基于掩模R-CNN的多发性硬化症病灶自动分割

M. Yildirim, E. Dandıl
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引用次数: 2

摘要

多发性硬化症(MS)是一种发病率极高的神经系统疾病,多发于中青年。当在MR图像上诊断MS时,医生通常在决策过程中使用计算机辅助和自动化的辅助工具。由于在MR图像上识别MS病变是一个困难且耗时的过程,因此由专家手动执行MS病变可能容易出现用户错误、变量和耗时。在本研究中,提出了一种基于Mask R-CNN的深度学习方法,用于从MR扫描中自动分割MS病变。研究中使用的MR图像序列来自ISBI 2015和MICCAI 2008数据库,这两个数据库都是公开的数据集。在本研究中,Detectron 2框架作为Mask R-CNN架构的基础架构平台。在MS病变自动分割的实验研究中,在ISBI 2015和MICCAI 2008数据集上,Dice相似度分别达到86.30%和81.32%。综上所述,本研究提出的基于Detectron 2的Mask R-CNN深度学习方法在MR切片上自动分割MS病变是成功的。
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Automated Multiple Sclerosis Lesion Segmentation on MR Images via Mask R-CNN
Multiple Sclerosis (MS) is a neurological disease with a remarkable incidence in young and middle-aged adults. When diagnosing MS on MR images, physicians often use computer-aided and automated secondary assistive tools in the decision-making process. Since the identification of MS lesions on MR images is a difficult and time-consuming process, performing MS lesions manually by experts can be prone to user error, variable and time consuming. In this study, a Mask R-CNN based deep learning method is proposed for automatic segmentation of MS lesions from MR scans. The MR image series used in the study are obtained from ISBI 2015 and MICCAI 2008 databases, which are publicly-available datasets. In the study, Detectron 2 framework is used as the infrastructure platform for architecture of Mask R-CNN. In experimental studies for automatic segmentation of MS lesions, Dice similarity scores of 86.30% and 81.32% are achieved on ISBI 2015 and MICCAI 2008 datasets, respectively. In conclusion, the Detectron 2-based Mask R-CNN deep learning method proposed in this study for automatic segmentation of MS lesions on MR slices is verified to be successful.
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