2018
DOI: 10.1038/s41598-018-35218-5
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Machine learning based classification of cells into chronological stages using single-cell transcriptomics

Abstract: Age-associated deterioration of cellular physiology leads to pathological conditions. The ability to detect premature aging could provide a window for preventive therapies against age-related diseases. However, the techniques for determining cellular age are limited, as they rely on a limited set of histological markers and lack predictive power. Here, we implement GERAS (GEnetic Reference for Age of Single-cell), a machine learning based framework capable of assigning individual cells to chronological stages … Show more

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Cited by 20 publications
(17 citation statements)
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“…Collection of β-, δ1-, and hybrid cells for transcriptional profiling was performed using FACS of single-cell suspension of dissected islets from Tg(ins:BB1.0L); Tg(sst1.1:EGFP-Ras) . For single-cell profiling using Smart-Seq., cells were collected in 96-well plate using index sorting and processed according to the previously published pipeline (Singh et al, 2018). Analysis was performed using Seurat (Satija et al, 2015), with cells classified using their position on the FACS plot (δ1-cells: Green+, Red-; hybrid cells: Green+, Red+; and β-cells: Green-, Red+).…”
Section: Methodsmentioning
confidence: 99%
“…Collection of β-, δ1-, and hybrid cells for transcriptional profiling was performed using FACS of single-cell suspension of dissected islets from Tg(ins:BB1.0L); Tg(sst1.1:EGFP-Ras) . For single-cell profiling using Smart-Seq., cells were collected in 96-well plate using index sorting and processed according to the previously published pipeline (Singh et al, 2018). Analysis was performed using Seurat (Satija et al, 2015), with cells classified using their position on the FACS plot (δ1-cells: Green+, Red-; hybrid cells: Green+, Red+; and β-cells: Green-, Red+).…”
Section: Methodsmentioning
confidence: 99%
“…Single cell suspension of zebrafish thyroid gland was performed by adapting the cell dissociation protocol outlined in Singh et al, Scientific Reports, 2018 (46). In brief, the thyroid gland was collected and dissociated into single cells by incubation in TrypLE (ThermoFisher, 12563029) with 0.1% Pluronic F-68 (ThermoFisher, 24040032) at 37 °C in a benchtop shaker set at 450 rpm for 45 min.…”
Section: Methodsmentioning
confidence: 99%
“…29,30 In addition, methods exist to infer cellular states, e.g., aging, or responding versus non-responding cells upon treatment. 31,32 Human peripheral blood holds great promise as a potential ''liquid biopsy.'' The serum metabolome determines various diseases and was recently predicted with an ML model based on host genetics, gut microbiome, clinical parameters, diet, lifestyle, and anthropometric measurements.…”
Section: Utilizing Genomic Data For Ml-based Predictionsmentioning
confidence: 99%