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Lesion Segmentation On Isic 2018

Metrics

mean Dice

Results

Performance results of various models on this benchmark

Model Name
mean Dice
Paper TitleRepository
DoubleU-Net0.8962DoubleU-Net: A Deep Convolutional Neural Network for Medical Image Segmentation-
ProMISe0.921ProMISe: Promptable Medical Image Segmentation using SAM-
BCDU-net0.847Bi-Directional ConvLSTM U-Net with Densley Connected Convolutions-
MSRF-Net0.8813MSRF-Net: A Multi-Scale Residual Fusion Network for Biomedical Image Segmentation-
AIM++ (256x256, 1.5m parameters, 10% labeled data, no pretraining)0.85Inconsistency Masks: Removing the Uncertainty from Input-Pseudo-Label Pairs-
U-Net + FTL0.829A Novel Focal Tversky loss function with improved Attention U-Net for lesion segmentation-
Attn U-Net + DL0.806A Novel Focal Tversky loss function with improved Attention U-Net for lesion segmentation-
MobileUNETR0.9074MobileUNETR: A Lightweight End-To-End Hybrid Vision Transformer For Efficient Medical Image Segmentation-
RMSM UNet + DF-RAM +EF-RAM0.9152Automated skin lesion segmentation using multi-scale feature extraction scheme and dual-attention mechanism-
MCGU-Net0.895Multi-level Context Gating of Embedded Collective Knowledge for Medical Image Segmentation-
BCDU-Net (d=3)-Bi-Directional ConvLSTM U-Net with Densley Connected Convolutions-
Polar Res-U-Net++0.9253Training on Polar Image Transformations Improves Biomedical Image Segmentation
Attn U-Net + Multi-Input + FTL0.856A Novel Focal Tversky loss function with improved Attention U-Net for lesion segmentation-
DermoSegDiff-A0.9005DermoSegDiff: A Boundary-aware Segmentation Diffusion Model for Skin Lesion Delineation-
DuAT0.923DuAT: Dual-Aggregation Transformer Network for Medical Image Segmentation-
BAT0.912Boundary-aware Transformers for Skin Lesion Segmentation-
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