Jolene Phelps , Manpreet Singh , Cheryl R. McCreary , Caroline Dallaire-Théroux , Ryan G. Stein , Zacharie Potvin-Jutras , Dylan X. Guan , Jeng-liang D. Wu , Amelie Metz , Eric E. Smith
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引用次数: 0
摘要
脑小血管疾病(CSVD)可表现为磁共振成像上可见的脑病变,包括白质高信号(WMH)、脑微出血(CMB)、血管周围间隙(PVS)、腔隙和近期皮质下小梗死(RSSI)。检测和分割这些成像标记可以提供有关大脑健康的宝贵信息,包括预防和治疗痴呆症。然而,人工分割是很麻烦的,特别是对于研究中的大型队列。人们对使用机器学习的自动化工具的开发进行了广泛的研究,以提高病变分割的准确性和效率。本系统综述旨在总结过去10年来开发的新的自动化方法,这些方法用于分割CSVD病变类型,并已在CSVD患者或高危人群(例如,老年人、认知障碍患者或有血管危险因素的人群)中得到验证。在Web of Science和PubMed上搜索得到2764项研究,其中89项是经过筛选和全文审查后纳入的。其中59种方法对WMH进行了分割,23种方法对CMB进行了检测或分类,6种方法对PVS进行了检测或分割,5种方法对lacunes进行了检测、分类或分割,2种方法对RSSI进行了分割。在这些研究中,有30项研究(23项关于WMH, 5项关于CMB, 1项关于pv, 1项关于lacunes)包括下载代码或预训练模型的链接,其中包括一个商业工具,以及一个依赖于商业工具输入的模型。总的来说,本综述发现了用于WMH分割的高质量工具的良好证据,而用于准确分割其他CSVD病变类型的工具较少。
Cerebral small vessel disease lesion segmentation methods: A systematic review
Cerebral small vessel disease (CSVD) can manifest as brain lesions visible on magnetic resonance imaging, including white matter hyperintensities (WMH), cerebral microbleeds (CMB), perivascular spaces (PVS), lacunes, and recent small subcortical infarcts (RSSI). Detection and segmentation of these imaging markers can provide valuable information on brain health, including prevention and treatment of dementia. However, manual segmentation is cumbersome, especially for large cohorts in research studies. There has been extensive research into the development of automated tools using machine learning to increase accuracy and efficiency in lesion segmentation. This systematic review aimed to summarize novel automated methods developed over the last 10 years that segment CSVD lesion types and have been validated on a population with or at risk for CSVD (e.g., older adults, those with cognitive disorders, or those with vascular risk factors). A search on Web of Science and PubMed yielded 2764 studies, of which 89 were included after screening and full text review. 59 of these methods segmented WMH, 23 detected or classified CMB, 6 detected or segmented PVS, 5 detected, classified, or segmented lacunes, and 2 segmented RSSI. Of these, 30 studies (23 for WMH, 5 for CMB, 1 for PVS, and 1 for lacunes) included links to download code or pre-trained models, including one commercial tool, and one that relied on a commercial tool for input. Overall, this review found good evidence for high quality tools available for WMH segmentation, with fewer tools available to accurately segment other CSVD lesion types.