Deep Learning-Based Dynamic Risk Prediction of Venous Thromboembolism for Patients With Ovarian Cancer in Real-World Settings From Electronic Health Records.

IF 3.3 Q2 ONCOLOGY
Dahhay Lee, Seongyoon Kim, Sanghee Lee, Hak Jin Kim, Ji Hyun Kim, Myong Cheol Lim, Hyunsoon Cho
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引用次数: 0

Abstract

Purpose: Patients with epithelial ovarian cancer (EOC) have an elevated risk for venous thromboembolism (VTE). To assess the risk of VTE, models were developed by statistical or machine learning algorithms. However, few models have accommodated deep learning (DL) algorithms in realistic clinical settings. We aimed to develop a predictive DL model, exploiting rich information from electronic health records (EHRs), including dynamic clinical features and the presence of competing risks.

Methods: We extracted EHRs of 1,268 patients diagnosed with EOC from January 2007 through December 2017 at the National Cancer Center, Korea. DL survival networks using fully connected layers, temporal attention, and recurrent neural networks were adopted and compared with multi-perceptron-based classification models. Prediction accuracy was independently validated in the data set of 423 patients newly diagnosed with EOC from January 2018 to December 2019. Personalized risk plots displaying the individual interval risk were developed.

Results: DL-based survival networks achieved a superior area under the receiver operating characteristic curve (AUROC) between 0.95 and 0.98 while the AUROC of classification models was between 0.85 and 0.90. As clinical information benefits the prediction accuracy, the proposed dynamic survival network outperformed other survival networks for the test and validation data set with the highest time-dependent concordance index (0.974, 0.975) and lowest Brier score (0.051, 0.049) at 6 months after a cancer diagnosis. Our visualization showed that the interval risk fluctuating along with the changes in longitudinal clinical features.

Conclusion: Adaption of dynamic patient clinical features and accounting for competing risks from EHRs into the DL algorithms demonstrated VTE risk prediction with high accuracy. Our results show that this novel dynamic survival network can provide personalized risk prediction with the potential to assist risk-based clinical intervention to prevent VTE among patients with EOC.

基于深度学习的真实世界卵巢癌患者静脉血栓栓塞动态风险预测(来自电子健康记录
目的:上皮性卵巢癌(EOC)患者发生静脉血栓栓塞(VTE)的风险较高。为了评估 VTE 风险,人们通过统计或机器学习算法开发了一些模型。然而,很少有模型能在现实临床环境中采用深度学习(DL)算法。我们旨在开发一种预测性深度学习模型,利用电子健康记录(EHR)中的丰富信息,包括动态临床特征和竞争性风险的存在:我们提取了韩国国立癌症中心从 2007 年 1 月到 2017 年 12 月诊断为 EOC 的 1268 名患者的电子病历。我们采用了使用全连接层、时间注意力和递归神经网络的 DL 生存网络,并与基于多感知器的分类模型进行了比较。预测准确性在2018年1月至2019年12月新诊断为EOC的423名患者的数据集中进行了独立验证。开发了显示个体间隔风险的个性化风险图:基于DL的生存网络的接收者操作特征曲线下面积(AUROC)在0.95和0.98之间,而分类模型的接收者操作特征曲线下面积(AUROC)在0.85和0.90之间。由于临床信息有利于提高预测准确性,在癌症确诊后 6 个月,所提出的动态生存网络在测试和验证数据集上的表现优于其他生存网络,时间相关一致性指数最高(0.974,0.975),布赖尔评分最低(0.051,0.049)。我们的直观分析表明,间隔风险随着纵向临床特征的变化而波动:将患者的动态临床特征和 EHR 中的竞争风险纳入 DL 算法后,VTE 风险预测的准确率很高。我们的研究结果表明,这种新型的动态生存网络可以提供个性化的风险预测,并有可能协助基于风险的临床干预,预防 EOC 患者中的 VTE。
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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来源期刊
CiteScore
6.20
自引率
4.80%
发文量
190
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