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Clinicopathologic Features and Pathogens of Granulomatous Lobular Mastitis

肉芽肿性乳腺炎 医学 病理 病因学 乳腺炎
作者
Yunyuan Li,Ling Chen,Chunyan Zhang,Yanwen Wang,Jun Hu,Mengyun Zhou,Xiaoyun Zhang
出处
期刊:Breast Care [Karger Publishers]
标识
DOI:10.1159/000529391
摘要

Background: Granulomatous lobular mastitis (GLM) is a rare, benign, and complex breast disease that can be easily misdiagnosed as breast cancer. The etiology of GLM is unclear and optimal treatment has not been established. Methods: Medical records for 333 patients with GLM in recent five years at Longhua Hospital, based in Shanghai, China, were analyzed. Potential pathogens in 33 fresh tissue specimens were also analyzed using 16S rDNA sequencing technology, matrix-assisted laser desorption ionization time of flight mass spectrometry (MALDI-TOF-MS), and bacterial cultures. Results: The median age of patients was 32 years (range 22-47 years). Amongst 333 patients, 38.7% displayed elevated prolactin, while 23.7% displayed high interleukin-2.In the granulomatous lesion, CD3 positive T lymphocytes were significantly more than CD20 positive B lymphocytes around the vacuoles or microabscesses. Gram-positive organisms were observed in 82 cases, including in 22 cases from fresh tissue specimens. Thirty-three (33) cases yielded associated pathogens and all displayed multiple pathogenic infections, as identified using 16S rDNA sequencing technology. Pathogenic infections were further identified as belonging to 16 main genera and 8 main pathogenic species. Conclusions: GLM displays distinct histological and clinical features similarly to those have been previously reported in literatures. Using 16S rDNA sequencing technology, all of our cases demonstrated multiple pathogenic infections, which provided more useful information for clinical treatment.

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