Department of Radiology, Gangnam Severance Hospital, Yonsei University College of Medicine, Seoul, Korea.
Department of Radiology and Research Institute of Radiological Science and Center for Clinical Image Data Science, Yonsei University College of Medicine, Seoul, Korea.
Yonsei Med J. 2023 Sep;64(9):573-580. doi: 10.3349/ymj.2023.0047.
Breast cancer brain metastases (BCBM) may involve subtypes that differ from the primary breast cancer lesion. This study aimed to develop a radiomics-based model that utilizes preoperative brain MRI for multiclass classification of BCBM subtypes and to investigate whether the model offers better prediction accuracy than the assumption that primary lesions and their BCBMs would be of the same subtype (non-conversion model) in an external validation set.
The training and external validation sets each comprised 51 cases (102 cases total). Four machine learning classifiers combined with three feature selection methods were trained on radiomic features and primary lesion subtypes for prediction of the following four subtypes: 1) hormone receptor (HR)+/human epidermal growth factor receptor 2 (HER2)-, 2) HR+/HER2+, 3) HR-/HER2+, and 4) triple-negative. After training, the performance of the radiomics-based model was compared to that of the non-conversion model in an external validation set using accuracy and F1-macro scores.
The rate of discrepant subtypes between primary lesions and their respective BCBMs were 25.5% (n=13 of 51) in the training set and 23.5% (n=12 of 51) in the external validation set. In the external validation set, the accuracy and F1-macro score of the radiomics-based model were significantly higher than those of the non-conversion model (0.902 vs. 0.765, =0.004; 0.861 vs. 0.699, =0.002).
Our radiomics-based model represents an incremental advance in the classification of BCBM subtypes, thereby facilitating a more appropriate personalized therapy.
乳腺癌脑转移(BCBM)可能涉及与原发性乳腺癌病变不同的亚型。本研究旨在开发一种基于放射组学的模型,利用术前脑 MRI 对 BCBM 亚型进行多类分类,并研究该模型在外部验证集中是否比假设原发性病变及其 BCBM 具有相同亚型(非转换模型)提供更好的预测准确性。
训练集和外部验证集各包含 51 例(共 102 例)。四种机器学习分类器结合三种特征选择方法,基于放射组学特征和原发性病变亚型进行训练,以预测以下四种亚型:1)激素受体(HR)+/人表皮生长因子受体 2(HER2)-,2)HR+/HER2+,3)HR-/HER2+和 4)三阴性。在训练后,使用准确性和 F1-宏评分,在外部验证集中比较基于放射组学的模型与非转换模型的性能。
在训练集中,原发性病变与其各自的 BCBM 之间的亚型差异率为 25.5%(n=13/51),在外部验证集中为 23.5%(n=12/51)。在外部验证集中,基于放射组学的模型的准确性和 F1-宏评分均显著高于非转换模型(0.902 比 0.765,=0.004;0.861 比 0.699,=0.002)。
我们的基于放射组学的模型代表了 BCBM 亚型分类的增量进展,从而促进了更合适的个性化治疗。