Artificial neural networks coupled with MALDI-TOF MS serum fingerprinting to classify and diagnose pathological pain subtypes in preclinical models.
Date
2023Abstract
Pathological pain subtypes can be classified as either
neuropathic pain, caused by a somatosensory nervous system lesion or
disease, or nociplastic pain, which develops without evidence of
somatosensory system damage. Since there is no gold standard for the
diagnosis of pathological pain subtypes, the proper classification of
individual patients is currently an unmet challenge for clinicians. While
the determination of specific biomarkers for each condition by current
biochemical techniques is a complex task, the use of multimolecular
techniques, such as matrix-assisted laser desorption/ionization time-offlight mass spectrometry (MALDI-TOF MS), combined with artificial
intelligence allows specific fingerprints for pathological pain-subtypes to
be obtained, which may be useful for diagnosis. We analyzed whether the
information provided by the mass spectra of serum samples of four
experimental models of neuropathic and nociplastic pain combined with
their functional pain outcomes could enable pathological pain subtype classification by artificial neural networks. As a result, a simple
and innovative clinical decision support method has been developed that combines MALDI-TOF MS serum spectra and pain
evaluation with its subsequent data analysis by artificial neural networks and allows the identification and classification of
pathological pain subtypes in experimental models with a high level of specificity.