一个时间感知神经模型,用于脊柱手术后准确和可解释的住院时间预测。

IF 3.4 Q2 HEALTH CARE SCIENCES & SERVICES
JAMIA Open Pub Date : 2025-07-25 eCollection Date: 2025-08-01 DOI:10.1093/jamiaopen/ooaf079
Ha Na Cho, Sairam Sutari, Alexander Lopez, Hansen Bow, Kai Zheng
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引用次数: 0

摘要

目的:开发和评估用于预测择期脊柱手术住院时间(LOS)的机器学习(ML)模型,重点关注时间建模和模型可解释性的好处。材料和方法:我们比较了传统的机器学习模型(如线性回归、随机森林、支持向量机[SVM]和XGBoost)和我们开发的模型,使用结构化的围手术期电子健康记录(EHR)数据,一个具有注意力的掩蔽双向长短期记忆(BiLSTM)。使用决定系数(r2)评估绩效,并使用可解释的AI确定关键预测因子。结果:surgylstm获得了最高的预测准确率(r2 = 0.86),优于XGBoost (r2 = 0.85)和基线模型。注意机制通过动态识别术前临床序列中有影响的时间段,提高了可解释性,使临床医生能够追踪哪些事件或特征对每次LOS预测贡献最大。LOS的主要预测因素包括骨紊乱、慢性肾脏疾病和腰椎融合,这些因素被认为是LOS最重要的预测因素。讨论:具有注意力机制的时间建模通过捕获患者数据的顺序特性显著改善了LOS预测。与静态模型不同,surgylstm提供了更高的准确性和更大的可解释性,这对临床应用至关重要。这些结果突出了将基于注意力的时间模型集成到医院规划工作流程中的潜力。结论:在选择性脊柱手术中,surgical stm为LOS预测提供了一种有效且可解释的人工智能解决方案。我们的研究结果支持将时间,可解释的ML方法整合到临床决策支持系统中,以增强出院准备和个性化患者护理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

SurgeryLSTM: a time-aware neural model for accurate and explainable length of stay prediction after spine surgery.

SurgeryLSTM: a time-aware neural model for accurate and explainable length of stay prediction after spine surgery.

SurgeryLSTM: a time-aware neural model for accurate and explainable length of stay prediction after spine surgery.

SurgeryLSTM: a time-aware neural model for accurate and explainable length of stay prediction after spine surgery.

Objective: To develop and evaluate machine learning (ML) models for predicting length of stay (LOS) in elective spine surgery, with a focus on the benefits of temporal modeling and model interpretability.

Materials and methods: We compared traditional ML models (eg, Linear Regression, Random Forest, Support Vector Machine [SVM], and XGBoost) with our developed model, SurgeryLSTM, a masked bidirectional long short-term memory (BiLSTM) with an attention, using structured perioperative electronic health records (EHR) data. Performance was evaluated using the coefficient of determination (R 2), and key predictors were identified using explainable AI.

Results: SurgeryLSTM achieved the highest predictive accuracy (R 2 = 0.86), outperforming XGBoost (R 2 = 0.85) and baseline models. The attention mechanism improved interpretability by dynamically identifying influential temporal segments within preoperative clinical sequences, allowing clinicians to trace which events or features most contributed to each LOS prediction. Key predictors of LOS included bone disorder, chronic kidney disease, and lumbar fusion identified as the most impactful predictors of LOS.

Discussion: Temporal modeling with attention mechanisms significantly improves LOS prediction by capturing the sequential nature of patient data. Unlike static models, SurgeryLSTM provides both higher accuracy and greater interpretability, which are critical for clinical adoption. These results highlight the potential of integrating attention-based temporal models into hospital planning workflows.

Conclusion: SurgeryLSTM presents an effective and interpretable AI solution for LOS prediction in elective spine surgery. Our findings support the integration of temporal, explainable ML approaches into clinical decision support systems to enhance discharge readiness and individualized patient care.

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来源期刊
JAMIA Open
JAMIA Open Medicine-Health Informatics
CiteScore
4.10
自引率
4.80%
发文量
102
审稿时长
16 weeks
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