INTRODUCTION: Pleurisy tuberculoma (PTM) is a neoplastic lesion that primarily affects the pleural wall or internal organs. The majority of PTM cases are observed during the treatment of tuberculous pleural effusion(TPE), and although the precise pathogenesis remains unclear, there is a significant association between these two conditions. To identify high-risk factors for the development of PTM, we developed a clinical predictive model aimed at providing more insightful information for the development of PTM. METHODS: A retrospective study was conducted on patients diagnosed with PTM or TPE who were treated at Nanjing Chest Hospital and the Second Hospital of Nanjing from March 2013 to April 2024. Predictors were identified using logistic regression, LASSO regression, and optimal subset regression. The performance of all models was evaluated using receiver operating characteristic (ROC) curves, calibration curves, decision curve analysis (DCA), and clinical impact curves to establish the final clinical predictive model. Internal and external validation was performed to assess the model's performance. RESULTS: The final predictive model included two key risk factors associated with the development of PTM: Ki-67 CONCLUSIONS: The predictive model utilizing Ki-67+CD4+T cells and Ki-67+CD8+T cells can assist clinicians in making early predictions of PTM.