Zhu Mengou, Liao Wan-Ting, Peltekian Alec, Markov Nikolay S, Kang Mengjia, Rasmussen Luke V, Stoeger Thomas, Walunas Theresa L, Misharin Alexander V, Singer Benjamin D, Budinger G R Scott, Wunderink Richard G, Agrawal Ankit, Gao Catherine A
Department of Medicine, Northwestern University Feinberg School of Medicine.
Division of Pulmonary and Critical Care Medicine, Northwestern University Feinberg School of Medicine.
medRxiv. 2025 Jul 16:2025.07.14.25331407. doi: 10.1101/2025.07.14.25331407.
Severe community-acquired pneumonia (CAP) remains a major cause of critical illness, yet there are no validated early clinical criteria to predict short-term treatment outcomes in these patients. Short-term pneumonia treatment outcomes are less affected by confounding factors introduced by a prolonged hospital course, and early prediction of short-term treatment outcomes can help physicians identify those who are likely to fail the current treatment and implement adjustments to existing diagnostic and therapeutic plans. Traditional clinical stability criteria such as Halm's criteria are not calibrated for early outcome prediction in critically ill severe pneumonia patients. We applied the XGBoost algorithm to predict pneumonia cure by day 7-8 post-intubation with clinical features from days 1-3 in mechanically ventilated patients with severe CAP from the Successful Clinical Response in Pneumonia Therapy (SCRIPT) study, a prospective cohort study at a tertiary academic center. Pneumonia episodes were adjudicated for day 7-8 cure status by a panel of critical care physicians using a structured review process. Clinical features that inform Halm's criteria, including vital signs, oxygenation parameters, mental status, and vasopressor use, were extracted from the electronic health record. We also examined model performance by including additional features, such as laboratory data, ventilator settings, and medications. Basic demographic characteristics including age and BMI were also incorporated. Among 85 patients, 42 (49.4%) were cured by day 7-8. The best-performing model, which used Halm's clinical features and ventilator features from days 1-3, achieved a cross-validated AUROC of 0.757. Inclusion of lab and medication data did not significantly improve performance. Key predictors included GCS, norepinephrine requirement, and BMI. We prove the feasibility of using ML models to predict short-term treatment outcomes of severe CAP among critically ill patients with basic clinical features. Future studies should focus on external validation and clinical integration to inform prognosis and early reevaluation of treatment strategy in patients with predicted poor outcomes.
重症社区获得性肺炎(CAP)仍然是危重病的主要病因,但尚无经过验证的早期临床标准来预测这些患者的短期治疗结果。短期肺炎治疗结果受长期住院过程中引入的混杂因素影响较小,而早期预测短期治疗结果有助于医生识别那些可能治疗失败的患者,并对现有诊断和治疗方案进行调整。传统的临床稳定性标准,如哈尔姆标准,并未针对重症肺炎患者的早期预后预测进行校准。我们应用XGBoost算法,根据肺炎治疗成功临床反应(SCRIPT)研究(一项在三级学术中心进行的前瞻性队列研究)中重度CAP机械通气患者第1至3天的临床特征,预测插管后第7至8天的肺炎治愈情况。由一组重症监护医生通过结构化审查过程判定肺炎发作在第7至8天的治愈状态。从电子健康记录中提取了用于哈尔姆标准的临床特征,包括生命体征、氧合参数、精神状态和血管升压药的使用情况。我们还通过纳入其他特征(如实验室数据、呼吸机设置和药物)来检查模型性能。还纳入了包括年龄和BMI在内的基本人口统计学特征。在85例患者中,42例(49.4%)在第7至8天治愈。表现最佳的模型使用了第1至3天的哈尔姆临床特征和呼吸机特征,交叉验证的受试者工作特征曲线下面积(AUROC)为0.757。纳入实验室和药物数据并未显著提高性能。关键预测因素包括格拉斯哥昏迷量表(GCS)、去甲肾上腺素需求量和BMI。我们证明了使用机器学习模型预测重症患者中重度CAP短期治疗结果的可行性,这些患者具有基本临床特征。未来的研究应侧重于外部验证和临床整合,以指导预后以及对预后不良患者的治疗策略进行早期重新评估。