UCB Biosciences, Inc., 8010 Arco Corporate Drive, Suite 100, Raleigh, NC, 27617, USA.
Department of Management Science and Information Systems, Spears School of Business, Oklahoma State University, Tulsa, OK, 74106, USA.
Comput Biol Med. 2018 Oct 1;101:199-209. doi: 10.1016/j.compbiomed.2018.08.029. Epub 2018 Aug 31.
Hospital readmission is one of the critical metrics used for measuring the performance of hospitals. The HITECH Act imposes penalties when patients are readmitted to hospitals if they are diagnosed with one of the six conditions mentioned in the Act. However, patients diagnosed with lupus are the sixth highest in terms of rehospitalization. The heterogeneity in the disease and patient characteristics makes it very hard to predict rehospitalization. This research utilizes deep learning methods to predict rehospitalization within 30 days by extracting the temporal relationships in the longitudinal EHR clinical data. Prediction results from deep learning methods such as LSTM are evaluated and compared with traditional classification methods such as penalized logistic regression and artificial neural networks. The simple recurrent neural network method and its variant, gated recurrent unit network, are also developed and validated to compare their performance against the proposed LSTM model. The results indicated that the deep learning method RNN-LSTM has a significantly better performance (with an AUC of .70) compared to traditional classification methods such as ANN (with an AUC of 0.66) and penalized logistic regression (with an AUC of 0.63). The rationale for the better performance of the deep learning method may be due to its ability to leverage the temporal relationships of the disease state in patients over time and to capture the progression of the disease-relevant clinical information from patients' prior visits is carried forward in the memory, which may have enabled the higher predictability for the deep learning methods.
医院再入院率是衡量医院绩效的关键指标之一。《健康信息技术促进经济和临床健康法案》(HITECH Act)规定,如果患者被诊断出患有该法案中提到的六种情况之一,医院将面临再入院的处罚。然而,狼疮患者的再入院率是第六高的。由于疾病和患者特征的异质性,很难预测再入院。本研究利用深度学习方法,通过提取纵向电子健康记录(EHR)临床数据中的时间关系,预测 30 天内的再入院情况。评估了深度学习方法(如 LSTM)的预测结果,并与传统分类方法(如惩罚逻辑回归和人工神经网络)进行了比较。还开发和验证了简单递归神经网络方法及其变体门控递归单元网络,以比较它们与所提出的 LSTM 模型的性能。结果表明,与传统分类方法(如 ANN 的 AUC 为 0.66 和惩罚逻辑回归的 AUC 为 0.63)相比,深度学习方法 RNN-LSTM 的性能(AUC 为 0.70)有显著提高。深度学习方法性能更好的原因可能是它能够利用患者疾病状态随时间的时间关系,并捕获来自患者先前就诊的疾病相关临床信息的进展情况,这些信息可能在记忆中被延续,从而使深度学习方法具有更高的可预测性。