Affiliation:
1. Kheiron Medical Technologies, 112-116 Old St., London EC1V 9BG, UK
2. Breast Screening Unit, Leeds Teaching Hospital NHS Trust, Leeds LS14 6UH, UK
3. Nottingham Breast Institute, City Hospital, Nottingham University Hospitals NHS Trust, Nottingham NG5 1PB, UK
Abstract
Invasiveness status, histological grade, lymph node stage, and tumour size are important prognostic factors for breast cancer survival. This evaluation aims to compare these features for cancers detected by AI and human readers using digital mammography. Women diagnosed with breast cancer between 2009 and 2019 from three UK double-reading sites were included in this retrospective cohort evaluation. Differences in prognostic features of cancers detected by AI and the first human reader (R1) were assessed using chi-square tests, with significance at p < 0.05. From 1718 screen-detected cancers (SDCs) and 293 interval cancers (ICs), AI flagged 85.9% and 31.7%, respectively. R1 detected 90.8% of SDCs and 7.2% of ICs. Of the screen-detected cancers detected by the AI, 82.5% had an invasive component, compared to 81.1% for R1 (p-0.374). For the ICs, this was 91.5% and 93.8% for AI and R1, respectively (p = 0.829). For the invasive tumours, no differences were found for histological grade, tumour size, or lymph node stage. The AI detected more ICs. In summary, no differences in prognostic factors were found comparing SDC and ICs identified by AI or human readers. These findings support a potential role for AI in the double-reading workflow.
Funder
Innovate UK via an NHS England and Improvement, Office of Life Sciences (OLS) Wave 2 Test Bed Programme
Medical Research Council (MRC) Biomedical Catalyst award
Kheiron Medical Technologies
Cited by
3 articles.
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