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公开可用的自动脑部分割方法、机器学习模型、最新进展及其比较综述

A Review of Publicly Available Automatic Brain Segmentation Methodologies, Machine Learning Models, Recent Advancements, and Their Comparison.

作者信息

Singh Mahender Kumar, Singh Krishna Kumar

机构信息

National Brain Research Centre, Manesar, Gurugram, Haryana, India.

Symbiosis Centre for Information Technology, Hinjawadi, Pune, Maharashtra, India.

出版信息

Ann Neurosci. 2021 Jan;28(1-2):82-93. doi: 10.1177/0972753121990175. Epub 2021 Mar 11.

Abstract

BACKGROUND

The noninvasive study of the structure and functions of the brain using neuroimaging techniques is increasingly being used for its clinical and research perspective. The morphological and volumetric changes in several regions and structures of brains are associated with the prognosis of neurological disorders such as Alzheimer's disease, epilepsy, schizophrenia, etc. and the early identification of such changes can have huge clinical significance. The accurate segmentation of three-dimensional brain magnetic resonance images into tissue types (i.e., grey matter, white matter, cerebrospinal fluid) and brain structures, thus, has huge importance as they can act as early biomarkers. The manual segmentation though considered the "gold standard" is time-consuming, subjective, and not suitable for bigger neuroimaging studies. Several automatic segmentation tools and algorithms have been developed over the years; the machine learning models particularly those using deep convolutional neural network (CNN) architecture are increasingly being applied to improve the accuracy of automatic methods.

PURPOSE

The purpose of the study is to understand the current and emerging state of automatic segmentation tools, their comparison, machine learning models, their reliability, and shortcomings with an intent to focus on the development of improved methods and algorithms.

METHODS

The study focuses on the review of publicly available neuroimaging tools, their comparison, and emerging machine learning models particularly those based on CNN architecture developed and published during the last five years.

CONCLUSION

Several software tools developed by various research groups and made publicly available for automatic segmentation of the brain show variability in their results in several comparison studies and have not attained the level of reliability required for clinical studies. The machine learning models particularly three dimensional fully convolutional network models can provide a robust and efficient alternative with relation to publicly available tools but perform poorly on unseen datasets. The challenges related to training, computation cost, reproducibility, and validation across distinct scanning modalities for machine learning models need to be addressed.

摘要

背景

利用神经成像技术对大脑结构和功能进行无创研究,因其临床和研究价值正越来越多地被应用。大脑多个区域和结构的形态及体积变化与阿尔茨海默病、癫痫、精神分裂症等神经系统疾病的预后相关,尽早识别这些变化具有重大临床意义。因此,将三维脑磁共振图像准确分割为不同组织类型(即灰质、白质、脑脊液)和脑结构极为重要,因为它们可作为早期生物标志物。手动分割虽被视为“金标准”,但耗时、主观,且不适用于大规模神经成像研究。多年来已开发出多种自动分割工具和算法;机器学习模型,尤其是那些采用深度卷积神经网络(CNN)架构的模型,正越来越多地被用于提高自动分割方法的准确性。

目的

本研究旨在了解自动分割工具的现状与发展趋势、它们之间的比较、机器学习模型、其可靠性及缺点,以便专注于改进方法和算法的开发。

方法

本研究重点回顾公开可用的神经成像工具、它们的比较以及新兴的机器学习模型,特别是过去五年中开发并发表的基于CNN架构的模型。

结论

多个研究团队开发并公开用于脑自动分割的几种软件工具,在多项比较研究中结果存在差异,尚未达到临床研究所需的可靠性水平。机器学习模型,特别是三维全卷积网络模型,相对于公开可用工具可提供强大而高效的替代方案,但在未见数据集上表现不佳。机器学习模型在训练、计算成本、可重复性以及跨不同扫描模式的验证方面所面临的挑战需要得到解决。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1a1d/8558983/2f7e56453684/10.1177_0972753121990175-fig1.jpg

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