Deep Learning-Driven Exploration of Pyrroloquinoline Quinone Neuroprotective Activity in Alzheimer's Disease

  • Xinuo Li
  • , Yuan Sun
  • , Zheng Zhou
  • , Jinran Li
  • , Sai Liu
  • , Long Chen
  • , Yiting Shi
  • , Min Wang
  • , Zheying Zhu
  • , Guangji Wang
  • , Qiulun Lu

Research output: Contribution to journalArticlepeer-review

15 Scopus citations

Abstract

Alzheimer's disease (AD) is a pressing concern in neurodegenerative research. To address the challenges in AD drug development, especially those targeting Aβ, this study uses deep learning and a pharmacological approach to elucidate the potential of pyrroloquinoline quinone (PQQ) as a neuroprotective agent for AD. Using deep learning for a comprehensive molecular dataset, blood–brain barrier (BBB) permeability is predicted and the anti-inflammatory and antioxidative properties of compounds are evaluated. PQQ, identified in the Mediterranean-DASH intervention for a diet that delays neurodegeneration, shows notable BBB permeability and low toxicity. In vivo tests conducted on an Aβ₁₋₄₂-induced AD mouse model verify the effectiveness of PQQ in reducing cognitive deficits. PQQ modulates genes vital for synapse and anti-neuronal death, reduces reactive oxygen species production, and influences the SIRT1 and CREB pathways, suggesting key molecular mechanisms underlying its neuroprotective effects. This study can serve as a basis for future studies on integrating deep learning with pharmacological research and drug discovery.

Original languageEnglish
Article number2308970
JournalAdvanced Science
Volume11
Issue number18
DOIs
StatePublished - 15 May 2024
Externally publishedYes

Keywords

  • Alzheimer's disease
  • deep learning
  • neuroprotective activities
  • pyrroloquinoline quinones

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