Lu Xiangyu, Jia Yingying, Zhang Hongjuan, Wu Ruichao, Zhao Wuyuan, Yao Zihuan, Nie Fang, Ma Yide
School of Information Science and Engineering, Lanzhou University, No. 222 South Tianshui Road, Lanzhou 730030, China.
Ultrasound Medical Center, Lanzhou University Second Hospital, Cuiyingmen No. 82, Chengguan District, Lanzhou 730030, China.
Br J Radiol. 2024 Jul 12. doi: 10.1093/bjr/tqae129.
To investigate an interpretable radiomics model consistent with clinical decision-making process and realize automatic prediction of tumor-infiltrating lymphocytes (TILs) levels in breast cancer (BC) from ultrasound (US) images.
A total of 378 patients with invasive BC confirmed by pathological results were retrospectively enrolled in this study. Radiomics features were extracted guided by the BI-RADS lexicon from the regions of interest(ROIs) segmented with deep learning models. After features selected using the least absolute shrinkage and selection operator(LASSO) regression, four machine learning classifiers were used to establish the radiomics signature(Rad-score). Then, the integrated model was developed on the basis of the best Rad-score incorporating the independent clinical factors for TILs levels prediction.
Tumors were segmented using the deep learning models with accuracy of 97.2%, sensitivity of 93.4%, specificity of 98.1%, and the posterior areas were also obtained. Eighteen morphology and texture related features were extracted from the ROIs and fourteen features were selected to construct the Rad-score models. Combined with independent clinical characteristics, the integrated model achieved an area under the curve (AUC) of 0.889(95% CI,0.739,0.990) in the validation cohort and outperformed the traditional radiomics model with AUC of 0.756(0.649-0862) depended on hundreds of feature items.
This study established a promising model for TILs levels prediction with numerable interpretable features and showed great potential to help decision-making and clinical applications.
Imaging-based biomarkers has provides non-invasive ways for TILs levels evaluation in BC. Our model combining the BI-RADS guided radiomics features and clinical data outperformed the traditional radiomics approaches.
研究一种与临床决策过程相一致的可解释性放射组学模型,并实现从超声(US)图像中自动预测乳腺癌(BC)的肿瘤浸润淋巴细胞(TILs)水平。
本研究回顾性纳入了378例经病理结果证实的浸润性BC患者。在BI-RADS词典的指导下,从经深度学习模型分割的感兴趣区域(ROI)中提取放射组学特征。使用最小绝对收缩和选择算子(LASSO)回归选择特征后,使用四种机器学习分类器建立放射组学特征(Rad-score)。然后,在最佳Rad-score的基础上,结合TILs水平预测的独立临床因素,开发了综合模型。
使用深度学习模型对肿瘤进行分割,准确率为97.2%,灵敏度为93.4%,特异性为98.1%,并获得了后方区域。从ROI中提取了18个与形态和纹理相关的特征,并选择了14个特征来构建Rad-score模型。结合独立的临床特征,综合模型在验证队列中的曲线下面积(AUC)为0.889(95%CI,0.739,0.990),优于依赖数百个特征项、AUC为0.756(0.649 - 0.862)的传统放射组学模型。
本研究建立了一个有前景的TILs水平预测模型,具有大量可解释的特征,在辅助决策和临床应用方面显示出巨大潜力。
基于成像的生物标志物为BC中TILs水平评估提供了非侵入性方法。我们结合BI-RADS指导的放射组学特征和临床数据的模型优于传统放射组学方法。