Wang Bo, Chen Wei, Xie Xianbiao, Tu Jian, Huang Gang, Zou Changye, Yin Junqiang, Wen Lili, Shen Jingnan
Musculoskeletal Oncology Center, The First Affiliated Hospital of Sun Yat-Sen University, Guangzhou, China.
Department of Anesthesiology, State Key Laboratory of Oncology in South China, Sun Yat-Sen University Cancer Center, Guangzhou, China.
Oncotarget. 2017 Nov 8;8(64):108054-108063. doi: 10.18632/oncotarget.22478. eCollection 2017 Dec 8.
Giant cell tumor of bone (GCTB) is an intermittent tumor with a low probability of pulmonary metastasis. Our aim was to investigate the risk factors and establish a nomogram predictive model for GCTB pulmonary metastasis.
We retrospectively evaluated GCTB patients at our center from 1991 to 2014. The cohort was randomized into training and validation sets. Univariate and multivariate analyses were used to evaluate the risk factors of pulmonary metastasis. A nomogram was established. Internal validation was achieved based on ROC curve and C-index values in the validation set. Decision curve analysis was performed to assess the clinical performance of the nomogram.
417 patients were studied, including benign and malignant GCTBs. The average follow up was 79 months. Pulmonary metastases were observed in 27 cases. Four independent risk factors were identified: malignancy, tumor bearing time, times of recurrence and tumor size. A nomogram was developed to predict pulmonary metastasis with C-index values of 0.857 and 0.785 in the training and validation groups. In the decision curve analysis, patients could benefit from the nomogram, which differentiates patients at high risk for pulmonary metastasis and avoids unnecessary examination. According to the nomogram, patients with final risks of more than 0.06 should be scheduled for further chest scans.
Malignancy, tumor bearing time, times of recurrence and tumor size were independent risk factors for pulmonary metastasis in GCTB patients. The nomogram can accurately predict the risk of pulmonary metastasis and help doctors to make clinical decisions for further chest examinations.
骨巨细胞瘤(GCTB)是一种具有低肺转移概率的间歇性肿瘤。我们的目的是研究骨巨细胞瘤肺转移的危险因素并建立一个列线图预测模型。
我们回顾性评估了1991年至2014年在我们中心的骨巨细胞瘤患者。该队列被随机分为训练集和验证集。采用单因素和多因素分析来评估肺转移的危险因素。建立了一个列线图。基于验证集中的ROC曲线和C指数值进行内部验证。进行决策曲线分析以评估列线图的临床性能。
共研究了417例患者,包括良性和恶性骨巨细胞瘤。平均随访时间为79个月。观察到27例肺转移病例。确定了四个独立的危险因素:恶性程度、肿瘤存在时间、复发次数和肿瘤大小。开发了一个列线图来预测肺转移,训练组和验证组的C指数值分别为0.857和0.785。在决策曲线分析中,患者可以从列线图中获益,该列线图可区分肺转移高风险患者并避免不必要的检查。根据列线图,最终风险超过0.06的患者应安排进一步的胸部扫描。
恶性程度、肿瘤存在时间、复发次数和肿瘤大小是骨巨细胞瘤患者肺转移的独立危险因素。该列线图可以准确预测肺转移风险,并帮助医生做出关于进一步胸部检查的临床决策。