Lung cancer is the leading cause of mortality from cancer worldwide and has various histologic types, among which Lung Adenocarcinoma (LAUC) has recently been the most prevalent. Lung adenocarcinomas are classified as pre-invasive, minimally invasive, and invasive adenocarcinomas. Timely and accurate knowledge of the invasiveness of lung nodules leads to a proper treatment plan and reduces the risk of unnecessary or late surgeries. Currently, the primary imaging modality to assess and predict the invasiveness of LAUCs is the chest CT. The results based on CT images, however, are subjective and suffer from a low accuracy compared to the ground truth pathological reviews provided after surgical resections. In this paper, a predictive transformer-based framework, referred to as the "CAE-Transformer", is developed to classify LAUCs. The CAE-Transformer utilizes a Convolutional Auto-Encoder (CAE) to automatically extract informative features from CT slices, which are then fed to a modified transformer model to capture global inter-slice relations. Experimental results on our in-house dataset of 114 pathologically proven Sub-Solid Nodules (SSNs) demonstrate the superiority of the CAE-Transformer over the histogram/radiomics-based models and its deep learning-based counterparts, achieving an accuracy of 87.73%, sensitivity of 88.67%, specificity of 86.33%, and AUC of 0.913, using a 10-fold cross-validation.
翻译:肺癌是全世界癌症死亡的首要原因,有各种历史原因,其中肺炎亚丁卡素瘤(LAUC)最近最为流行。肺癌肿瘤被归类为入侵前、侵入程度最低和侵入性肾癌瘤。及时准确地了解肺结核的入侵导致适当的治疗计划,并减少不必要的或晚期手术的风险。目前,评估和预测洛杉磯入侵的主要成像模式是胸部的CCT。但是,基于CT图像的结果是主观的,与外科剖析后提供的地面真相病理分析相比,其精确度较低。在本文中,以预测性变异器为基础的框架,称为“CAAE-变异器”。 CAE-变异器利用一个革命性自动或晚期手术(CAE),自动从基于CT的切片中提取信息特征,然后用一个经过修改的变异变异器模型来捕捉到全球的阴部间关系。在本文件中,用SAS-CA-CA-CAR-CR的精确性研究结果显示其内部的正确性研究结果。