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1.
Nat Immunol ; 23(2): 318-329, 2022 02.
Artículo en Inglés | MEDLINE | ID: mdl-35058616

RESUMEN

Tuberculosis (TB) in humans is characterized by formation of immune-rich granulomas in infected tissues, the architecture and composition of which are thought to affect disease outcome. However, our understanding of the spatial relationships that control human granulomas is limited. Here, we used multiplexed ion beam imaging by time of flight (MIBI-TOF) to image 37 proteins in tissues from patients with active TB. We constructed a comprehensive atlas that maps 19 cell subsets across 8 spatial microenvironments. This atlas shows an IFN-γ-depleted microenvironment enriched for TGF-ß, regulatory T cells and IDO1+ PD-L1+ myeloid cells. In a further transcriptomic meta-analysis of peripheral blood from patients with TB, immunoregulatory trends mirror those identified by granuloma imaging. Notably, PD-L1 expression is associated with progression to active TB and treatment response. These data indicate that in TB granulomas, there are local spatially coordinated immunoregulatory programs with systemic manifestations that define active TB.


Asunto(s)
Granuloma/inmunología , Tuberculosis/inmunología , Antígeno B7-H1/inmunología , Células Cultivadas , Citocinas/inmunología , Perfilación de la Expresión Génica/métodos , Humanos , Indolamina-Pirrol 2,3,-Dioxigenasa/inmunología , Pulmón/inmunología , Mycobacterium tuberculosis/inmunología , Células Mieloides/inmunología
3.
Nat Biotechnol ; 40(4): 555-565, 2022 04.
Artículo en Inglés | MEDLINE | ID: mdl-34795433

RESUMEN

A principal challenge in the analysis of tissue imaging data is cell segmentation-the task of identifying the precise boundary of every cell in an image. To address this problem we constructed TissueNet, a dataset for training segmentation models that contains more than 1 million manually labeled cells, an order of magnitude more than all previously published segmentation training datasets. We used TissueNet to train Mesmer, a deep-learning-enabled segmentation algorithm. We demonstrated that Mesmer is more accurate than previous methods, generalizes to the full diversity of tissue types and imaging platforms in TissueNet, and achieves human-level performance. Mesmer enabled the automated extraction of key cellular features, such as subcellular localization of protein signal, which was challenging with previous approaches. We then adapted Mesmer to harness cell lineage information in highly multiplexed datasets and used this enhanced version to quantify cell morphology changes during human gestation. All code, data and models are released as a community resource.


Asunto(s)
Aprendizaje Profundo , Algoritmos , Curaduría de Datos , Humanos , Procesamiento de Imagen Asistido por Computador/métodos
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