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首页> 外文期刊>Results in Physics >Application of PET/CT image under convolutional neural network model in postoperative pneumonia virus infection monitoring of patients with non-small cell lung cancer
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Application of PET/CT image under convolutional neural network model in postoperative pneumonia virus infection monitoring of patients with non-small cell lung cancer

机译:在非小细胞肺癌患者术后肺炎病毒感染监测卷积神经网络模型中PET / CT图像的应用

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摘要

It was to study the adoption of positron emission computed tomography (PET-CT) based on the convolutional neural networks (CNN) model in the monitoring of postoperative pneumonia virus infection in patients with non-small cell lung cancer (NSCLC). 120 patients with NSCLC were set as the research object. CNN model was constructed and applied to PET-CT images to identify lesions and screen tumor markers for detection. Then, the patients were randomly divided into group A (CT), group B (PET-CT), group C (PET-CT based on artificial neural network model), and group D (PET-CT diagnosis based on CNN model), 30 cases in each group, and infection surveillance was conducted. The result showed that the accuracy (Acc), sensitivity (Sen), and specificity (Spe) of PET-CT image recognition based on the CNN model were 99.31%, 100%, and 98.31%, respectively. The proportion of serum neutrophils, white blood cell count, and PCT content in group D three days after operation were significantly lower than those in groups B, C, and A (P?
机译:正是根据非小细胞肺癌(NSCLC)患者术后肺炎病毒感染监测的卷积神经网络(CNN)模型来研究采用正电子发射计算机断层扫描(PET-CT)。 120例NSCLC患者被设定为研究对象。 CNN模型被构造并应用于PET-CT图像以鉴定病变和筛网肿瘤标志物进行检测。然后,将患者随机分为A(CT),B组(PET-CT),C组(基于人工神经网络模型的PET-CT),D组(基于CNN模型的PET-CT诊断),每组30例,进行感染监测。结果表明,基于CNN模型的PET-CT图像识别的精度(ACC),敏感度(SEN)和特异性(SPE)分别为99.31%,100%和98.31%。术后三天血清中性粒细胞,白细胞计数和PCT含量的比例显着低于B,C和A组(p≤0.05)。 D组手术伤口感染和肺感染患者的比例分别为6.54%和15.38%,显着低于B,C和A组(p≤0.05)。 A,B,C和D组中患者的并发症率分别为32.4%,30.2%,28.75和8.7%。 D组患者的并发症率明显低于其他三组(P?<〜0.05)。简而言之,基于CNN模型的PET-CT图像具有高精度,敏感性和特异性在NSCLC患者中监测术后肺炎病毒感染。将其应用于患者的病毒感染监测可以有效预防患者的肺和手术伤口感染,并改善患者的术后恢复效果。

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