Zou Ju, Li Hai, Deng Guohong, Wang Xianbo, Zheng Xin, Chen Jinjun, Meng Zhongji, Zheng Yubao, Gao Yanhang, Qian Zhiping, Liu Feng, Lu Xiaobo, Shi Yu, Shang Jia, Huang Yan, Chen Ruochan
Department of Infectious Diseases, Hunan Key Laboratory of Viral Hepatitis, Xiangya Hospital, , Central South University, Changsha, China.
Department of Gastroenterology, School of Medicine, Ren Ji Hospital, Shanghai Jiao Tong University, Shanghai, China.
Hepatol Int. 2025 Jul 28. doi: 10.1007/s12072-025-10855-x.
We aimed to develop an effective model to identify the risk of concurrent bacterial infections in older patients with acute-on-chronic liver disease (AoCLD).
Data from 809 individuals aged 60-80 sourced from the CATCH-LIFE cohort were analyzed. Participants were randomly assigned to training and internal validation groups at a ratio of 7:3. An independent cohort of 336 older inpatients with AoCLD from Xiangya Hospital, Central South University was used to conduct an external validation of the model. Independent risk factors were identified using LASSO and logistic regression analysis in the training cohort and were subsequently used to develop a user-friendly model. Model performance was evaluated using area under the curve (AUC), calibration plots, and decision curve analysis in the internal and external validation cohorts. Two different cutoff values were determined to stratify infection risk in older patients with AoCLD.
The infection rate among older patients with AoCLD was 30.28%. Pulmonary infections were predominant, accounting for 93% of all infections. Gram-negative bacteria were the most frequently isolated pathogens, representing 64% of cases in this population. The novel model developed to identify bacterial infections included three variables: cirrhosis, absolute neutrophil count, and C-reactive protein (CRP) level. The AUC for the training, internal, and external validation datasets demonstrated high accuracy in identifying bacterial infections (AUC of the training dataset = 0.805, AUC of the internal validation dataset = 0.848, and AUC of the external validation dataset = 0.838). The model significantly outperformed neutrophil count, CRP level, and procalcitonin level alone in detecting bacterial infections among older patients with AoCLD. To facilitate clinical decision-making, we defined two cutoff values of prediction probability: a low cutoff of 32.2% to rule out bacterial infections and a high cutoff of 47.9% to confidently confirm bacterial infections.
Our model aids in the early and precise diagnosis of bacterial infections in older patients with AoCLD, thereby facilitating prompt interventions to prevent adverse outcomes.
我们旨在开发一种有效的模型,以识别老年慢性肝病急性发作(AoCLD)患者并发细菌感染的风险。
分析了来自CATCH-LIFE队列的809名年龄在60 - 80岁个体的数据。参与者以7:3的比例随机分配到训练组和内部验证组。使用来自中南大学湘雅医院的336名老年AoCLD住院患者的独立队列对该模型进行外部验证。在训练队列中使用LASSO和逻辑回归分析确定独立危险因素,随后用于开发一个用户友好型模型。在内部和外部验证队列中,使用曲线下面积(AUC)、校准图和决策曲线分析来评估模型性能。确定了两个不同的截断值,以对老年AoCLD患者的感染风险进行分层。
老年AoCLD患者的感染率为30.28%。肺部感染最为常见,占所有感染的93%。革兰氏阴性菌是最常分离出的病原体,占该人群病例的64%。开发的用于识别细菌感染的新模型包括三个变量:肝硬化、绝对中性粒细胞计数和C反应蛋白(CRP)水平。训练数据集、内部验证数据集和外部验证数据集的AUC在识别细菌感染方面显示出高精度(训练数据集的AUC = 0.805,内部验证数据集的AUC = 0.848,外部验证数据集的AUC = 0.838)。在检测老年AoCLD患者的细菌感染方面,该模型明显优于单独的中性粒细胞计数、CRP水平和降钙素原水平。为便于临床决策,我们定义了两个预测概率的截断值:低截断值为32.2%以排除细菌感染,高截断值为47.9%以可靠地确认细菌感染。
我们的模型有助于早期准确诊断老年AoCLD患者的细菌感染,从而促进及时干预以预防不良后果。