用于解释阿尔茨海默病 CSF 综合生物标记物的特定区间似然比和基于概率的模型。

IF 3.2 3区 医学 Q2 MEDICAL LABORATORY TECHNOLOGY Clinica Chimica Acta Pub Date : 2024-08-22 DOI:10.1016/j.cca.2024.119941
Jonas Dubin , Rik Vandenberghe , Koen Poesen
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引用次数: 0

摘要

背景:在阿尔茨海默病(AD)诊断中,脑脊液(CSF)生物标记物面板通常以二元截断值来解释。然而,这些值并不是通用的,不能反映疾病的连续性。我们利用脑脊液生物标记物面板探索了使用特定区间似然比(LRs)和基于概率的AD模型:在一项单中心研究中,我们回顾性地检索了241名患者组成的临床发现队列(用INNOTEST测量)和129名患者组成的临床验证队列(用EUROIMMUN测量)的CSF生物标志物(Aβ1-42、tTau和pTau181)数据,其中包括AD和非AD痴呆/认知症状。计算并验证了单变量生物标记物和组合生物标记物(Aβ1-42/tTau 和 pTau181)的AD特异性区间LR,构建并验证了AD连续双变量概率模型,绘制了Aβ1-42/tTau 与 pTau181 的对比图:结果:随着单个 CSF 生物标志物值偏离正常值,AD 的 LR 值也随之增加。综合生物标志物模型的特定区间LRs显示,一旦一个生物标志物出现异常,当另一个生物标志物在很大程度上偏离正常值时,LRs会进一步增加,这在验证队列中得到了验证。基于二元概率的模型预测AD的验证准确率为88%:综合生物标志物模型中的特异性区间LRs,以及使用连续的基于生物标志物概率的双变量模型预测AD,为CSF AD生物标志物在(半)连续尺度上对不同检测方法和队列的AD检测后概率提供了更有意义的解释。
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Interval-specific likelihood ratios and probability-based models for interpreting combined CSF biomarkers for Alzheimer’s disease

Background

In Alzheimer’s disease (AD) diagnosis, a cerebrospinal fluid (CSF) biomarker panel is commonly interpreted with binary cutoff values. However, these values are not generic and do not reflect the disease continuum. We explored the use of interval-specific likelihood ratios (LRs) and probability-based models for AD using a CSF biomarker panel.

Methods

CSF biomarker (Aβ1-42, tTau and pTau181) data for both a clinical discovery cohort of 241 patients (measured with INNOTEST) and a clinical validation cohort of 129 patients (measured with EUROIMMUN), both including AD and non-AD dementia/cognitive complaints were retrospectively retrieved in a single-center study. Interval-specific LRs for AD were calculated and validated for univariate and combined (Aβ1-42/tTau and pTau181) biomarkers, and a continuous bivariate probability-based model for AD, plotting Aβ1-42/tTau versus pTau181 was constructed and validated.

Results

LR for AD increased as individual CSF biomarker values deviated from normal. Interval-specific LRs of a combined biomarker model showed that once one biomarker became abnormal, LRs increased even further when another biomarker largely deviated from normal, as replicated in the validation cohort. A bivariate probability-based model predicted AD with a validated accuracy of 88% on a continuous scale.

Conclusions

Interval-specific LRs in a combined biomarker model and prediction of AD using a continuous bivariate biomarker probability-based model, offer a more meaningful interpretation of CSF AD biomarkers on a (semi-)continuous scale with respect to the post-test probability of AD across different assays and cohorts.

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来源期刊
Clinica Chimica Acta
Clinica Chimica Acta 医学-医学实验技术
CiteScore
10.10
自引率
2.00%
发文量
1268
审稿时长
23 days
期刊介绍: The Official Journal of the International Federation of Clinical Chemistry and Laboratory Medicine (IFCC) Clinica Chimica Acta is a high-quality journal which publishes original Research Communications in the field of clinical chemistry and laboratory medicine, defined as the diagnostic application of chemistry, biochemistry, immunochemistry, biochemical aspects of hematology, toxicology, and molecular biology to the study of human disease in body fluids and cells. The objective of the journal is to publish novel information leading to a better understanding of biological mechanisms of human diseases, their prevention, diagnosis, and patient management. Reports of an applied clinical character are also welcome. Papers concerned with normal metabolic processes or with constituents of normal cells or body fluids, such as reports of experimental or clinical studies in animals, are only considered when they are clearly and directly relevant to human disease. Evaluation of commercial products have a low priority for publication, unless they are novel or represent a technological breakthrough. Studies dealing with effects of drugs and natural products and studies dealing with the redox status in various diseases are not within the journal''s scope. Development and evaluation of novel analytical methodologies where applicable to diagnostic clinical chemistry and laboratory medicine, including point-of-care testing, and topics on laboratory management and informatics will also be considered. Studies focused on emerging diagnostic technologies and (big) data analysis procedures including digitalization, mobile Health, and artificial Intelligence applied to Laboratory Medicine are also of interest.
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