Moni Merlin, Sathyapalan Dipu T, Edathadathil Fabia, Razak M Abdul, Nair Sivapriya G, Nair Chithira V, Samban Swathy S, Prasanna Preetha, Kulirankal Kiran G, Purushothaman Shyam Sundar, Gutjahr Georg, Ying Jiang, John Teny M
Division of Infectious Diseases, Department of General Medicine, Amrita Institute of Medical Science and Research Centre, Amrita Vishwa Vidyapeetham, Kochi, Kerala, India.
Department of Infection Control and Epidemiology, Amrita Institute of Medical Science and Research Centre, Amrita Vishwa Vidyapeetham, Kochi, Kerala, India.
Open Forum Infect Dis. 2024 Jul 23;11(7):ofae406. doi: 10.1093/ofid/ofae406. eCollection 2024 Jul.
Coronavirus disease 2019 (COVID-19)-associated pulmonary aspergillosis (CAPA) is a life-threatening fungal infection. Studies focusing on CAPA in low- and middle-income countries are limited.
This retrospective matched case-control study was conducted at a tertiary care center in South India. Cases of CAPA were classified using the 2020 European Confederation of Medical Mycology/International Society for Human and Animal Mycology consensus criteria. A total of 95 cases were matched 1:1 with COVID-19 patients without CAPA. Matching was done based on age and period of admission. Inverse probability weighting was used to account for imbalances in COVID-19 severity and intensive care unit (ICU) admission. Data on demographics, clinical details, microbiologic and radiologic data, and treatment outcomes were collected. A predictive score for CAPA was developed from baseline risk factors.
The predictive score identified lymphopenia, European Organisation for Research and Treatment of Cancer risk factors, and broad-spectrum antibiotic use as the main risk factors for CAPA. Positivity for bacterial pathogens in blood or bronchoalveolar lavage samples reduced the risk of CAPA. The predictive model performed well in cross-validation, with an area under the curve value of 82%. CAPA diagnosis significantly increased mortality and shift to ICU.
The predictive model derived from the current study offers a valuable tool for clinicians, especially in high-endemic low- and middle-income countries, for the early identification and treatment of CAPA. With further validation, this risk score could improve patient outcomes.
2019冠状病毒病(COVID-19)相关肺曲霉病(CAPA)是一种危及生命的真菌感染。针对低收入和中等收入国家CAPA的研究有限。
这项回顾性配对病例对照研究在印度南部的一家三级医疗中心进行。CAPA病例根据2020年欧洲医学真菌学联合会/国际人类和动物真菌学学会的共识标准进行分类。总共95例CAPA病例与无CAPA的COVID-19患者进行1:1配对。配对基于年龄和入院时间。采用逆概率加权法来处理COVID-19严重程度和重症监护病房(ICU)入住情况的不平衡。收集了人口统计学、临床细节、微生物学和放射学数据以及治疗结果。从基线风险因素中开发了CAPA的预测评分。
预测评分确定淋巴细胞减少、欧洲癌症研究与治疗组织风险因素以及使用广谱抗生素是CAPA的主要风险因素。血液或支气管肺泡灌洗样本中细菌病原体呈阳性降低了CAPA的风险。预测模型在交叉验证中表现良好,曲线下面积值为82%。CAPA诊断显著增加死亡率并导致转至ICU。
本研究得出的预测模型为临床医生提供了一个有价值的工具,尤其是在高流行率的低收入和中等收入国家,用于CAPA的早期识别和治疗。经过进一步验证,该风险评分可以改善患者预后。