P53 and Ki67 Biomarkers are Predictors for Malignant Transformation in Oral Submucous Fibrosis: A Prospective Study

P53和Ki67生物标志物是口腔黏膜下纤维化恶性转化的预测因子:一项前瞻性研究

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Abstract

OBJECTIVES: Oral submucous fibrosis (OSMF) is a potentially malignant disorder (PMD) characterized by a high rate of malignant transformation (MT). OSMF exhibits atrophic epithelium yet has a high proliferation rate. Both p53 and Ki67 are nuclear proteins associated with cell proliferation, detectable in the early stages of oral cancer (OC). This study aimed to analyze the efficacy of p53 and Ki67 immuno-expression as tools for predicting malignant transformation in OSMF cases. The objective was to correlate the expression of p53 and Ki67 with demographic and chewing habits data. MATERIALS AND METHODS: The study group consisted of 60 histopathologically diagnosed cases of OSMF, 60 cases of OC as positive controls, and 60 cases of NOM as negative controls. Immunohistochemistry was performed on neutral-buffered formalin-fixed, paraffin-embedded tissue sections of 3 μm thickness, using ready-to-use anti-human p53 protein (clone DO-7) and monoclonal antibody for Ki67 antigen (clone MIB-1). Statistical analysis was conducted using SPSS software version 21, employing the chi-square test (p < 0.05). RESULTS: The expression of p53 and Ki67 was significantly higher in OSMF samples compared to NOM samples, but lower than in OC samples. When the expression levels of both p53 and Ki67 were correlated with demographic and chewing habits data, the results were statistically significant. CONCLUSION: The overexpression of p53 and Ki67 may contribute to the progression of MT in OSM. Early detection of these biomarkers is crucial for preventing MT, which also helps reduce the morbidity and mortality of OC. Therefore, both p53 and Ki67 can serve as predictive biomarkers for the early detection of MT in high-risk OSMF patients.

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