Objective: To analyze muscle histopathology of myasthenia gravis (MG) patients and further explore the underlying mechanism comparing with previous literature.

Materials And Methods: We analyzed the clinicopathological features of 8 MG patients who had muscle biopsy examinations.

Results: Eight patients with a diagnosis of MG were retrospectively recruited from the Chinese PLA General Hospital. One patient had positive anti-MuSK antibodies, 5 patients had positive anti-AChR antibodies (1 of whom had additional positive anti-Titin antibodies), and 2 patients were seronegative. Seronegative-MG presented normal muscle histology, occasionally with lipid deposition. Small angular atrophy (mainly in type II fibers) and necrosis in H & E stain were found in AChR-MG, furthermore, patterns of polymyositis (PM) could be found in AChR-MG with anti-Titin antibodies. Mitochondrial abnormalities were found only in MuSK-MG.

Conclusion: Muscle histological abnormalities mimicking myopathy may be found in MG patients. Patients with different antibodies present with different muscle histopathology. PM pattern pathology is a special pattern of muscle histology in MG that should not be misdiagnosed. Our study has extended the muscle pathological features of MG in addition to deepening the understanding of MG.

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http://dx.doi.org/10.5414/NP301382DOI Listing

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