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基于体积型SWIN Transformer的CT扫描对实性肺结节恶性程度及病理类型的预测

Prediction of Malignancy and Pathological Types of Solid Lung Nodules on CT Scans Using a Volumetric SWIN Transformer.

作者信息

Chen Huicong, Wen Yanhua, Wu Wensheng, Zhang Yingying, Pan Xiaohuan, Guan Yubao, Qin Dajiang

机构信息

Key Laboratory of Biological Targeting Diagnosis, Therapy and Rehabilitation of Guangdong Higher Education Institutes, The Fifth Affiliated Hospital of Guangzhou Medical University, Guangzhou, 510799, China.

Department of Radiology, The Fifth Affiliated Hospital of Guangzhou Medical University, 621 Gangwan Road, Guangzhou, Guangdong, 510700, China.

出版信息

J Imaging Inform Med. 2025 Jun;38(3):1509-1517. doi: 10.1007/s10278-024-01090-1. Epub 2024 Oct 14.

DOI:10.1007/s10278-024-01090-1
PMID:39402355
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC12092873/
Abstract

Lung adenocarcinoma and squamous cell carcinoma are the two most common pathological lung cancer subtypes. Accurate diagnosis and pathological subtyping are crucial for lung cancer treatment. Solitary solid lung nodules with lobulation and spiculation signs are often indicative of lung cancer; however, in some cases, postoperative pathology finds benign solid lung nodules. It is critical to accurately identify solid lung nodules with lobulation and spiculation signs before surgery; however, traditional diagnostic imaging is prone to misdiagnosis, and studies on artificial intelligence-assisted diagnosis are few. Therefore, we introduce a volumetric SWIN Transformer-based method. It is a multi-scale, multi-task, and highly interpretable model for distinguishing between benign solid lung nodules with lobulation and spiculation signs, lung adenocarcinomas, and lung squamous cell carcinoma. The technique's effectiveness was improved by using 3-dimensional (3D) computed tomography (CT) images instead of conventional 2-dimensional (2D) images to combine as much information as possible. The model was trained using 352 of the 441 CT image sequences and validated using the rest. The experimental results showed that our model could accurately differentiate between benign lung nodules with lobulation and spiculation signs, lung adenocarcinoma, and squamous cell carcinoma. On the test set, our model achieves an accuracy of 0.9888, precision of 0.9892, recall of 0.9888, and an F1-score of 0.9888, along with a class activation mapping (CAM) visualization of the 3D model. Consequently, our method could be used as a preoperative tool to assist in diagnosing solitary solid lung nodules with lobulation and spiculation signs accurately and provide a theoretical basis for developing appropriate clinical diagnosis and treatment plans for the patients.

摘要

肺腺癌和肺鳞癌是两种最常见的肺癌病理亚型。准确诊断和病理分型对肺癌治疗至关重要。具有分叶和毛刺征的孤立实性肺结节常提示肺癌;然而,在某些情况下,术后病理发现为良性实性肺结节。术前准确识别具有分叶和毛刺征的实性肺结节至关重要;然而,传统诊断成像容易误诊,且人工智能辅助诊断的研究较少。因此,我们引入了一种基于体积SWIN Transformer的方法。它是一种多尺度、多任务且具有高度可解释性的模型,用于区分具有分叶和毛刺征的良性实性肺结节、肺腺癌和肺鳞癌。通过使用三维(3D)计算机断层扫描(CT)图像而非传统的二维(2D)图像来尽可能多地组合信息,提高了该技术的有效性。该模型使用441个CT图像序列中的352个进行训练,其余的用于验证。实验结果表明,我们的模型能够准确区分具有分叶和毛刺征的良性肺结节、肺腺癌和肺鳞癌。在测试集上,我们的模型准确率达到0.9888,精确率为0.9892,召回率为0.9888,F1分数为0.9888,同时还对3D模型进行了类激活映射(CAM)可视化。因此,我们的方法可作为术前工具,准确辅助诊断具有分叶和毛刺征的孤立实性肺结节,并为为患者制定合适的临床诊断和治疗方案提供理论依据。