利用图形链模型模拟 COVID-19 对健康的长期影响 简标题: 利用图形链模型预测 COVID 的长期影响。

IF 3.4 3区 医学 Q2 INFECTIOUS DISEASES
K Gourgoura, P Rivadeneyra, E Stanghellini, C Caroni, F Bartolucci, R Curcio, S Bartoli, R Ferranti, I Folletti, M Cavallo, L Sanesi, I Dominioni, E Santoni, G Morgana, M B Pasticci, G Pucci, G Vaudo
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引用次数: 0

摘要

背景:感染 SARS-CoV-2 后,约有 10% 的严重 COVID-19 幸存者会出现长期后遗症,即长期 COVID 综合征。这种症状包括多种躯体症状和器官功能障碍的客观指标,是个体易感因素和疾病急性表现之间复杂相互作用的结果。我们的目的是使用图形链模型 (GCM),在 COVID-19 相关重症肺炎住院幸存者群体中描述 COVID 长期症状及其预测因素之间的复杂关系。方法:我们对在意大利特尔尼 "圣玛丽亚 "大学医院非重症病房住院的 96 名重症 COVID-19 患者进行了 3-6 个月的随访。收集的数据包括目前和之前的临床状况、药物治疗、住院期间的检查结果、随访时器官受损的症状和体征。通过静息肺功能测试、超声心动图、高分辨率胸部断层扫描(HRCT)和心肺运动测试(CPET)对静态和动态的心脏和呼吸参数进行了评估:确定了 12 个临床上最相关的因素,并在 GCM 中将其分为四个有序区块:区块 1 - 性别、吸烟、年龄和体重指数(BMI);区块 2 - 入住重症监护室(ICU)和随访天数;区块 3 - 峰值耗氧量(VO2)、第一秒用力呼气容积(FEV1)、D-二聚体水平、抑郁评分和是否存在疲劳;区块 4 - HRCT 病理结果。较高的体重指数和吸烟对患者入住重症监护室的概率有显著影响。VO2 与随访时间有关。FEV1 与自我评估的疲劳指标有关,而疲劳又与抑郁评分有显著关联。值得注意的是,疲劳和抑郁都不取决于第2组变量,包括随访时间:GCM 所展示的变量间关系的生物学合理性验证了这种方法的有效性,它是阐明结构特征(如条件依赖性和关联性)的重要统计工具。通过确定预测因素和制定合适的治疗策略,这种有前途的方法有望探索 COVID-19 对健康的长期影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling the long-term health impact of COVID-19 using Graphical Chain Models brief heading: long COVID prediction by graphical chain models.

Background: Long-term sequelae of SARS-CoV-2 infection, namely long COVID syndrome, affect about 10% of severe COVID-19 survivors. This condition includes several physical symptoms and objective measures of organ dysfunction resulting from a complex interaction between individual predisposing factors and the acute manifestation of disease. We aimed at describing the complexity of the relationship between long COVID symptoms and their predictors in a population of survivors of hospitalization for severe COVID-19-related pneumonia using a Graphical Chain Model (GCM).

Methods: 96 patients with severe COVID-19 hospitalized in a non-intensive ward at the "Santa Maria" University Hospital, Terni, Italy, were followed up at 3-6 months. Data regarding present and previous clinical status, drug treatment, findings recorded during the in-hospital phase, presence of symptoms and signs of organ damage at follow-up were collected. Static and dynamic cardiac and respiratory parameters were evaluated by resting pulmonary function test, echocardiography, high-resolution chest tomography (HRCT) and cardiopulmonary exercise testing (CPET).

Results: Twelve clinically most relevant factors were identified and partitioned into four ordered blocks in the GCM: block 1 - gender, smoking, age and body mass index (BMI); block 2 - admission to the intensive care unit (ICU) and length of follow-up in days; block 3 - peak oxygen consumption (VO2), forced expiratory volume at first second (FEV1), D-dimer levels, depression score and presence of fatigue; block 4 - HRCT pathological findings. Higher BMI and smoking had a significant impact on the probability of a patient's admission to ICU. VO2 showed dependency on length of follow-up. FEV1 was related to the self-assessed indicator of fatigue, and, in turn, fatigue was significantly associated with the depression score. Notably, neither fatigue nor depression depended on variables in block 2, including length of follow-up.

Conclusions: The biological plausibility of the relationships between variables demonstrated by the GCM validates the efficacy of this approach as a valuable statistical tool for elucidating structural features, such as conditional dependencies and associations. This promising method holds potential for exploring the long-term health repercussions of COVID-19 by identifying predictive factors and establishing suitable therapeutic strategies.

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来源期刊
BMC Infectious Diseases
BMC Infectious Diseases 医学-传染病学
CiteScore
6.50
自引率
0.00%
发文量
860
审稿时长
3.3 months
期刊介绍: BMC Infectious Diseases is an open access, peer-reviewed journal that considers articles on all aspects of the prevention, diagnosis and management of infectious and sexually transmitted diseases in humans, as well as related molecular genetics, pathophysiology, and epidemiology.
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