图像预处理在多发性硬化症脑MRI鉴别诊断中的应用

Khuhed Memon, N. Yahya, M. Yusoff, Hilwati Hashim, Syed Saad Azhar Ali, S. Siddiqui
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引用次数: 0

摘要

多发性硬化症(MS)是一种影响人类大脑的自身免疫性疾病。临床诊断多发性硬化症的挑战之一在于它与另一种称为视神经脊髓炎(MNO)的脑自身免疫性疾病非常相似。因此,各种研究人员正在研究MS与MNO的计算机辅助鉴别诊断(CADD)的发展。一般来说,CADD的开发包括图像预处理、特征提取、统计分析以及分类模型的训练和测试。本文的重点是MS和MNO分类前的两个关键预处理步骤,即颅骨剥离和病变分割。特别地,颅骨剥离和脑病变分割都使用流行的语义分割技术DeepLabV3进行测试。为了进行比较,哈佛大学最近发表的一项技术,FreeSurfer b[1]开发的SynthStrip,也被测试用于大脑提取/颅骨切除。同样,对于脑损伤的分割,我们对SPM工具箱中的病灶分割工具进行了测试和比较。这项研究的结果为开发一种可靠的多发性硬化症自动鉴别诊断工具提供了合适的预处理技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Pre-processing for Differential Diagnosis of Multiple Sclerosis using Brain MRI
Multiple sclerosis (MS) is a type of auto-immune disease affecting the human brain. One of the challenges in clinical diagnosis of MS lies in its close similarity to another type of brain auto-immune disease known as neuromyelitis optica (MNO). Hence, various researchers are looking into the development of computer-aided differential diagnosis (CADD) of MS vs. MNO. Generally, the development of the CADD, involves image pre-processing, feature extraction, statistical analysis and training and testing of the classification model. The focus of this paper is on the 2 critical pre-processing steps prior to classification of MS vs. MNO, namely skull stripping and lesion segmentation. In particular, both skull stripping and brain lesion segmentation are tested with a popular semantic segmentation technique, DeepLabV3. For comparison, a recently published technique, SynthStrip from FreeSurfer [1], developed by Harvard University is also tested for brain extraction / skull removal. Similarly for segmentation of brain lesions, Lesion Segmentation Tool in SPM Toolbox is tested and compared. The results from this study provides insight on what are the appropriate pre-processing techniques for the development of an reliable automatic differential diagnosis tool for multiple sclerosis conditions.
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