posted on 2024-11-14, 01:29authored byA. N. Resmi, Shaiju S. Nazeer, M. E. Dhushyandhun, Willi Paul, Binu P. Chacko, Ramshekhar N. Menon, Ramapurath. S. Jayasree
Accurate and early disease detection is crucial for improving
patient
care, but traditional diagnostic methods often fail to identify diseases
in their early stages, leading to delayed treatment outcomes. Early
diagnosis using blood derivatives as a source for biomarkers is particularly
important for managing Alzheimer’s disease (AD). This study
introduces a novel approach for the precise and ultrasensitive detection
of multiple core AD biomarkers (Aβ40, Aβ42, p-tau, and t-tau) using surface-enhanced Raman spectroscopy
(SERS) combined with machine-learning algorithms. Our method employs
an antibody-immobilized aluminum SERS substrate, which offers high
precision, sensitivity, and accuracy. The platform achieves an impressive
detection limit in the attomolar (aM) range and spans a wide dynamic
range from aM to micromolar (μM) concentrations. This ultrasensitive
and specific SERS immunoassay platform shows promise for identifying
mild cognitive impairment (MCI), a potential precursor to AD, from
blood plasma. Machine-learning algorithms applied to the spectral
data enhance the differentiation of MCI from AD and healthy controls,
yielding excellent sensitivity and specificity. Our integrated SERS-machine-learning
approach, with its interpretability, advances AD research and underscores
the effectiveness of a cost-efficient, easy-to-prepare Al-SERS substrate
for clinical AD detection.