AI Article Synopsis

  • Plasma protein biomarkers are promising for diagnosing dementia subtypes due to their low variability, cost-effectiveness, and minimally invasive nature; however, existing machine learning approaches often overlook the important interactions between these proteins.
  • The study introduces a new machine learning model called the graph propagational network (GPN), which effectively captures global interactions between proteins by analyzing their effects on a protein-protein interaction (PPI) network.
  • Experimental results demonstrate that the GPN significantly improves diagnosis accuracy, outperforming previous methods by an average of 10.4% by better differentiating between dementia subtypes.

Article Abstract

Plasma protein biomarkers have been considered promising tools for diagnosing dementia subtypes due to their low variability, cost-effectiveness, and minimal invasiveness in diagnostic procedures. Machine learning (ML) methods have been applied to enhance accuracy of the biomarker discovery. However, previous ML-based studies often overlook interactions between proteins, which are crucial in complex disorders like dementia. While protein-protein interactions (PPIs) have been used in network models, these models often fail to fully capture the diverse properties of PPIs due to their local awareness. This drawback increases the chance of neglecting critical components and magnifying the impact of noisy interactions. In this study, we propose a novel graph-based ML model for dementia subtype diagnosis, the graph propagational network (GPN). By propagating the independent effect of plasma proteins on PPI network, the GPN extracts the globally interactive effects between proteins. Experimental results showed that the interactive effect between proteins yielded to further clarify the differences between dementia subtype groups and contributed to the performance improvement where the GPN outperformed existing methods by 10.4% on average.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11370639PMC
http://dx.doi.org/10.1093/bib/bbae428DOI Listing

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Department of Physiology, Ajou University School of Medicine, Suwon, 16499, Republic of Korea; Department of Biomedical Science, Graduate School of Ajou University, Suwon, 16499, Republic of Korea; Ajou Translational Omics Center, Research Institute for Innovative Medicine, Ajou University Medical Center, Suwon, 16499, Republic of Korea. Electronic address:

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View Article and Find Full Text PDF
Article Synopsis
  • Plasma protein biomarkers are promising for diagnosing dementia subtypes due to their low variability, cost-effectiveness, and minimally invasive nature; however, existing machine learning approaches often overlook the important interactions between these proteins.
  • The study introduces a new machine learning model called the graph propagational network (GPN), which effectively captures global interactions between proteins by analyzing their effects on a protein-protein interaction (PPI) network.
  • Experimental results demonstrate that the GPN significantly improves diagnosis accuracy, outperforming previous methods by an average of 10.4% by better differentiating between dementia subtypes.
View Article and Find Full Text PDF

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