A Machine Learning Utility for Detection of Potential Protected Health Information Images

Scott J. Vollmin, S. Robila
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Abstract

Often, dental x-rays and digital images which may contain sensitive patient information are saved to network and local directories increasing the vulnerability as well as the legal liability of the institutions that process them. To reduce the risk, various approaches are employed by IT staff to detect such images and ensure their proper handling. Searching for images manually is a tedious and time-consuming task; rather automated tools would be preferred. The goal of this project was to investigate how machine learning can be used for automated image recognition as a tool in dental image detection. This paper presents the design, implementation and testing of a user-friendly tool to analyze directories and subdirectories identified by a user to identify and handle Protected Health Information (PHI). The tool provides an interface for a user to select various options for file handling and image search parameters that are then used with a convolutional neural network (CNN) to identify dental radiographs in an arbitrary list of files. Experimental results show that the tool accurately detects potential PHI-related files, leading the way for a practitioner ready deployment.
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用于检测潜在受保护的健康信息图像的机器学习实用程序
通常,可能包含敏感患者信息的牙科x光片和数字图像被保存到网络和本地目录中,这增加了脆弱性,也增加了处理这些信息的机构的法律责任。为减低风险,资讯科技人员会采用不同的方法来侦测这类影像,并确保妥善处理。手动搜索图像是一项繁琐而耗时的任务;而自动化工具则是首选。该项目的目标是研究如何将机器学习用于自动图像识别,作为牙科图像检测的工具。本文介绍了一个用户友好的工具的设计、实现和测试,该工具用于分析用户识别的目录和子目录,以识别和处理受保护的健康信息(PHI)。该工具为用户提供了一个界面,用于选择文件处理和图像搜索参数的各种选项,然后与卷积神经网络(CNN)一起使用,以在任意文件列表中识别牙科x光片。实验结果表明,该工具准确地检测到潜在的phi相关文件,为从业者准备部署铺平了道路。
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