Cerebral Microbleeds (CMBs), typically captured as hypointensities from susceptibility-weighted imaging (SWI), are particularly important for the study of dementia, cerebrovascular disease, and normal aging. Recent studies on COVID-19 have shown an increase in CMBs of coronavirus cases. Automatic detection of CMBs is challenging due to the small size and amount of CMBs making the classes highly imbalanced, lack of publicly available annotated data, and similarity with CMB mimics such as calcifications, irons, and veins. Hence, the existing deep learning methods are mostly trained on very limited research data and fail to generalize to unseen data with high variability and cannot be used in clinical setups. To this end, we propose an efficient 3D deep learning framework that is actively trained on multi-domain data. Two public datasets assigned for normal aging, stroke, and Alzheimer's disease analysis as well as an in-house dataset for COVID-19 assessment are used to train and evaluate the models. The obtained results show that the proposed method is robust to low-resolution images and achieves 78% recall and 80% precision on the entire test set with an average false positive of 1.6 per scan.
翻译:脑细胞微粒(CMBs)通常被作为感应加权成像(SWI)的缺陷捕获,对于研究痴呆症、脑血管疾病和正常老龄化尤为重要。最近对COVID-19的研究显示,冠状病毒病例的负负负负值有所增加。自动检测脑细胞微粒(CMBs)具有挑战性,因为CMBs规模小,数量大,使分类高度失衡,缺乏公开可加注的数据,以及与CMB模拟类似,如刻度、铁和血管。因此,现有的深层学习方法大部分是用非常有限的研究数据培训的,没有将高变异性、无法用于临床设置的未见数据概括化。为此,我们提议了一个高效的3D深度学习框架,在多域数据方面积极培训。有两个用于正常成形、中风和阿尔茨海默氏病分析的公共数据集,以及内部的COVID-19评估数据集,用于训练和评价模型。因此,获得的结果显示,拟议的方法可靠地对低分辨率图像进行1.6级的精确度测试,每188%。