| Literature DB >> 30764600 |
Szu-Hsien Sam Wu1, Ji-Hyun Lee1, Bon-Kyoung Koo1.
Abstract
Tracking the fate of individual cells and their progeny through lineage tracing has been widely used to investigate various biological processes including embryonic development, homeostatic tissue turnover, and stem cell function in regeneration and disease. Conventional lineage tracing involves the marking of cells either with dyes or nucleoside analogues or genetic marking with fluorescent and/or colorimetric protein reporters. Both are imaging-based approaches that have played a crucial role in the field of developmental biology as well as adult stem cell biology. However, imaging-based lineage tracing approaches are limited by their scalability and the lack of molecular information underlying fate transitions. Recently, computational biology approaches have been combined with diverse tracing methods to overcome these limitations and so provide high-order scalability and a wealth of molecular information. In this review, we will introduce such novel computational methods, starting from single-cell RNA sequencing-based lineage analysis to DNA barcoding or genetic scar analysis. These novel approaches are complementary to conventional imaging-based approaches and enable us to study the lineage relationships of numerous cell types during vertebrate, and in particular human, development and disease.Entities:
Keywords: genetic barcoding and genetic scar; lineage tracing; natural DNA-scar based lineage tracing; scRNA-sequencing
Mesh:
Substances:
Year: 2019 PMID: 30764600 PMCID: PMC6399003 DOI: 10.14348/molcells.2019.0006
Source DB: PubMed Journal: Mol Cells ISSN: 1016-8478 Impact factor: 5.034
Fig. 1Analysis of cell populations using single-cell RNA-sequencing
Individual cells isolated from cell culture, embryos or tissues are subjected to scRNA-seq to profile gene expression. Analysis of scRNA-seq results using principal component analysis (PCA) or t-distributed stochastic neighbor embedding (t-SNE) allows the clustering of (sub)populations of cells and identification of cell types (A). The same plot can be used to visualize gene expression levels on a color scale to assess cell type-specific transcripts (B). To investigate the transition between different cell types in a biological context, pseudotime trajectory inference algorithms allow the mapping of transitions on an arbitrary time scale (C). Another lineage inference method, called RNA velocity, calculates the proportion of unspliced and spliced transcripts, thereby allowing prediction of the prospective fate of individual cells (D).
Fig. 2Overview of modern lineage tracing methods
Various strategies to reconstruct cell lineage trees have been developed in line with advances in next-generation sequencing. Modern lineage tracing can be divided into prospective and retrospective methods. Prospective tracing methods mark cells using fluorescence for imaging-based, and genetic barcoding or genetic scars for computational-based methods, whereas retrospective methods use somatic mutations which occur naturally throughout the lifetime of the organism. Every method using genetic information to reconstruct cell hierarchies is computational-based lineage tracing which needs advanced NGS technologies. The figure is adapted from Fig. 3 of Kester and van Oudenaarden (2018).
Comparison of each lineage tracing method
| Pros | Cons | Requirement | |
|---|---|---|---|
| Imaging-based lineage tracing | Completely retains spatial information; does not need complicated algorithm for analysis; potential for multiple timepoint tracing/retracing; applicable to various tissues | Limits scalability of traced progeny; variation in marking is limited; generation of new (mouse) lines may be time-consuming; not easily coupled with scRNA-seq | Inducible CreER lines in desired tissue; tissue processing (sectioning or clearing); 3D microscopy (confocal, lightsheet, intravital) |
| Genetic barcoding | Relatively easy to assign barcodes to each cell; high scalability; can be easily coupled with scRNA-seq | Limited targetable tissues; lack of spatial information; single timepoint tracing | Barcode library, delivery methods, implantation techniques; library preparation for NGS; computational reconstruction analysis |
| Polylox system | Relatively easy to assign barcodes to each cell; high scalability; applicable to various tissues; can be easily coupled with scRNA-seq | Only available in mouse, currently; single timepoint tracing | Various Cre lines; library preparation for NGS; computational reconstruction analysis |
| CRISPR/Cas9-induced scar-based lineage tracing | Relatively easy to assign genetic scars to each cell; available in various model organisms; high scalability; potential for multiple timepoint tracing; can be easily coupled with scRNA-seq | Off-target effects and multiple DSBs could result in genotoxicity | Integrating target sequences and gRNAs for target sites; induction of Cas9 endonuclease; library preparation for NGS; computational reconstruction analysis |
| Natural DNA scar-based lineage tracing | Can be applied to human patient samples; least artificial set-up because it does not need any molecular or genetic intervention | High costs; needs high computational power to distinguish between clones; unknown origin of progeny; may require clonal derivation to improve coverage | In vitro cultures to amplify single clones or laser dissection of tissues; library preparation for NGS; computational reconstruction analysis |