Performance of deep learning model and radiomics model for preoperative prediction of spread through air spaces in the surgically resected lung adenocarcinoma: a two-center comparative study.

IF 4 2区 医学 Q2 ONCOLOGY Translational lung cancer research Pub Date : 2024-12-31 Epub Date: 2024-12-27 DOI:10.21037/tlcr-24-646
Xiang Wang, Chao Ma, Qinling Jiang, Xuebin Zheng, Jun Xie, Chuan He, Pengchen Gu, Yanyan Wu, Yi Xiao, Shiyuan Liu
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Abstract

Background: Spread through air spaces (STAS) in lung adenocarcinoma (LUAD) is a distinct pattern of intrapulmonary metastasis where tumor cells disseminate within the pulmonary parenchyma beyond the primary tumor margins. This phenomenon was officially included in the World Health Organization (WHO)'s classification of lung tumors in 2015. STAS is characterized by the spread of tumor cells in three forms: single cells, micropapillary clusters, and solid nests. Clinical studies have linked STAS to a poorer prognosis, higher recurrence risk, and more advanced clinicopathological staging in LUAD patients. In this study, we constructed radiomics models and deep learning models based on computed tomography (CT) for predicting preoperative STAS status in LUAD.

Methods: A total of 395 (57.19±11.40 years old) patients with pathologically confirmed LUAD from two centers were enrolled in this retrospective study, in which STAS was detected in 146 patients (36.96%). The general clinical data, preoperative CT images, and the results of pathology reports of all patients were collected. Two experienced radiologists independently segmented the lesions by medical imaging interaction toolkit (MITK) software. The CT-based models only, the clinical-based models only, and the fusion model based on the two were constructed using radiomics and deep learning methods, respectively. The diagnostic performance of the different models was evaluated by comparing the area under the curve (AUC) of the subjects' receiver operating characteristics (ROCs).

Results: The deep learning model based on CT images achieved satisfactory discriminative performance in predicting STAS and outperformed the radiomics model and the clinical-radiomics model. The AUC of deep learning model was 0.918 for the internal test set and 0.766 for the external test set. The radiomics model had an AUC of 0.851 for the internal test set and an AUC of 0.699 for the external test set. The clinical-radiomics deep learning model was slightly less effective than the deep learning model (internal AUC =0.915, external AUC =0.773).

Conclusions: The constructed deep learning model based on preoperative chest CT can be used to determine the STAS status of LUAD patients with good diagnostic performance and is superior to radiomics models.

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深度学习模型和放射组学模型在术前预测手术切除肺腺癌通过间隙扩散的性能:一项双中心比较研究。
背景:肺腺癌(LUAD)的间隙扩散(STAS)是肺内转移的一种独特模式,肿瘤细胞在肺实质内扩散,超越原发肿瘤的边缘。这一现象于2015年正式被列入世界卫生组织(WHO)的肺肿瘤分类。STAS的特点是肿瘤细胞以三种形式扩散:单细胞、微乳头状集群和实巢。临床研究表明STAS与LUAD患者预后较差、复发风险较高、临床病理分期较晚有关。在本研究中,我们构建了基于计算机断层扫描(CT)的放射组学模型和深度学习模型,用于预测LUAD患者术前STAS状态。方法:回顾性研究来自两个中心的395例(57.19±11.40岁)病理证实的LUAD患者,其中STAS检出146例(36.96%)。收集所有患者的一般临床资料、术前CT图像及病理报告结果。两名经验丰富的放射科医生通过医学成像交互工具包(MITK)软件独立分割病变。分别使用放射组学和深度学习方法构建仅基于ct的模型、仅基于临床的模型以及基于两者的融合模型。通过比较受试者接收者工作特征(roc)的曲线下面积(AUC)来评价不同模型的诊断效果。结果:基于CT图像的深度学习模型在预测STAS方面取得了满意的判别性能,优于放射组学模型和临床-放射组学模型。深度学习模型内部测试集的AUC为0.918,外部测试集的AUC为0.766。放射组学模型内部测试集的AUC为0.851,外部测试集的AUC为0.699。临床-放射组学深度学习模型的有效性略低于深度学习模型(内部AUC =0.915,外部AUC =0.773)。结论:基于术前胸部CT构建的深度学习模型可用于确定LUAD患者的STAS状态,具有较好的诊断性能,优于放射组学模型。
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来源期刊
CiteScore
7.20
自引率
2.50%
发文量
137
期刊介绍: Translational Lung Cancer Research(TLCR, Transl Lung Cancer Res, Print ISSN 2218-6751; Online ISSN 2226-4477) is an international, peer-reviewed, open-access journal, which was founded in March 2012. TLCR is indexed by PubMed/PubMed Central and the Chemical Abstracts Service (CAS) Databases. It is published quarterly the first year, and published bimonthly since February 2013. It provides practical up-to-date information on prevention, early detection, diagnosis, and treatment of lung cancer. Specific areas of its interest include, but not limited to, multimodality therapy, markers, imaging, tumor biology, pathology, chemoprevention, and technical advances related to lung cancer.
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