使用基于变压器的神经网络自动编辑不良事件报告中的名称。

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS
Eva-Lisa Meldau, Shachi Bista, Carlos Melgarejo-González, G Niklas Norén
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引用次数: 0

摘要

背景:自动识别和编校自由文本中的个人标识符可以使组织在保护隐私的同时共享数据。这在药物警戒的背景下是重要的,因为有关事件的临床过程、鉴别诊断和患者报告的反映的相关详细信息通常只能以叙述的形式传达。本研究的目的是开发和评估一种在不良事件报告的英文叙述文本中人名的自动编辑方法。这项研究的目标领域是来自英国黄卡计划的病例叙述,该计划收集和监测有关药物和疫苗疑似副作用的信息。方法:我们调整了BERT——一个基于变压器的神经网络——用于识别案例叙述中的名字。训练数据包括来自黄牌数据和i2b2 2014年去识别挑战的新注释记录。因为黄牌数据包含很少的名字,我们使用预测模型来选择训练的叙述。表现是在黄牌计划的另一组注释叙述中进行评估的。深入的审查确定了去识别方法遗漏的人名(部分)是否可以使个体重新识别,以及去识别是否通过间接掩盖相关信息而降低了叙述的临床效用。结果:黄牌数据的召回率为87%(155/179),准确率为55%(155/282),假阳性率为0.05%(127/ 263,451)。单独考虑超过三个字符的标记,召回率为94%(102/108),准确率为58%(102/175)。对于黄牌测试数据中5,042个叙述中的13个(71个带有人名),该方法未能标记至少一个名称标记。根据深入审查,泄露的信息可以直接识别一种叙述,也可以间接识别两种叙述。在5042篇处理过的叙述中,只有不到1%的临床相关信息被删除;97%的叙述完全没有被触碰。结论:对不良事件报告的自由文本叙述中的姓名进行自动编校可以实现充分的召回,包括较短的标记,如患者首字母。深入审查表明,发生的罕见泄漏往往不会损害患者的机密性。准确度和假阳性率是可以接受的,几乎所有的临床相关信息保留。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated redaction of names in adverse event reports using transformer-based neural networks.

Background: Automated recognition and redaction of personal identifiers in free text can enable organisations to share data while protecting privacy. This is important in the context of pharmacovigilance since relevant detailed information on the clinical course of events, differential diagnosis, and patient-reported reflections may often only be conveyed in narrative form. The aim of this study is to develop and evaluate a method for automated redaction of person names in English narrative text on adverse event reports. The target domain for this study was case narratives from the United Kingdom's Yellow Card scheme, which collects and monitors information on suspected side effects to medicines and vaccines.

Methods: We finetuned BERT - a transformer-based neural network - for recognising names in case narratives. Training data consisted of newly annotated records from the Yellow Card data and of the i2b2 2014 deidentification challenge. Because the Yellow Card data contained few names, we used predictive models to select narratives for training. Performance was evaluated on a separate set of annotated narratives from the Yellow Card scheme. In-depth review determined whether (parts of) person names missed by the de-identification method could enable re-identification of the individual, and whether de-identification reduced the clinical utility of narratives by collaterally masking relevant information.

Results: Recall on held-out Yellow Card data was 87% (155/179) at a precision of 55% (155/282) and a false-positive rate of 0.05% (127/ 263,451). Considering tokens longer than three characters separately, recall was 94% (102/108) and precision 58% (102/175). For 13 of the 5,042 narratives in Yellow Card test data (71 with person names), the method failed to flag at least one name token. According to in-depth review, the leaked information could enable direct identification for one narrative and indirect identification for two narratives. Clinically relevant information was removed in less than 1% of the 5,042 processed narratives; 97% of the narratives were completely untouched.

Conclusions: Automated redaction of names in free-text narratives of adverse event reports can achieve sufficient recall including shorter tokens like patient initials. In-depth review shows that the rare leaks that occur tend not to compromise patient confidentiality. Precision and false positive rates are acceptable with almost all clinically relevant information retained.

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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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