论文标题
分叉的自动编码器,用于分割CT图像中COVID-19受感染区域的分割
Bifurcated Autoencoder for Segmentation of COVID-19 Infected Regions in CT Images
论文作者
论文摘要
自2020年初以来,新的冠状病毒感染以其积极的疫情震惊了世界。疾病的快速检测可挽救生命,并依靠医学成像(计算机断层扫描和X射线摄影)来检测受感染的肺部。在这种情况下,深度学习和卷积神经网络已用于图像分析。但是,由于两个主要原因,对受感染区域的准确识别已被证明是具有挑战性的。首先,感染区域的特征在不同图像上有所不同。其次,培训数据不足使训练各种机器学习算法(包括深度学习模型)具有挑战性。本文提出了一种通过COVID-19感染的分段肺区域的方法,以帮助心脏病学家更准确,更快,更易于控制疾病。我们为两种类型的分割提出了分叉的2-D模型。该模型使用共享编码器和两个单独解码器的分叉连接。一个解码器是用于分割肺的健康区域,而另一个用于分割感染区域。公开可用图像的实验表明,分叉结构片段感染了肺部的感染区域比最新的状态更好。
The new coronavirus infection has shocked the world since early 2020 with its aggressive outbreak. Rapid detection of the disease saves lives, and relying on medical imaging (Computed Tomography and X-ray) to detect infected lungs has shown to be effective. Deep learning and convolutional neural networks have been used for image analysis in this context. However, accurate identification of infected regions has proven challenging for two main reasons. Firstly, the characteristics of infected areas differ in different images. Secondly, insufficient training data makes it challenging to train various machine learning algorithms, including deep-learning models. This paper proposes an approach to segment lung regions infected by COVID-19 to help cardiologists diagnose the disease more accurately, faster, and more manageable. We propose a bifurcated 2-D model for two types of segmentation. This model uses a shared encoder and a bifurcated connection to two separate decoders. One decoder is for segmentation of the healthy region of the lungs, while the other is for the segmentation of the infected regions. Experiments on publically available images show that the bifurcated structure segments infected regions of the lungs better than state of the art.