MAMMO: A Deep Learning Solution for Facilitating Radiologist-Machine Collaboration in Breast Cancer Diagnosis
Trent Kyono, Fiona J. Gilbert, Mihaela van der Schaar

TL;DR
MAMMO is a deep learning system that triages mammograms to reduce radiologist workload while maintaining or improving diagnostic accuracy, using multi-view CNNs with multi-task learning for interpretability and confidence assessment.
Contribution
This paper introduces MAMMO, a novel deep learning framework combining multi-view CNNs with multi-task learning and a triage network for efficient radiologist-machine collaboration in breast cancer diagnosis.
Findings
Reduced radiologist workload by 42.8%
Improved diagnostic accuracy over radiologists alone
Enhanced interpretability through radiological assessments
Abstract
With an aging and growing population, the number of women requiring either screening or symptomatic mammograms is increasing. To reduce the number of mammograms that need to be read by a radiologist while keeping the diagnostic accuracy the same or better than current clinical practice, we develop Man and Machine Mammography Oracle (MAMMO) - a clinical decision support system capable of triaging mammograms into those that can be confidently classified by a machine and those that cannot be, thus requiring the reading of a radiologist. The first component of MAMMO is a novel multi-view convolutional neural network (CNN) with multi-task learning (MTL). MTL enables the CNN to learn the radiological assessments known to be associated with cancer, such as breast density, conspicuity, suspicion, etc., in addition to learning the primary task of cancer diagnosis. We show that MTL has two…
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Taxonomy
TopicsAI in cancer detection · COVID-19 diagnosis using AI · Radiomics and Machine Learning in Medical Imaging
MethodsInterpretability
