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基于图像减法对二维质子密度加权扫描中多发性硬化症病变体积变化进行量化的半自动方法的验证。

Validation of a semi-automated method to quantify lesion volume changes in multiple sclerosis on 2D proton-density-weighted scans based on image subtraction.

作者信息

Mattiesing Rozemarijn M, Stel Serena, Mangroe Alysha S, Brouwer Iman, Versteeg Adriaan, van Schijndel Ronald A, Uitdehaag Bernard M J, Barkhof Frederik, Vrenken Hugo, Kuijer Joost P A

机构信息

MS Center Amsterdam, Radiology and Nuclear Medicine, Amsterdam Neuroscience, Amsterdam UMC location VUmc, De Boelelaan 1118, 1081 HZ, Amsterdam, the Netherlands.

MS Center Amsterdam, Neurology, Amsterdam Neuroscience, Amsterdam UMC location VUmc, De Boelelaan 1118, 1081 HZ, Amsterdam, the Netherlands.

出版信息

Neuroimage Rep. 2023 Dec 21;4(1):100194. doi: 10.1016/j.ynirp.2023.100194. eCollection 2024 Mar.

Abstract

BACKGROUND

The detection and quantification of changes in white matter lesions in the brain is important to monitor treatment effects in patients with multiple sclerosis (MS). Existing automatic tools predominantly require FLAIR images as input which are not always available, or only focus on new/enlarging activity. Therefore, we developed and validated a semi-automated method to quantify lesion volume changes based on 2D proton-density (PD)-weighted images and image subtraction. This semi-automated method provides insight in both "positive" activity (defined as new and enlarging lesions) and "negative" activity (disappearing and shrinking lesions).

METHODS

Yearly MRI scans of patients with early MS from the REFLEX/REFLEXION studies were used. The maximum follow-up period was 5 years. Two PD-weighted images were normalized, registered to a common halfway-space, intensity-matched, and subsequently subtracted. Within manual lesion masks, lesion changes were quantified using a subtraction intensity threshold and total lesion volume change (TLVC) was calculated. Reproducibility was measured by assessing transitivity, specifically, we calculated the intraclass correlation coefficient for the absolute agreement (ICC) and the difference (Δ) between the direct one-step and indirect multi-step measurements of TLVC between two visits. Accuracy was assessed by calculating both the intraclass correlation coefficient for absolute agreement (ICC) and the difference (Δ) between the one-step semi-automated TLVC and manually measured lesion volume change (numerical difference) between two visits. Spearman's correlations (r) were used to assess the relation of global and central atrophy, manually measured T2 lesion volume, and lesion volume change with the method's performance as reflected by the difference measures |Δ| and Δ. An alpha of 0.05 was used as the cut-off for significance.

RESULTS

Reproducibility was excellent, with ICC values ranging from 0.90 to 0.96. Accuracy was good overall, with ICC values ranging from 0.67 to 0.86. The standard deviation of Δ ranged from 0.25 to 0.86 mL. The mean of Δ ranged from 0.11 to 0.37 mL and was significantly different from zero. Both global and central atrophy significantly correlated with lower reproducibility (correlation of |Δ| with global atrophy, r = -0.19 to -0.28, and correlation of |Δ| with central atrophy, r = 0.22 to 0.34). There was generally no significant correlation between global/central atrophy and accuracy. Higher lesion volume was significantly correlated with lower reproducibility (r = 0.62). Higher lesion volume change was significantly correlated with lower reproducibility (r = 0.22) and lower accuracy (correlation of Δ with lesion volume change, r = -0.52).

DISCUSSION

The semi-automated method to quantify lesion volume changes has excellent reproducibility and overall good accuracy. The amount of atrophy and especially lesion volume (change) should be taken into account when applying this method, as an increase in these variables might affect the quality of the results.

CONCLUSION

Overall, the semi-automated subtraction method allows a valid and reliable quantitative investigation of lesion volume changes over time in (early) MS for follow-up periods up to 5 years.

摘要

背景

检测和量化脑白质病变的变化对于监测多发性硬化症(MS)患者的治疗效果至关重要。现有的自动工具主要需要液体衰减反转恢复(FLAIR)图像作为输入,但这些图像并非总是可用,或者仅关注新出现/扩大的病变。因此,我们开发并验证了一种基于二维质子密度(PD)加权图像和图像相减来量化病变体积变化的半自动方法。这种半自动方法能够洞察“阳性”活动(定义为新出现和扩大的病变)以及“阴性”活动(消失和缩小的病变)。

方法

使用来自REFLEX/REFLEXION研究的早期MS患者的年度磁共振成像(MRI)扫描数据。最大随访期为5年。对两张PD加权图像进行归一化处理,配准到一个共同的中间空间,进行强度匹配,然后相减。在手动绘制的病变掩码内,使用相减强度阈值量化病变变化,并计算总病变体积变化(TLVC)。通过评估可传递性来测量再现性,具体而言,我们计算两次随访之间TLVC的直接一步测量和间接多步测量之间的绝对一致性组内相关系数(ICC)以及差异(Δ)。通过计算两次随访之间一步半自动TLVC与手动测量的病变体积变化(数值差异)之间的绝对一致性组内相关系数(ICC)和差异(Δ)来评估准确性。使用斯皮尔曼相关性(r)来评估整体和中央萎缩、手动测量的T2病变体积以及病变体积变化与该方法性能之间的关系,该关系通过差异测量值|Δ|和Δ来反映。以0.05的α值作为显著性临界值。

结果

再现性极佳,ICC值范围为0.90至0.96。总体准确性良好,ICC值范围为0.67至0.86。Δ的标准差范围为0.25至0.86毫升。Δ的平均值范围为0.11至0.37毫升,且与零有显著差异。整体和中央萎缩均与较低的再现性显著相关(|Δ|与整体萎缩的相关性,r = -0.19至-0.28;|Δ|与中央萎缩的相关性,r = 0.22至0.34)。整体/中央萎缩与准确性之间通常无显著相关性。较高的病变体积与较低的再现性显著相关(r = 0.62)。较高的病变体积变化与较低的再现性显著相关(r = 0.22)以及较低的准确性相关(Δ与病变体积变化的相关性,r = -0.52)。

讨论

量化病变体积变化的半自动方法具有出色的再现性和总体良好的准确性。应用此方法时应考虑萎缩量,尤其是病变体积(变化),因为这些变量的增加可能会影响结果的质量。

结论

总体而言,半自动相减方法能够对(早期)MS患者长达5年随访期内病变体积随时间的变化进行有效且可靠的定量研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1522/12172906/c9d98b82d24f/gr1.jpg

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