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Published

Plasma biomarkers and genetics in the diagnosis and prediction of Alzheimer's disease.

Authors

Joshua Stevenson-Hoare, Amanda Heslegrave, Ganna Leonenko, Dina Fathalla, Eftychia Bellou, Lauren Luckcuck, Rachel Marshall, Rebecca Sims, Bryan Paul Morgan, John Hardy, Bart de Strooper, Julie Williams, Henrik Zetterberg, Valentina Escott-Price

Abstract

Plasma biomarkers for Alzheimer's disease-related pathologies have undergone rapid developments during the past few years, and there are now well-validated blood tests for amyloid and tau pathology, as well as neurodegeneration and astrocytic activation. To define Alzheimer's disease with biomarkers rather than clinical assessment, we assessed prediction of research-diagnosed disease status using these biomarkers and tested genetic variants associated with the biomarkers that may reflect more accurately the risk of biochemically defined Alzheimer's disease instead of the risk of dementia. In a cohort of Alzheimer's disease cases [n = 1439, mean age 68 years (standard deviation = 8.2)] and screened controls [n = 508, mean age 82 years (standard deviation = 6.8)], we measured plasma concentrations of the 40 and 42 amino acid-long amyloid-β (Aβ) fragments (Aβ40 and Aβ42, respectively), tau phosphorylated at amino acid 181 (P-tau181), neurofilament light (NfL) and glial fibrillary acidic protein (GFAP) using state-of-the-art Single molecule array (Simoa) technology. We tested the relationships between the biomarkers and Alzheimer's disease genetic risk, age at onset and disease duration. We also conducted a genome-wide association study for association of disease risk genes with these biomarkers. The prediction accuracy of Alzheimer's disease clinical diagnosis by the combination of all biomarkers, APOE and polygenic risk score reached area under receiver operating characteristic curve (AUC) = 0.81, with the most significant contributors being ε4, Aβ40 or Aβ42, GFAP and NfL. All biomarkers were significantly associated with age in cases and controls (P < 4.3 × 10-5). Concentrations of the Aβ-related biomarkers in plasma were significantly lower in cases compared with controls, whereas other biomarker levels were significantly higher in cases. In the case-control genome-wide analyses, APOE-ε4 was associated with all biomarkers (P = 0.011-4.78 × 10-8), except NfL. No novel genome-wide significant single nucleotide polymorphisms were found in the case-control design; however, in a case-only analysis, we found two independent genome-wide significant associations between the Aβ42/Aβ40 ratio and WWOX and COPG2 genes. Disease prediction modelling by the combination of all biomarkers indicates that the variance attributed to P-tau181 is mostly captured by APOE-ε4, whereas Aβ40, Aβ42, GFAP and NfL biomarkers explain additional variation over and above APOE. We identified novel plausible genome wide-significant genes associated with Aβ42/Aβ40 ratio in a sample which is 50 times smaller than current genome-wide association studies in Alzheimer's disease.

PMID:35383826 | DOI:

UK DRI Authors

Amanda Heslegrave

Dr Amanda Heslegrave

Principal Research Fellow

Co-leading the UK DRI Biomarker Factory platform based at UK DRI at UCL

Dr Amanda Heslegrave
John Hardy

Prof Sir John Hardy

Group Leader

Harnessing genetics to build a better understanding of dementia

Prof Sir John Hardy
Bart De Strooper

Prof Bart De Strooper

Group Leader

Investigating the cellular reaction to amyloid beta and tau protein in Alzheimer's disease

Prof Bart De Strooper
Julie Williams

Prof Julie Williams

Group Leader

Understanding the genetics of Alzheimer's disease

Prof Julie Williams
Profile picture of Henrik Zetterberg

Prof Henrik Zetterberg

Group Leader

Pioneering the development of fluid biomarkers for dementia

Prof Henrik Zetterberg
Valentina Escott-Price

Prof Valentina Escott-Price

Group Leader

Using Big Data, machine learning and AI to accelerate discoveries into dementia

Prof Valentina Escott-Price