Close Menu
  • Home
  • Understanding Dementia
  • Caregiver Resources
  • Helpful Products
  • News
What's Hot

Blood test shows high accuracy in detecting Alzheimer’s disease

Better brain care score linked to lower risk of heart disease and cancer

Pennington Biomedical’s Greaux Healthy initiative launches to improve child health in Louisiana

Facebook X (Twitter) Instagram
  • Home
  • Understanding Dementia
  • Caregiver Resources
  • Helpful Products
  • News
Facebook X (Twitter) Instagram Pinterest
DEMENTIA PLANETDEMENTIA PLANET
Subscribe Now
  • About Us
  • Contact
  • Privacy Policy
  • Terms & Conditions
DEMENTIA PLANETDEMENTIA PLANET
You are at:Home»News»New deep-learning framework identifies non-addictive pain relief options
News

New deep-learning framework identifies non-addictive pain relief options

004 Mins Read
Share Facebook Twitter Pinterest LinkedIn Tumblr Email
Share
Facebook Twitter LinkedIn Pinterest Email

An estimated one in five Americans lives with chronic pain, and current treatment options leave much to be desired. Feixiong Cheng, PhD, director of Cleveland Clinic’s Genome Center, and IBM are using artificial intelligence (AI) for drug discovery in advanced pain management. The team’s deep learning framework identified multiple gut microbiome-derived metabolites and FDA-approved drugs that can be repurposed to select non-addictive, non-opioid options to treat chronic pain.

The findings, published in Celpers, represent one of the many ways the organizations’ Discovery Accelerator partnership is helping advance research in healthcare and life sciences.

Treating chronic pain with opioids is still a challenge due to the risk of serious side effects and dependency, says co-first author Yunguang Qiu, PhD, a postdoctoral researcher in Dr. Cheng, whose research program focuses on developing therapies for nervous system disorders. Recent evidence has shown that drugging a specific subset of pain receptors in a class of proteins called G protein-coupled receptors (GPCRs) can provide non-addictive, non-opioid pain relief. The question is how we can target these receptors, explains Dr. Qiu out.

Rather than inventing new molecules from scratch, the team wondered if they could apply research methods they had already developed to find pre-existing, FDA-approved drugs for potential pain indication. Part of this process involves mapping gut metabolites to identify drug targets.

To identify these molecules, first author and computational scientist Yuxin Yang, PhD, a former graduate student at Kent State University. Dr. Yang completed his thesis research in the laboratory of Dr. Cheng and continues to work there as a data scientist. Drs. Yang and Qiu led a team to update an earlier AI drug discovery algorithm that the Cheng Lab had developed. IBM employees helped write and edit the manuscript.

Our IBM employees gave us valuable advice and perspective to develop advanced computing techniques. I am pleased to have the opportunity to work with and learn from colleagues in the industrial sector.”

Dr. Yuxin Yang, PhD, first author and computational scientist

To determine whether a molecule will work as a drug, researchers must predict how it will physically interact with and affect proteins in our bodies (in this case, our pain receptors). To do this, the researchers need a 3D understanding of both molecules, based on extensive 2D data on their physical, structural and chemical properties.

See also  New research identifies key protein complex in cellular quality control

“Even using current computational methods, combining the amount of data we need for our predictive analytics is extremely complex and time-consuming,” explains Dr. Cheng out. “AI can quickly make full use of compound and protein data obtained from imaging, evolutionary and chemical experiments to predict which compound has the best chance of appropriately affecting our pain receptors.”

The research team’s tool, called LISA-CPI (Ligand Image- and receptor’s three-dimensional (3D) Structures-Aware framework to predict Compound-Protein Interactions) uses a form of artificial intelligence called deep learning to predict:

The team used LISA-CPI to predict how 369 gut microbial metabolites and 2,308 FDA-approved drugs would interact with 13 pain-associated receptors. The AI ​​framework identified several compounds that could be repurposed to treat pain. Studies are underway to validate these compounds in the laboratory.

“The predictions of this algorithm could reduce the experimental burden that researchers must overcome to even come up with a list of drug candidates for further testing,” says Dr. Yang. “We can use this tool to test even more drugs, metabolites, GPCRs and other receptors to find therapies that treat diseases beyond pain, such as Alzheimer’s disease.”

Dr. Cheng added that this is just one example of how the team is working with IBM to develop basic small molecule models for drug development – ​​including both drug repurposing in this study and an ongoing drug discovery project.

“We believe these foundational models will provide powerful AI technologies to rapidly develop therapies for multiple challenging human health problems,” he says.

See also  Cambridge experts question efficacy and practicality of new amyloid immunotherapy drugs

Source:

Magazine reference:

Yang, Y., et al. (2024). A deep learning framework combining molecular images and structural protein representations identifies drug candidates for pain. Cell report methods. doi.org/10.1016/j.crmeth.2024.100865.

deeplearning framework identifies nonaddictive options pain relief
Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
Previous ArticleResearchers link air pollution to cerebral atrophy but find no impact on cognitive function
Next Article Understanding behavioral changes in early dementia

Related Posts

Blood test shows high accuracy in detecting Alzheimer’s disease

Better brain care score linked to lower risk of heart disease and cancer

Pennington Biomedical’s Greaux Healthy initiative launches to improve child health in Louisiana

Add A Comment
Leave A Reply Cancel Reply

Ads

Stay In Touch
  • Facebook
  • Twitter
  • Pinterest
  • Instagram
  • YouTube
  • Vimeo
Don't Miss

AI model predicts Alzheimer’s progression with new insights into racial and sex-based disparities

A groundbreaking AI model analyzes diverse data to reveal faster progression of Alzheimer’s disease in…

Untreated hypertension increases Alzheimer’s risk, research shows

Breakthrough method sheds light on how immune receptors detect infections

New research advances understanding of Parkinson’s disease stages

About Us
About Us

Our blog offers essential insights, tips, and support for those caring for loved ones with Dementia. Discover practical advice, research updates, and community stories.

We're accepting new partnerships right now.

Facebook X (Twitter) Instagram YouTube
© 2025 dementiaplanet.com - All rights reserved.
  • About Us
  • Contact
  • Privacy Policy
  • Terms & Conditions

Type above and press Enter to search. Press Esc to cancel.