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A comprehensive platform for analyzing longitudinal multi-omics data.

Suhas V VasaikarAdam K SavageQiuyu GongElliott SwansonAarthi TallaCara LordAlexander T HeubeckJulian ReadingLucas T GrayPaul MeijerTroy R TorgersonPeter J SkeneThomas F BumolXiao-Jun Li
Published in: Nature communications (2023)
Longitudinal bulk and single-cell omics data is increasingly generated for biological and clinical research but is challenging to analyze due to its many intrinsic types of variations. We present PALMO ( https://github.com/aifimmunology/PALMO ), a platform that contains five analytical modules to examine longitudinal bulk and single-cell multi-omics data from multiple perspectives, including decomposition of sources of variations within the data, collection of stable or variable features across timepoints and participants, identification of up- or down-regulated markers across timepoints of individual participants, and investigation on samples of same participants for possible outlier events. We have tested PALMO performance on a complex longitudinal multi-omics dataset of five data modalities on the same samples and six external datasets of diverse background. Both PALMO and our longitudinal multi-omics dataset can be valuable resources to the scientific community.
Keyphrases
  • single cell
  • rna seq
  • electronic health record
  • high throughput
  • big data
  • cross sectional
  • healthcare
  • deep learning
  • data analysis