Jebrini Tarek, Ruzicka Michael, Völk Felix, Fonseca Gerardo Jesus Ibarra, Pernpruner Anna, Benesch Christopher, Valdinoci Elisabeth, von Baum Max, Weigl Martin, Subklewe Marion, von Bergwelt-Baildon Michael, Roider Julia, Mayerle Julia, Heindl Bernhard, Adorjan Kristina, Stubbe Hans Christian
Department of Psychiatry and Psychotherapy, Ludwig Maximilian University (LMU) University Hospital, LMU Munich, Munich, Germany.
Department of Medicine III, LMU University Hospital, LMU Munich, Munich, Germany.
Infection. 2025 Jan 16. doi: 10.1007/s15010-024-02459-8.
The Post COVID-19 condition (PCC) is a complex disease affecting health and everyday functioning. This is well reflected by a patient's inability to work (ITW). In this study, we aimed to investigate factors associated with ITW (1) and to design a machine learning-based model for predicting ITW (2) twelve months after baseline. We selected patients from the post COVID care study (PCC-study) with data on their ability to work. To identify factors associated with ITW, we compared PCC patients with and without ITW. For constructing a predictive model, we selected nine clinical parameters: hospitalization during the acute SARS-CoV-2 infection, WHO severity of acute infection, presence of somatic comorbidities, presence of psychiatric comorbidities, age, height, weight, Karnofsky index, and symptoms. The model was trained to predict ITW twelve months after baseline using TensorFlow Decision Forests. Its performance was investigated using cross-validation and an independent testing dataset. In total, 259 PCC patients were included in this analysis. We observed that ITW was associated with dyslipidemia, worse patient reported outcomes (FSS, WHOQOL-BREF, PHQ-9), a higher rate of preexisting psychiatric conditions, and a more extensive medical work-up. The predictive model exhibited a mean AUC of 0.83 (95% CI: 0.78; 0.88) in the 10-fold cross-validation. In the testing dataset, the AUC was 0.76 (95% CI: 0.58; 0.93). In conclusion, we identified several factors associated with ITW. The predictive model performed very well. It could guide management decisions and help setting mid- to long-term treatment goals by aiding the identification of patients at risk of extended ITW.
新冠后状况(PCC)是一种影响健康和日常功能的复杂疾病。患者无法工作(ITW)很好地反映了这一点。在本研究中,我们旨在调查与无法工作相关的因素(1),并设计一个基于机器学习的模型来预测基线后十二个月的无法工作情况(2)。我们从新冠后护理研究(PCC研究)中选取了有工作能力数据的患者。为了确定与无法工作相关的因素,我们比较了有和没有无法工作情况的PCC患者。为构建预测模型,我们选取了九个临床参数:急性严重急性呼吸综合征冠状病毒2感染期间的住院情况、世界卫生组织(WHO)急性感染的严重程度、躯体合并症的存在情况、精神合并症的存在情况、年龄、身高、体重、卡诺夫斯基指数和症状。使用TensorFlow决策森林对该模型进行训练,以预测基线后十二个月的无法工作情况。使用交叉验证和独立测试数据集对其性能进行了研究。本分析共纳入了259例PCC患者。我们观察到,无法工作与血脂异常、患者报告的较差结果(FSS、WHOQOL - BREF、PHQ - 9)、既往精神疾病的较高发生率以及更广泛的医学检查有关。在10倍交叉验证中,预测模型的平均曲线下面积(AUC)为0.83(95%置信区间:0.78;0.88)。在测试数据集中,AUC为0.76(95%置信区间:0.58;0.93)。总之,我们确定了几个与无法工作相关的因素。预测模型表现良好。它可以指导管理决策,并通过帮助识别有长期无法工作风险的患者来协助设定中长期治疗目标。