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Biomarker-Based Eligibility for Lung Cancer Screening: Validation of the Protein-Based Integral-Risk Model Publisher Pubmed



Zahed H ; Feng X ; Alcala K ; Smithbyrne K ; Moez E ; Guida F ; Albanes D ; Weinstein SJ ; Arslan AA ; Cai Q ; Shu XO ; Zheng W ; Chen C ; Triplette M Show All Authors
Authors
  1. Zahed H
  2. Feng X
  3. Alcala K
  4. Smithbyrne K
  5. Moez E
  6. Guida F
  7. Albanes D
  8. Weinstein SJ
  9. Arslan AA
  10. Cai Q
  11. Shu XO
  12. Zheng W
  13. Chen C
  14. Triplette M
  15. Tinker LF
  16. Langhammer A
  17. Nost TH
  18. Hveem K
  19. Milne RL
  20. Bassett JK
  21. Sheikh M
  22. Malekzadeh R
  23. Wang Y
  24. Patel AV
  25. Visvanathan K
  26. Yuan JM
  27. Wang R
  28. Koh WP
  29. Sesso HD
  30. Zhang X
  31. Johansson MB
  32. Amos C
  33. Hung RJ
  34. Muller D
  35. Robbins HA
  36. Johansson M

Source: JAMA Published:2026


Abstract

Importance: Screening by low-dose computed tomography can reduce lung cancer mortality among high-risk individuals, but many lung cancers occur among individuals with a smoking history who are not eligible for screening. Objective: To develop and validate the protein-based Integrative Analysis of Lung Cancer Risk and Etiology (INTEGRAL)-Risk model in individuals with a smoking history from the general population. Design, Setting, and Participants: Cohorts in the Lung Cancer Cohort Consortium recruited research participants in the US, Europe, Asia, and Australia between 1985 and 2009, who were followed up for lung cancer and other health outcomes until 2021. Fourteen case cohorts of 3695 participants with a smoking history within the Lung Cancer Cohort Consortium, including 2305 randomly sampled participants and 1390 patients diagnosed with lung cancer within 3 years after blood sample collection, were designed. Plasma or serum samples from each participant were assayed using the INTEGRAL protein panel in 2022. The INTEGRAL-Risk model was trained using 7 predefined case cohorts (training set; n = 1951) to estimate absolute risk of being diagnosed with lung cancer based on age, smoking history, and 13 proteins. The validity of the INTEGRAL-Risk model was assessed in 7 independent case cohorts (testing set; n = 1744) at 1, 2, and 3 years after blood collection. Exposure: Absolute risk estimates from the protein-based INTEGRAL-Risk model. Main Outcomes and Measures: The primary outcome was the validity of the INTEGRAL-Risk model in the testing set with respect to discrimination (area under the curve [AUC]) and calibration (ratio of expected-to-observed cases [E/O]). Results: A total of 3695 participants were included, with 1951 participants (including 807 with lung cancer) in the training set and 1744 participants (including 583 with lung cancer) in the testing set. In the combined 14 training and testing sets, after application of statistical weights, 323 570 participants were represented (185 016 [57%] female; median [IQR] age, 60 [51-67] years). In the independent testing set, discrimination of the INTEGRAL-Risk model was highest at 1 year of follow-up and exceeded that of the questionnaire-based PLCOm2012 (Prostate, Lung, Colorectal and Ovarian Cancer Screening Trial) model (INTEGRAL-Risk AUC of 0.88 [95% CI, 0.85-0.91] vs PLCOm2012 AUC of 0.79 [95% CI, 0.75-0.83]; P value for difference <.001). Using a risk threshold to achieve the same specificity as US Preventive Services Task Force (USPSTF) 2021 criteria, the INTEGRAL-Risk model captured 85% of lung cancer cases compared with 63% by USPSTF 2021 and 70% by PLCOm2012. Discrimination of the INTEGRAL-Risk model decreased with longer prediction horizons, with a 2-year AUC of 0.84 (95% CI, 0.81-0.86) and 3-year AUC of 0.81 (95% CI, 0.79-0.83). The model was well calibrated (E/O over 3 years, 0.87 [95% CI, 0.69-1.14]). Conclusions and Relevance: Compared with questionnaire-based approaches, the protein-based INTEGRAL-Risk model improved short-term prediction of lung cancer in people with a smoking history. This model has potential to improve selection of high-risk individuals who are most likely to benefit from lung cancer screening. © 2026 American Medical Association.