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神经网络与逻辑回归在 30 天全因再入院预测中的比较。

Neural networks versus Logistic regression for 30 days all-cause readmission prediction.

机构信息

Chair of Medical Informatics, Department of Quantitative Biomedicine, University of Zurich, Zurich, Switzerland.

Biomedical Informatics, University Hospital of Zurich, Zurich, Switzerland.

出版信息

Sci Rep. 2019 Jun 26;9(1):9277. doi: 10.1038/s41598-019-45685-z.

Abstract

Heart failure (HF) is one of the leading causes of hospital admissions in the US. Readmission within 30 days after a HF hospitalization is both a recognized indicator for disease progression and a source of considerable financial burden to the healthcare system. Consequently, the identification of patients at risk for readmission is a key step in improving disease management and patient outcome. In this work, we used a large administrative claims dataset to (1) explore the systematic application of neural network-based models versus logistic regression for predicting 30 days all-cause readmission after discharge from a HF admission, and (2) to examine the additive value of patients' hospitalization timelines on prediction performance. Based on data from 272,778 (49% female) patients with a mean (SD) age of 73 years (14) and 343,328 HF admissions (67% of total admissions), we trained and tested our predictive readmission models following a stratified 5-fold cross-validation scheme. Among the deep learning approaches, a recurrent neural network (RNN) combined with conditional random fields (CRF) model (RNNCRF) achieved the best performance in readmission prediction with 0.642 AUC (95% CI, 0.640-0.645). Other models, such as those based on RNN, convolutional neural networks and CRF alone had lower performance, with a non-timeline based model (MLP) performing worst. A competitive model based on logistic regression with LASSO achieved a performance of 0.643 AUC (95% CI, 0.640-0.646). We conclude that data from patient timelines improve 30 day readmission prediction, that a logistic regression with LASSO has equal performance to the best neural network model and that the use of administrative data result in competitive performance compared to published approaches based on richer clinical datasets.

摘要

心力衰竭(HF)是美国住院的主要原因之一。HF 住院后 30 天内再入院不仅是疾病进展的公认指标,也是医疗保健系统的巨大经济负担的来源。因此,识别有再入院风险的患者是改善疾病管理和患者预后的关键步骤。在这项工作中,我们使用了大型行政索赔数据集:(1) 探索基于神经网络的模型与逻辑回归在预测 HF 入院后 30 天全因再入院方面的系统应用;(2) 检查患者住院时间线对预测性能的附加价值。基于来自 272778 名(49%为女性)年龄 73 岁(14)的患者(SD)和 343328 例 HF 入院(总入院的 67%)的数据,我们根据分层 5 倍交叉验证方案训练和测试了我们的预测再入院模型。在深度学习方法中,递归神经网络(RNN)与条件随机场(CRF)模型(RNNCRF)相结合的方法在再入院预测方面表现最佳,AUC 为 0.642(95%CI,0.640-0.645)。其他模型,如基于 RNN、卷积神经网络和 CRF 的模型表现较差,基于无时间线的模型(MLP)表现最差。基于逻辑回归和 LASSO 的竞争模型的 AUC 为 0.643(95%CI,0.640-0.646)。我们得出结论,患者时间线数据可提高 30 天再入院预测的准确性,基于 LASSO 的逻辑回归模型与最好的神经网络模型性能相当,并且与基于更丰富临床数据集的已发表方法相比,使用行政数据可实现有竞争力的性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6329/6595068/17b47ee1f828/41598_2019_45685_Fig1_HTML.jpg

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