An Indicator Cell Assay-based Multivariate Blood Test for Early Detection of Alzheimer's Disease.
Publication Title
medRxiv
Document Type
Article
Publication Date
9-15-2025
Keywords
5XFAD; Alzheimer’s disease diagnosis; artificial intelligence; blood-based diagnostics; machine learning; mild cognitive impairment; mouse model; multivariate model; unbiased feature; washington; isb; artifical intelligence
Abstract
The indicator cell assay platform (iCAP) is a novel next-generation approach for blood-based diagnostics that uses standardized cells as biosensors to amplify weak disease signals in blood. We developed an Alzheimer's disease iCAP (AD-iCAP) for early detection at the mild cognitive impairment/mild dementia stages. To develop the assay, patient plasma is incubated with standardized neurons, which transduce complex circulating signals into gene-expression readouts used to train multivariate disease classifiers via machine learning. We applied systems biology analyses (e.g., GSEA, PCA, correlation/network analyses) to optimize analytical and computational parameters, and then evaluated a locked model in a study with retrospectively collected samples. Performance was AUC 0.64 (95% CI 0.51-0.78, n=82) on an independent external-validation set and AUC 0.77 (95% CI 0.57-0.96, n=23) on a blind set, supporting prospective confirmation in a larger cohort. To overcome pre-analytical noise and reduce bias in feature-selection, modeling was done using a fixed panel of 84 candidate genes chosen a priori from an external AD-iCAP dataset generated with 5XFAD mouse plasma. Despite using no AD-specific prior knowledge in this approach, the assay readout was enriched for Alzheimer's-relevant pathways, including cholesterol biosynthesis, synaptic structure/neurotransmission and PIK3/AKT activation. Because the assay senses a multivalent cellular response, which is orthogonal to circulating amyloid or tau measurements, AD-iCAP may complement existing blood tests, and its multivariate readout offers a path to precision-medicine applications such as patient stratification for treatment response.
Area of Special Interest
Neurosciences (Brain & Spine)
Area of Special Interest
Mental Health
Specialty/Research Institute
Neurosciences
Specialty/Research Institute
Behavioral Health
DOI
10.1101/2025.09.15.25335782