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首页> 外文期刊>BMC Infectious Diseases >Correlation between lung infection severity and clinical laboratory indicators in patients with COVID-19: a cross-sectional study based on machine learning
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Correlation between lung infection severity and clinical laboratory indicators in patients with COVID-19: a cross-sectional study based on machine learning

机译:Covid-19患者肺感染严重程度与临床实验室指标的相关性:基于机器学习的横截面研究

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摘要

Coronavirus disease 2019 (COVID-19) has caused a global pandemic that has raised worldwide concern. This study aims to investigate the correlation between the extent of lung infection and relevant clinical laboratory testing indicators in COVID-19 and to analyse its underlying mechanism. Chest high-resolution computer tomography (CT) images and laboratory examination data of 31 patients with COVID-19 were extracted, and the lesion areas in CT images were quantitatively segmented and calculated using a deep learning (DL) system. A cross-sectional study method was carried out to explore the differences among the proportions of lung lobe infection and to correlate the percentage of infection (POI) of the whole lung in all patients with clinical laboratory examination values. No significant difference in the proportion of infection was noted among various lung lobes (P??0.05). The POI of total lung was negatively correlated with the peripheral blood lymphocyte percentage (L%) (r?=???0.633, P??0.001) and lymphocyte (LY) count (r?=???0.555, P?=?0.001) but positively correlated with the neutrophil percentage (N%) (r?=?0.565, P?=?0.001). Otherwise, the POI was not significantly correlated with the peripheral blood white blood cell (WBC) count, monocyte percentage (M%) or haemoglobin (HGB) content. In some patients, as the infection progressed, the L% and LY count decreased progressively accompanied by a continuous increase in the N%. Lung lesions in COVID-19 patients are significantly correlated with the peripheral blood lymphocyte and neutrophil levels, both of which could serve as prognostic indicators that provide warning implications, and contribute to clinical interventions in patients.
机译:冠状病毒疾病2019(Covid-19)导致全球大流行引起了全球范围的关注。本研究旨在探讨Covid-19中肺部感染程度与相关临床实验室检测指标之间的相关性,并分析其潜在机制。提取胸部高分辨率计算机断层扫描(CT)图像和实验室检查数据31例Covid-19患者,CT图像中的病变区域使用深度学习(DL)系统定量分割和计算。进行了横截面研究方法,以探讨肺叶感染比例的差异,并将所有肺部患者临床实验室检查值的患者的感染(POI)的百分比相关。在各种肺裂片中注意到感染比例没有显着差异(P?& 0.05)。总肺的POI与外周血淋巴细胞百分比呈负相关(l%)(r?=Δ??0.633,p≤0.001)和淋巴细胞(ly)计数(r?= ??? 0.555,p ?= 0.001)但与中性粒细胞百分比呈正相关(n%)(r?= 0.565,p?= 0.001)。否则,POI与外周血白细胞(WBC)计数,单核细胞百分比(M%)或血红蛋白(HGB)含量没有明显相关。在一些患者中,随着感染的进展情况,L%和Ly计数逐渐减少,持续增加N%。 Covid-19患者中的肺病变与外周血淋巴细胞和中性粒细胞水平显着相关,两者均可以作为预后指标提供警告意义,并有助于患者的临床干预措施。

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