Slice-wise quality assessment of high b-value breast DWI via deep learning-based artifact detection
Ameya Markale, Luise Brock, Ihor Horishnyi, Dominika Skwierawska, Tri-Thien Nguyen, Hannes Schreiter, Shirin Heidarikahkesh, Lorenz A. Kapsner, Michael Uder, Sabine Ohlmeyer, Frederik B Laun, Andrzej Liebert, Sebastian Bickelhaupt

TL;DR
This study develops deep learning models to detect hyper- and hypointense artifacts in high b-value breast DWI MRI slices, aiming to improve image quality assessment for better diagnosis.
Contribution
It introduces a CNN-based approach, especially DenseNet121, for slice-wise artifact detection in high b-value breast DWI, with promising accuracy and localization capabilities.
Findings
DenseNet121 achieved AUROC of 0.92 for hyperintense artifacts.
The model demonstrated high precision and recall in artifact detection.
Bounding box localization showed moderate agreement with radiologist evaluation.
Abstract
Diffusion-weighted imaging (DWI) can support lesion detection and characterization in breast magnetic resonance imaging (MRI), however especially high b-value diffusion-weighted acquisitions can be prone to intensity artifacts that can affect diagnostic image assessment. This study aims to detect both hyper- and hypointense artifacts on high b-value diffusion-weighted images (b=1500 s/mm2) using deep learning, employing either a binary classification (artifact presence) or a multiclass classification (artifact intensity) approach on a slice-wise dataset.This IRB-approved retrospective study used the single-center dataset comprising n=11806 slices from routine 3T breast MRI examinations performed between 2022 and mid-2023. Three convolutional neural network (CNN) architectures (DenseNet121, ResNet18, and SEResNet50) were trained for binary classification of hyper- and hypointense…
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Taxonomy
TopicsMRI in cancer diagnosis · Advanced Neuroimaging Techniques and Applications · Radiomics and Machine Learning in Medical Imaging
