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首页> 外文期刊>NeuroImage: Clinical >FLAIR 2 improves LesionTOADS automatic segmentation of multiple sclerosis lesions in non-homogenized, multi-center, 2D clinical magnetic resonance images
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FLAIR 2 improves LesionTOADS automatic segmentation of multiple sclerosis lesions in non-homogenized, multi-center, 2D clinical magnetic resonance images

机译:FLAIR 2 改进了在非均质,多中心,二维临床磁共振图像中对多发性硬化病灶的LesionTOADS自动分割

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BackgroundAccurate segmentation of MS lesions on MRI is difficult and, if performed manually, time consuming. Automatic segmentations rely strongly on the image contrast and signal-to-noise ratio. Literature examining segmentation tool performances in real-world multi-site data acquisition settings is scarce.ObjectiveFLAIR2, a combination of T2-weighted and fluid attenuated inversion recovery (FLAIR) images, improves tissue contrast while suppressing CSF. We compared the use of FLAIR and FLAIR2in LesionTOADS, OASIS and the lesion segmentation toolbox (LST) when applied to non-homogenized, multi-center 2D-imaging data.MethodsLesions were segmented on 47 MS patient data sets obtained from 34 sites using LesionTOADS, OASIS and LST, and compared to a semi-automatically generated reference. The performance of FLAIR and FLAIR2was assessed using the relative lesion volume difference (LVD), Dice coefficient (DSC), sensitivity (SEN) and symmetric surface distance (SSD). Performance improvements related to lesion volumes (LVs) were evaluated for all tools. For comparison, LesionTOADS was also used to segment lesions from 3?T single-center MR data of 40 clinically isolated syndrome (CIS) patients.ResultsCompared to FLAIR, the use of FLAIR2in LesionTOADS led to improvements of 31.6% (LVD), 14.0% (DSC), 25.1% (SEN), and 47.0% (SSD) in the multi-center study. DSC and SSD significantly improved for larger LVs, while LVD and SEN were enhanced independent of LV. OASIS showed little difference between FLAIR and FLAIR2, likely due to its inherent use of T2w and FLAIR. LST replicated the benefits of FLAIR2only in part, indicating that further optimization, particularly at low LVs is needed. In the CIS study, LesionTOADS did not benefit from the use of FLAIR2as the segmentation performance for both FLAIR and FLAIR2was heterogeneous.ConclusionsIn this real-world, multi-center experiment, FLAIR2outperformed FLAIR in its ability to segment MS lesions with LesionTOADS. The computation of FLAIR2enhanced lesion detection, at minimally increased computational time or cost, even retrospectively. Further work is needed to determine how LesionTOADS and other tools, such as LST, can optimally benefit from the improved FLAIR2contrast.
机译:背景技术在MRI上准确分割MS病变是困难的,而且如果手动进行,则非常耗时。自动分割在很大程度上取决于图像的对比度和信噪比。缺乏在现实世界中多站点数据采集设置中检查分割工具性能的文献.ObjectiveFLAIR2是T2加权和液体衰减反转恢复(FLAIR)图像的组合,可在抑制CSF的同时提高组织对比度。我们比较了将FLAIR和FLAIR2在LesionTOADS,OASIS和病变分割工具箱(LST)应用于非均质的多中心2D成像数据时的使用情况。方法将病变按照使用LesionTOADS从34个地点获得的47个MS患者数据集进行分割, OASIS和LST,并与半自动生成的参考进行了比较。使用相对病变体积差(LVD),骰子系数(DSC),灵敏度(SEN)和对称表面距离(SSD)评估FLAIR和FLAIR2的性能。对所有工具评估了与病变体积(LV)相关的性能改进。为了进行比较,还使用了LesionTOADS来对40例临床孤立综合征(CIS)患者的3?T单中心MR数据进行病变分割。结果与FLAIR相比,在LesionTOADS中使用FLAIR2改善了31.6%(LVD),14.0% (DSC),25.1%(SEN)和47.0%(SSD)。对于较大的LV,DSC和SSD显着改善,而LVD和SEN独立于LV而增强。 OASIS在FLAIR和FLAIR2之间显示的差异很小,可能是由于T2w和FLAIR的固有用法。 LST仅部分复制了FLAIR2的优势,表明需要进一步优化,尤其是在低LV下。在CIS研究中,由于FLAIR和FLAIR2的分割性能不同,因此LesionTOADS不能从FLAIR2的使用中受益。结论在这个真实的多中心实验中,FLAIR2在用LesionTOADS分割MS病变的能力方面胜过FLAIR。 FLAIR2增强病变检测的计算,即使是回顾性的,也能以最少的计算时间或成本来进行。需要进一步的工作来确定LesionTOADS和其他工具(例如LST)如何从改进的FLAIR2对比度中最佳受益。

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