Graylight Imaging, Gliwice, Poland.
Graylight Imaging, Gliwice, Poland; Silesian University of Technology, Gliwice, Poland.
Comput Med Imaging Graph. 2024 Sep;116:102401. doi: 10.1016/j.compmedimag.2024.102401. Epub 2024 May 22.
Metastatic brain cancer is a condition characterized by the migration of cancer cells to the brain from extracranial sites. Notably, metastatic brain tumors surpass primary brain tumors in prevalence by a significant factor, they exhibit an aggressive growth potential and have the capacity to spread across diverse cerebral locations simultaneously. Magnetic resonance imaging (MRI) scans of individuals afflicted with metastatic brain tumors unveil a wide spectrum of characteristics. These lesions vary in size and quantity, spanning from tiny nodules to substantial masses captured within MRI. Patients may present with a limited number of lesions or an extensive burden of hundreds of them. Moreover, longitudinal studies may depict surgical resection cavities, as well as areas of necrosis or edema. Thus, the manual analysis of such MRI scans is difficult, user-dependent and cost-inefficient, and - importantly - it lacks reproducibility. We address these challenges and propose a pipeline for detecting and analyzing brain metastases in longitudinal studies, which benefits from an ensemble of various deep learning architectures originally designed for different downstream tasks (detection and segmentation). The experiments, performed over 275 multi-modal MRI scans of 87 patients acquired in 53 sites, coupled with rigorously validated manual annotations, revealed that our pipeline, built upon open-source tools to ensure its reproducibility, offers high-quality detection, and allows for precisely tracking the disease progression. To objectively quantify the generalizability of models, we introduce a new data stratification approach that accommodates the heterogeneity of the dataset and is used to elaborate training-test splits in a data-robust manner, alongside a new set of quality metrics to objectively assess algorithms. Our system provides a fully automatic and quantitative approach that may support physicians in a laborious process of disease progression tracking and evaluation of treatment efficacy.
转移性脑癌是一种特征为癌细胞从颅外部位转移到大脑的疾病。值得注意的是,转移性脑肿瘤的发病率明显高于原发性脑肿瘤,它们具有侵袭性生长的潜力,并能够同时扩散到大脑的不同部位。患有转移性脑肿瘤的个体的磁共振成像(MRI)扫描显示出广泛的特征。这些病变的大小和数量各不相同,从微小的结节到 MRI 中捕获的大量肿块。患者可能有少量病变,也可能有数百个病变的广泛负担。此外,纵向研究可能描绘出手术切除腔,以及坏死或水肿区域。因此,对这些 MRI 扫描进行手动分析既困难、依赖用户,又成本高昂,而且重要的是缺乏可重复性。我们解决了这些挑战,并提出了一种用于在纵向研究中检测和分析脑转移瘤的流水线,该流水线受益于最初为不同下游任务(检测和分割)设计的各种深度学习架构的集合。在 53 个站点采集的 87 名患者的 275 多模态 MRI 扫描上进行的实验,并结合严格验证的手动注释,表明我们的流水线建立在开源工具之上,以确保其可重复性,提供高质量的检测,并能够精确跟踪疾病进展。为了客观地量化模型的泛化能力,我们引入了一种新的数据分层方法,该方法可以适应数据集的异质性,并以数据稳健的方式详细制定训练-测试拆分,以及一套新的质量指标来客观评估算法。我们的系统提供了一种全自动和定量的方法,可以帮助医生在疾病进展跟踪和治疗效果评估的繁琐过程中提供支持。