Multiparameter quantitative analyses of diagnostic cells in brain tissues from tuberous sclerosis complex

Author:

Arceneaux Jerome S.1ORCID,Brockman Asa A.2ORCID,Khurana Rohit2ORCID,Chalkley Mary‐Bronwen L.2ORCID,Geben Laura C.3ORCID,Krbanjevic Aleksandar4,Vestal Matthew5,Zafar Muhammad5,Weatherspoon Sarah67,Mobley Bret C.4ORCID,Ess Kevin C.28910ORCID,Ihrie Rebecca A.211ORCID

Affiliation:

1. Department of Biochemistry, Cancer Biology, Neuroscience, and Pharmacology Meharry Medical College Nashville Tennessee USA

2. Department of Cell & Developmental Biology Vanderbilt University Nashville Tennessee USA

3. Department of Pharmacology Vanderbilt University Nashville Tennessee USA

4. Department of Pathology, Microbiology, & Immunology Vanderbilt University Medical Center Nashville Tennessee USA

5. Duke University Children's Hospital and Health Center Durham North Carolina USA

6. Neuroscience Institute Le Bonheur Children's Hospital Memphis Tennessee USA

7. Department of Pediatrics University of Tennessee Health Science Center Memphis Tennessee USA

8. Department of Pediatrics Vanderbilt University Medical Center Nashville Tennessee USA

9. Department of Neurology Vanderbilt University Medical Center Nashville Tennessee USA

10. Section of Child Neurology University of Colorado Anschutz Medical Center Aurora Colorado USA

11. Department of Neurological Surgery Vanderbilt University Medical Center Nashville Tennessee USA

Abstract

AbstractThe advent of high‐dimensional imaging offers new opportunities to molecularly characterize diagnostic cells in disorders that have previously relied on histopathological definitions. One example case is found in tuberous sclerosis complex (TSC), a developmental disorder characterized by systemic growth of benign tumors. Within resected brain tissues from patients with TSC, detection of abnormally enlarged balloon cells (BCs) is pathognomonic for this disorder. Though BCs can be identified by an expert neuropathologist, little is known about the specificity and broad applicability of protein markers for these cells, complicating classification of proposed BCs identified in experimental models of this disorder. Here, we report the development of a customized machine learning pipeline (BAlloon IDENtifier; BAIDEN) that was trained to prospectively identify BCs in tissue sections using a histological stain compatible with high‐dimensional cytometry. This approach was coupled to a custom 36‐antibody panel and imaging mass cytometry (IMC) to explore the expression of multiple previously proposed BC marker proteins and develop a descriptor of BC features conserved across multiple tissue samples from patients with TSC. Here, we present a modular workflow encompassing BAIDEN, a custom antibody panel, a control sample microarray, and analysis pipelines—both open‐source and in‐house—and apply this workflow to understand the abundance, structure, and signaling activity of BCs as an example case of how high‐dimensional imaging can be applied within human tissues.

Publisher

Wiley

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