신약 후보 물질의 ADMET 속성 예측을 위한 사전학습 모델 기반의 일반화 성능 향상 기법
A Pretrained Model-Based Approach to Improve Generalization Performance for ADMET Prediction of Drug Candidates
  • 김윤주
  • 박상현
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초록

Accurate prediction of Absorption, Distribution, Metabolism, Excretion, and Toxicity (ADMET) properties plays an important role in reducing clinical trial failure rates and lowering drug development costs. In this study, we propose a novel method to improve ADMET prediction performance for drug candidate compounds by integrating molecular embeddings from a graph transformer model with pretrained embeddings from a UniMol model. The proposed model can capture bond type information from molecular graph structures, generating chemically refined representations, while leveraging UniMol’s pretrained 3D embeddings to effectively learn spatial molecular characteristics. Through this, the model is designed to address the problem of data scarcity and enhance the generalization performance. In this study, we conducted prediction experiments on 10 ADMET properties. The experiment results demonstrated that our proposed model outperformed existing methods and that the prediction accuracy for ADMET properties could be improved by effectively integrating atomic bond information and 3D structures.

키워드

ADMET 예측사전 학습 모델그래프 트랜스포머분자 임베딩신약 개발ADMET predictionpre-trained modelgraph transformermolecular embeddingdrug discovery
제목
신약 후보 물질의 ADMET 속성 예측을 위한 사전학습 모델 기반의 일반화 성능 향상 기법
제목 (타언어)
A Pretrained Model-Based Approach to Improve Generalization Performance for ADMET Prediction of Drug Candidates
저자
김윤주박상현
DOI
10.5626/JOK.2025.52.7.601
발행일
2025-07
유형
Y
저널명
정보과학회논문지
52
7
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