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从电子健康记录中开发基于深度学习的策略,以预测非酒精性脂肪性肝病患者发生肝细胞癌的风险。

Developing deep learning-based strategies to predict the risk of hepatocellular carcinoma among patients with nonalcoholic fatty liver disease from electronic health records.

机构信息

McWilliams School of Biomedical Informatics, University of Texas Health Science Center at Houston, 7000 Fannin Street, Suite 600, Houston, TX 77030, USA.

Department of Surgery, Case Western Reserve University School of Medicine, 11100 Euclid Ave, Cleveland, OH 44106, USA.

出版信息

J Biomed Inform. 2024 Apr;152:104626. doi: 10.1016/j.jbi.2024.104626. Epub 2024 Mar 22.

Abstract

OBJECTIVE

The accuracy of deep learning models for many disease prediction problems is affected by time-varying covariates, rare incidence, covariate imbalance and delayed diagnosis when using structured electronic health records data. The situation is further exasperated when predicting the risk of one disease on condition of another disease, such as the hepatocellular carcinoma risk among patients with nonalcoholic fatty liver disease due to slow, chronic progression, the scarce of data with both disease conditions and the sex bias of the diseases. The goal of this study is to investigate the extent to which the aforementioned issues influence deep learning performance, and then devised strategies to tackle these challenges. These strategies were applied to improve hepatocellular carcinoma risk prediction among patients with nonalcoholic fatty liver disease.

METHODS

We evaluated two representative deep learning models in the task of predicting the occurrence of hepatocellular carcinoma in a cohort of patients with nonalcoholic fatty liver disease (n = 220,838) from a national EHR database. The disease prediction task was carefully formulated as a classification problem while taking censorship and the length of follow-up into consideration.

RESULTS

We developed a novel backward masking scheme to deal with the issue of delayed diagnosis which is very common in EHR data analysis and evaluate how the length of longitudinal information after the index date affects disease prediction. We observed that modeling time-varying covariates improved the performance of the algorithms and transfer learning mitigated reduced performance caused by the lack of data. In addition, covariate imbalance, such as sex bias in data impaired performance. Deep learning models trained on one sex and evaluated in the other sex showed reduced performance, indicating the importance of assessing covariate imbalance while preparing data for model training.

CONCLUSIONS

The strategies developed in this work can significantly improve the performance of hepatocellular carcinoma risk prediction among patients with nonalcoholic fatty liver disease. Furthermore, our novel strategies can be generalized to apply to other disease risk predictions using structured electronic health records, especially for disease risks on condition of another disease.

摘要

目的

在使用结构化电子健康记录数据时,许多疾病预测问题的深度学习模型的准确性受到时变协变量、罕见发病率、协变量不平衡和延迟诊断的影响。当预测一种疾病在另一种疾病条件下的风险时,情况会进一步恶化,例如由于进展缓慢、慢性,非酒精性脂肪性肝病患者的肝细胞癌风险,这两种疾病的条件下的数据稀缺和疾病的性别偏见。本研究的目的是调查上述问题对深度学习性能的影响程度,然后设计策略来解决这些挑战。这些策略被应用于提高非酒精性脂肪性肝病患者肝细胞癌风险的预测。

方法

我们在从国家电子健康记录数据库中评估了两个代表性的深度学习模型在预测非酒精性脂肪性肝病患者肝细胞癌发生的任务中的表现(n=220838)。该疾病预测任务被精心设计为分类问题,同时考虑了审查和随访时间的长短。

结果

我们开发了一种新的反向屏蔽方案来处理电子健康记录数据分析中非常常见的延迟诊断问题,并评估索引日期后纵向信息的长度如何影响疾病预测。我们观察到,对时变协变量进行建模可以提高算法的性能,而迁移学习可以减轻数据不足导致的性能下降。此外,协变量不平衡,如数据中的性别偏见,会影响性能。在一个性别上训练并在另一个性别上评估的深度学习模型表现不佳,这表明在为模型训练准备数据时,评估协变量不平衡非常重要。

结论

本工作中开发的策略可以显著提高非酒精性脂肪性肝病患者肝细胞癌风险预测的性能。此外,我们的新策略可以推广应用于使用结构化电子健康记录进行的其他疾病风险预测,特别是对于另一种疾病条件下的疾病风险预测。

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