Automated pneumothorax segmentation and quantification algorithm based on deep learning

Wannipa Sae-Lim , Wiphada Wettayaprasit , Ruedeekorn Suwannanon , Siripong Cheewatanakornkul , Pattara Aiyarak
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Abstract

A collapsed lung, also known as a pneumothorax, is a medical condition characterized by the presence of air in the chest cavity between the lung and chest wall. A chest radiograph is commonly used to diagnose pneumothorax; however, manual segmentation of the pneumothorax region can be difficult to achieve due to its complicated appearance and the variable quality of the image. To address this, we introduce a two-phase deep learning framework designed to enhance the accuracy of lung and pneumothorax segmentation from chest radiographs. Initially, a U-Net model with a ResNet34 backbone, trained on the Shenzhen and Montgomery datasets, is utilized to achieve precise lung region segmentation. Subsequently, for pneumothorax segmentation, we propose the PTXSeg-Net—a convolutional neural network model trained on the SIIM-ACR pneumothorax dataset. The PTXSeg-Net is an enhancement of the U-Net architecture, modified to incorporate attention gates and residual blocks to refine learning capabilities, further strengthened by deep supervision, allowing for more nuanced gradient utilization across all network layers. We employ transfer learning by pre-training an autoencoder to extract robust chest X-ray representations. Data refinement techniques are applied to the SIIM-ACR dataset to further improve training outcomes. Our results indicate that PTXSeg-Net outperforms other models in pneumothorax segmentation, achieving the highest Dice score of 0.9124 and Jaccard index of 0.8894 on the refined dataset with autoencoder pre-training. Moreover, leveraging the predicted lung and pneumothorax segmentation masks from the two-phase framework, we propose a quantification algorithm for estimating the pneumothorax size ratio. Its validity has been confirmed through expert assessments by a radiologist and a surgeon on a test set comprising 495 images. The high acceptance rates, averaging 96.97 %, demonstrate substantial agreement between the proposed method and expert clinical assessments. The implications of these results are significant for clinical practice, offering a deep learning technology for more accurate and efficient pneumothorax identification and quantification. This improvement facilitates the timely determination of required management and treatment strategies, potentially leading to enhancements in patient outcomes.

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基于深度学习的气胸自动分割和量化算法
肺塌陷又称气胸,是一种以胸腔内肺与胸壁之间存在空气为特征的病症。胸片通常用于诊断气胸;然而,由于气胸区域的外观复杂且图像质量参差不齐,人工分割气胸区域可能难以实现。为此,我们引入了一个两阶段深度学习框架,旨在提高胸片肺和气胸分割的准确性。首先,利用在深圳和蒙哥马利数据集上训练的带有 ResNet34 主干网的 U-Net 模型来实现精确的肺部区域分割。随后,针对气胸分割,我们提出了 PTXSeg-Net 模型--一种在 SIIM-ACR 气胸数据集上训练的卷积神经网络模型。PTXSeg-Net 是 U-Net 架构的增强版,它结合了注意力门和残差块来完善学习能力,并通过深度监督得到进一步加强,使所有网络层都能更细致地利用梯度。我们通过预训练自动编码器来采用迁移学习,以提取稳健的胸部 X 射线表征。我们将数据提炼技术应用于 SIIM-ACR 数据集,以进一步改善训练结果。我们的研究结果表明,PTXSeg-Net 在气胸分割方面的表现优于其他模型,在经过自动编码器预训练的细化数据集上,PTXSeg-Net 获得了最高的 Dice 分数(0.9124)和 Jaccard 指数(0.8894)。此外,利用两阶段框架中预测的肺和气胸分割掩模,我们提出了一种用于估算气胸大小比的量化算法。通过放射科医生和外科医生对 495 张图像的测试集进行专家评估,证实了该算法的有效性。平均接受率高达 96.97%,这表明所提出的方法与专家临床评估结果非常吻合。这些结果对临床实践意义重大,为更准确、更高效地识别和量化气胸提供了一种深度学习技术。这一改进有助于及时确定所需的管理和治疗策略,从而改善患者的预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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