Development and validation of a nomogram to predict cancer-specific survival in middle-aged patients with papillary thyroid cancer: A SEER database study
Jie Tang,
Chenghao Zhanghuang,
Zhigang Yao,
Li Li,
Yucheng Xie,
Haoyu Tang,
Kun Zhang,
Chengchuang Wu,
Zhen Yang,
Bing Yan
Affiliations
Jie Tang
Department of Biostatistics and Epidemiology, School of Public Health, Shenyang Medical College, Shenyang, China
Chenghao Zhanghuang
Department of Urology, Kunming Children's Hospital(Children's Hospital Affiliated to Kunming Medical University), Kunming, PR China; Yunnan Key Laboratory of Children's Major Disease Research, Kunming Children's Hospital(Children's Hospital Affiliated to Kunming Medical University), Kunming, PR China; Department of Oncology; Yunnan Children Solid Tumor Treatment Center, Kunming Children's Hospital(Children's Hospital Affiliated to Kunming Medical University), Kunming, PR China
Zhigang Yao
Department of Urology, Kunming Children's Hospital(Children's Hospital Affiliated to Kunming Medical University), Kunming, PR China
Li Li
Yunnan Key Laboratory of Children's Major Disease Research, Kunming Children's Hospital(Children's Hospital Affiliated to Kunming Medical University), Kunming, PR China
Yucheng Xie
Department of Pathology, Kunming Children's Hospital(Children's Hospital Affiliated to Kunming Medical University), Kunming, PR China
Haoyu Tang
Department of Urology, Kunming Children's Hospital(Children's Hospital Affiliated to Kunming Medical University), Kunming, PR China
Kun Zhang
Department of Urology, Kunming Children's Hospital(Children's Hospital Affiliated to Kunming Medical University), Kunming, PR China
Chengchuang Wu
Department of Urology, Kunming Children's Hospital(Children's Hospital Affiliated to Kunming Medical University), Kunming, PR China
Zhen Yang
Department of Oncology; Yunnan Children Solid Tumor Treatment Center, Kunming Children's Hospital(Children's Hospital Affiliated to Kunming Medical University), Kunming, PR China
Bing Yan
Department of Urology, Kunming Children's Hospital(Children's Hospital Affiliated to Kunming Medical University), Kunming, PR China; Yunnan Key Laboratory of Children's Major Disease Research, Kunming Children's Hospital(Children's Hospital Affiliated to Kunming Medical University), Kunming, PR China; Department of Oncology; Yunnan Children Solid Tumor Treatment Center, Kunming Children's Hospital(Children's Hospital Affiliated to Kunming Medical University), Kunming, PR China; Corresponding author. Department of Urology, Kunming Children's Hospital(Children's Hospital affiliated to Kunming Medical University); 288 Qianxing Road, Kunming 650228, Yunnan, China.
Background: Thyroid cancer (TC) accounts for more than 90% of endocrine tumours and is a typical head and neck tumour in adults. The aim of this study was to develop a predictive tool to predict cancer-specific survival (CSS) in middle-aged patients with papillary thyroid carcinoma (PTC). Methods: The patients from 2004 to 2015 were randomly divided into a training cohort (n = 25,342) and a internal validation cohort (n = 10,725). The patients from 2016 to 2018 were treated as an external validation cohort (n = 11353). COX proportional hazard model was used to screen meaningful independent risk factors. These factors were constructed into a nomogram to predict CSS in middle-aged patients with PTC. The performance and accuracy of the nomogram were then evaluated using the concordance index (C-index), calibration curve and the area under the curve (AUC). The clinical value of nomogram was evaluated by decision curve analysis (DCA). Results: Age, gender, marriage, tumour grade, T stage, N stage, M stage, surgery, chemotherapy, and tumour size were independent prognostic factors. The C-indexes of the training, internal validation, and external validation cohorts were 0.906, 0.887, and 0.962, respectively. The AUC and calibration curves show good accuracy. DCA shows that the clinical value of the nomogram is higher than that of Tumour, Node and Metastasis (TNM) staging. Conclusion: We developed a new prediction tool to predict CSS in middle-aged patients with PTC. The model has good performance after internal and external validation, which can be friendly to help doctors and patients predict CSS.