首页> 外文期刊>Clinica chimica acta: International journal of clinical chemistry and applied molecular biology >Detection of lung cancer using weighted digital analysis of breath biomarkers.
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Detection of lung cancer using weighted digital analysis of breath biomarkers.

机译:使用呼吸生物标记物的加权数字分析检测肺癌。

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BACKGROUND: A combination of biomarkers in a multivariate model may predict disease with greater accuracy than a single biomarker employed alone. We developed a non-linear method of multivariate analysis, weighted digital analysis (WDA), and evaluated its ability to predict lung cancer employing volatile biomarkers in the breath. METHODS: WDA generates a discriminant function to predict membership in disease vs no disease groups by determining weight, a cutoff value, and a sign for each predictor variable employed in the model. The weight of each predictor variable was the area under the curve (AUC) of the receiver operating characteristic (ROC) curve minus a fixed offset of 0.55, where the AUC was obtained by employing that predictor variable alone, as the sole marker of disease. The sign (+/-) was used to invert the predictor variable if a lower value indicated a higher probability of disease. When employed to predict the presence of a disease in a particular patient, the discriminant function was determined as the sum of the weights of all predictor variables that exceeded their cutoff values. The algorithm that generates the discriminant function is deterministic because parameters are calculated from each individual predictor variable without any optimization or adjustment. We employed WDA to re-evaluate data from a recent study of breath biomarkers of lung cancer, comprising the volatile organic compounds (VOCs) in the alveolar breath of 193 subjects with primary lung cancer and 211 controls with a negative chest CT. RESULTS: The WDA discriminant function accurately identified patients with lung cancer in a model employing 30 breath VOCs (ROC curve AUC=0.90; sensitivity=84.5%, specificity=81.0%). These results were superior to multilinear regression analysis of the same data set (AUC=0.74, sensitivity=68.4, specificity=73.5%). WDA test accuracy did not vary appreciably with TNM (tumor, node, metastasis) stage of disease, and results were not affected by tobacco smoking (ROC curve AUC=0.92 in current smokers, 0.90 in former smokers). WDA was a robust predictor of lung cancer: random removal of 1/3 of the VOCs did not reduce the AUC of the ROC curve by 10% (99.7% CI). CONCLUSIONS: A test employing WDA of breath VOCs predicted lung cancer with accuracy similar to chest computed tomography. The algorithm identified dependencies that were not apparent with traditional linear methods. WDA appears to provide a useful new technique for non-linear multivariate analysis of data.
机译:背景:多变量模型中生物标志物的组合比单独使用单个生物标志物可以更准确地预测疾病。我们开发了一种非线性的多元分析,加权数字分析(WDA)方法,并使用呼吸中的挥发性生物标记物评估了其预测肺癌的能力。方法:WDA通过确定模型中使用的每个预测变量的权重,临界值和符号来生成判别函数,以预测疾病组与无疾病组的成员关系。每个预测变量的权重是接收器工作特征(ROC)曲线的曲线下面积(AUC)减去固定偏移量0.55,其中通过单独使用该预测变量作为疾病的唯一标记而获得AUC。如果值较低表示患病的可能性较高,则使用符号(+/-)反转预测变量。当用于预测特定患者中疾病的存在时,判别函数被确定为超过其临界值的所有预测变量的权重之和。生成判别函数的算法是确定性的,因为无需任何优化或调整即可根据每个预测变量来计算参数。我们使用WDA重新评估了最近一项关于肺癌的呼吸生物标记物的研究数据,其中包括193名原发性肺癌患者和211名胸部CT阴性的肺泡呼吸中的挥发性有机化合物(VOC)。结果:WDA判别功能在使用30次呼吸VOC的模型中准确识别出肺癌患者(ROC曲线AUC = 0.90;敏感性= 84.5%,特异性= 81.0%)。这些结果优于同一数据集的多线性回归分析(AUC = 0.74,灵敏度= 68.4,特异性= 73.5%)。 WDA测试的准确性在疾病的TNM(肿瘤,淋巴结转移)阶段没有明显变化,结果也不受吸烟的影响(当前吸烟者的ROC曲线AUC = 0.92,以前吸烟者的0.90)。 WDA是肺癌的有力预测指标:随机去除1/3的VOC不会使ROC曲线的AUC降低> 10%(99.7%CI)。结论:使用呼吸道VOC的WDA进行的测试可预测肺癌,其准确性与胸部计算机断层扫描相似。该算法确定了传统线性方法不明显的依赖性。 WDA似乎为非线性多变量数据分析提供了一种有用的新技术。

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