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Computer-aided diagnosis of pectus excavatum using CT images and deep learning methods

机译:使用CT图像和深度学习方法的Pectus Ecrovatum的计算机辅助诊断

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Pectus excavatum (PE) is one of the most common chest wall defects. Accurate assessment of PE deformities is critical for effective surgical intervention. Index-based evaluations have become the standard for objectively estimating PE, however, these indexes cannot represent the whole information of chest CT images and may associated with significant error due to the individual differences. To overcome these limitations, this paper developed a computer-aided diagnosis (CAD) system based on the convolutional neural network (CNN) to automatically learn discriminative features and classify PE images. We also adopted block-wise fine-tuning methods based on the transfer learning strategy to reduce the potential risk of overfitting caused by limited data and experimentally explored the best fine-tuning degree. Our method achieved a high level of classification accuracy with 94.76% for PE diagnosis. Furthermore, we proposed a majority rule-based voting method to provide a comprehensively diagnostic results for each patient, which integrated the classification results of the whole thorax. The promising results support the feasibility of our proposed CNN-based CAD system for automatic PE diagnosis, which paves a way for comprehensive assessments of PE in clinics.
机译:PECTUS ECHAVATUM(PE)是最常见的胸壁缺陷之一。对PE畸形的准确评估对于有效的手术干预至关重要。基于索引的评估已成为客观估计PE的标准,但是,这些索引不能代表胸部CT图像的整个信息,并且由于各个差异而可能与显着的错误相关联。为了克服这些限制,本文开发了一种基于卷积神经网络(CNN)的计算机辅助诊断(CAD)系统,以自动学习鉴别特征和分类PE图像。我们还通过转移学习策略采用了块明智的微调方法,以减少由有限数据引起的过度过度的潜在风险,并通过实验探讨了最佳的微调程度。我们的方法达到了高水平的分类准确性,PE诊断为94.76%。此外,我们提出了大多数规则的表决方法,为每位患者提供全面的诊断结果,该患者整合了整个胸部的分类结果。有希望的结果支持我们提出的基于CNN的CAD系统进行自动体育诊断的可行性,为诊所的PE综合评估铺平了一种方法。

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