Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Applications of temporal graph learning for predicting the dynamics of biological systems

About

Biological foundation models have shown strong performance in single-cell representation learning by applying transformer architectures directly to gene-expression matrices. However, these approaches predominantly operate in static settings and do not explicitly model the temporal evolution of developmental programs in the cell. Modeling such dynamics is important for understanding how cellular states progressively emerge, differentiate, and reorganize during development or disease progression. In this work-in-progress paper, we investigate an alternative temporal graph-based perspective in which cellular states are represented through pseudotime-resolved gene regulatory networks and modeled as evolving graph structures over persistent gene identities. Starting from single-cell transcriptomic data, we infer pseudotime trajectories, discretize cells into developmental snapshots, reconstruct one gene regulatory network per snapshot, and apply temporal graph neural networks to forecast biological states. We evaluate this framework on two publicly available mouse developmental datasets, erythroid gastrulation and pancreatic endocrinogenesis, considering three complementary tasks: gene-expression forecasting, link prediction, and out-degree centrality prediction. Our results show that graph-based models outperform well-known foundation-model such as scGPT and scFoundation, suggesting that explicitly modeling evolving regulatory structure provides useful information beyond static pretrained representations. For link prediction and centrality forecasting, temporal graph learning captures non-trivial regulatory dynamics and enables the identification of temporally important gene hubs. Overall, our findings support temporal graph learning as a promising direction for modeling dynamic biological systems and as a complementary paradigm to current foundation model approaches in single-cell biology.

Manuel Dileo, Andrea Sottoriva• 2026

Related benchmarks

TaskDatasetResultRank
Gene-expression forecastingmouse-gastrulation
PCC0.4
10
Gene-expression forecastingmouse-pancreas
PCC0.425
10
out-degree centrality forecastingmouse-gastrulation
MAE0.005
8
out-degree centrality forecastingmouse-pancreas
MAE0.007
8
Future Link Predictionmouse-gastrulation
AUPRC95
7
Future Link Predictionmouse-pancreas
AUPRC0.94
7
Showing 6 of 6 rows

Other info

Follow for update