Duan Yongrui, Huo Jiazhen, Chen Mingzhou, Hou Fenggang, Yan Guoliang, Li Shufang, Wang Haihui
School of Economics & Management, Tongji University, Shanghai, China.
Department of Oncology, Shanghai Municipal Hospital of Traditional Chinese Medicine, Shanghai, China.
Appl Intell (Dordr). 2023 Jan 17:1-17. doi: 10.1007/s10489-022-04425-z.
Sepsis is a life-threatening medical condition that is characterized by the dysregulated immune system response to infections, having both high morbidity and mortality rates. Early prediction of sepsis is critical to the decrease of mortality. This paper presents a novel early warning model called Double Fusion Sepsis Predictor (DFSP) for sepsis onset. DFSP is a double fusion framework that combines the benefits of early and late fusion strategies. First, a hybrid deep learning model that combines both the convolutional and recurrent neural networks to extract deep features is proposed. Second, deep features and handcrafted features, such as clinical scores, are concatenated to build the joint feature representation (early fusion). Third, several tree-based models based on joint feature representation are developed to generate the risk scores of sepsis onset that are combined with an End-to-End neural network for final sepsis detection (late fusion). To evaluate DFSP, a retrospective study was conducted, which included patients admitted to the ICUs of a hospital in Shanghai China. The results demonstrate that the DFSP outperforms state-of-the-art approaches in early sepsis prediction.
脓毒症是一种危及生命的医学病症,其特征是免疫系统对感染的反应失调,发病率和死亡率都很高。脓毒症的早期预测对于降低死亡率至关重要。本文提出了一种名为双融合脓毒症预测器(DFSP)的新型脓毒症发病早期预警模型。DFSP是一个双融合框架,结合了早期和晚期融合策略的优点。首先,提出了一种结合卷积神经网络和循环神经网络来提取深度特征的混合深度学习模型。其次,将深度特征和手工制作的特征(如临床评分)连接起来,构建联合特征表示(早期融合)。第三,基于联合特征表示开发了几种基于树的模型,以生成脓毒症发病的风险评分,并与端到端神经网络相结合进行最终的脓毒症检测(晚期融合)。为了评估DFSP,进行了一项回顾性研究,该研究纳入了中国上海一家医院重症监护病房收治的患者。结果表明,DFSP在早期脓毒症预测方面优于现有方法。