Archive/ScaleNet: An Imaris XTension for Deep-Learning-Based Per-Scale Quantification of Immune Infiltration in Whole-Mount Vitiligo Mouse Skin
ScaleNet: An Imaris XTension for Deep-Learning-Based Per-Scale Quantification of Immune Infiltration in Whole-Mount Vitiligo Mouse Skin
Wenxuan Gao, Xuyang Jiang, Yucheng Hu
July 9, 2026
en

Abstract

Quantifying the spatial distribution of immune cells within intact skin tissue is essential for understanding diseases such as vitiligo, in which CD8+ T cells selectively destroy epidermal melanocytes within the discrete, parallelogram-shaped epidermal compartments of mouse tail skin, which we term scales. Existing workflows rely on manual region drawing, which is labor-intensive and operator-dependent. Here we present ScaleNet, a three-stage deep-learning pipeline for automated per-scale quantification of whole-mount immunofluorescent images, implemented as an Imaris XTension to enable seamless integration with existing 3D imaging workflows. ScaleNet (i) encodes a 3D confocal volume as a pseudo-RGB projection that preserves height information lost by standard maximum-intensity projection, (ii) applies two independently trained Detectron2 Mask R-CNN models—one for epidermal scales and one for hair follicles—with sliced inference (SAHI) to segment whole-mount images at full resolution, and (iii) maps the resulting 2D mask back into the Imaris 3D coordinate system to quantify user-defined Spot objects per scale. Applied to vitiligo mice imaging, ScaleNet produced per-scale counts of CD8+ T cells and DCT+ melanocytes, enabling unbiased spatial statistics in the tail epidermis, demonstrating that ScaleNet can provide the quantitative spatial resolution needed to dissect the micro-anatomical dynamics of autoimmune depigmentation.

IPC Classification

G06

Keywords

scalenetimarisxtensiondeep-learning-basedper-scalequantificationimmuneinfiltrationwhole-mountvitiligomouseskinbiophysicaquantifyingspatialdistributioncellswithinintacttissueessentialunderstandingdiseasessuch
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