# SCRIPT: Predicting Single‐Cell Long‐Range Cis‐Regulation Based on Pretrained Graph Attention Networks

**Authors:** Yu Zhang, Baole Wen, Yifeng Jiao, Yuchen Liu, Xin Guo, Yushuai Wu, Jiyang Li, Limei Han, Yinghui Xu, Xin Gao, Yuan Qi, Yuan Cheng, Ying He, Weidong Tian

PMC · DOI: 10.1002/advs.202505021 · Advanced Science · 2025-08-20

## TL;DR

SCRIPT is a new method that improves the prediction of gene regulation in single cells, helping to understand disease-related genetic variants.

## Contribution

SCRIPT introduces graph causal attention networks and pretraining on large-scale single-cell data to enhance CRR prediction.

## Key findings

- SCRIPT achieves a mean AUC of 0.89, outperforming existing methods in predicting single-cell CRRs.
- It shows over twofold improvement in predicting long-range CRRs (>100 Kb) compared to current methods.
- SCRIPT helps prioritize disease-causing variants in Alzheimer's and schizophrenia in a cell-type-specific manner.

## Abstract

Single‐cell cis‐regulatory relationships (CRRs) are essential for deciphering transcriptional regulation and understanding the pathogenic mechanisms of disease‐associated non‐coding variants. Existing computational methods struggle to accurately predict single‐cell CRRs due to inadequately integrating causal biological principles and large‐scale single‐cell data. Here, SCRIPT (Single‐cell Cis‐regulatory Relationship Identifier based on Pre‐Trained graph attention networks) is presented for inferring single‐cell CRRs from transcriptomic and chromatin accessibility data. SCRIPT incorporates two key innovations: graph causal attention networks supported by empirical CRR evidence, and representation learning enhanced through pretraining on atlas‐scale single‐cell chromatin accessibility data. Validation using cell‐type‐specific chromatin contact and CRISPR perturbation data demonstrates that SCRIPT achieves a mean AUC of 0.89, significantly outperforming state‐of‐the‐art methods (AUC: 0.7). Notably, SCRIPT obtains an over twofold improvement in predicting long‐range CRRs (>100 Kb) compared to existing methods. By applying SCRIPT to Alzheimer's disease and schizophrenia, a framework is established for prioritizing disease‐causing variants and elucidating their functional effects in a cell‐type‐specific manner. By uncovering molecular genetic mechanisms undetected by existing computational methods, SCRIPT provides a roadmap for advancing genetic diagnosis and target discovery.

SCRIPT is a novel method inferring single‐cell cis‐regulatory relationships (CRRs) from transcriptomic and chromatin accessibility data. SCRIPT incorporates two key innovations: graph causal attention networks supported by empirical CRR evidence, and representation learning enhanced through pretraining on atlas‐scale single‐cell data. For complex genetic diseases, SCRIPT facilitates prioritizing disease‐causing variants and elucidating their functional effects in a cell‐type‐specific manner.

## Linked entities

- **Diseases:** Alzheimer's disease (MONDO:0004975), schizophrenia (MONDO:0005090)

## Full-text entities

- **Diseases:** schizophrenia (MESH:D012559), Alzheimer's disease (MESH:D000544)

## Full text

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## Figures

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## References

70 references — full list in the complete paper: https://tomesphere.com/paper/PMC12591183/full.md

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Source: https://tomesphere.com/paper/PMC12591183