Home > Pulmonology > ATS 2021 > Best of the Posters > Tobacco biomarkers do not improve prediction of lung cancer risk

Tobacco biomarkers do not improve prediction of lung cancer risk

Presented by
Dr Christine Lambert, University of Minnesota, USA
Conference
ATS 2021
Trial
PLCO
Previous studies have demonstrated tobacco biomarkers to be associated with lung cancer. Nonetheless, a case-control study showed that the integration of 3 relevant tobacco biomarkers in the validated lung cancer prediction model PLCOm2012 did not improve the performance of this validated model.

The lung cancer risk prediction model PLCOm2012 is a validated logistic regression lung cancer risk prediction model based on data collected from the control arm of the PLCO trial. This model uses historical and demographic data to identify individuals who should receive cancer screening. Previous studies have shown that biomarkers of tobacco exposure are associated with lung cancer, but they were never used in the prediction of lung cancer risk. Therefore, Dr Christine Lambert (University of Minnesota, USA) and her co-workers created a new lung cancer risk prediction model that incorporated 3 tobacco biomarkers into the PLCOm2012 model: serum cotinine level, NNAL, and PheT [1]. Cotinine is a metabolite of nicotine. Both NNAL and PheT are metabolites of polycyclic aromatic hydrocarbons (PAH), which are believed to be among the principal causative agents for lung cancer in smokers [2]. This case-control study was performed with the aim to assess whether including these biomarkers can improve the prediction of 6-year lung cancer risk.

Lung cancer cases (n=72) diagnosed within 6 years of PLCOm2012 randomisation –to match the prediction time frame of this model– were compared with 115 cancer-free controls drawn from current smokers in the screening arm of PLCO. Smoking-pack years and levels of the 3 tobacco biomarkers were higher in lung cancer cases compared with controls. “In the logistic regression model, the PLCOm2012 was a significant predictor of lung cancer risk,” Dr Lambert said. In contrast, all 3 biomarkers did not predict lung cancer risk after accounting for the PLCOm2012 risk score. “The addition of biomarkers did not improve the performance of the prediction model for lung cancer risk compared with the PLCOm2012 model alone,” concluded Dr Lambert. Lack of study population diversity and heavy smoking amongst cases and controls may have limited the tobacco biomarker effect and its predictive ability.

  1. Lambert C, et al. Use of tobacco biomarkers in lung cancer risk assessment. Session TP136: Thematic Poster session: Lung cancer, thoracic oncology. ATS 2021 International conference, 14-19 May 2021.
  2. Yuan JM, et al. Cancer Res 2011:71:6749-57.

Copyright ©2021 Medicom Medical Publishers



Posted on