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Quantitative Aspects of Drug-Receptor Interaction

The receptor occupancy theory connects a drug's response to the number of occupied receptors. With higher drug concentrations, more receptors are occupied, leading to increased responses. The formation of drug-receptor complexes involves association and dissociation rates, which reach equilibrium when the forward and backward reactions are equal. The equilibrium association constant (Ka) and its inverse, the equilibrium dissociation constant (Kd), indicate drug affinity. Higher Ka and lower Kd...
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Related Experiment Video

Updated: Jun 28, 2026

Identification of Circular RNAs using RNA Sequencing
08:25

Identification of Circular RNAs using RNA Sequencing

Published on: November 14, 2019

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Interpretable multi-instance heterogeneous graph network learning modelling CircRNA-drug sensitivity association

Mengting Niu1,2,3, Chunyu Wang4, Yaojia Chen1,5,6

  • 1Institute of Fundamental and Frontier Sciences, University of Electronic Science and Technology of China, Chengdu, China.

BMC Biology
|May 14, 2025
PubMed
Summary
This summary is machine-generated.

Predicting drug sensitivity associations with circular RNAs (circRNAs) is vital for personalized medicine. A new method, MiGNN2CDS, leverages multi-instance learning and graph networks to accurately identify these crucial circRNA-drug relationships.

Keywords:
CircRNA‒drug sensitivity associationHeterogeneous graph neural networkInterpretable analysisMulti-instance learning

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Area of Science:

  • Bioinformatics
  • Computational Biology
  • Genomics

Background:

  • Circular RNAs (circRNAs) influence drug sensitivity in human cells, impacting therapeutic outcomes.
  • Traditional experimental methods for identifying circRNA-drug sensitivity associations are inefficient and costly.
  • Accurate prediction of novel circRNA-drug sensitivity relationships is essential for advancing personalized medicine.

Purpose of the Study:

  • To develop an effective computational method for predicting circRNA-drug sensitivity associations.
  • To construct a heterogeneous graph network model integrating circRNA and drug features.
  • To enhance the accuracy and interpretability of circRNA-drug sensitivity predictions.

Main Methods:

  • Constructed a heterogeneous network using circRNA features, drug features, and drug structural information.
  • Employed a heterogeneous graph convolutional network (GCN) for deep feature embedding.
  • Integrated multi-instance learning (MIL) with a pseudo-metapath instance generator and BiTrans for metapath-level representation.
  • Developed an interpretable multiscale attention network for final prediction and analysis.

Main Results:

  • The MiGNN2CDS model demonstrated superior prediction accuracy compared to existing state-of-the-art methods.
  • Case studies confirmed the model's capability in predicting previously unknown circRNA-drug associations.
  • Model interpretability was validated through high-confidence meta-path analysis.

Conclusions:

  • MiGNN2CDS offers a powerful and interpretable approach for predicting circRNA-drug sensitivity.
  • The findings contribute to the development of targeted therapies by identifying key circRNA biomarkers.
  • The study provides a valuable computational tool for drug sensitivity research, with code and data publicly available.