Tao Xiaofen, Ye Sheng
Department of Pulmonology, Children's Hospital, Zhejiang University School of Medicine, National Clinical Research Center for Child Health, Hangzhou, Zhejiang, 310052, China.
Department of Pediatric Intensive Care Unit, Children's Hospital, Zhejiang University School of Medicine, National Clinical Research Center for Child Health, No. 3333 Binsheng Road, Hangzhou, Zhejiang, 310052, China.
BMC Pediatr. 2025 Apr 28;25(1):331. doi: 10.1186/s12887-025-05461-7.
Adenovirus infection causes considerable morbidity and mortality in pediatric patients, primarily those affected by severe respiratory system involvement. Although prevalent, it often presents vague indications, making accurate diagnosis and management challenging. This study aims to set some risk factors for invasive mechanical ventilation, ECMO, and mortality in children with severe adenovirus infection admitted to PICU.
We evaluated 66 children with severe adenovirus infection admitted to the PICU of Children's Hospital, Zhejiang University School of Medicine, from 2018 to 2019. Data on general conditions, clinical manifestations, laboratory findings, pathogenetic and radiological discoveries, treatments, therapeutic efficacy, and outcomes were collected. Machine learning models were used to predict the need for invasive mechanical ventilation, ECMO, and mortality.
Of the 66 patients, 5 died, and 61 survived. Significant factors related to mortality included heart failure (p = 0.005), pericardial effusion (p = 0.032), septic shock (p = 0.009), hemoglobin levels (p = 0.013), lactate dehydrogenase (p = 0.022), albumin (p = 0.035), normal creatinine levels (p = 0.037), and pneumothorax (p = 0.002). Additional risk factors for invasive mechanical ventilation included acute respiratory distress syndrome and encephalopathy. Low breath sounds were identified as a risk factor for ECMO. For predicting poor outcomes, including invasive mechanical ventilation, ECMO, or mortality, the random forest model using these factors demonstrated high accuracy, with an area under the curve of 0.968.
The study indicates poor prognosis in children with severe adenovirus infection is significantly related to comorbidities and clinical symptoms. Machine learning models can accurately predict adverse outcomes, providing valuable insights for management and treatment. Identifying high-risk patients using these models can improve clinical outcomes by guiding timely and appropriate interventions.
The article is a retrospective study without a clinical trial number, so it is not applicable.
腺病毒感染在儿科患者中会导致相当高的发病率和死亡率,主要是那些受到严重呼吸系统累及的患者。尽管该感染很常见,但它常常表现出不明确的症状,使得准确诊断和管理具有挑战性。本研究旨在确定入住儿科重症监护病房(PICU)的重症腺病毒感染儿童发生有创机械通气、体外膜肺氧合(ECMO)及死亡的一些危险因素。
我们评估了2018年至2019年期间入住浙江大学医学院附属儿童医院PICU的66例重症腺病毒感染儿童。收集了一般情况、临床表现、实验室检查结果、病原学和影像学发现、治疗、治疗效果及结局等数据。使用机器学习模型来预测有创机械通气、ECMO及死亡的需求。
66例患者中,5例死亡,61例存活。与死亡相关的显著因素包括心力衰竭(p = 0.005)、心包积液(p = 0.032)、感染性休克(p = 0.009)、血红蛋白水平(p = 0.013)、乳酸脱氢酶(p = 0.022)、白蛋白(p = 0.035)、肌酐水平正常(p = 0.037)和气胸(p = 0.002)。有创机械通气的其他危险因素包括急性呼吸窘迫综合征和脑病。低呼吸音被确定为ECMO的危险因素。对于预测包括有创机械通气、ECMO或死亡在内的不良结局,使用这些因素的随机森林模型显示出高准确性,曲线下面积为0.968。
该研究表明,重症腺病毒感染儿童的预后不良与合并症及临床症状显著相关。机器学习模型可以准确预测不良结局,为管理和治疗提供有价值的见解。使用这些模型识别高危患者可以通过指导及时和适当的干预来改善临床结局。
本文是一项回顾性研究,没有临床试验编号,因此不适用。