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基于标准磁共振图像的脑自动病变分割:范围综述。

Automatic brain lesion segmentation on standard magnetic resonance images: a scoping review.

机构信息

Medical Radiation Sciences, Goteborgs universitet Institutionen for kliniska vetenskaper, Goteborg, Sweden

Sektionen för klinisk neurovetenskap, Goteborgs Universitet Institutionen for Neurovetenskap och fysiologi, Goteborg, Sweden.

出版信息

BMJ Open. 2021 Jan 29;11(1):e042660. doi: 10.1136/bmjopen-2020-042660.

Abstract

OBJECTIVES

Medical image analysis practices face challenges that can potentially be addressed with algorithm-based segmentation tools. In this study, we map the field of automatic MR brain lesion segmentation to understand the clinical applicability of prevalent methods and study designs, as well as challenges and limitations in the field.

DESIGN

Scoping review.

SETTING

Three databases (PubMed, IEEE Xplore and Scopus) were searched with tailored queries. Studies were included based on predefined criteria. Emerging themes during consecutive title, abstract, methods and whole-text screening were identified. The full-text analysis focused on materials, preprocessing, performance evaluation and comparison.

RESULTS

Out of 2990 unique articles identified through the search, 441 articles met the eligibility criteria, with an estimated growth rate of 10% per year. We present a general overview and trends in the field with regard to publication sources, segmentation principles used and types of lesions. Algorithms are predominantly evaluated by measuring the agreement of segmentation results with a trusted reference. Few articles describe measures of clinical validity.

CONCLUSIONS

The observed reporting practices leave room for improvement with a view to studying replication, method comparison and clinical applicability. To promote this improvement, we propose a list of recommendations for future studies in the field.

摘要

目的

医学图像分析实践面临挑战,可以通过基于算法的分割工具来解决。本研究旨在通过自动磁共振脑病变分割领域的研究,了解现有方法和研究设计的临床适用性,以及该领域的挑战和局限性。

设计

范围综述。

设置

通过定制查询在三个数据库(PubMed、IEEE Xplore 和 Scopus)中进行搜索。根据预设标准纳入研究。在连续的标题、摘要、方法和全文筛选过程中确定新兴主题。全文分析侧重于材料、预处理、性能评估和比较。

结果

通过搜索共确定了 2990 篇独特的文章,其中 441 篇文章符合入选标准,每年的增长率估计为 10%。我们展示了该领域在出版物来源、使用的分割原则和病变类型方面的总体概述和趋势。算法主要通过测量分割结果与可信参考的一致性来进行评估。很少有文章描述临床有效性的度量。

结论

观察到的报告实践存在改进的空间,以便研究复制、方法比较和临床适用性。为了促进这一改进,我们为该领域的未来研究提出了一系列建议。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5eb8/7849889/1c85b6730838/bmjopen-2020-042660f01.jpg

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