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3 months ago

COMMA: Propagating Complementary Multi-Level Aggregation Network for Polyp Segmentation

{Sung Won Han Min Seok Lee WooSeok Shin}

Abstract

Colonoscopy is an effective method for detecting polyps to prevent colon cancer. Existing studies have achieved satisfactory polyp detection performance by aggregating low-level boundary and high-level region information in convolutional neural networks (CNNs) for precise polyp segmentation in colonoscopy images. However, multi-level aggregation provides limited polyp segmentation owing to the distribution discrepancy that occurs when integrating different layer representations. To address this problem, previous studies have employed complementary low- and high-level representations. In contrast to existing methods, we focus on propagating complementary information such that the complementary low-level explicit boundary with abstracted high-level representations diminishes the discrepancy. This study proposes COMMA, which propagates complementary multi-level aggregation to reduce distribution discrepancies. COMMA comprises a complementary masking module (CMM) and a boundary propagation module (BPM) as a multi-decoder. The CMM masks the low-level boundary noises through the abstracted high-level representation and leverages the masked information at both levels. Similarly, the BPM incorporates the lowest- and highest-level representations to obtain explicit boundary information and propagates the boundary to the CMMs to improve polyp detection. CMMs can discriminate polyps more elaborately than prior CMMs based on boundary and complementary representations. Moreover, we propose a hybrid loss function to mitigate class imbalance and noisy annotations in polyp segmentation. To evaluate the COMMA performance, we conducted experiments on five benchmark datasets using five metrics. The results proved that the proposed network outperforms state-of-the-art methods in terms of all datasets. Specifically, COMMA improved mIoU performance by 0.043 on average for all datasets compared to the existing state-of-the-art methods.

Benchmarks

BenchmarkMethodologyMetrics
medical-image-segmentation-on-cvc-clinicdbCOMMA (Res2Net-50)
Average MAE: 0.007
S-Measure: 0.956
mIoU: 0.891
max E-Measure: 0.985
mean Dice: 0.933
medical-image-segmentation-on-cvc-clinicdbCOMMA (ResNet-50)
Average MAE: 0.008
S-Measure: 0.947
mIoU: 0.871
max E-Measure: 0.979
mean Dice: 0.916
medical-image-segmentation-on-cvc-colondbCOMMA (Res2Net-50)
Average MAE: 0.037
S-Measure: 0.849
mIoU: 0.689
max E-Measure: 0.897
mean Dice: 0.754
medical-image-segmentation-on-etisCOMMA (Res2Net-50)
Average MAE: 0.015
S-Measure: 0.844
mIoU: 0.648
max E-Measure: 0.887
mean Dice: 0.711
medical-image-segmentation-on-kvasir-segCOMMA (ResNet-50)
Average MAE: 0.024
S-Measure: 0.925
mIoU: 0.860
max E-Measure: 0.963
mean Dice: 0.904
medical-image-segmentation-on-kvasir-segCOMMA (Res2Net-50)
Average MAE: 0.027
S-Measure: 0.919
mIoU: 0.852
max E-Measure: 0.951
mean Dice: 0.901

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