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Posts by Mark Sanborn

We show that vasculature loss precedes muscle wasting in cancer cachexia. Years of work summed up in this tweetorial.

Also includes high quality muscle single cell data via GEO.

10 months ago 4 0 0 0

There are three primary ways to use SenePy: 1) as an input list in any tool that takes a gene list, such as gene set enrichment. 2) senescence scoring directly on single-cell data. 3) Database to search for senescence markers in a specific cell type. (5/5)

1 year ago 0 0 0 0
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In addition to aging, SenePy is widely applicable in many disease contexts. We show how it can be applied to cancer, heart disease, and infection. Here is an example of senescent-like foci in infarction spatial data (4/5)

1 year ago 0 0 1 0
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These signatures recapitulate in vivo cellular senescence better than available gene sets derived from in vitro studies (3/5)

1 year ago 0 0 1 0

We derive cell-type-specific weighted signatures of cellular senescence for humans and mice and universal signatures of genes enriched in multiple signatures. We combine these signatures with a scoring tool to identify senescence in your data. (2/5) github.com/jaleesr/SenePy

1 year ago 0 0 1 0
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Unveiling the cell-type-specific landscape of cellular senescence through single-cell transcriptomics using SenePy - Nature Communications Senescent cells accumulate in tissues with aging and disease but are difficult to detect due to distinct cell-type-specific senescence phenotypes. Here, the authors present the SenePy algorithm to ide...

Senescent cells contribute to disease and are found in many tissues but are hard to analyze because markers have been derived in culture and do not account for cell-type differences. Here, we define new signatures based on millions of single cells (1/5) www.nature.com/articles/s41...

1 year ago 23 6 1 0
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High content of nuclei-free low-quality cells in reference single-cell atlases: a call for more stringent quality control using nuclear fraction - BMC Genomics The advent of droplet-based single-cell RNA-sequencing (scRNA-seq) has dramatically increased data throughput, enabling the release of a diverse array of tissue cell atlases to the public. However, we...


Not checking nuclear markers like MALAT1 or intronic reads in your scRNA-seq data?🚨
We show their power to flag low-quality cells—even in top public datasets. It’s time to prioritize better QC for cleaner, more reliable genomics research!
Read more: bmcgenomics.biomedcentral.com/articles/10....
1/8

1 year ago 244 126 4 9

Exactly. Also related is how most preprocessing workflows don’t account for cell types/condition and treat everything as one distribution.

1 year ago 1 0 0 0
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Should we instead normalize cell a/b to some shared technical/depth factor? Eg, cell A is 0.4x depth compared to other A cells. So scale cell B to 0.4x to other B cells. Then combine? In my mind this is more true to reality

1 year ago 0 0 1 0

Doublet detection methods simulate doublets by adding or averaging exp in random cell pairs. But, there is technical variation between cells. A true doublet is 2+ cells processed in the same droplet with no technical variation. Eg, cell A (9000 UMI)+ cell B (1000 UMI) still looks like cell A.

1 year ago 1 0 1 0
Single-cell iterative preprocessing. Don't throw away real cells!
Single-cell iterative preprocessing. Don't throw away real cells! YouTube video by Sanbomics

Typical single-cell preprocessing can be unfair to certain cell types. For example, fewer genes are typically detected in neutrophils and they are often mistakenly removed.

I’ve made a short video covering this simple but important concept:

youtu.be/r4A_QgseUfw?...

1 year ago 8 4 0 0

There are so many people moving over that I'm sure I'm missing folks. Can we make a #compbio / #genomics intro thread to get reacquainted?

I'm at the University of Colorado. I often say that if you pick two of three from #transcriptome, #ML, and #publicdata, my lab is probably interested.

1 year ago 187 53 54 4
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Processing single-cell RNAseq counts with simpleaf (alevin-fry) Simpleaf is a faster and more efficient alternative to other counters, such as cellranger, and it works with other single-cell chemistries. It is a wrapper f...

Mark(@sanbomics.bsky.social) put together a really nice video & walkthrough on using alevin-fry/simpleAF to process your single-cell RNA-seq data. If you're doing processing of such data, I recommend checking it out as a transparent & open alternative to CellRanger (& way faster) t.co/Hu9ueRduQ9! 🖥️🧬

2 years ago 20 11 2 0