Back to Search Start Over

MAPLE: A Hybrid Framework for Multi-Sample Spatial Transcriptomics Data

Authors :
Carter Allen
Yuzhou Chang
Qin Ma
Dongjun Chung
Publication Year :
2022
Publisher :
Cold Spring Harbor Laboratory, 2022.

Abstract

High throughput spatial transcriptomics (HST) technologies have allowed for identification of distinct cell sub-populations in tissue samples, i.e., tissue architecture identification. However, existing methods do not allow for simultaneous analysis of multiple HST samples. Moreover, standard tissue architecture identification approaches do not provide uncertainty measures. Finally, no existing frameworks have integrated deep learning with Bayesian statistical models for HST data analyses. To address these gaps, we developed MAPLE: a hybrid deep learning and Bayesian modeling framework for detection of spatially informed cell spot sub-populations, uncertainty quantification, and inference of group effects in multi-sample HST experiments. MAPLE includes an embedded regression model to explain cell sub-population abundance in terms of available covariates such as treatment group, disease status, or tissue region. We demonstrate the capability of MAPLE to achieve accurate, comprehensive, and interpretable tissue architecture inference through four case studies that spanned a variety of organs in both humans and animal models.AvailabilityAn R package maple is available at https://github.com/carter-allen/maple.Contactchung.911@osu.eduSupplementary informationSupplementary data are available online.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........ba5f84df6b76eb37e3b33d9679163b6c