Deep learning for predicting future lesion emergence in high-risk breast MRI screening: a feasibility study

Author:

Burger Bianca,Bernathova Maria,Seeböck PhilippORCID,Singer Christian F.,Helbich Thomas H.,Langs GeorgORCID

Abstract

Abstract Background International societies have issued guidelines for high-risk breast cancer (BC) screening, recommending contrast-enhanced magnetic resonance imaging (CE-MRI) of the breast as a supplemental diagnostic tool. In our study, we tested the applicability of deep learning-based anomaly detection to identify anomalous changes in negative breast CE-MRI screens associated with future lesion emergence. Methods In this prospective study, we trained a generative adversarial network on dynamic CE-MRI of 33 high-risk women who participated in a screening program but did not develop BC. We defined an anomaly score as the deviation of an observed CE-MRI scan from the model of normal breast tissue variability. We evaluated the anomaly score’s association with future lesion emergence on the level of local image patches (104,531 normal patches, 455 patches of future lesion location) and entire CE-MRI exams (21 normal, 20 with future lesion). Associations were analyzed by receiver operating characteristic (ROC) curves on the patch level and logistic regression on the examination level. Results The local anomaly score on image patches was a good predictor for future lesion emergence (area under the ROC curve 0.804). An exam-level summary score was significantly associated with the emergence of lesions at any location at a later time point (p = 0.045). Conclusions Breast cancer lesions are associated with anomalous appearance changes in breast CE-MRI occurring before the lesion emerges in high-risk women. These early image signatures are detectable and may be a basis for adjusting individual BC risk and personalized screening. Relevance statement Anomalies in screening MRI preceding lesion emergence in women at high-risk of breast cancer may inform individualized screening and intervention strategies. Key points • Breast lesions are associated with preceding anomalies in CE-MRI of high-risk women. • Deep learning-based anomaly detection can help to adjust risk assessment for future lesions. • An appearance anomaly score may be used for adjusting screening interval times. Graphical Abstract

Funder

Comprehensive Cancer Center Forschungsförderung der Initiative Krebsforschung, MedUni Wien

Vienna Science and Technology Fund

Österreichische Forschungsförderungsgesellschaft

Anniversary Fund of the Oesterreichische Nationalbank

Medizinische Universität Wien

HORIZON EUROPE Reforming and enhancing the European Research and Innovation system

Publisher

Springer Science and Business Media LLC

Subject

Radiology, Nuclear Medicine and imaging

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