Simultaneous serotonin and dopamine monitoring across timescales by rapid pulse voltammetry with partial least squares regression.
Cameron S MovassaghiKatie A PerrottaHongyan YangRahul IyerXinyi ChengMerel DagherMiguel Alcañiz FillolAnne Milasincic AndrewsPublished in: Analytical and bioanalytical chemistry (2021)
Many voltammetry methods have been developed to monitor brain extracellular dopamine levels. Fewer approaches have been successful in detecting serotonin in vivo. No voltammetric techniques are currently available to monitor both neurotransmitters simultaneously across timescales, even though they play integrated roles in modulating behavior. We provide proof-of-concept for rapid pulse voltammetry coupled with partial least squares regression (RPV-PLSR), an approach adapted from multi-electrode systems (i.e., electronic tongues) used to identify multiple components in complex environments. We exploited small differences in analyte redox profiles to select pulse steps for RPV waveforms. Using an intentionally designed pulse strategy combined with custom instrumentation and analysis software, we monitored basal and stimulated levels of dopamine and serotonin. In addition to faradaic currents, capacitive currents were important factors in analyte identification arguing against background subtraction. Compared to fast-scan cyclic voltammetry-principal components regression (FSCV-PCR), RPV-PLSR better differentiated and quantified basal and stimulated dopamine and serotonin associated with striatal recording electrode position, optical stimulation frequency, and serotonin reuptake inhibition. The RPV-PLSR approach can be generalized to other electrochemically active neurotransmitters and provides a feedback pipeline for future optimization of multi-analyte, fit-for-purpose waveforms and machine learning approaches to data analysis.
Keyphrases
- data analysis
- blood pressure
- uric acid
- machine learning
- computed tomography
- prefrontal cortex
- high resolution
- artificial intelligence
- signaling pathway
- magnetic resonance imaging
- metabolic syndrome
- multiple sclerosis
- parkinson disease
- magnetic resonance
- functional connectivity
- resting state
- solid state
- carbon nanotubes
- brain injury
- contrast enhanced
- cerebral ischemia
- dual energy