This paper investigates the application of deep learning models for lung Computed Tomography (CT) image analysis. Traditional deep learning frameworks encounter compatibility issues due to variations in slice numbers and resolutions in CT images, which stem from the use of different machines. Commonly, individual slices are predicted and subsequently merged to obtain the final result; however, this approach lacks slice-wise feature learning and consequently results in decreased performance. We propose a novel slice selection method for each CT dataset to address this limitation, effectively filtering out uncertain slices and enhancing the model's performance. Furthermore, we introduce a spatial-slice feature learning (SSFL) technique\cite{hsu2022} that employs a conventional and efficient backbone model for slice feature training, followed by extracting one-dimensional data from the trained model for COVID and non-COVID classification using a dedicated classification model. Leveraging these experimental steps, we integrate one-dimensional features with multiple slices for channel merging and employ a 2D convolutional neural network (CNN) model for classification. In addition to the aforementioned methods, we explore various high-performance classification models, ultimately achieving promising results.
翻译:本文调查了肺部成像学(CT)图像分析的深学习模型的应用情况。传统的深学习框架由于使用不同机器产生的CT图像中切片数量和分辨率的差异而遇到兼容性问题。通常,个别切片是预测的,随后合并以获得最终结果;然而,这种方法缺乏切片特征学习,因而导致性能下降。我们为每个CT数据集提出了一个新的切片选择方法,以解决这一局限性,有效地过滤不确定的切片,提高模型的性能。此外,我们引入了空间切片特征学习(SSFL)技术(hsuite{hsu2022}),在切片特征培训中采用常规有效的主干模型,然后利用专门的分类模型从经过培训的COVID和非COVID分类模型中提取一维数据。我们利用这些实验步骤,将一维特征与多个切片结合,并使用2D神经网络(CNN)进行分类。除了上述方法外,我们还探索各种高绩效分类模型,最终取得有希望的结果。</s>