计算机断层分割-体积分析对COVID-19患者临床实验室表现的评价

IF 0.1 Q4 MEDICINE, GENERAL & INTERNAL Gazi Medical Journal Pub Date : 2023-01-01 DOI:10.12996/gmj.2023.8
A. Balik, C. Yucel, E. Sertoğlu, O. Yavuz, G. Taskin, E. Akkoyun, K. Arda, T. Ozgurtas
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引用次数: 0

摘要

目的:COVID-19是由SARS-COV-2引起的疾病,早期诊断和分型对预后至关重要。本研究旨在将COVID-19患者的实验室数据与计算机断层分割-体积分析(CT-SVA)相结合。因此,我们希望对疾病的早期诊断和分类有所贡献。方法:根据病情严重程度将患者分为轻/中度组(n=41)和重/危重组(n=42)。记录一些实验室参数并与CT-SVA一起评估。结果:研究结果显示,重/危重病组患者入院时钠、c反应蛋白、d -二聚体、铁蛋白、纤维蛋白原、白细胞介素6、降钙素原、白细胞、中性粒细胞、中性粒细胞与淋巴细胞比值显著升高(p<0.05),白蛋白、淋巴细胞、静脉血pH值显著降低(p<0.05)。CT-SVA结果与白蛋白呈负相关,与c反应蛋白、d -二聚体、铁蛋白、纤维蛋白原、白细胞介素6、降钙素原呈正相关。接受者工作特征分析结果显示,CT-SVA预测疾病严重程度的截断值为15.92,敏感性为87.1%,特异性为80.0%。二元logistic回归模型包括CT-SVA、d -二聚体、铁蛋白、白细胞介素6和中性粒细胞-淋巴细胞比率。该模型正确分类了88.1%的病例。CT-SVA、d -二聚体、铁蛋白、白细胞介素6和中性粒细胞-淋巴细胞比值被检测为疾病严重程度的独立预测因子。结论:结合CT-SVA结果评价实验室参数有助于发现预后不良的病例,加快干预。
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Evaluation of Clinical Laboratory Findings with Computed Tomography Segmentation-Volume Analysis Results in COVID-19 Patients
Objective: COVID-19 is a disease caused by SARS-COV-2 and early diagnosis and classification of the COVID-19 are critical for the better prognosis. This study aimed to combine laboratory data of COVID-19 patients with Computed Tomography Segmentation-Volume Analysis (CT-SVA). Thus, we hope to contribute to the early diagnosis and classification of the disease. Methods: Patients were divided into two groups according to disease severity as mild/moderate (n=41) and severe/critical (n=42). Some laboratory parameters were recorded and evaluated together with CT-SVA. Results: The results of the study have shown that sodium, C-reactive protein, D-dimer, ferritin, fibrinogen, interleukin 6, procalcitonin, white blood cells, neutrophil, neutrophil-lymphocyte ratio values were significantly higher at first admission in the severe/critical diseased group (p<0.05), while albumin, lymphocyte, and venous blood pH values were significantly lower (p<0.05). CT-SVA results have shown negative correlation with albumin, while having a positive correlation with C-reactive protein, D-dimer, ferritin, fibrinogen, interleukin 6 and procalcitonin. The results of the performed Receiver Operating Characteristics analysis revealed that CT-SVA has a cut-off value of 15.92 with a sensitivity of 87.1% and a specificity of 80.0% in predicting disease severity. Binary logistic regression model has included CT-SVA, D-dimer, ferritin, interleukin 6, and neutrophil-lymphocyte ratio. The model correctly classified 88.1% of cases. CT-SVA, D-dimer, ferritin, interleukin 6, and neutrophil-lymphocyte ratio were detected to be the independent predictors of disease severity. Conclusion: Evaluation of laboratory parameters together with CT-SVA results will help identification of cases with a poor prognosis and accelerate intervention.
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来源期刊
Gazi Medical Journal
Gazi Medical Journal MEDICINE, GENERAL & INTERNAL-
CiteScore
0.30
自引率
0.00%
发文量
105
审稿时长
16 weeks
期刊介绍: Gazi Medical Journal is being published from 1990 four times annually. Gazi Medical Journal is an international journal presenting research results in all medical fields, with the aim of becoming the premier source of high quality research from Eastern Europe , Middle East and Asia. The Gazi Medical Journal is peer-reviewed and is published quarterly in paper and electronic version. The language of the Gazi Medical Journal is English and Turkish. Offerings include research articles, rapid communications, case reports, letters to the editor, meta-analyses and commentaries
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