Interpretable modeling of time-resolved single-cell gene–protein expression with CrossmodalNet

Abstract

Cell-surface proteins play a critical role in cell function and are primary targets for therapeutics. CITE-seq is a single-cell technique that enables simultaneous measurement of gene and surface protein expression. It is powerful but costly and technically challenging. Computational methods have been developed to predict surface protein expression using gene expression information such as from single-cell RNA sequencing (scRNA-seq) data. Existing methods however are computationally demanding and lack the interpretability to reveal underlying biological processes. We propose CrossmodalNet, an interpretable machine learning model, to predict surface protein expression from scRNA-seq data. Our model with a customized adaptive loss accurately predicts surface protein abundances. When samples from multiple time points are given, our model encodes temporal information into an easy-to-interpret time embedding to make prediction in a time-point-specific manner, and is able to uncover noise-free causal gene–protein relationships. Using three publicly available time-resolved CITE-seq data sets, we validate the performance of our model by comparing it with benchmarking methods and evaluate its interpretability. Together, we show that our method accurately and interpretably profiles surface protein expression using scRNA-seq data, thereby expanding the capacity of CITE-seq experiments for investigating molecular mechanisms involving surface proteins.

Document Details

Document Type
Pub Defense Publication
Publication Date
Sep 22, 2023
Source ID
10.1093/bib/bbad342

Entities

People

  • Guanxun Li
  • James J. Cai
  • Qian Xu
  • Yan Zhong
  • Yongjian Yang
  • Yu-te Lin

Organizations

  • Cancer Prevention and Research Institute of Texas
  • East China Normal University
  • Texas A&M University
  • United States Department of Defense

Tags

Fields of Study

  • Biology

Readers

  • Computational Modeling and Simulation
  • Molecular Biology and Genetics
  • Molecular and genetic basis of cancer.

Technology Areas

  • AI & ML
  • AI & ML - Bayesian Inference
  • AI & ML - Neural Networks