Zhang Bo, Zhu Jinling, Xu Ruizhe, Zou Li, Lian Yixin, Xie Xin, Tian Ye
Department of Radiology, The Second Affiliated Hospital of Soochow University, Suzhou, PR China.
Department of Radiation Oncology, The Second Affiliated Hospital of Soochow University, Suzhou, PR China.
Acta Radiol. 2025 Jan;66(1):24-34. doi: 10.1177/02841851241292528. Epub 2024 Nov 18.
Radiomics and deep learning (DL) can individually and efficiently identify the pathological type of brain metastases (BMs).
To investigate the feasibility of utilizing multi-parametric MRI-based deep transfer learning radiomics (DTLR) for the classification of lung adenocarcinoma (LUAD) and non-LUAD BMs.
A retrospective analysis was performed on 342 patients with 1389 BMs. These instances were randomly assigned to a training set of 273 (1179 BMs) and a testing set of 69 (210 BMs) in an 8:2 ratio. Eight machine learning algorithms were employed to construct the radiomics models. A DL model was developed using four pre-trained convolutional neural networks (CNNs). The DTLR model was formulated by integrating the optimal performing radiomics model and the DL model using a classification probability averaging approach. The area under the curve (AUC), calibration curve, and decision curve analysis (DCA) were utilized to assess the performance and clinical utility of the models.
The AUC for the optimal radiomics and DL model in the testing set were 0.824 (95% confidence interval [CI]= 0.726-0.923) and 0.775 (95% CI=0.666-0.884), respectively. The DTLR model demonstrated superior discriminatory power, achieving an AUC of 0.880 (95% CI=0.803-0.957). In addition, the DTLR model exhibited good consistency between actual and predicted probabilities based on the calibration curve and DCA analysis, indicating its significant clinical value.
Our study's DTLR model demonstrated high diagnostic accuracy in distinguishing LUAD from non-LUAD BMs. This method shows potential for the non-invasive identification of the histological subtype of BMs.
放射组学和深度学习(DL)能够分别且高效地识别脑转移瘤(BMs)的病理类型。
探讨基于多参数磁共振成像的深度迁移学习放射组学(DTLR)用于肺腺癌(LUAD)和非LUAD脑转移瘤分类的可行性。
对342例患有1389个脑转移瘤的患者进行回顾性分析。这些病例以8:2的比例随机分为包含273例(1179个脑转移瘤)的训练集和包含69例(210个脑转移瘤)的测试集。采用八种机器学习算法构建放射组学模型。使用四个预训练的卷积神经网络(CNN)开发了一个深度学习模型。通过使用分类概率平均法将性能最佳的放射组学模型和深度学习模型整合来构建DTLR模型。利用曲线下面积(AUC)、校准曲线和决策曲线分析(DCA)来评估模型的性能和临床实用性。
测试集中最佳放射组学模型和深度学习模型的AUC分别为0.824(95%置信区间[CI]=0.726 - 0.923)和0.775(95%CI = 0.666 - 0.884)。DTLR模型显示出卓越的鉴别能力,AUC达到0.880(95%CI = 0.803 - 0.957)。此外,基于校准曲线和DCA分析,DTLR模型在实际概率和预测概率之间表现出良好的一致性,表明其具有显著的临床价值。
我们研究中的DTLR模型在区分LUAD和非LUAD脑转移瘤方面显示出较高的诊断准确性。该方法在无创识别脑转移瘤组织学亚型方面具有潜力。