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  • Development of a nomogram t...
    Pan, Zi-Hao; Chen, Kai; Chen, Pei-Xian; Zhu, Li-Ling; Li, Shun-Rong; Li, Qian; Liu, Feng-Tao; Peng, Min; Su, Feng-Xi; Liu, Qiang; Ye, Guo-Lin; Zeng, Mu-Sheng; Song, Er-Wei

    Journal of bio-X research, 06/2018, Letnik: 1, Številka: 1
    Journal Article

    Abstract The accurate prediction of overall survival (OS) is important in clinical decision-making for breast cancer treatment. We developed a model to predict the OS of non-metastatic breast cancer patients in China. This multicenter study included 1844 non-metastatic breast cancer patients who underwent breast cancer surgery between January 2009 and December 2011 in 3 tertiary teaching hospitals in China. Data were collected retrospectively from the database of each hospital. We used univariate and multivariate Cox proportional hazard regression analyses to screen for predictors. A nomogram was developed in the training cohort (from Sun Yat-sen Memorial Hospital SYSMH), externally validated in 2 validation cohorts (from the First People's Hospital of Foshan FPHF and Sun Yat-sen University Cancer Center (SYUCC)), and compared with CancerMath, a mathematical-based model. We used Receiver Operating Characteristic curves and calibration plots to assess the models. At median follow-ups of 65.9, 68.6, and 66.2 months, the 5-year OS rates were 93.0%, 86.7%, and 91.0% in the SYSMH, FPHF, and SYUCC cohorts, respectively. We identified age, T stage, lymph node status, estrogen receptor, and human epidermal growth factor receptor 2 statuses as significant prognostic factors. A nomogram was developed and externally validated in the FPHF (area under the curve = 0.74) and SYUCC (area under the curve = 0.77) cohorts. Calibration plots showed that the predicted OS was consistent with the actual OS. The nomogram outperformed CancerMath in our study population. In summary, we developed a nomogram to predict survival among non-metastatic breast cancer patientsin China. This nomogram is superior to the CancerMath model in Chinese populations.