Assessment of Lung Cancer Risk on the Basis of a Biomarker Panel of Circulating Proteins

Florence Guida, Nan Sun, Leonidas E. Bantis, David C. Muller, Peng Li, Ayumu Taguchi, Dilsher Dhillon, Deepali L. Kundnani, Nikul J. Patel, Qingxiang Yan, Graham Byrnes, Karel G.M. Moons, Anne Tjønneland, Salvatore Panico, Claudia Agnoli, Paolo Vineis, Domenico Palli, Bas Bueno-De-Mesquita, Petra H. Peeters, Antonio AgudoJose M. Huerta, Miren Dorronsoro, Miguel Rodriguez Barranco, Eva Ardanaz, Ruth C. Travis, Karl Smith Byrne, Heiner Boeing, Annika Steffen, Rudolf Kaaks, Anika Hüsing, Antonia Trichopoulou, Pagona Lagiou, Carlo La Vecchia, Gianluca Severi, Marie Christine Boutron-Ruault, Torkjel M. Sandanger, Elisabete Weiderpass, Therese H. Nøst, Kostas Tsilidis, Elio Riboli, Kjell Grankvist, Mikael Johansson, Gary E. Goodman, Ziding Feng, Paul Brennan, Mattias Johansson, Samir M. Hanash

Research output: Contribution to journalArticlepeer-review

111 Scopus citations

Abstract

Importance: There is an urgent need to improve lung cancer risk assessment because current screening criteria miss a large proportion of cases. Objective: To investigate whether a lung cancer risk prediction model based on a panel of selected circulating protein biomarkers can outperform a traditional risk prediction model and current US screening criteria. Design, Setting, and Participants: Prediagnostic samples from 108 ever-smoking patients with lung cancer diagnosed within 1 year after blood collection and samples from 216 smoking-matched controls from the Carotene and Retinol Efficacy Trial (CARET) cohort were used to develop a biomarker risk score based on 4 proteins (cancer antigen 125 [CA125], carcinoembryonic antigen [CEA], cytokeratin-19 fragment [CYFRA 21-1], and the precursor form of surfactant protein B [Pro-SFTPB]). The biomarker score was subsequently validated blindly using absolute risk estimates among 63 ever-smoking patients with lung cancer diagnosed within 1 year after blood collection and 90 matched controls from 2 large European population-based cohorts, the European Prospective Investigation into Cancer and Nutrition (EPIC) and the Northern Sweden Health and Disease Study (NSHDS). Main Outcomes and Measures: Model validity in discriminating between future lung cancer cases and controls. Discrimination estimates were weighted to reflect the background populations of EPIC and NSHDS validation studies (area under the receiver-operating characteristics curve [AUC], sensitivity, and specificity). Results: In the validation study of 63 ever-smoking patients with lung cancer and 90 matched controls (mean [SD] age, 57.7 [8.7] years; 68.6% men) from EPIC and NSHDS, an integrated risk prediction model that combined smoking exposure with the biomarker score yielded an AUC of 0.83 (95% CI, 0.76-0.90) compared with 0.73 (95% CI, 0.64-0.82) for a model based on smoking exposure alone (P =.003 for difference in AUC). At an overall specificity of 0.83, based on the US Preventive Services Task Force screening criteria, the sensitivity of the integrated risk prediction (biomarker) model was 0.63 compared with 0.43 for the smoking model. Conversely, at an overall sensitivity of 0.42, based on the US Preventive Services Task Force screening criteria, the integrated risk prediction model yielded a specificity of 0.95 compared with 0.86 for the smoking model. Conclusions and Relevance: This study provided a proof of principle in showing that a panel of circulating protein biomarkers may improve lung cancer risk assessment and may be used to define eligibility for computed tomography screening..

Original languageEnglish (US)
Article numbere182078
JournalJAMA Oncology
Volume4
Issue number10
DOIs
StatePublished - Oct 2018

ASJC Scopus subject areas

  • Oncology
  • Cancer Research

MD Anderson CCSG core facilities

  • Biostatistics Resource Group
  • Clinical Trials Office

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