Dual center validation of deep learning for automated multi-label segmentation of thoracic anatomy in bedside chest radiographs.

Comput. Methods Programs Biomed.(2023)

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摘要
Using an efficient computer-aided segmentation method with active learning, our anatomy-based model achieves comparable performance to state-of-the-art approaches. Instead of only segmenting the non-overlapping portions of the organs, as previous studies did, a closer approximation to actual anatomy is achieved by segmenting along the natural anatomical borders. This novel anatomy approach could be useful for developing pathology models for accurate and quantifiable diagnosis.
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关键词
Active learning,Anatomy,Artificial intelligence,Chest radiograph,Convolutional neural network,Deep learning
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