A novel approach for classifying Monoamine Neurotransmitters by applying Machine Learning on UV plasmonic-engineered Auto Fluorescence Time Decay Series (AFTDS)
Journal:
arXiv
Published Date:
Jul 9, 2025
Abstract
This study introduces a hybrid approach integrating advanced plasmonic
nanomaterials and machine learning (ML) for high-precision biomolecule
detection. We leverage aluminum concave nanocubes (AlCNCs) as an innovative
plasmonic substrate to enhance the native fluorescence of neurotransmitters,
including dopamine (DA), norepinephrine (NE), and 3,4-Dihydroxyphenylacetic
acid (DOPAC). AlCNCs amplify weak fluorescence signals, enabling probe-free,
label-free detection and differentiation of these molecules with great
sensitivity and specificity. To further improve classification accuracy, we
employ ML algorithms, with Long Short-Term Memory (LSTM) networks playing a
central role in analyzing time-dependent fluorescence data. Comparative
evaluations with k-Nearest Neighbors (KNN) and Random Forest (RF) demonstrate
the superior performance of LSTM in distinguishing neurotransmitters. The
results reveal that AlCNC substrates provide up to a 12-fold enhancement in
fluorescence intensity for DA, 9-fold for NE, and 7-fold for DOPAC compared to
silicon substrates. At the same time, ML algorithms achieve classification
accuracy exceeding 89%. This interdisciplinary methodology bridges the gap
between nanotechnology and ML, showcasing the synergistic potential of
AlCNC-enhanced native fluorescence and ML in biosensing. The framework paves
the way for probe-free, label-free biomolecule profiling, offering
transformative implications for biomedical diagnostics and neuroscience
research.