TL;DR
Flemme is a modular platform for medical image analysis that enables flexible model construction and improves performance across segmentation and reconstruction tasks.
Contribution
It introduces a flexible, encoder-decoder based platform with hierarchical architectures, enhancing medical imaging models and providing a tool for encoder evaluation.
Findings
Average 5.60% improvement in Dice score for segmentation.
Average 7.81% increase in mIoU for segmentation.
Enhancement of 5.57% in PSNR for reconstruction.
Abstract
As the rapid development of computer vision and the emergence of powerful network backbones and architectures, the application of deep learning in medical imaging has become increasingly significant. Unlike natural images, medical images lack huge volumes of data but feature more modalities, making it difficult to train a general model that has satisfactory performance across various datasets. In practice, practitioners often suffer from manually creating and testing models combining independent backbones and architectures, which is a laborious and time-consuming process. We propose Flemme, a FLExible and Modular learning platform for MEdical images. Our platform separates encoders from the model architectures so that different models can be constructed via various combinations of supported encoders and architectures. We construct encoders using building blocks based on convolution,…
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