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利用ADNI-2数据库比较脑脊液标志物和半定量淀粉样蛋白PET在阿尔茨海默病诊断及认知障碍预后中的应用

Comparison of CSF markers and semi-quantitative amyloid PET in Alzheimer's disease diagnosis and in cognitive impairment prognosis using the ADNI-2 database.

作者信息

Ben Bouallègue Fayçal, Mariano-Goulart Denis, Payoux Pierre

机构信息

Toulouse NeuroImaging Centre (ToNIC), Université de Toulouse, Inserm/UPS, Toulouse, France.

Nuclear Medicine Department, Purpan University Hospital, Toulouse, France.

出版信息

Alzheimers Res Ther. 2017 Apr 26;9(1):32. doi: 10.1186/s13195-017-0260-z.

Abstract

BACKGROUND

The relative performance of semi-quantitative amyloid positron emission tomography (PET) and cerebrospinal fluid (CSF) markers in diagnosing Alzheimer's disease (AD) and predicting the cognitive evolution of patients with mild cognitive impairment (MCI) is still debated.

METHODS

Subjects from the Alzheimer's Disease Neuroimaging Initiative 2 with complete baseline cognitive assessment (Mini Mental State Examination, Clinical Dementia Rating [CDR] and Alzheimer's Disease Assessment Scale-Cognitive Subscale [ADAS-cog] scores), CSF collection (amyloid-β [Aβ], tau and phosphorylated tau) and F-florbetapir scans were included in our cross-sectional cohort. Among these, patients with MCI or substantial memory complaints constituted our longitudinal cohort and were followed for 30 ± 16 months. PET amyloid deposition was quantified using relative retention indices (standardised uptake value ratio [SUVr]) with respect to pontine, cerebellar and composite reference regions. Diagnostic and prognostic performance based on PET and CSF was evaluated using ROC analysis, multivariate linear regression and survival analysis with the Cox proportional hazards model.

RESULTS

The cross-sectional study included 677 participants and revealed that pontine and composite SUVr values were better classifiers (AUC 0.88, diagnostic accuracy 85%) than CSF markers (AUC 0.83 and 0.85, accuracy 80% and 75%, for Aβ and tau, respectively). SUVr was a strong independent determinant of cognition in multivariate regression, whereas Aβ was not; tau was also a determinant, but to a lesser degree. Among the 396 patients from the longitudinal study, 82 (21%) converted to AD within 22 ± 13 months. Optimal SUVr thresholds to differentiate AD converters were quite similar to those of the cross-sectional study. Composite SUVr was the best AD classifier (AUC 0.86, sensitivity 88%, specificity 81%). In multivariate regression, baseline cognition (CDR and ADAS-cog) was the main predictor of subsequent cognitive decline. Pontine and composite SUVr were moderate but independent predictors of final status and CDR/ADAS-cog progression rate, whereas baseline CSF markers had a marginal influence. The adjusted HRs for AD conversion were 3.8 (p = 0.01) for PET profile, 1.2 (p = ns) for Aβ profile and 1.8 (p = 0.03) for tau profile.

CONCLUSIONS

Semi-quantitative amyloid PET appears more powerful than CSF markers for AD grading and MCI prognosis in terms of cognitive decline and AD conversion.

摘要

背景

在诊断阿尔茨海默病(AD)以及预测轻度认知障碍(MCI)患者的认知演变方面,半定量淀粉样蛋白正电子发射断层扫描(PET)和脑脊液(CSF)标志物的相对性能仍存在争议。

方法

来自阿尔茨海默病神经影像学倡议2的受试者,具有完整的基线认知评估(简易精神状态检查、临床痴呆评定量表[CDR]和阿尔茨海默病评估量表-认知子量表[ADAS-cog]评分)、脑脊液采集(淀粉样β蛋白[Aβ]、tau蛋白和磷酸化tau蛋白)以及F-氟代苯并噻唑扫描,被纳入我们的横断面队列研究。其中,MCI患者或有明显记忆障碍主诉的患者构成我们的纵向队列,并随访30±16个月。PET淀粉样蛋白沉积通过相对于脑桥、小脑和复合参考区域的相对保留指数(标准化摄取值比率[SUVr])进行量化。基于PET和CSF的诊断及预后性能通过ROC分析、多元线性回归以及Cox比例风险模型的生存分析进行评估。

结果

横断面研究纳入了677名参与者,结果显示脑桥和复合SUVr值作为分类指标(AUC为0.88,诊断准确率为85%)优于CSF标志物(Aβ和tau的AUC分别为0.83和0.85,准确率分别为80%和75%)。在多元回归中,SUVr是认知的一个强有力的独立决定因素,而Aβ不是;tau也是一个决定因素,但程度较小。在纵向研究的396名患者中,82名(21%)在22±13个月内转变为AD。区分AD转化者的最佳SUVr阈值与横断面研究的阈值非常相似。复合SUVr是最佳的AD分类指标(AUC为0.86,敏感性为88%,特异性为81%)。在多元回归中,基线认知(CDR和ADAS-cog)是随后认知下降的主要预测因素。脑桥和复合SUVr是最终状态和CDR/ADAS-cog进展率的中度但独立的预测因素,而基线CSF标志物的影响较小。PET特征的AD转化调整后HR为3.8(p = 0.01),Aβ特征为1.2(p =无统计学意义),tau特征为1.8(p = 0.03)。

结论

就认知下降和AD转化而言,半定量淀粉样蛋白PET在AD分级和MCI预后方面似乎比CSF标志物更具优势。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e362/5405503/d2ad9b31a78d/13195_2017_260_Fig1_HTML.jpg

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