Journal article

AutoCumulus: an automated mammographic density measure created using artificial intelligence.

Osamah Al-Qershi, Tuong L Nguyen, Michael S Elliott, Daniel F Schmidt, Enes Makalic, Shuai Li, Samantha K Fox, James G Dowty, Carlos A Peña-Solorzano, Chun Fung Kwok, Yuanhong Chen, Chong Wang, Jocelyn Lippey, Peter Brotchie, Gustavo Carneiro, Davis J McCarthy, Yeojin Jeong, Joohon Sung, Helen ML Frazer, John L Hopper

BMC Cancer | Published : 2026

Abstract

BACKGROUND: Mammographic (or breast) density is an established risk factor for breast cancer, previously measured using a variety of quantitative, semi-automated and automated approaches. We present a new automated measure, AutoCumulus, learned from applying deep learning to semi-automated measures. METHODS: We studied the mammograms of 9,057 population-screened women in the BRAIx program for which semi-automated measurements of mammographic density had been made by experienced readers using the CUMULUS software. The dataset was split into training, testing, and validation sets (80%, 10%, and 10%, respectively). We applied a deep learning regression model (fine-tuned ConvNeXtSmall) to estima..

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Grants

Awarded by Cancer Council Victoria grant


Awarded by Victoria Cancer Agency Early Career grant


Awarded by NHMRC Emerging Leadership Fellowship


Awarded by ARC Future Fellowship grant


Awarded by UK Research and Innovation grant


Awarded by National Institute for Health and Care Research grant


Awarded by National Research Foundation, Korea


Awarded by Australian government Medical Research Future Fund


Awarded by Ramaciotti Foundation and the National Breast Cancer Foundation


Awarded by Cancer Australia


Awarded by National Health and Medical Research Council


Awarded by NHMRC Fellowship grant