Yu Hongwei, Meng Xianqi, Chen Huang, Liu Jian, Gao Wenwen, Du Lei, Chen Yue, Wang Yige, Liu Xiuxiu, Liu Bing, Fan Jingfan, Ma Guolin
Department of Radiology, China-Japan Friendship Hospital, Beijing, China.
Beijing Engineering Research Center of Mixed Reality and Advanced Display, School of Optics and Photonics, Beijing Institute of Technology, Beijing, China.
Front Oncol. 2021 Mar 11;11:628577. doi: 10.3389/fonc.2021.628577. eCollection 2021.
This study aimed to investigate whether radiomics classifiers from mammography can help predict tumor-infiltrating lymphocyte (TIL) levels in breast cancer.
Data from 121 consecutive patients with pathologically-proven breast cancer who underwent preoperative mammography from February 2018 to May 2019 were retrospectively analyzed. Patients were randomly divided into a training dataset (n = 85) and a validation dataset (n = 36). A total of 612 quantitative radiomics features were extracted from mammograms using the Pyradiomics software. Radiomics feature selection and radiomics classifier were generated through recursive feature elimination and logistic regression analysis model. The relationship between radiomics features and TIL levels in breast cancer patients was explored. The predictive capacity of the radiomics classifiers for the TIL levels was investigated through receiver operating characteristic curves in the training and validation groups. A radiomics score (Rad score) was generated using a logistic regression analysis method to compute the training and validation datasets, and combining the Mann-Whitney U test to evaluate the level of TILs in the low and high groups.
Among the 121 patients, 32 (26.44%) exhibited high TIL levels, and 89 (73.56%) showed low TIL levels. The ER negativity (p = 0.01) and the Ki-67 negative threshold level (p = 0.03) in the low TIL group was higher than that in the high TIL group. Through the radiomics feature selection, six top-class features [Wavelet GLDM low gray-level emphasis (mediolateral oblique, MLO), GLRLM short-run low gray-level emphasis (craniocaudal, CC), LBP2D GLRLM short-run high gray-level emphasis (CC), LBP2D GLDM dependence entropy (MLO), wavelet interquartile range (MLO), and LBP2D median (MLO)] were selected to constitute the radiomics classifiers. The radiomics classifier had an excellent predictive performance for TIL levels both in the training and validation sets [area under the curve (AUC): 0.83, 95% confidence interval (CI), 0.738-0.917, with positive predictive value (PPV) of 0.913; AUC: 0.79, 95% CI, 0.615-0.964, with PPV of 0.889, respectively]. Moreover, the Rad score in the training dataset was higher than that in the validation dataset (p = 0.007 and p = 0.001, respectively).
Radiomics from digital mammograms not only predicts the TIL levels in breast cancer patients, but can also serve as non-invasive biomarkers in precision medicine, allowing for the development of treatment plans.
本研究旨在探讨乳腺钼靶影像组学分类器能否帮助预测乳腺癌患者的肿瘤浸润淋巴细胞(TIL)水平。
回顾性分析2018年2月至2019年5月期间121例经病理证实的乳腺癌患者的术前乳腺钼靶数据。患者被随机分为训练数据集(n = 85)和验证数据集(n = 36)。使用Pyradiomics软件从乳腺钼靶图像中提取了总共612个定量影像组学特征。通过递归特征消除和逻辑回归分析模型进行影像组学特征选择并生成影像组学分类器。探讨了影像组学特征与乳腺癌患者TIL水平之间的关系。通过训练组和验证组的受试者工作特征曲线研究影像组学分类器对TIL水平的预测能力。使用逻辑回归分析方法计算训练和验证数据集,生成影像组学评分(Rad评分),并结合Mann-Whitney U检验评估低TIL组和高TIL组的TIL水平。
121例患者中,TIL水平高的有32例(26.44%),TIL水平低的有89例(73.56%)。低TIL组的雌激素受体阴性(p = 0.01)和Ki-67阴性阈值水平(p = 0.03)高于高TIL组。通过影像组学特征选择,选取了六个顶级特征[小波灰度共生矩阵低灰度级强调(内外斜位片,MLO)、灰度游程长度矩阵短游程低灰度级强调(头尾位片,CC)、局部二值模式二维灰度游程长度矩阵短游程高灰度级强调(CC)、局部二值模式二维灰度共生矩阵依赖熵(MLO)、小波四分位数间距(MLO)和局部二值模式二维中位数(MLO)]构成影像组学分类器。影像组学分类器在训练集和验证集中对TIL水平均具有出色的预测性能[曲线下面积(AUC):0.83,95%置信区间(CI),0.738 - 0.917,阳性预测值(PPV)为0.913;AUC:0.79,95%CI,0.615 - 0.964,PPV分别为0.889]。此外,训练数据集中的Rad评分高于验证数据集中的Rad评分(分别为p = 0.007和p = 0.001)。
数字乳腺钼靶影像组学不仅能预测乳腺癌患者的TIL水平,还可作为精准医学中的非侵入性生物标志物以制定治疗方案。