[AConvLSTM U-Net: a multi-scale jaw cyst segmentation model based on bidirectional dense connection and attention mechanism].

Q3 Medicine
Suqiang Li, Zhouyang Wang, Sixian Chan, Xiaolong Zhou
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引用次数: 0

Abstract

Objectives: We propose a multi-scale jaw cyst segmentation model, AConvLSTM U-Net, which is based on bidirectional dense connections and attention mechanisms to achieve accurate automatic segmentation of mandibular cyst images.

Methods: A dataset consisting of 2592 jaw cyst images was used. AConvLSTM U-Net designs a MBC on the encoding path to enhance feature extraction capabilities. A DPD was used to connect the encoder and decoder, and a bidirectional ConvLSTM was introduced in the jump connection to obtain rich semantic information. A decoding block based on scSE was then used on the decoding path to enhance the focus on important information. Finally, a DS was designed, and the model was optimized by integrating a joint loss function to further improve the segmentation accuracy.

Results: The experiment with AConvLSTM U-Net for jaw cyst lesion segmentation showed a MCC of 93.8443%, a DSC of 93.9067%, and a JSC of 88.5133%, outperforming all the other comparison segmentation models.

Conclusions: The proposed algorithm shows a high accuracy and robustness on the jaw cyst dataset, demonstrating its superior performance over many existing methods for automatic segmentation of jaw cyst images and its potential to assist clinical diagnosis.

[AConvLSTM U-Net:基于双向密集连接和注意机制的多尺度下颌囊肿分割模型]。
目的:提出一种基于双向密集连接和注意机制的多尺度下颌囊肿分割模型AConvLSTM U-Net,实现下颌囊肿图像的准确自动分割。方法:选取2592张颌骨囊肿图像。AConvLSTM U-Net在编码路径上设计了一个MBC来增强特征提取能力。采用DPD连接编码器和解码器,并在跳接中引入双向ConvLSTM以获取丰富的语义信息。然后在解码路径上使用基于scSE的解码块来增强对重要信息的关注。最后,设计了一个DS,并通过积分联合损失函数对模型进行了优化,进一步提高了分割精度。结果:AConvLSTM U-Net对颌骨囊肿病变分割的实验结果显示,MCC为93.8443%,DSC为93.9067%,JSC为88.5133%,优于其他比较分割模型。结论:本文提出的算法在颌骨囊肿数据集上显示出较高的准确性和鲁棒性,与许多现有的下颌囊肿图像自动分割方法相比,具有优越的性能和辅助临床诊断的潜力。
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来源期刊
南方医科大学学报杂志
南方医科大学学报杂志 Medicine-Medicine (all)
CiteScore
1.50
自引率
0.00%
发文量
208
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