Paper
- Alzforum Recommends
Palmqvist S, Janelidze S, Stomrud E, Zetterberg H, Karl J, Zink K, Bittner T, Mattsson N, Eichenlaub U, Blennow K, Hansson O. Performance of Fully Automated Plasma Assays as Screening Tests for Alzheimer Disease-Related β-Amyloid Status. JAMA Neurol. 2019 Jun 24; PubMed.
Biomarker (Source) |
Cohort (N) |
Measurement Mean ± SD |
Method; Assay Name; Manufacturer |
Diagnostic Criteria |
---|---|---|---|---|
Aβ40 (CSF) |
AD (94) |
17.9 ± 6.4 ng/mL |
Fully Automated Immunoassay; Elecsys; Roche Diagnostics |
McKhann et al., 1984; 1993 |
Aβ40 (CSF) |
CTRL- CNC (34) |
18.3 ± 6.7 ng/mL |
Fully Automated Immunoassay; Elecsys; Roche Diagnostics |
|
Aβ40 (Plasma) |
AD (94) |
0.437 ± 0.106 ng/mL |
Fully Automated Immunoassay; Elecsys; Roche Diagnostics |
McKhann et al., 1984; 1993 |
Aβ40 (Plasma) |
CTRL- CNC (34) |
0.439 ± 0.102 ng/mL |
Fully Automated Immunoassay; Elecsys; Roche Diagnostics |
|
Aβ42 (CSF) |
AD (94) |
672 ± 335 pg/mL |
Fully Automated Immunoassay; Elecsys; Roche Diagnostics |
McKhann et al., 1984; 1993 |
Aβ42 (CSF) |
CTRL- CNC (34) |
1133 ± 410 pg/mL |
Fully Automated Immunoassay; Elecsys; Roche Diagnostics |
|
Aβ42 (Plasma) |
AD (94) |
26.1 ± 6.5 pg/mL |
Fully Automated Immunoassay; Elecsys; Roche Diagnostics |
McKhann et al., 1984; 1993 |
Aβ42 (Plasma) |
CTRL- CNC (34) |
30.1 ± 6.5 pg/mL |
Fully Automated Immunoassay; Elecsys; Roche Diagnostics |
|
NFL (CSF) |
AD (64) |
2002 ± 1835 pg/mL |
ELISA; NF-light; UmanDiagnostics AB |
McKhann et al., 2011 |
NFL (CSF) |
CTRL- CNC (366) |
918 ± 490 pg/mL |
ELISA; NF-light; UmanDiagnostics AB |
|
tau-p181 (CSF) |
AD (64) |
36.3 ± 16.3 pg/mL |
Fully Automated Immunoassay; Elecsys; Roche Diagnostics |
McKhann et al., 2011 |
tau-p181 (CSF) |
CTRL- CNC (366) |
17.5 ± 5.3 pg/mL |
Fully Automated Immunoassay; Elecsys; Roche Diagnostics |
|
tau-total (CSF) |
AD (64) |
384 ± 143 pg/mL |
Fully Automated Immunoassay; Elecsys; Roche Diagnostics |
McKhann et al., 2011 |
tau-total (CSF) |
AD (94) |
365 ± 159 pg/mL |
Fully Automated Immunoassay; Elecsys; Roche Diagnostics |
McKhann et al., 1984; 1993 |
tau-total (CSF) |
CTRL- CNC (34) |
230 ± 113 pg/mL |
Fully Automated Immunoassay; Elecsys; Roche Diagnostics |
|
tau-total (CSF) |
CTRL- CNC (366) |
209 ± 62 pg/mL |
Fully Automated Immunoassay; Elecsys; Roche Diagnostics |
|
tau-total (Plasma) |
AD (64) |
16.7 ± 6 pg/mL |
Fully Automated Immunoassay; Elecsys; Roche Diagnostics |
McKhann et al., 2011 |
tau-total (Plasma) |
AD (94) |
15.3 ± 4.5 pg/mL |
Fully Automated Immunoassay; Elecsys; Roche Diagnostics |
McKhann et al., 1984; 1993 |
tau-total (Plasma) |
CTRL- CNC (34) |
13.8 ± 4 pg/mL |
Fully Automated Immunoassay; Elecsys; Roche Diagnostics |
|
tau-total (Plasma) |
CTRL- CNC (366) |
16.6 ± 4.7 pg/mL |
Fully Automated Immunoassay; Elecsys; Roche Diagnostics |
Please login to recommend the paper.
