| Literature DB >> 31891371 |
AmanPreet Badhwar1,2, G Peggy McFall3, Shraddha Sapkota4, Sandra E Black4,5, Howard Chertkow6, Simon Duchesne7,8, Mario Masellis5, Liang Li9, Roger A Dixon3,10, Pierre Bellec1,2.
Abstract
Aetiological and clinical heterogeneity is increasingly recognized as a common characteristic of Alzheimer's disease and related dementias. This heterogeneity complicates diagnosis, treatment, and the design and testing of new drugs. An important line of research is discovery of multimodal biomarkers that will facilitate the targeting of subpopulations with homogeneous pathophysiological signatures. High-throughput 'omics' are unbiased data-driven techniques that probe the complex aetiology of Alzheimer's disease from multiple levels (e.g. network, cellular, and molecular) and thereby account for pathophysiological heterogeneity in clinical populations. This review focuses on data reduction analyses that identify complementary disease-relevant perturbations for three omics techniques: neuroimaging-based subtypes, metabolomics-derived metabolite panels, and genomics-related polygenic risk scores. Neuroimaging can track accrued neurodegeneration and other sources of network impairments, metabolomics provides a global small-molecule snapshot that is sensitive to ongoing pathological processes, and genomics characterizes relatively invariant genetic risk factors representing key pathways associated with Alzheimer's disease. Following this focused review, we present a roadmap for assembling these multiomics measurements into a diagnostic tool highly predictive of individual clinical trajectories, to further the goal of personalized medicine in Alzheimer's disease.Entities:
Keywords: Alzheimer’s disease; metabolite panel; multiomics biomarkers; neuroimaging subtype; polygenic risk score
Mesh:
Year: 2020 PMID: 31891371 PMCID: PMC7241959 DOI: 10.1093/brain/awz384
Source DB: PubMed Journal: Brain ISSN: 0006-8950 Impact factor: 13.501