Perng Jau-Woei, Kao I-Hsi, Kung Chia-Te, Hung Shih-Chiang, Lai Yi-Horng, Su Chih-Min
Department of Mechanical and Electro-Mechanical Engineering, National Sun Yat-sen University, Kaohsiung 804, Taiwan.
Department of Emergency Medicine, Kaohsiung Chang Gung Memorial Hospital, Chang Gung University College of Medicine, Kaohsiung 83301, Taiwan.
J Clin Med. 2019 Nov 7;8(11):1906. doi: 10.3390/jcm8111906.
In emergency departments, the most common cause of death associated with suspected infected patients is sepsis. In this study, deep learning algorithms were used to predict the mortality of suspected infected patients in a hospital emergency department. During January 2007 and December 2013, 42,220 patients considered in this study were admitted to the emergency department due to suspected infection. In the present study, a deep learning structure for mortality prediction of septic patients was developed and compared with several machine learning methods as well as two sepsis screening tools: the systemic inflammatory response syndrome (SIRS) and quick sepsis-related organ failure assessment (qSOFA). The mortality predictions were explored for septic patients who died within 72 h and 28 days. Results demonstrated that the accuracy rate of deep learning methods, especially Convolutional Neural Network plus SoftMax (87.01% in 72 h and 81.59% in 28 d), exceeds that of the other machine learning methods, SIRS, and qSOFA. We expect that deep learning can effectively assist medical staff in early identification of critical patients.
在急诊科,与疑似感染患者相关的最常见死因是脓毒症。在本研究中,深度学习算法被用于预测医院急诊科疑似感染患者的死亡率。在2007年1月至2013年12月期间,本研究纳入的42220例患者因疑似感染而入住急诊科。在本研究中,开发了一种用于脓毒症患者死亡率预测的深度学习结构,并将其与几种机器学习方法以及两种脓毒症筛查工具进行比较:全身炎症反应综合征(SIRS)和快速脓毒症相关器官功能衰竭评估(qSOFA)。对在72小时内和28天内死亡的脓毒症患者的死亡率预测进行了探究。结果表明,深度学习方法的准确率,尤其是卷积神经网络加SoftMax(72小时时为87.01%,28天时为81.59%)超过了其他机器学习方法、SIRS和qSOFA。我们期望深度学习能够有效协助医护人员早期识别危重症患者。