College of Computer Science and Engineering, Northwest Normal University, 967 Anning East Road, Lanzhou 730070, China.
Math Biosci Eng. 2023 Jun 9;20(7):13356-13378. doi: 10.3934/mbe.2023595.
Sepsis is an organ failure disease caused by an infection acquired in an intensive care unit (ICU), which leads to a high mortality rate. Developing intelligent monitoring and early warning systems for sepsis is a key research area in the field of smart healthcare. Early and accurate identification of patients at high risk of sepsis can help doctors make the best clinical decisions and reduce the mortality rate of patients with sepsis. However, the scientific understanding of sepsis remains inadequate, leading to slow progress in sepsis research. With the accumulation of electronic medical records (EMRs) in hospitals, data mining technologies that can identify patient risk patterns from the vast amount of sepsis-related EMRs and the development of smart surveillance and early warning models show promise in reducing mortality. Based on the Medical Information Mart for Intensive Care Ⅲ, a massive dataset of ICU EMRs published by MIT and Beth Israel Deaconess Medical Center, we propose a Temporal Convolution Attention Model for Sepsis Clinical Assistant Diagnosis Prediction (TCASP) to predict the incidence of sepsis infection in ICU patients. First, sepsis patient data is extracted from the EMRs. Then, the incidence of sepsis is predicted based on various physiological features of sepsis patients in the ICU. Finally, the TCASP model is utilized to predict the time of the first sepsis infection in ICU patients. The experiments show that the proposed model achieves an area under the receiver operating characteristic curve (AUROC) score of 86.9% (an improvement of 6.4% ) and an area under the precision-recall curve (AUPRC) score of 63.9% (an improvement of 3.9% ) compared to five state-of-the-art models.
脓毒症是一种器官衰竭疾病,由重症监护病房(ICU)获得的感染引起,导致高死亡率。开发脓毒症智能监测和预警系统是智能医疗保健领域的一个关键研究领域。早期和准确识别脓毒症高危患者有助于医生做出最佳临床决策,降低脓毒症患者的死亡率。然而,对脓毒症的科学认识仍然不足,导致脓毒症研究进展缓慢。随着医院电子病历(EMR)的积累,能够从大量脓毒症相关 EMR 中识别患者风险模式的数据挖掘技术以及智能监测和预警模型的发展,有望降低死亡率。基于麻省理工学院和 Beth Israel Deaconess 医疗中心发布的大规模 ICU-EMR 数据集 Medical Information Mart for Intensive Care Ⅲ,我们提出了一种用于脓毒症临床辅助诊断预测的时间卷积注意力模型(TCASP),以预测 ICU 患者发生脓毒症感染的概率。首先,从 EMR 中提取脓毒症患者数据。然后,根据 ICU 中脓毒症患者的各种生理特征预测脓毒症的发生概率。最后,利用 TCASP 模型预测 ICU 患者首次发生脓毒症的时间。实验表明,与五种最先进的模型相比,所提出的模型在接收者操作特征曲线(AUROC)下的面积得分达到 86.9%(提高了 6.4%),在精度-召回曲线(AUPRC)下的面积得分达到 63.9%(提高了 3.9%)。