PromptEHR: Conditional Electronic Healthcare Records Generation with Prompt Learning.

Zifeng Wang, Jimeng Sun
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Abstract

Accessing longitudinal multimodal Electronic Healthcare Records (EHRs) is challenging due to privacy concerns, which hinders the use of ML for healthcare applications. Synthetic EHRs generation bypasses the need to share sensitive real patient records. However, existing methods generate single-modal EHRs by unconditional generation or by longitudinal inference, which falls short of low flexibility and makes unrealistic EHRs. In this work, we propose to formulate EHRs generation as a text-to-text translation task by language models (LMs), which suffices to highly flexible event imputation during generation. We also design prompt learning to control the generation conditioned by numerical and categorical demographic features. We evaluate synthetic EHRs quality by two perplexity measures accounting for their longitudinal pattern (longitudinal imputation perplexity, lpl) and the connections cross modalities (cross-modality imputation perplexity, mpl). Moreover, we utilize two adversaries: membership and attribute inference attacks for privacy-preserving evaluation. Experiments on MIMIC-III data demonstrate the superiority of our methods on realistic EHRs generation (53.1% decrease of lpl and 45.3% decrease of mpl on average compared to the best baselines) with low privacy risks.

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PromptEHR:具有快速学习功能的条件电子医疗记录生成。
由于隐私问题,访问纵向多模式电子医疗记录(EHRs)具有挑战性,这阻碍了ML在医疗保健应用程序中的使用。合成电子病历的生成绕过了共享敏感的真实患者记录的需要。然而,现有方法通过无条件生成或纵向推理生成单模态电子病历,灵活性不高,产生的电子病历不切实际。在这项工作中,我们建议通过语言模型(LMs)将电子病历生成制定为文本到文本的翻译任务,这足以在生成过程中高度灵活地进行事件插入。我们还设计了提示学习来控制由数字和分类人口特征决定的生成。我们通过考虑其纵向模式(纵向imputation perplexity, lpl)和跨模态连接(跨模态imputation perplexity, mpl)的两种困惑度量来评估综合电子病历的质量。此外,我们利用两个对手:成员关系攻击和属性推理攻击来进行隐私保护评估。在MIMIC-III数据上的实验表明,我们的方法在真实的电子病历生成方面具有优势(与最佳基线相比,lpl平均降低53.1%,mpl平均降低45.3%),并且隐私风险低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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