Comments
Biomarkable bvba
Co-founder of ADx NeuroSciences and founder of Key4AD
Drawing closer: Alzheimer’s blood test for primary care
This study of Palmqvist et al. showed with fully automated immunoassays that the plasma Aβ1-42/Aβ1-40 ratio can predict amyloid plaque load (amyloidopathy) in the brain (BioFinder study). In addition, at the upcoming AAIC meeting, Inge Verberk from Amsterdam University Medical Center will present a follow-up study of a previously published Simoa immunoassay approach (Verberk et al., 2018) using newly developed AMYBLOOD Simoa assays. She will report comparable clinical performance using a different patient cohort and technology. The Simoa assays to be presented by Charlotte Teunissen's group at Amsterdam UMC are developed in close collaboration with ADx NeuroSciences.
The potential value of the plasma Aβ42/Aβ40 ratio has been increasingly recognized over the last several years by:
Before a plasma Aβ immunoassay can be used to rule out the need for a costly Aβ-PET scan, the test should achieve a high sensitivity (>85 percent) and a high negative predictive value for a specific clinical context, for instance for pharma trials.
Suggestions for the use of the plasma Aβ42/Aβ40 ratio were already published more than a decade ago based on classical ELISAs and supported recently by the more labor-intensive mass-spectrometry technology (Nakamura et al., 2018; Ovod et al., 2017). However, with their current design, it seems immunoassays cannot reach the same diagnostic accuracy for Aβ1-42/Aβ1-40 as mass spectrometry, pointing to the need to (i) extend the algorithm for blood testing by integration of other proteins or protein isoforms, (ii) have a better understanding of the characteristics of monoclonal antibodies that are used in the assay design, (iii) improve analytical performance of immunoassays, and (iv) generate standard operating procedures for collection and storage of blood samples.
Several obvious plasma biomarkers (e.g. Neurofilament Light, tau, BACE1 protein, YKL-40) (Vergallo et al., 2019) are not able to fill that clinical accuracy gap between mass spectrometry-based studies and immunoassay data (Feb 2019 news). However, ongoing longitudinal studies in (pre)clinical study cohorts, such as from the SCIENCe project, the pre-insight AD cohort (Verberk et al., 2018; Vergallo et al., 2019), or the AIBL study cohort, can potentially confirm and validate that a simple plasma test might help to identify a stage of AD before MCI and thus might aid in the setup of new clinical and prevention trials.
It is important that biology and assay performance are more closely linked to each other. Precision Qualified Assays (PQAs) will provide a solution in the future by combining clearly defined analytical performance requirements of an assay with the observed effects in patients (see also Biomarker Qualification: Evidentiary Framework). This requires a high(er) level of standardization of biomarker assays than done now. Not only are extensive standardizations needed at the level of the lab, the sample, and the assay, but also the biological variation or biological differences emerging for a specific context of use need to be taken into account.
There is a need for:
References:
Nakamura A, Kaneko N, Villemagne VL, Kato T, Doecke J, Doré V, Fowler C, Li QX, Martins R, Rowe C, Tomita T, Matsuzaki K, Ishii K, Ishii K, Arahata Y, Iwamoto S, Ito K, Tanaka K, Masters CL, Yanagisawa K. High performance plasma amyloid-β biomarkers for Alzheimer's disease. Nature. 2018 Feb 8;554(7691):249-254. Epub 2018 Jan 31 PubMed.
Ovod V, Ramsey KN, Mawuenyega KG, Bollinger JG, Hicks T, Schneider T, Sullivan M, Paumier K, Holtzman DM, Morris JC, Benzinger T, Fagan AM, Patterson BW, Bateman RJ. Amyloid β concentrations and stable isotope labeling kinetics of human plasma specific to central nervous system amyloidosis. Alzheimers Dement. 2017 Aug;13(8):841-849. Epub 2017 Jul 19 PubMed.
Vergallo A, Mégret L, Lista S, Cavedo E, Zetterberg H, Blennow K, Vanmechelen E, De Vos A, Habert MO, Potier MC, Dubois B, Neri C, Hampel H, INSIGHT-preAD study group, Alzheimer Precision Medicine Initiative (APMI). Plasma amyloid β 40/42 ratio predicts cerebral amyloidosis in cognitively normal individuals at risk for Alzheimer's disease. Alzheimers Dement. 2019 Jun;15(6):764-775. Epub 2019 May 18 PubMed.
Verberk IM, Slot RE, Verfaillie SC, Heijst H, Prins ND, van Berckel BN, Scheltens P, Teunissen CE, van der Flier WM. Plasma Amyloid as Prescreener for the Earliest Alzheimer Pathological Changes. Ann Neurol. 2018 Nov;84(5):648-658. Epub 2018 Oct 4 PubMed.
View all comments by Eugeen VanmechelenMake a Comment
To make a comment you must login or register.