Important characteristics of this type of framework include accuracy, efficiency and extensibility. The objective of this work is to build an initial implementation of such a framework within a big data paradigm. To this end, a clinical data warehouse was built for the structured data and a set of modules were created to analyze the unstructured content. The framework contains built-in modules but is flexible in allowing the user to import their own, making it extensible. Furthermore, the framework runs the modules in a Hadoop cluster making it efficient by utilizing the distributed computing capability of big data approach. To test the framework, simulated data of 1,000 patients along with their hippocampi images were created. The results show that the framework accurately returned all 15 patients who had hippocampal resection with hippocampus ipsilateral to surgery being less than 20% the size of the hippocampus contralateral to surgery, using a built-in module. In addition, the framework allowed the user to run a different module using the previous output to further analyze the unstructured data. Finally, the framework also enabled the user to import a new module. This study paves the way towards showing the feasibility of such a framework to handle unstructured medical data in an accurate, efficient and extensible manner.
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