A Lightweight LSTM-Transformer Fusion Architecture for Real-Time Sepsis Mortality Prediction.

IF 2.1 3区 医学 Q2 CRITICAL CARE MEDICINE
Zekai Yu, Feiwei Qin, Zhu Zhu
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引用次数: 0

Abstract

BackgroundAccurate prediction of short-term mortality in sepsis patients is critical for timely clinical decision-making. However, existing deep learning models often focus on static physiological parameters while neglecting the dynamic response to medical interventions, leading to risk underestimation due to the "masking effect" of therapeutic measures.MethodsWe propose a lightweight hybrid deep learning framework that integrates dynamic intervention responses to predict 24-h all-cause mortality. Utilizing the MIMIC-IV v3.1 database, we included 13,788 adult sepsis patients. The model employs a dual-branch architecture: a Bidirectional LSTM to capture local temporal trends and a Transformer Encoder to extract global long-range dependencies. Crucially, we constructed a high-resolution feature set that includes vasopressor infusion rates and hourly urine output to quantify physiological feedback to resuscitation.ResultsThe proposed model achieved an Area Under the Receiver Operating Characteristic Curve (AUROC) of 0.8139, significantly outperforming seven mainstream baselines, including LightGBM (0.8015), Bi-LSTM (0.7870), and pure Transformer models (0.7704). Feature importance analysis revealed that indicators of treatment response, specifically urine output and norepinephrine dosage, were among the top predictive features, validating the clinical hypothesis that drug dependency and renal perfusion are sensitive markers of prognosis. Furthermore, external validation on the independent multi-center eICU Collaborative Research Database demonstrated robust generalizability: a zero-shot transfer yielded an AUROC of 0.6620, which improved to 0.7347 after lightweight domain adaptation fine-tuning, with a Negative Predictive Value (NPV) of 90.04%, confirming the model's cross-institutional applicability as a reliable rule-out tool.ConclusionOur LSTM-Transformer Fusion architecture effectively captures the complex "drug-physiology" interactions with low computational cost. By explicitly modeling the dynamic response to treatment and demonstrating cross-institutional generalizability through external validation on the eICU database, this lightweight model offers a robust and interpretable tool for early warning systems in resource-constrained intensive care environments.

用于脓毒症死亡率实时预测的轻量级LSTM-Transformer融合架构。
背景准确预测脓毒症患者的短期死亡率对于及时的临床决策至关重要。然而,现有的深度学习模型往往只关注静态的生理参数,而忽略了对医疗干预的动态响应,导致治疗措施的“掩蔽效应”导致风险低估。我们提出了一个轻量级的混合深度学习框架,该框架集成了动态干预反应,以预测24小时全因死亡率。利用MIMIC-IV v3.1数据库,我们纳入了13788例成人脓毒症患者。该模型采用双分支架构:一个双向LSTM捕获局部时间趋势,一个Transformer Encoder提取全局远程依赖关系。至关重要的是,我们构建了一个高分辨率的特征集,包括血管加压剂输注率和每小时尿量,以量化对复苏的生理反馈。结果该模型的受试者工作特征曲线下面积(AUROC)为0.8139,显著优于LightGBM(0.8015)、Bi-LSTM(0.7870)和纯Transformer模型(0.7704)等7个主流基线。特征重要性分析显示,治疗反应指标,特别是尿量和去甲肾上腺素剂量是最重要的预测特征,验证了药物依赖和肾灌注是预后敏感指标的临床假设。此外,在独立的多中心eICU协同研究数据库上进行的外部验证表明,该模型具有较强的泛化能力:零转移的AUROC为0.6620,经过轻量域自适应微调后提高到0.7347,负预测价值(NPV)为90.04%,证实了该模型作为可靠的排除工具的跨机构适用性。结论LSTM-Transformer Fusion架构能够有效捕获复杂的“药物-生理”相互作用,且计算成本低。通过明确建模对治疗的动态反应,并通过eICU数据库的外部验证证明跨机构的可推广性,这个轻量级模型为资源受限的重症监护环境中的早期预警系统提供了一个强大且可解释的工具。
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来源期刊
Journal of Intensive Care Medicine
Journal of Intensive Care Medicine CRITICAL CARE MEDICINE-
CiteScore
7.60
自引率
3.20%
发文量
107
期刊介绍: Journal of Intensive Care Medicine (JIC) is a peer-reviewed bi-monthly journal offering medical and surgical clinicians in adult and pediatric intensive care state-of-the-art, broad-based analytic reviews and updates, original articles, reports of large clinical series, techniques and procedures, topic-specific electronic resources, book reviews, and editorials on all aspects of intensive/critical/coronary care.
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