The National Lung Screening Trial: Overview and Study Design
Lung Neoplasms
Endpoint Determination
Smoking
Radiation Dosage
Sensitivity and Specificity
United States
3. Good health
03 medical and health sciences
Early Diagnosis
0302 clinical medicine
Research Design
Surveys and Questionnaires
Humans
Mass Screening
Radiography, Thoracic
Quality-Adjusted Life Years
Tomography, Spiral Computed
DOI:
10.1148/radiol.10091808
Publication Date:
2010-11-03T02:43:05Z
AUTHORS (1)
ABSTRACT
The National Lung Screening Trial (NLST) is a randomized multicenter study comparing low-dose helical computed tomography (CT) with chest radiography in the screening of older current and former heavy smokers for early detection of lung cancer, which is the leading cause of cancer-related death in the United States. Five-year survival rates approach 70% with surgical resection of stage IA disease; however, more than 75% of individuals have incurable locally advanced or metastatic disease, the latter having a 5-year survival of less than 5%. It is plausible that treatment should be more effective and the likelihood of death decreased if asymptomatic lung cancer is detected through screening early enough in its preclinical phase. For these reasons, there is intense interest and intuitive appeal in lung cancer screening with low-dose CT. The use of survival as the determinant of screening effectiveness is, however, confounded by the well-described biases of lead time, length, and overdiagnosis. Despite previous attempts, no test has been shown to reduce lung cancer mortality, an endpoint that circumvents screening biases and provides a definitive measure of benefit when assessed in a randomized controlled trial that enables comparison of mortality rates between screened individuals and a control group that does not undergo the screening intervention of interest. The NLST is such a trial. The rationale for and design of the NLST are presented.
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