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首页> 外文期刊>Journal of thoracic oncology: official publication of the International Association for the Study of Lung Cancer >Exhaled breath analysis with a colorimetric sensor array for the identification and characterization of lung cancer.
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Exhaled breath analysis with a colorimetric sensor array for the identification and characterization of lung cancer.

机译:用比色传感器阵列呼出呼气分析,用于鉴定和表征肺癌。

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INTRODUCTION: The pattern of exhaled breath volatile organic compounds represents a metabolic biosignature with the potential to identify and characterize lung cancer. Breath biosignature-based classification of homogeneous subgroups of lung cancer may be more accurate than a global breath signature. Combining breath biosignatures with clinical risk factors may improve the accuracy of the signature. OBJECTIVES: To develop an exhaled breath biosignature of lung cancer using a colorimetric sensor array and to determine the accuracy of breath biosignatures of lung cancer characteristics with and without the inclusion of clinical risk factors. METHODS: The exhaled breath of 229 study subjects, 92 with lung cancer and 137 controls, was drawn across a colorimetric sensor array. Logistic prediction models were developed and statistically validated based on the color changes of the sensor. Age, sex, smoking history, and chronic obstructive pulmonary disease were incorporated in the prediction models. RESULTS: The validated prediction model of the combined breath and clinical biosignature was moderately accurate at distinguishing lung cancer from control subjects (C-statistic 0.811). The accuracy improved when the model focused on only one histology (C-statistic 0.825-0.890). Individuals with different histologies could be accurately distinguished from one another (C-statistic 0.864 for adenocarcinoma versus squamous cell carcinoma). Moderate accuracies were noted for validated breath biosignatures of stage and survival (C-statistic 0.785 and 0.693, respectively). CONCLUSIONS: A colorimetric sensor array is capable of identifying exhaled breath biosignatures of lung cancer. The accuracy of breath biosignatures can be optimized by evaluating specific histologies and incorporating clinical risk factors.
机译:介绍:呼出的呼吸挥发性有机化合物的图案代表代谢生物系列,具有识别和表征肺癌的可能性。基于呼吸的肺癌均匀亚组分类可能比全球呼吸签名更准确。将呼吸生物充分与临床风险因素组合可以提高签名的准确性。目的:使用比色传感器阵列开发肺癌的呼气呼气生物关键,并确定肺癌特征的呼吸生物炎的准确性,并不包含临床风险因素。方法:229项研究受试者的呼出呼吸,92带肺癌和137个对照,横跨比色传感器阵列。基于传感器的颜色变化,开发和统计验证了物流预测模型。年龄,性别,吸烟病史和慢性阻塞性肺病纳入预测模型。结果:组合呼吸和临床生物炎的验证预测模型适度准确,在控制受试者中区分肺癌(C型统计0.811)。当模型仅关注一个组织学(C统计0.825-0.890)时,准确性改善。可以彼此准确地区分具有不同组织学的个体(用于腺癌与鳞状细胞癌的C态统计0.864)。验证的呼气生物炎病毒阶段和生存期(C统计0.785和0.693分别)注意到中等精度。结论:比色传感器阵列能够识别肺癌的呼出呼吸生物炎。通过评估特定组织学和纳入临床风险因素,可以优化呼吸生物系列的准确性。

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