AutoTransOP: translating omics signatures without orthologue requirements using deep learning
Journal article, 2024

The development of therapeutics and vaccines for human diseases requires a systematic understanding of human biology. Although animal and in vitro culture models can elucidate some disease mechanisms, they typically fail to adequately recapitulate human biology as evidenced by the predominant likelihood of clinical trial failure. To address this problem, we developed AutoTransOP, a neural network autoencoder framework, to map omics profiles from designated species or cellular contexts into a global latent space, from which germane information for different contexts can be identified without the typically imposed requirement of matched orthologues. This approach was found in general to perform at least as well as current alternative methods in identifying animal/culture-specific molecular features predictive of other contexts-most importantly without requiring homology matching. For an especially challenging test case, we successfully applied our framework to a set of inter-species vaccine serology studies, where 1-to-1 mapping between human and non-human primate features does not exist.

Author

Nikolaos Meimetis

Massachusetts Institute of Technology (MIT)

Krista M. Pullen

Massachusetts Institute of Technology (MIT)

Daniel Y. Zhu

Massachusetts Institute of Technology (MIT)

Avlant Nilsson

Chalmers, Life Sciences, Systems and Synthetic Biology

Trong Nghia Hoang

Washington State Univ, Sch Elect Engn & Comp Sci

Sara Magliacane

University of Amsterdam

MIT, IBM Watson Lab

Douglas A. Lauffenburger

Massachusetts Institute of Technology (MIT)

NPJ systems biology and applications

20567189 (eISSN)

Vol. 10 1 13

Subject Categories

Biochemistry and Molecular Biology

Bioinformatics (Computational Biology)

DOI

10.1038/s41540-024-00341-9

PubMed

38287079

More information

Latest update

4/2/2024 1