1. NeuroLINCS Proteomics: Defining human-derived iPSC proteomes and protein signatures of pluripotency
- Author
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Matlock, Andrea D, Vaibhav, Vineet, Holewinski, Ronald, Venkatraman, Vidya, Dardov, Victoria, Manalo, Danica-Mae, Shelley, Brandon, Ornelas, Loren, Banuelos, Maria, Mandefro, Berhan, Escalante-Chong, Renan, Li, Jonathan, Finkbeiner, Steve, Fraenkel, Ernest, Rothstein, Jeffrey, Thompson, Leslie, Sareen, Dhruv, Svendsen, Clive N, and Van Eyk, Jennifer E
- Subjects
Stem Cell Research - Nonembryonic - Human ,Stem Cell Research - Induced Pluripotent Stem Cell - Human ,Neurosciences ,Rare Diseases ,Stem Cell Research ,Biotechnology ,Human Genome ,Stem Cell Research - Induced Pluripotent Stem Cell ,Neurodegenerative ,Genetics ,Neurological ,Humans ,Induced Pluripotent Stem Cells ,Motor Neurons ,Pluripotent Stem Cells ,Proteome ,Proteomics ,NIH NeuroLINCS Consortium - Abstract
The National Institute of Health (NIH) Library of integrated network-based cellular signatures (LINCS) program is premised on the generation of a publicly available data resource of cell-based biochemical responses or "signatures" to genetic or environmental perturbations. NeuroLINCS uses human inducible pluripotent stem cells (hiPSCs), derived from patients and healthy controls, and differentiated into motor neuron cell cultures. This multi-laboratory effort strives to establish i) robust multi-omic workflows for hiPSC and differentiated neuronal cultures, ii) public annotated data sets and iii) relevant and targetable biological pathways of spinal muscular atrophy (SMA) and amyotrophic lateral sclerosis (ALS). Here, we focus on the proteomics and the quality of the developed workflow of hiPSC lines from 6 individuals, though epigenomics and transcriptomics data are also publicly available. Known and commonly used markers representing 73 proteins were reproducibly quantified with consistent expression levels across all hiPSC lines. Data quality assessments, data levels and metadata of all 6 genetically diverse human iPSCs analysed by DIA-MS are parsable and available as a high-quality resource to the public.
- Published
- 2023