Automated image analysis of cyclin D1 protein expression in invasive lobular breast carcinoma provides independent prognostic information

Goran Landberg, Nicholas P. Tobin, Katja L. Lundgren, Catherine Conway, Lola Anagnostaki, Sean Costello, Göran Landberg

    Research output: Contribution to journalArticlepeer-review

    Abstract

    The emergence of automated image analysis algorithms has aided the enumeration, quantification, and immunohistochemical analyses of tumor cells in both whole section and tissue microarray samples. To date, the focus of such algorithms in the breast cancer setting has been on traditional markers in the common invasive ductal carcinoma subtype. Here, we aimed to optimize and validate an automated analysis of the cell cycle regulator cyclin D1 in a large collection of invasive lobular carcinoma and relate its expression to clinicopathologic data. The image analysis algorithm was trained to optimally match manual scoring of cyclin D1 protein expression in a subset of invasive lobular carcinoma tissue microarray cores. The algorithm was capable of distinguishing cyclin D1-positive cells and illustrated high correlation with traditional manual scoring (κ = 0.63). It was then applied to our entire cohort of 483 patients, with subsequent statistical comparisons to clinical data. We found no correlation between cyclin D1 expression and tumor size, grade, and lymph node status. However, overexpression of the protein was associated with reduced recurrence-free survival (P =.029), as was positive nodal status (P
    Original languageEnglish
    Pages (from-to)2053-2061
    Number of pages8
    JournalHuman Pathology
    Volume43
    Issue number11
    DOIs
    Publication statusPublished - Nov 2012

    Keywords

    • Automated image analysis
    • Cyclin D1
    • Invasive lobular breast carcinoma
    • Recurrence-free survival

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