English

DiSTILL: A Hybrid Cloud-HPC Workflow System for Reproducible Spatial Transcriptomics Analysis

Genomics 2026-06-28 v1

Abstract

Spatial transcriptomics workflows increasingly combine large annotated data objects, notebook-based analyses, and resource-intensive statistical models that must be executed on high-performance computing (HPC) systems. In practice, these workflows are often difficult to reproduce because configuration, validation, stage execution, and artifact handling are fragmented across ad hoc\textit{ad hoc} scripts and manually edited notebooks. We present DiSTILL\textit{DiSTILL} (Disease Diagnosis from Spatial Transcriptomics via Interpretable Latent Learning), a hybrid cloud-HPC workflow system for reproducible spatial transcriptomics (ST) analysis. DiSTILL combines an application programming interface (API) backend built with FastAPI\texttt{FastAPI}, a web frontend, a dataset and preset registry, and a Python pipeline generator that materializes run-specific execution bundles and SLURM\texttt{SLURM} submission scripts. The system supports local, Secure Shell (SSH)-mediated, and pull-based poller execution modes, enabling HPC submission in environments where persistent API-initiated automation is restricted. We describe the system through the lens of an inflammatory bowel disease (IBD) ST workflow that operationalizes the analytical pipeline of Tan et al.\textit{et al.} into an auditable application layer. Accordingly, the contribution of this paper is a workflow systems contribution centered on reproducible execution, queue-based orchestration, configuration semantics, and deployment across a split cloud-HPC architecture. The broader application goal of DiSTILL is to support user-supplied datasets that satisfy the schema assumptions of the wrapped analytical pipeline.

Cite

@article{arxiv.2606.30693,
  title  = {DiSTILL: A Hybrid Cloud-HPC Workflow System for Reproducible Spatial Transcriptomics Analysis},
  author = {Myles Joshua Toledo Tan and Vasco Gerardo Hinostroza Fuentes and Nikhil Yerra and Maria Kapetanaki and Parisa Rashidi and Kejun Huang and Panayiotis V. Benos},
  journal= {arXiv preprint arXiv:2606.30693},
  year   = {2026}
}

Comments

10 pages, 7 figures, 8 tables, submitted to and accepted for presentation at the 2026 IEEE Conference on Computational Intelligence in Bioinformatics and Computational Biology (CIBCB) in Athens, Greece