深度生存分析可解释子痫前期风险的时变预测。

IF 4 2区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Journal of Biomedical Informatics Pub Date : 2024-07-11 DOI:10.1016/j.jbi.2024.104688
Braden W. Eberhard , Kathryn J. Gray , David W. Bates , Vesela P. Kovacheva
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引用次数: 0

摘要

目的:生存分析被广泛应用于医疗保健领域,以预测疾病的发病时间。传统的生存分析方法通常基于 Cox 比例危害模型,并假设所有受试者的风险成正比。然而,对于大多数疾病来说,这一假设很少成立,因为潜在的因素具有复杂、非线性和时变的关系。这一问题与妊娠尤其相关,因为妊娠相关并发症(如子痫前期)的风险在不同的妊娠期是不同的。最近,深度学习生存模型有望解决经典模型的局限性,因为新型模型可以处理非比例风险,捕捉非线性关系,并驾驭复杂的时间动态:我们提出了一种方法来模拟孕期子痫前期的时间风险,并研究相关的临床风险因素。我们利用了一个回顾性数据集,其中包括 2015 年至 2023 年期间在两个三级医疗中心分娩的 66425 名孕妇。我们通过修改深度生存模型 DeepHit 对子痫前期风险进行建模,该模型利用神经网络架构捕捉妊娠期协变量之间的时变关系。我们对 DeepHit 的归一化输出进行了时间序列 k-means 聚类,并使用 Shapley 值研究了可解释性:我们证明,DeepHit 能有效处理高维数据和随时间演变的风险危害,其性能与 Cox 比例危害模型相似,两个模型的曲线下面积 (AUC) 均为 0.78。深度生存模型通过识别子痫前期随时间变化的风险轨迹,为早期和个体化干预提供了见解,其性能优于传统方法。K均值聚类将患者划分为低风险、早发和晚发子痫前期群体,值得注意的是,每个群体都有不同的风险因素:这项研究展示了深度生存分析在子痫前期风险时变预测中的新应用。我们的研究结果凸显了深度生存模型与 Cox 比例危害模型相比在提供个性化风险轨迹方面的优势,并展示了深度生存模型在医学领域产生可解释且有意义的临床应用的潜力。
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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Deep survival analysis for interpretable time-varying prediction of preeclampsia risk

Objective

Survival analysis is widely utilized in healthcare to predict the timing of disease onset. Traditional methods of survival analysis are usually based on Cox Proportional Hazards model and assume proportional risk for all subjects. However, this assumption is rarely true for most diseases, as the underlying factors have complex, non-linear, and time-varying relationships. This concern is especially relevant for pregnancy, where the risk for pregnancy-related complications, such as preeclampsia, varies across gestation. Recently, deep learning survival models have shown promise in addressing the limitations of classical models, as the novel models allow for non-proportional risk handling, capturing nonlinear relationships, and navigating complex temporal dynamics.

Methods

We present a methodology to model the temporal risk of preeclampsia during pregnancy and investigate the associated clinical risk factors. We utilized a retrospective dataset including 66,425 pregnant individuals who delivered in two tertiary care centers from 2015 to 2023. We modeled the preeclampsia risk by modifying DeepHit, a deep survival model, which leverages neural network architecture to capture time-varying relationships between covariates in pregnancy. We applied time series k-means clustering to DeepHit’s normalized output and investigated interpretability using Shapley values.

Results

We demonstrate that DeepHit can effectively handle high-dimensional data and evolving risk hazards over time with performance similar to the Cox Proportional Hazards model, achieving an area under the curve (AUC) of 0.78 for both models. The deep survival model outperformed traditional methodology by identifying time-varied risk trajectories for preeclampsia, providing insights for early and individualized intervention. K-means clustering resulted in patients delineating into low-risk, early-onset, and late-onset preeclampsia groups—notably, each of those has distinct risk factors.

Conclusion

This work demonstrates a novel application of deep survival analysis in time-varying prediction of preeclampsia risk. Our results highlight the advantage of deep survival models compared to Cox Proportional Hazards models in providing personalized risk trajectory and demonstrating the potential of deep survival models to generate interpretable and meaningful clinical applications in medicine.

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来源期刊
Journal of Biomedical Informatics
Journal of Biomedical Informatics 医学-计算机:跨学科应用
CiteScore
8.90
自引率
6.70%
发文量
243
审稿时长
32 days
期刊介绍: The Journal of Biomedical Informatics reflects a commitment to high-quality original research papers, reviews, and commentaries in the area of biomedical informatics methodology. Although we publish articles motivated by applications in the biomedical sciences (for example, clinical medicine, health care, population health, and translational bioinformatics), the journal emphasizes reports of new methodologies and techniques that have general applicability and that form the basis for the evolving science of biomedical informatics. Articles on medical devices; evaluations of implemented systems (including clinical trials of information technologies); or papers that provide insight into a biological process, a specific disease, or treatment options would generally be more suitable for publication in other venues. Papers on applications of signal processing and image analysis are often more suitable for biomedical engineering journals or other informatics journals, although we do publish papers that emphasize the information management and knowledge representation/modeling issues that arise in the storage and use of biological signals and images. System descriptions are welcome if they illustrate and substantiate the underlying methodology that is the principal focus of the report and an effort is made to address the generalizability and/or range of application of that methodology. Note also that, given the international nature of JBI, papers that deal with specific languages other than English, or with country-specific health systems or approaches, are acceptable for JBI only if they offer generalizable lessons that are relevant to the broad JBI readership, regardless of their country, language, culture, or health system.
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