Frontiers in Neuroscience (Mar 2024)

U-NTCA: nnUNet and nested transformer with channel attention for corneal cell segmentation

  • Dan Zhang,
  • Jing Zhang,
  • Saiqing Li,
  • Saiqing Li,
  • Zhixin Dong,
  • Zhixin Dong,
  • Qinxiang Zheng,
  • Qinxiang Zheng,
  • Qinxiang Zheng,
  • Jiong Zhang,
  • Jiong Zhang

DOI
https://doi.org/10.3389/fnins.2024.1363288
Journal volume & issue
Vol. 18

Abstract

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BackgroundAutomatic segmentation of corneal stromal cells can assist ophthalmologists to detect abnormal morphology in confocal microscopy images, thereby assessing the virus infection or conical mutation of corneas, and avoiding irreversible pathological damage. However, the corneal stromal cells often suffer from uneven illumination and disordered vascular occlusion, resulting in inaccurate segmentation.MethodsIn response to these challenges, this study proposes a novel approach: a nnUNet and nested Transformer-based network integrated with dual high-order channel attention, named U-NTCA. Unlike nnUNet, this architecture allows for the recursive transmission of crucial contextual features and direct interaction of features across layers to improve the accuracy of cell recognition in low-quality regions. The proposed methodology involves multiple steps. Firstly, three underlying features with the same channel number are sent into an attention channel named gnConv to facilitate higher-order interaction of local context. Secondly, we leverage different layers in U-Net to integrate Transformer nested with gnConv, and concatenate multiple Transformers to transmit multi-scale features in a bottom-up manner. We encode the downsampling features, corresponding upsampling features, and low-level feature information transmitted from lower layers to model potential correlations between features of varying sizes and resolutions. These multi-scale features play a pivotal role in refining the position information and morphological details of the current layer through recursive transmission.ResultsExperimental results on a clinical dataset including 136 images show that the proposed method achieves competitive performance with a Dice score of 82.72% and an AUC (Area Under Curve) of 90.92%, which are higher than the performance of nnUNet.ConclusionThe experimental results indicate that our model provides a cost-effective and high-precision segmentation solution for corneal stromal cells, particularly in challenging image scenarios.

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