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Related Concept Videos

Cell Lines01:16

Cell Lines

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A cell line is a population of cells grown in vitro that can be subcultured over several generations. Normal cells cease to divide after a certain number of cell divisions, a process known as replicative senescence. This number, called the Hayflick limit, was conceptualized by Leonard Hayflick in 1961 when he observed that fetal cells grown in culture could only divide 40-60 times. This limit is due to the shortening of the telomeres during each round of cell division, preventing cell division...
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Nuclei Isolation from Adult Mouse Kidney for Single-Nucleus RNA-Sequencing
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Transcriptome-based cell type assignment for kidney cell culture models.

Mona Schoberth, Samuel Böhm, Oleg Borisov

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    Researchers developed a new method to assess kidney cell line identity using transcriptomic data. This approach helps ensure that kidney cell models accurately reflect native kidney cells for reliable research findings.

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    Area of Science:

    • Nephrology
    • Genomics
    • Bioinformatics

    Background:

    • Kidney cell lines are crucial for studying kidney physiology and disease.
    • However, gene expression in cell lines can diverge from primary cells due to various factors.
    • Accurate validation of cell line identity is essential for reliable *in vitro* research.

    Purpose of the Study:

    • To develop and validate a transcriptome-based method for assessing kidney cell line identity.
    • To compare the effectiveness of different statistical and machine learning approaches for matching cell line data to reference transcriptomes.
    • To provide accessible tools for researchers to evaluate kidney cell model suitability.

    Main Methods:

    • Generated reference transcriptomic profiles from human and murine kidney single-cell RNA-seq (scRNA-seq) datasets.
    • Matched bulk RNA-seq data from kidney tissues and cell lines to reference profiles using Spearman correlation, Euclidean distance, Poisson distance, and machine learning classifiers (Random Forest, XGBoost, TabPFN).
    • Validated matching accuracy using global gene expression, kidney marker genes, and variable genes through a three-step strategy.

    Main Results:

    • Gene expression rank-based Spearman correlation and the TabPFN model demonstrated high accuracy and specificity, especially with curated kidney marker gene lists.
    • These methods successfully identified microdissected kidney tubule segments and were robust against non-kidney controls.
    • Specific kidney cell lines showed varying degrees of identity preservation; OK cells maintained proximal tubule identity under shear stress, while others were inconsistent. mIMCD-3 cells showed stable collecting duct identity.

    Conclusions:

    • A robust transcriptome-based approach using Spearman correlation or TabPFN can accurately assess kidney cell line identity.
    • The developed tools, CellMatchR (web-based) and TabPFN scripts, facilitate informed selection and interpretation of kidney cell models.
    • This methodology enhances the reliability of *in vitro* findings in kidney research.