Category Ranking

98%

Total Visits

921

Avg Visit Duration

2 minutes

Citations

20

Article Abstract

Lipids are essential metabolites that play critical roles in multiple cellular pathways. Like many primary metabolites, mutations that disrupt lipid synthesis can be lethal. Proteins involved in lipid synthesis, trafficking, and modification, are targets for therapeutic intervention in infectious disease and metabolic disorders. The ability to rapidly detect these proteins can accelerate their evaluation as targets for deranged lipid pathologies. However, it remains challenging to identify lipid binding motifs in proteins because the rules that govern protein engagement with specific lipids are poorly understood. As such, new bioinformatic tools that reveal conserved features in lipid binding proteins are necessary. Here, we present tructure-based ipid-nteracting ocket redictor (SLiPP), an algorithm that leverages machine learning to detect protein cavities capable of binding to lipids in protein structures. SLiPP uses a Random Forest classifier and operates at scale to predict lipid binding pockets with an accuracy of 96.8% and an F1 score of 86.9% when testing against a set of 8,380 pockets embedded within proteins. Our analyses revealed that the algorithm relies on hydrophobicity-related features to distinguish lipid binding pockets from those that bind to other ligands. SLiPP is fast and does not require substantial computational resources. Use of the algorithm to detect lipid binding proteins in various proteomes produced hits annotated or verified as bona fide lipid binding proteins. Additionally, SLiPP identified many new putative lipid binders in well studied proteomes. Because of its ability to identify novel lipid binding proteins, SLiPP can spur the discovery of new and "targetable" lipid-sensitive pathways.

Download full-text PDF

Source
http://dx.doi.org/10.1021/acs.jcim.5c01076DOI Listing

Publication Analysis

Top Keywords

lipid binding
28
binding proteins
16
lipid
11
proteins
9
machine learning
8
lipid synthesis
8
binding
8
binding pockets
8
slipp
5
learning model
4

Similar Publications

Phosphatidic acid (PA) regulates lipid homeostasis and vesicular trafficking, yet high-affinity tools to study PA in live cells are lacking. We identified the lipin-like sequence of Nir1 (PILS-Nir1) as a candidate PA biosensor based on structural analysis of Nir1's LNS2 domain. Using liposome-binding assays and pharmacological and genetic manipulations in HEK293A cells expressing fluorescent PILS-Nir1, we found that while PILS-Nir1 binds PA and PIP2in vitro, only PA is necessary and sufficient for membrane localization in cells.

View Article and Find Full Text PDF

Rosuvastatin (RVS) is an HMG-CoA reductase inhibitor with lipid-lowering properties. This study aims to investigate the role of RVS in plaque formation in atherosclerosis (AS) and its functional mechanism. ApoE mice were fed a high-fat diet to generate a mouse model of AS.

View Article and Find Full Text PDF

Molecular mechanisms of the Suting Pill in the treatment of asthma: A study based on network pharmacology and molecular docking.

Medicine (Baltimore)

September 2025

Department of Pharmacy, The Third Department, Air Force Special Service Sanatorium, Hangzhou, Zhejiang, China.

Background: Asthma is a chronic respiratory disease characterized by complex etiology and marked heterogeneity. It is one of the most prevalent chronic airway conditions in children, with increasing prevalence in recent years. The Suting Pill (STP), a traditional Chinese medicine for childhood asthma, has an unclear mechanism.

View Article and Find Full Text PDF

Goat milk is prized for its nutritional value, but the illegal addition of δ-decanolactone to enhance flavor poses risks to product integrity and safety. This study employed a tripartite multi-omics framework integrating metabolomics, lipidomics, and proteomics, combined with FTIR and CLSM to systematically elucidate the multifaceted effects of δ-decanolactone on goat milk. Chemometric and bioinformatic pipelines identified dysregulated molecules and pathways, while molecular docking validated interactions with key targets.

View Article and Find Full Text PDF

Multifaceted characterization of lactoferrin and (-)-epigallocatechin-3-gallate (EGCG) interactions: development of the pickering emulsions for microencapsulated functional foods.

Food Res Int

November 2025

Hainan University-HSF/LWL Collaborative Innovation Laboratory, College of Food Sciences & Engineering, Hainan University, 58 People Road, Haikou 570228, China; Haikou Key Laboratory of Special Foods, Haikou, Hainan 570228, China.

In this study, we explored the application of lactoferrin-(-)-epigallocatechin-3-gallate (LF-EGCG) complex with rapeseed, soybean, walnut, peanut and sesame oil for the preparation of Pickering emulsions and its spray-dried microcapsules. Spectroscopy and molecular docking revealed that LF-EGCG binds via hydrogen bonds, hydrophobic interactions, and van der Waals forces. Structural analysis demonstrated that 0.

View Article and Find Full Text PDF