Estimating the natural progression of non-invasive ductal carcinoma in situ breast cancer lesions using screening data

Author:

Weedon-Fekjær Harald1ORCID,Li Xiaoxue2,Lee Sandra3

Affiliation:

1. Oslo Centre for Biostatistics and Epidemiology, Research Support Services, Oslo University Hospital, Oslo, Norway

2. Department of Data Sciences, Dana-Farber Cancer Institute and Harvard School of Public Health, Boston, Massachusetts, USA

3. Department of Data Sciences, Dana-Farber Cancer Institute and Harvard Medical School, Boston, Massachusetts, USA

Abstract

Objectives In addition to invasive breast cancer, mammography screening often detects preinvasive ductal carcinoma in situ (DCIS) lesions. The natural progression of DCIS is largely unknown, leading to uncertainty regarding treatment. The natural history of invasive breast cancer has been studied using screening data. DCIS modeling is more complicated because lesions might progress to clinical DCIS, preclinical invasive cancer, or may also regress to a state undetectable by screening. We have here developed a Markov model for DCIS progression, building on the established invasive breast cancer model. Methods We present formulas for the probability of DCIS detection by time since last screening under a Markov model of DCIS progression. Progression rates were estimated by maximum likelihood estimation using BreastScreen Norway data from 1995–2002 for 336,533 women (including 399 DCIS cases) aged 50–69. As DCIS incidence varies by age, county, and mammography modality (digital vs. analog film), a Poisson regression approach was used to align the input data. Results Estimated mean sojourn time in preclinical, screening-detectable DCIS phase was 3.1 years (95% confidence interval: 1.3, 7.6) with a screening sensitivity of 60% (95% confidence interval: 32%, 93%). No DCIS was estimated to be non-progressive. Conclusion Most preclinical DCIS lesions progress or regress with a moderate sojourn time in the screening-detectable phase. While DCIS mean sojourn time could be deduced from DCIS data, any estimate of preclinical DCIS progressing to invasive breast cancer must include data on invasive cancers to avoid strong, probably unrealistic, assumptions.

Funder

National Cancer Institute

Publisher

SAGE Publications

Subject

Public Health, Environmental and Occupational Health,Health Policy

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