...
首页> 外文期刊>International Journal of Health Geographics >An unsupervised classification method for inferring original case locations from low-resolution disease maps
【24h】

An unsupervised classification method for inferring original case locations from low-resolution disease maps

机译:从低分辨率疾病图推断原始病例位置的无监督分类方法

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Background Widespread availability of geographic information systems software has facilitated the use of disease mapping in academia, government and private sector. Maps that display the address of affected patients are often exchanged in public forums, and published in peer-reviewed journal articles. As previously reported, a search of figure legends in five major medical journals found 19 articles from 1994–2004 that identify over 19,000 patient addresses. In this report, a method is presented to evaluate whether patient privacy is being breached in the publication of low-resolution disease maps. Results To demonstrate the effect, a hypothetical low-resolution map of geocoded patient addresses was created and the accuracy with which patient addresses can be resolved is described. Through georeferencing and unsupervised classification of the original image, the method precisely re-identified 26% (144/550) of the patient addresses from a presentation quality map and 79% (432/550) from a publication quality map. For the presentation quality map, 99.8% of the addresses were within 70 meters (approximately one city block length) of the predicted patient location, 51.6% of addresses were identified within five buildings, 70.7% within ten buildings and 93% within twenty buildings. For the publication quality map, all addresses were within 14 meters and 11 buildings of the predicted patient location. Conclusion This study demonstrates that lowering the resolution of a map displaying geocoded patient addresses does not sufficiently protect patient addresses from re-identification. Guidelines to protect patient privacy, including those of medical journals, should reflect policies that ensure privacy protection when spatial data are displayed or published.
机译:背景技术地理信息系统软件的广泛普及已经促进了在学术界,政府和私营部门中使用疾病作图。显示受影响患者地址的地图经常在公共论坛上交换,并发表在同行评审的期刊文章中。如以前的报道,在五种主要医学杂志上的人物传说搜索中,发现了1994年至2004年的19篇文章,它们标识了19,000多个患者住址。在此报告中,提出了一种方法来评估低分辨率疾病图的发布中是否侵犯了患者的隐私。结果为了证明这种效果,创建了一个经过地理编码的患者地址的低分辨率假想图,并描述了可以解析患者地址的准确性。通过地理配准和原始图像的无监督分类,该方法从演示质量地图中准确地重新标识了26%(144/550)的患者地址,在发布质量地图中又重新标识了79%(432/550)的患者地址。对于演示质量地图,99.8%的地址位于预测的患者位置的70米内(大约一个城市街区的长度),其中51.6%的地址被确定在五座建筑物内,70.7%的地址在十座建筑物内,93%的地址在二十座建筑物内。对于出版物质量地图,所有地址都在距离患者预期位置14米和11座建筑物内。结论这项研究表明,降低显示经过地理编码的患者地址的地图的分辨率并不能充分保护患者地址免遭重新识别。保护患者隐私的准则,包括医学期刊的准则,应反映出在显示或发布空间数据时确保隐私保护的政策。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号