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大脑中的多发性硬化病变:基于3D FLAIR磁共振成像的病变负荷动态变化的计算机辅助评估

Multiple Sclerosis Lesions in the Brain: Computer-Assisted Assessment of Lesion Load Dynamics on 3D FLAIR MR Images.

作者信息

Bilello M, Arkuszewski M, Nasrallah I, Wu X, Erus G, Krejza J

机构信息

Department of Radiology, University of Pennsylvania; Philadelphia, PA, USA -

出版信息

Neuroradiol J. 2012 Mar;25(1):17-21. doi: 10.1177/197140091202500102. Epub 2012 Mar 1.

DOI:10.1177/197140091202500102
PMID:24028871
Abstract

The detection and monitoring of brain lesions caused by multiple sclerosis is commonly performed with the use of magnetic resonance imaging. Analysis of a large number of images is a time-consuming challenge to the neuroradiologist, that can be accelerated with the assistance of computer-detection software. In 98 baseline and follow-up brain magnetic resonance studies from 88 patients with a diagnosis of multiple sclerosis, we employed locally developed lesion-detection software to assess temporal change in the load of brain lesions and compared its results to routine clinical reports. Analyzing the differences between the follow-up study and the baseline study, the software displays the results in the form of a scrollable axial volume, with the changed lesions highlighted in different colors and superimposed on the baseline reference scan. Disagreements between the software and the clinical readers in the detection of changed lesions were observed only in 11 (11.2%) cases, and the difference did not reach statistical significance (p=0.07). The mean interpretation time with assistance of the software was 2.7±2.2 minutes. We conclude that the performance of the software-assisted interpretation in the analysis of change over time in multiple sclerosis brain lesions is comparable to the performance of clinical readers, with a possibly shorter assessment time. Our study demonstrates the potential of including lesion-detection software in the workflow of neuroradiology practice.

摘要

多发性硬化症所致脑损伤的检测与监测通常借助磁共振成像来进行。对于神经放射科医生而言,分析大量图像是一项耗时的挑战,而借助计算机检测软件可加快分析速度。在对88例确诊为多发性硬化症患者进行的98次基线及随访脑磁共振研究中,我们使用本地开发的损伤检测软件来评估脑损伤负荷的时间变化,并将其结果与常规临床报告进行比较。通过分析随访研究与基线研究之间的差异,该软件以可滚动轴向容积的形式显示结果,其中变化的损伤以不同颜色突出显示并叠加在基线参考扫描上。在检测变化的损伤时,软件与临床阅片者之间仅在11例(11.2%)中存在分歧,且差异未达到统计学意义(p = 0.07)。借助该软件的平均解读时间为2.7±2.2分钟。我们得出结论,在分析多发性硬化症脑损伤随时间的变化时,软件辅助解读的表现与临床阅片者相当,且评估时间可能更短。我们的研究证明了在神经放射学实践工作流程中纳入损伤检测软件的潜力。

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