HCA Data Explorer

Classification of human chronic inflammatory skin disease based on single-cell immune profiling

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Updated October 17, 2023

Inflammatory conditions represent the largest class of chronic skin disease, but the molecular dysregulation underlying many individual cases remains unclear. Single-cell RNA sequencing (scRNA-seq) has increased precision in dissecting the complex mixture of immune and stromal cell perturbations in inflammatory skin disease states. We single-cell-profiled CD45+ immune cell transcriptomes from skin samples of 31 patients (7 atopic dermatitis, 8 psoriasis vulgaris, 2 lichen planus (LP), 1 bullous pemphigoid (BP), 6 clinical/histopathologically indeterminate rashes, and 7 healthy controls). Our data revealed active proliferative expansion of the Treg and Trm components and universal T cell exhaustion in human rashes, with a relative attenuation of antigen-presenting cells. Skin-resident memory T cells showed the greatest transcriptional dysregulation in both atopic dermatitis and psoriasis, whereas atopic dermatitis also demonstrated recurrent abnormalities in ILC and CD8+ cytotoxic lymphocytes. Transcript signatures differentiating these rash types included genes previously implicated in T helper cell (TH2)/TH17 diatheses, segregated in unbiased functional networks, and accurately identified disease class in untrained validation data sets. These gene signatures were able to classify clinicopathologically ambiguous rashes with diagnoses consistent with therapeutic response. Thus, we have defined major classes of human inflammatory skin disease at the molecular level and described a quantitative method to classify indeterminate instances of pathologic inflammation. To make this approach accessible to the scientific community, we created a proof-of-principle web interface (RashX), where scientists and clinicians can visualize their patient-level rash scRNA-seq-derived data in the context of our TH2/TH17 transcriptional framework.

Raymond J ChoUniversity of California, San Franciscoraymond.cho@ucsf.edu
Jeffrey B ChengUniversity of California, San Franciscojeffrey.cheng@ucsf.edu
Yale Liu1
Hao Wang2
Mark Taylor3
Christopher Cook3
Alejandra Martínez-Berdeja3
Jeffrey P North3
Paymann Harirchian3
Ashley A Hailer3
Zijun Zhao4
Ruby Ghadially3
Roberto R Ricardo-Gonzalez3
Roy C Grekin3
Theodora M Mauro3
Esther Kim3
Jaehyuk Choi5
Elizabeth Purdom2
Raymond J Cho3
Jeffrey B Cheng3
1The Second Affiliated Hospital of Xi'an Jiaotong University
2University of California, Berkeley
3University of California, San Francisco
4Santa Clara Valley Medical Center
5Northwestern School of Medicine
Ida Zucchi

To reference this project, please use the following link:

https://explore.data.humancellatlas.org/projects/5bd01deb-01ee-4611-8efd-cf0ec5f56ac4

Supplementary links are provided by contributors and represent items such as additional data which can’t be hosted here; code that was used to analyze this data; or tools and visualizations associated with this specific dataset.

1.https://github.com/Yale73/scRNA-seq-for-diverse-human-rashes2.https://rashx.ucsf.edu/3.https://zenodo.org/record/6471748
EGA Accessions:

Atlas

None

Analysis Portals

None

Project Label

ChronicInflammatorySkinClassification

Species

Homo sapiens

Sample Type

specimens

Anatomical Entity

skin of body

Organ Part

13 organ parts

Selected Cell Types

leukocyte

Disease Status (Specimen)

6 disease statuses

Disease Status (Donor)

6 disease statuses

Development Stage

5 development stages

Library Construction Method

3 library construction methods

Nucleic Acid Source

single cell

Paired End

false

Analysis Protocol

processed_matrix_generation

File Format

2 file formats

Cell Count Estimate

158.0k

Donor Count

31
rds.gz2 file(s)xlsx1 file(s)