通过有限的计算机断层扫描图像,使用改进的U-Net架构对肺部进行语义分割

A. Bhattacharjee, R. Murugan, Tripti Goel, B. Soni
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引用次数: 4

摘要

深度学习的最新进展引起了生物医学研究人员对进一步探索语义分割领域的热情。肺分割在多种肺部疾病的计算机辅助诊断中起着至关重要的作用。然而,各种解剖变异使得肺分割成为一项具有挑战性的任务。我们研究的主要目的是提出一种改进的U-Net模型,该模型可以自动从计算机断层扫描图像中分割肺部。该算法在240张训练图像上进行了训练。这种架构的优点是它消耗更少的数据和GPU内存。实验结果表明,该架构的准确率为98.3%,骰子系数为96.29%,Jaccard指数为93.63%。该分割模型优于原始的U-Net和最先进的方法。因此,改进的U-Net模型适合于准确的肺分割。
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Semantic segmentation of lungs using a modified U-Net architecture through limited Computed Tomography images
Latest advancements in deep learning have led to an enthusiasm among biomedical researchers to explore the field of semantic segmentation further. Lungs segmentation plays a crucial role in the computer-aided diagnosis of several lung diseases. However, various anatomical varieties make lungs segmentation a challenging task. The main objective of our study is to propose a modified U-Net model that automatically segments the lungs from the computed tomography images. The proposed algorithm is trained on 240 training images. The advantage of this architecture is that it consumes less data and GPU memory. Experimental results show that the proposed architecture obtained 98.3% accuracy, 96.29% dice coefficient, and 93.63% Jaccard index. The segmentation model outperformed the original U-Net and the state-of-the-art methods. Thus, the modified U-Net model is apt for accurate lung segmentation.
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