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Principal Investigator
Name
Alison Rustagi
Degrees
M.D., Ph.D.
Institution
University of California, San Francisco
Position Title
Assistant Professor, Medicine
Email
About this CDAS Project
Study
LSS (Learn more about this study)
Project ID
LSS-3
Initial CDAS Request Approval
Oct 27, 2022
Title
Time Lag to Benefit: A Systematic Review and Meta-Analysis of Lung Cancer Screening Trials
Summary
Lung cancer is by and large the prevailing cause of cancer deaths in the United States. The American Cancer Society estimates that almost 25% of cancer deaths within the US stem from lung cancer. In a 2019 estimate based on data from the Institute for Health Metrics and Evaluation, tracheal, bronchus, and lung cancer were found to not only be the leading cause of cancer deaths worldwide, 2.04 million, but that deaths by lung cancer outnumber the second most common cause of cancer death, colon and rectum cancer, by nearly twice as many deaths. The World Cancer Research Fund estimates that in 2020 about 12.2% of all new cancer cases in the world were lung cancers, only superseded by breast cancer by 0.03%. Lung cancer death can be prevented by lung cancer screening (LCS) via annual low dose CT of the chest, based on the results of randomized controlled trials. However, as with many other screening measures there are risks that must be considered and weighed along with any potential benefits. LCS, like any screening test, must balance short-term harms (radiation, anxiety, false positive/negative tests, procedures to follow abnormal scan, procedural complications, overdiagnosis) against the potential to avert death years in the future. Further, the features that define eligibility for LCS – older age and heavy smoking history – also increase the risk of dying for reasons other than lung cancer (e.g., coronary artery disease). There is an urgent need to better define who is “healthy enough” to justify the short-term risks of LCS. Defining a lag time to benefit for the screening intervention will provide key information to quantify the life expectancy an individual would reasonably need to have, in order to justify these short-term harms. Similar meta-analyses of randomized trial data to estimate the time-lag-to-benefit for other preventive interventions (e.g., statin prescription) provide invaluable and unique information to inform clinical decision-making for older adults. Therefore, we propose to collect and analyze data in a systematic review and meta-analysis of LCS randomized trials from around the world to comprehensively estimate the lag time to benefit from lung cancer screening. Completion of this proposed study will have an impact on determining when it may be better for a patient to screen and when it may be more beneficial to focus on pre-existing health issues, given an estimate of when they would be able to benefit from the screening.

The studies found within the NIH’s Cancer Data Access System, particularly the PLCO, MLP, NLST, and LSS studies will prove to be a great resource in analysis of this issue. We have identified that these studies fit within the framework we will pool and quantitatively estimate an accurate lag time to benefit statistic which may be utilized in further refining of the lung cancer screening process and the decision making therein.
Aims

1. Review and analyze the aggregate data to estimate the time lag to benefit of lung cancer screening.
2. We will also isolate and analyze the data from the NLST trial to determine if there are any differences within this particular set of data from the aggregate.
3. We will also isolate and analyze data from the NELSON study (de Koning et.al., 2006), looking out for any potential differences as in Aim 3.

Collaborators

Salomeh Keyhani, University of California, San Francisco/ San Francisco VA Medical Center
Sei Lee, San Francisco/ San Francisco VA Medical Center
Amy Byers, San Francisco/ San Francisco VA Medical Center
Chris Slatore, Oregon Health and Science University/ Portland VA Medical Center
Jim Brown, University of California, San Francisco/ San Francisco VA Medical Center
Sunny Wang, University of California, San Francisco/ San Francisco VA Medical Center