Esophagitis is a frequent, but at the molecular level poorly characterized condition with diverse underlying etiologies and treatments. Correct diagnosis can be challenging due to partially overlapping histological features. By proteomic profiling of routine diagnostic FFPE biopsy specimens (nâ=â55) representing controls, Reflux- (GERD), Eosinophilic-(EoE), Crohn's-(CD), Herpes simplex (HSV) and Candida (CA)-esophagitis by LC-MS/MS (DIA), we identified distinct signatures and functional networks (e.g. mitochondrial translation (EoE), immunoproteasome, complement and coagulations system (CD), ribosomal biogenesis (GERD)), and pathogen-specific proteins for HSV and CA. Moreover, combining these signatures with histological parameters in a machine learning model achieved high diagnostic accuracy (100% training set, 93.8% test set), and supported diagnostic decisions in borderline/challenging cases. Applied to a young patient representing a use case, the external GERD diagnosis could be revised to CD and ICAM1 was identified as highly abundant therapeutic target. This resulted in CyclosporinA as a personalized treatment recommendation by the local multidisciplinary molecular inflammation board. Our integrated AI-assisted morphoproteomic approach allows deeper insights in disease-specific molecular alterations and represents a promising tool in esophagitis-related precision medicine.
An AI-assisted morphoproteomic approach is a supportive tool in esophagitis-related precision medicine.
人工智能辅助的形态蛋白质组学方法是食管炎相关精准医疗的辅助工具
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作者:Mattern Sven, Hollfoth Vanessa, Bag Eyyub, Ali Arslan, Riemenschneider Philip, Jarboui Mohamed A, Boldt Karsten, Sulyok Mihaly, Dickemann Anabel, Luibrand Julia, Fusco Stefano, Franz-Wachtel Mirita, Singer Kerstin, Goeppert Benjamin, Schilling Oliver, Malek Nisar, Fend Falko, Macek Boris, Ueffing Marius, Singer Stephan
| 期刊: | EMBO Molecular Medicine | 影响因子: | 8.300 |
| 时间: | 2025 | 起止号: | 2025 Mar;17(3):441-468 |
| doi: | 10.1038/s44321-025-00194-7 | 研究方向: | 人工智能 |
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