Tang Siyi, Tariq Amara, Dunnmon Jared A, Sharma Umesh, Elugunti Praneetha, Rubin Daniel L, Patel Bhavik N, Banerjee Imon
IEEE J Biomed Health Inform. 2023 Apr;27(4):2071-2082. doi: 10.1109/JBHI.2023.3236888. Epub 2023 Apr 4.
Reduction in 30-day readmission rate is an important quality factor for hospitals as it can reduce the overall cost of care and improve patient post-discharge outcomes. While deep-learning-based studies have shown promising empirical results, several limitations exist in prior models for hospital readmission prediction, such as: (a) only patients with certain conditions are considered, (b) do not leverage data temporality, (c) individual admissions are assumed independent of each other, which ignores patient similarity, (d) limited to single modality or single center data. In this study, we propose a multimodal, spatiotemporal graph neural network (MM-STGNN) for prediction of 30-day all-cause hospital readmission, which fuses in-patient multimodal, longitudinal data and models patient similarity using a graph. Using longitudinal chest radiographs and electronic health records from two independent centers, we show that MM-STGNN achieved an area under the receiver operating characteristic curve (AUROC) of 0.79 on both datasets. Furthermore, MM-STGNN significantly outperformed the current clinical reference standard, LACE+ (AUROC = 0.61), on the internal dataset. For subset populations of patients with heart disease, our model significantly outperformed baselines, such as gradient-boosting and Long Short-Term Memory models (e.g., AUROC improved by 3.7 points in patients with heart disease). Qualitative interpretability analysis indicated that while patients' primary diagnoses were not explicitly used to train the model, features crucial for model prediction may reflect patients' diagnoses. Our model could be utilized as an additional clinical decision aid during discharge disposition and triaging high-risk patients for closer post-discharge follow-up for potential preventive measures.
降低30天再入院率是医院的一个重要质量因素,因为它可以降低总体护理成本并改善患者出院后的结局。虽然基于深度学习的研究已显示出有前景的实证结果,但先前用于医院再入院预测的模型存在若干局限性,例如:(a) 仅考虑患有特定病症的患者;(b) 未利用数据的时间性;(c) 假设个体入院情况相互独立,这忽略了患者的相似性;(d) 限于单模态或单中心数据。在本研究中,我们提出了一种用于预测30天全因医院再入院的多模态、时空图神经网络(MM-STGNN),该网络融合住院患者的多模态纵向数据,并使用图对患者相似性进行建模。利用来自两个独立中心的纵向胸部X光片和电子健康记录,我们表明MM-STGNN在两个数据集上的受试者操作特征曲线下面积(AUROC)均达到0.79。此外,在内部数据集上,MM-STGNN显著优于当前的临床参考标准LACE+(AUROC = 0.61)。对于心脏病患者的亚组人群,我们的模型显著优于基线模型,如梯度提升模型和长短期记忆模型(例如,心脏病患者的AUROC提高了3.7个百分点)。定性可解释性分析表明,虽然患者的主要诊断未明确用于训练模型,但对模型预测至关重要的特征可能反映了患者的诊断。我们的模型可在出院处置期间用作额外的临床决策辅助工具,并对高风险患者进行分类,以便在出院后进行更密切的随访以采取潜在的预防措施。