Background/Aim: In 2016 in the United States, 7 of 10 patients were estimated to die following lung cancer diagnosis. This is due to a lack of a reliable screening method that detects early-stage lung cancer. Our aim is to accurately detect early stage lung cancer using algorithms and protein biomarkers. Patients and Methods: A total of 1,479 human plasma samples were processed using a multiplex immunoassay platform. 82 biomarkers and 6 algorithms were explored. There were 351 NSCLC samples (90.3% Stage I, 2.3% Stage II, and 7.4% Stage III/IV). Results: We identified 33 protein biomarkers and developed a classifier using Random Forest. Our test detected early-stage Non-Small Cell Lung Cancer (NSCLC) with a 90% accuracy, 80% sensitivity, and 95% specificity in the validation set using the 33 markers. Conclusion: A specific, noninvasive, early-detection test, in combination with low-dose computed tomography, could increase survival rates and reduce false positives from screenings.
CITATION STYLE
Goebel, C., Louden, C. L., McKenna, R., Onugha, O., Wachtel, A., & Long, T. (2019). Diagnosis of Non-small Cell Lung Cancer for Early Stage Asymptomatic Patients. Cancer Genomics and Proteomics, 16(4), 229–244. https://doi.org/10.21873/cgp.20128
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