使用非线性配准和临床磁共振成像的帕金森病治疗目标的自动分割:方法、疾病存在和质量控制的比较。

IF 1.9 4区 医学 Q3 NEUROIMAGING
Christopher Paul Kingsley Miller, Jennifer Muller, Angela M Noecker, Caio Matias, Mahdi Alizadeh, Cameron McIntyre, Chengyuan Wu
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引用次数: 0

摘要

准确准确地描述白球内部(GPi)和丘脑底核(STN)对帕金森病(PD)的临床治疗和研究至关重要。自动分割是一项正在发展的技术,它解决了磁共振成像中深层核可视化的局限性,并在研究应用中标准化了它们的定义。我们试图将人工分割与模板到患者非线性配准的三种工作流程进行比较,从而提供基于图谱的深核自动分割。方法:对20例PD患者和20例健康对照(HC)患者进行双侧GPi、STN和红核(RN)分割。所使用的自动化工作流程是临床实践中可用的一种选择,也是两种常见的研究方案。质量控制(QC)是通过视觉检查易于识别的大脑结构进行注册模板。使用T1、质子密度和T2序列的人工分割作为“基础真实”数据进行比较。骰子相似系数(DSC)用于评估核之间的一致性。进一步分析比较疾病状态和QC分类对DSC的影响。结果:自动分割工作流(CIT-S、CRV-AB和DIST-S)的DSC在RN中最高,在STN中最低。对于所有工作流和核心,手动分割优于自动分割;然而,对于3/9的工作流(CIT-S STN、CRV-AB STN和CRV-AB GPi),差异没有统计学意义。HC和PD仅在1/9比较中显示显著差异(DIST-S GPi)。QC分类仅在2/9比较中显示出显著更高的DSC (CRV-AB RN和GPi)。结论:人工分割总体上优于自动分割。疾病状态似乎对通过非线性模板到患者注册进行自动分割的质量没有显著影响。值得注意的是,模板配准的视觉检查是一个较差的指标,深度核分割的准确性。随着自动分割方法的不断发展,高效可靠的质量控制方法将是必要的,以支持安全有效地整合到临床工作流程中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Segmentation of Parkinson Disease Therapeutic Targets Using Nonlinear Registration and Clinical MR Imaging: Comparison of Methodology, Presence of Disease, and Quality Control.

Introduction: Accurate and precise delineation of the globus pallidus pars interna (GPi) and subthalamic nucleus (STN) is critical for the clinical treatment and research of Parkinson's disease (PD). Automated segmentation is a developing technology which addresses limitations of visualizing deep nuclei on MR imaging and standardizing their definition in research applications. We sought to compare manual segmentation with three workflows for template-to-patient nonlinear registration providing atlas-based automatic segmentation of deep nuclei.

Methods: Bilateral GPi, STN, and red nucleus (RN) were segmented for 20 PD and 20 healthy control (HC) subjects using 3T MRIs acquired for clinical purposes. The automated workflows used were an option available in clinical practice and two common research protocols. Quality control (QC) was performed on registered templates via visual inspection of readily discernible brain structures. Manual segmentation using T1, proton density, and T2 sequences was used as "ground truth" data for comparison. Dice similarity coefficient (DSC) was used to assess agreement between segmented nuclei. Further analysis was done to compare the influences of disease state and QC classifications on DSC.

Results: Automated segmentation workflows (CIT-S, CRV-AB, and DIST-S) had the highest DSC for the RN and lowest for the STN. Manual segmentations outperformed automated segmentation for all workflows and nuclei; however, for 3/9 workflows (CIT-S STN, CRV-AB STN, and CRV-AB GPi) the differences were not statically significant. HC and PD only showed significant differences in 1/9 comparisons (DIST-S GPi). QC classification only demonstrated significantly higher DSC in 2/9 comparisons (CRV-AB RN and GPi).

Conclusion: Manual segmentations generally performed better than automated segmentations. Disease state does not appear to have a significant effect on the quality of automated segmentations via nonlinear template-to-patient registration. Notably, visual inspection of template registration is a poor indicator of the accuracy of deep nuclei segmentation. As automatic segmentation methods continue to evolve, efficient and reliable QC methods will be necessary to support safe and effective integration into clinical workflows.

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来源期刊
CiteScore
3.80
自引率
0.00%
发文量
33
审稿时长
3 months
期刊介绍: ''Stereotactic and Functional Neurosurgery'' provides a single source for the reader to keep abreast of developments in the most rapidly advancing subspecialty within neurosurgery. Technological advances in computer-assisted surgery, robotics, imaging and neurophysiology are being applied to clinical problems with ever-increasing rapidity in stereotaxis more than any other field, providing opportunities for new approaches to surgical and radiotherapeutic management of diseases of the brain, spinal cord, and spine. Issues feature advances in the use of deep-brain stimulation, imaging-guided techniques in stereotactic biopsy and craniotomy, stereotactic radiosurgery, and stereotactically implanted and guided radiotherapeutics and biologicals in the treatment of functional and movement disorders, brain tumors, and other diseases of the brain. Background information from basic science laboratories related to such clinical advances provides the reader with an overall perspective of this field. Proceedings and abstracts from many of the key international meetings furnish an overview of this specialty available nowhere else. ''Stereotactic and Functional Neurosurgery'' meets the information needs of both investigators and clinicians in this rapidly advancing field.
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