A novel and fully automated mammographic texture analysis for risk prediction: results from two case-control studies

  • Chao Wang
  • , Adam R. Brentnall
  • , Jack Cuzick
  • , Elaine F. Harkness
  • , D. Gareth Evans
  • , Susan Astley

    Research output: Contribution to journalArticlepeer-review

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    Abstract

    BACKGROUND: The percentage of mammographic dense tissue (PD) is an important risk factor for breast cancer, and there is some evidence that texture features may further improve predictive ability. However, relatively little work has assessed or validated textural feature algorithms using raw full field digital mammograms (FFDM). METHOD: A case-control study nested within a screening cohort (age 46-73 years) from Manchester UK was used to develop a texture feature risk score (264 cases diagnosed at the same time as mammogram of the contralateral breast, 787 controls) using the least absolute shrinkage and selection operator (LASSO) method for 112 features, and validated in a second case-control study from the same cohort but with cases diagnosed after the index mammogram (317 cases, 931 controls). Predictive ability was assessed using deviance and matched concordance index (mC). The ability to improve risk estimation beyond percent volumetric density (Volpara) was evaluated using conditional logistic regression. RESULTS: The strongest features identified in the training set were "sum average" based on the grey-level co-occurrence matrix at low image resolutions (original resolution 10.628 pixels per mm; downsized by factors of 16, 32 and 64), which had a better deviance and mC than volumetric PD. In the validation study, the risk score combining the three sum average features achieved a better deviance than volumetric PD (Deltachi2 = 10.55 or 6.95 if logarithm PD) and a similar mC to volumetric PD (0.58 and 0.57, respectively). The risk score added independent information to volumetric PD (Deltachi2 = 14.38, p = 0.0008). CONCLUSION: Textural features based on digital mammograms improve risk assessment beyond volumetric percentage density. The features and risk score developed need further investigation in other settings.
    Original languageEnglish
    JournalBreast Cancer Research
    Volume19
    Issue number114
    Early online date18 Oct 2017
    DOIs
    Publication statusPublished - 18 Oct 2017

    Bibliographical note

    Note: This work was supported by Cancer Research UK (grant number C569/A16891) and the National Institute for Health Research (NIHR) under its Programme Grants for Applied Research programme (reference number RP-PG-0707-10031: ‟Improvement in risk prediction, early detection and prevention of breast cancer”) and the Genesis Prevention Appeal (references GA10-033 and GA13-006).

    Keywords

    • Cancer studies
    • breast cancer
    • breast density
    • digital mammogram
    • risk prediction
    • texture

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