论文标题
法国非结构化临床笔记的识别机器学习任务
De-Identification of French Unstructured Clinical Notes for Machine Learning Tasks
论文作者
论文摘要
Unstructured textual data are at the heart of health systems: liaison letters between doctors, operating reports, coding of procedures according to the ICD-10 standard, etc. The details included in these documents make it possible to get to know the patient better, to better manage him or her, to better study the pathologies, to accurately remunerate the associated medical acts\ldots All this seems to be (at least partially) within reach of today by artificial intelligence techniques.但是,出于明显的隐私保护原因,这些AI的设计师只要包含识别数据,就没有合法权利访问这些文件。取消识别这些文档,即检测和删除其中存在的所有识别信息,是在两个互补世界之间共享这些数据的法律必要步骤。在过去的十年中,已经提出了一些建议,主要是用英语来识别文件。虽然检测分数通常很高,但替代方法通常不是很健壮。在法语中,很少有基于任意检测和/或替代规则的方法。在本文中,我们提出了一种专门用于法语医学文件的新的综合识别方法。识别要素(基于深度学习)的检测方法及其替代(基于差异隐私)的方法均基于现有的现有方法。结果是一种方法,可以有效保护患者的隐私,这是这些医疗文件的核心。整个方法已经在法国公立医院的法语医学数据集上进行了评估,结果非常令人鼓舞。
Unstructured textual data are at the heart of health systems: liaison letters between doctors, operating reports, coding of procedures according to the ICD-10 standard, etc. The details included in these documents make it possible to get to know the patient better, to better manage him or her, to better study the pathologies, to accurately remunerate the associated medical acts\ldots All this seems to be (at least partially) within reach of today by artificial intelligence techniques. However, for obvious reasons of privacy protection, the designers of these AIs do not have the legal right to access these documents as long as they contain identifying data. De-identifying these documents, i.e. detecting and deleting all identifying information present in them, is a legally necessary step for sharing this data between two complementary worlds. Over the last decade, several proposals have been made to de-identify documents, mainly in English. While the detection scores are often high, the substitution methods are often not very robust to attack. In French, very few methods are based on arbitrary detection and/or substitution rules. In this paper, we propose a new comprehensive de-identification method dedicated to French-language medical documents. Both the approach for the detection of identifying elements (based on deep learning) and their substitution (based on differential privacy) are based on the most proven existing approaches. The result is an approach that effectively protects the privacy of the patients at the heart of these medical documents. The whole approach has been evaluated on a French language medical dataset of a French public hospital and the results are very encouraging.