Deep convolutional feature details for better knee disorder diagnoses in magnetic resonance images

Convolutional neural networks (CNNs) applied to magnetic resonance imaging (MRI) have demonstrated their ability in the automatic diagnosis of knee injuries. Despite the promising results, the currently available solutions do not take into account the particular anatomy of knee disorders. Existing w...

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Veröffentlicht in:Computerized medical imaging and graphics 2022-12, Vol.102, p.102142-102142, Article 102142
Hauptverfasser: Dunnhofer, Matteo, Martinel, Niki, Micheloni, Christian
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Sprache:eng
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Zusammenfassung:Convolutional neural networks (CNNs) applied to magnetic resonance imaging (MRI) have demonstrated their ability in the automatic diagnosis of knee injuries. Despite the promising results, the currently available solutions do not take into account the particular anatomy of knee disorders. Existing works have shown that injuries are localized in small-sized knee regions near the center of MRI scans. Based on such insights, we propose MRPyrNet, a CNN architecture capable of extracting more relevant features from these regions. Our solution is composed of a Feature Pyramid Network with Pyramidal Detail Pooling, and can be plugged into any existing CNN-based diagnostic pipeline. The first module aims to enhance the CNN intermediate features to better detect the small-sized appearance of disorders, while the second one captures such kind of evidence by maintaining its detailed information. An extensive evaluation campaign is conducted to understand in-depth the potential of the proposed solution. The experimental results achieved demonstrate that the application of MRPyrNet to baseline methodologies improves their diagnostic capability, especially in the case of anterior cruciate ligament tear and meniscal tear because of MRPyrNet’s ability in exploiting the relevant appearance features of such disorders. Code is available at https://github.com/matteo-dunnhofer/MRPyrNet. •Different knee disorders appear in small-sized regions of the MRI scans.•MRPyrNet is a CNN architecture able to extract relevant features from such areas.•MRPyrNet uses a Feature Pyramid Network to better detect small-appearing features.•MRPyrNet uses Pyramid Detail Pooling to preserve details about the MRI scans.•Knee disorder detection is improved by CNN-based pipelines that employ MRPyrNet.
ISSN:0895-6111
1879-0771
DOI:10.1016/j.compmedimag.2022.102142