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基于肿瘤内和空间特征的多维度可解释深度学习放射组学用于术前预测胸腺上皮肿瘤风险分类

Multi-dimensional interpretable deep learning-radiomics based on intra-tumoral and spatial habitat for preoperative prediction of thymic epithelial tumours risk categorisation.

作者信息

Yang Yuhua, Cheng Jia, Cui Can, Huang Huijie, Cheng Meiling, Wang Jiayi, Zuo Minjing

机构信息

Department of Radiology, The Second Affiliated Hospital, Jiangxi Medical College, Nanchang University, Nanchang, China; Jiangxi Provincial Key Laboratory of Intelligent Medical Imaging, Nanchang, China.

Department of Radiology, The First Affiliated Hospital of Gannan Medical University, Ganzhou, China.

出版信息

Acta Oncol. 2025 Mar 13;64:391-405. doi: 10.2340/1651-226X.2025.42982.

Abstract

BACKGROUND AND PURPOSE

This study aims to develop and compare combined models based on enhanced CT-based radiomics, multi-dimensional deep learning, clinical-conventional imaging and spatial habitat analysis to achieve accurate prediction of thymoma risk classification.

MATERIALS AND METHODS

205 consecutive patients with thymoma confirmed by surgical pathology were recruited from three medical centers. Venous phase enhanced CT images were used to delineate the tumor, and radiomics, 2D and 3D deep learning models based on the whole tumor were established and feature extraction was performed. The tumors were divided into different sub-regions by K-means clustering method and the corresponding features were obtained. The clinical-conventional imaging data of the patients were collected and evaluated, and the univariate and multivariate analysis were used for screening. The above types of features were fused with each other to construct a variety of combined models. Quantitative indicators such as area under the receiver operating characteristic (ROC) curve (AUC) were calculated to evaluate the performance of the model.

RESULTS

The AUC of RDLCSM developed based on LightGBM classifier was 0.953 in the training cohort, 0.930 in the internal validation cohort, 0.924 and 0.903 in the two external validation cohorts, respectively. RDLCSM performs better than RDLM (AUC range: 0.831-0.890) and 2DLCSM (AUC range: 0.785-0.916) based on KNN. In addition, RDLCSM had the highest accuracy (0.818-0.882) and specificity (0.926-1.000).

INTERPRETATION

The RDLCSM, which combines whole-tumor radiomics, 2D and 3D deep learning, clinical-visual radiology, and subregional omics, can be used as a non-invasive tool to predict thymoma risk classification.

摘要

背景与目的

本研究旨在开发并比较基于增强CT的放射组学、多维度深度学习、临床-传统影像及空间栖息地分析的联合模型,以实现胸腺瘤风险分类的准确预测。

材料与方法

从三个医疗中心招募了205例经手术病理确诊的胸腺瘤患者。采用静脉期增强CT图像勾勒肿瘤轮廓,建立基于全肿瘤的放射组学、二维和三维深度学习模型并进行特征提取。通过K均值聚类方法将肿瘤划分为不同子区域并获取相应特征。收集并评估患者的临床-传统影像数据,采用单因素和多因素分析进行筛选。将上述各类特征相互融合构建多种联合模型。计算受试者操作特征(ROC)曲线下面积(AUC)等定量指标以评估模型性能。

结果

基于LightGBM分类器开发的RDLCSM在训练队列中的AUC为0.953,内部验证队列中为0.930,两个外部验证队列中分别为0.924和0.903。RDLCSM的表现优于基于KNN的RDLM(AUC范围:0.831 - 0.890)和2DLCSM(AUC范围:0.785 - 0.916)。此外,RDLCSM具有最高的准确率(0.818 - 0.882)和特异性(0.926 - 1.000)。

解读

结合全肿瘤放射组学、二维和三维深度学习、临床视觉放射学及子区域组学的RDLCSM可作为预测胸腺瘤风险分类的非侵入性工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3896/11971837/b481ba2b2b89/AO-64-42982-g001.jpg

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