Division of Rheumatology, Allergy, and Immunology, Department of Medicine, University of Cincinnati College of Medicine, Cincinnati, Ohio.
Division of Allergy and Immunology, Department of Pediatrics, Cincinnati Children's Hospital Medical Center, University of Cincinnati College of Medicine, Cincinnati, Ohio.
J Allergy Clin Immunol. 2024 May;153(5):1381-1391.e6. doi: 10.1016/j.jaci.2024.01.026. Epub 2024 Feb 22.
Eosinophilic esophagitis (EoE) is diagnosed and monitored using esophageal eosinophil levels; however, EoE also exhibits a marked, understudied esophageal mastocytosis.
Using machine learning, we localized and characterized esophageal mast cells (MCs) to decipher their potential role in disease pathology.
Esophageal biopsy samples (EoE, control) were stained for MCs by anti-tryptase and imaged using immunofluorescence; high-resolution whole tissue images were digitally assembled. Machine learning software was trained to identify, enumerate, and characterize MCs, designated Mast Cell-Artificial Intelligence (MC-AI).
MC-AI enumerated cell counts with high accuracy. During active EoE, epithelial MCs increased and lamina propria (LP) MCs decreased. In controls and EoE remission patients, papillae had the highest MC density and negatively correlated with epithelial MC density. MC density in the epithelium and papillae correlated with the degree of epithelial eosinophilic inflammation, basal zone hyperplasia, and LP fibrosis. MC-AI detected greater MC degranulation in the epithelium, papillae, and LP in patients with EoE compared with control individuals. MCs were localized further from the basement membrane in active EoE than EoE remission and control individuals but were closer than eosinophils to the basement membrane in active EoE.
Using MC-AI, we identified a distinct population of homeostatic esophageal papillae MCs; during active EoE, this population decreases, undergoes degranulation, negatively correlates with epithelial MC levels, and significantly correlates with distinct histologic features. Overall, MC-AI provides a means to understand the potential involvement of MCs in EoE and other disorders.
嗜酸性食管炎(EoE)通过食管嗜酸性粒细胞水平来诊断和监测;然而,EoE 还表现出明显但研究不足的食管肥大细胞增多症。
我们使用机器学习方法定位和表征食管肥大细胞(MC),以解析其在疾病病理学中的潜在作用。
对食管活检样本(EoE、对照)进行抗类胰蛋白酶染色,并通过免疫荧光进行成像;对高分辨率全组织图像进行数字化组装。机器学习软件经过训练,可识别、计数和表征 MC,命名为肥大细胞人工智能(MC-AI)。
MC-AI 对细胞计数的准确性很高。在活动性 EoE 中,上皮 MC 增加,固有层(LP)MC 减少。在对照和 EoE 缓解患者中,乳头的 MC 密度最高,与上皮 MC 密度呈负相关。上皮和乳头的 MC 密度与上皮嗜酸性炎症、基底带增生和 LP 纤维化的程度相关。与对照个体相比,EoE 患者的上皮、乳头和 LP 中 MC 脱颗粒更多。与 EoE 缓解和对照个体相比,活动性 EoE 中 MC 更远离基底膜,但比嗜酸性粒细胞更靠近基底膜。
使用 MC-AI,我们鉴定了一种独特的食管乳头 MC 群体;在活动性 EoE 中,该群体减少、脱颗粒、与上皮 MC 水平呈负相关,与独特的组织学特征显著相关。总体而言,MC-AI 提供了一种了解 MC 参与 EoE 和其他疾病的潜在作用的方法。