Res-TransNet: A Hybrid deep Learning Network for Predicting Pathological Subtypes of lung Adenocarcinoma in CT Images.

Yue Su, Xianwu Xia, Rong Sun, Jianjun Yuan, Qianjin Hua, Baosan Han, Jing Gong, Shengdong Nie
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Abstract

This study aims to develop a CT-based hybrid deep learning network to predict pathological subtypes of early-stage lung adenocarcinoma by integrating residual network (ResNet) with Vision Transformer (ViT). A total of 1411 pathologically confirmed ground-glass nodules (GGNs) retrospectively collected from two centers were used as internal and external validation sets for model development. 3D ResNet and ViT were applied to investigate two deep learning frameworks to classify three subtypes of lung adenocarcinoma namely invasive adenocarcinoma (IAC), minimally invasive adenocarcinoma and adenocarcinoma in situ, respectively. To further improve the model performance, four Res-TransNet based models were proposed by integrating ResNet and ViT with different ensemble learning strategies. Two classification tasks involving predicting IAC from Non-IAC (Task1) and classifying three subtypes (Task2) were designed and conducted in this study. For Task 1, the optimal Res-TransNet model yielded area under the receiver operating characteristic curve (AUC) values of 0.986 and 0.933 on internal and external validation sets, which were significantly higher than that of ResNet and ViT models (p < 0.05). For Task 2, the optimal fusion model generated the accuracy and weighted F1 score of 68.3% and 66.1% on the external validation set. The experimental results demonstrate that Res-TransNet can significantly increase the classification performance compared with the two basic models and have the potential to assist radiologists in precision diagnosis.

Abstract Image

Res-TransNet:用于预测 CT 图像中肺腺癌病理亚型的混合深度学习网络。
本研究旨在通过整合残差网络(ResNet)和视觉转换器(ViT),开发一种基于 CT 的混合深度学习网络,以预测早期肺腺癌的病理亚型。从两个中心回顾性收集的共1411个病理确诊的磨玻璃结节(GGN)被用作模型开发的内部和外部验证集。应用三维 ResNet 和 ViT 研究了两种深度学习框架,分别对肺腺癌的三种亚型(即浸润性腺癌(IAC)、微浸润性腺癌和原位腺癌)进行分类。为了进一步提高模型的性能,通过将 ResNet 和 ViT 与不同的集合学习策略相结合,提出了四个基于 Res-TransNet 的模型。本研究设计并进行了两项分类任务,包括从非 IAC 中预测 IAC(任务 1)和对三种亚型进行分类(任务 2)。在任务 1 中,最优的 Res-TransNet 模型在内部和外部验证集上的接收者操作特征曲线下面积(AUC)值分别为 0.986 和 0.933,显著高于 ResNet 和 ViT 模型(p<0.05)。
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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