Cho Hwan-Ho, Kim Haejung, Nam Sang Yu, Lee Jeong Eon, Han Boo-Kyung, Ko Eun Young, Choi Ji Soo, Park Hyunjin, Ko Eun Sook
Department of Medical Artificial Intelligence, Konyang University, Daejon 32992, Korea.
Center for Neuroscience Imaging Research, Institute for Basic Science (IBS), Sungkyunkwan University, Suwon 16419, Korea.
Cancers (Basel). 2022 Apr 7;14(8):1858. doi: 10.3390/cancers14081858.
The purpose of this study was to identify perfusional subregions sharing similar kinetic characteristics from dynamic contrast-enhanced magnetic resonance imaging (MRI) using data-driven clustering, and to evaluate the effect of perfusional heterogeneity based on those subregions on patients' survival outcomes in various risk models. From two hospitals, 308 and 147 women with invasive breast cancer who underwent preoperative MRI between October 2011 and July 2012 were retrospectively enrolled as development and validation cohorts, respectively. Using the Cox-least absolute shrinkage and selection operator model, a habitat risk score (HRS) was constructed from the radiomics features from the derived habitat map. An HRS-only, clinical, combined habitat, and two conventional radiomics risk models to predict patients' disease-free survival (DFS) were built. Patients were classified into low-risk or high-risk groups using the median cutoff values of each risk score. Five habitats with distinct perfusion patterns were identified. An HRS was an independent risk factor for predicting worse DFS outcomes in the HRS-only risk model (hazard ratio = 3.274 [95% CI = 1.378-7.782]; = 0.014) and combined habitat risk model (hazard ratio = 4.128 [95% CI = 1.744-9.769]; = 0.003) in the validation cohort. In the validation cohort, the combined habitat risk model (hazard ratio = 4.128, = 0.003, C-index = 0.760) showed the best performance among five different risk models. The quantification of perfusion heterogeneity is a potential approach for predicting prognosis and may facilitate personalized, tailored treatment strategies for breast cancer.
本研究的目的是通过数据驱动聚类,从动态对比增强磁共振成像(MRI)中识别具有相似动力学特征的灌注亚区域,并基于这些亚区域评估灌注异质性在各种风险模型中对患者生存结果的影响。分别从两家医院回顾性纳入了2011年10月至2012年7月期间接受术前MRI检查的308例和147例浸润性乳腺癌女性作为开发队列和验证队列。使用Cox最小绝对收缩和选择算子模型,从衍生栖息地图的放射组学特征构建栖息地风险评分(HRS)。构建了仅HRS、临床、联合栖息地和两种传统放射组学风险模型来预测患者的无病生存期(DFS)。使用每个风险评分的中位数临界值将患者分为低风险或高风险组。识别出了具有不同灌注模式的五个栖息地。在验证队列中,HRS是仅HRS风险模型(风险比=3.274[95%CI=1.378-7.782];P=0.014)和联合栖息地风险模型(风险比=4.128[95%CI=1.744-9.769];P=0.003)中预测较差DFS结果的独立风险因素。在验证队列中,联合栖息地风险模型(风险比=4.128,P=0.003,C指数=0.760)在五种不同风险模型中表现最佳。灌注异质性的量化是预测预后的一种潜在方法,可能有助于制定针对乳腺癌的个性化、量身定制的治疗策略。