Surveillance of prognostic risk factors in patients with SCCB using artificial intelligence: a retrospective study

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作者
Chenghao Zhanghuang
Zhaoxia Zhang
Jinkui Wang
Zhigang Yao
Fengming Ji
Chengchuang Wu
Jing Ma
Zhen Yang
Yucheng Xie
Haoyu Tang
Bing Yan
机构
[1] Yunnan Province Clinical Research Center for Children’s Health and Disease,Department of Urology, Kunming Children’s Hospital (Children’s Hospital Affiliated to Kunming Medical University)
[2] Children’s Hospital of Chongqing Medical University,Department of Urology, Chongqing Key Laboratory of Children Urogenital Development and Tissue Engineering, Chongqing Key Laboratory of Pediatrics, Ministry of Education Key Laboratory of Child Development
[3] Kunming Children’s Hospital (Children’s Hospital Affiliated to Kunming Medical University),Yunnan Key Laboratory of Children’s Major Disease Research, Yunnan Province Clinical Research Center for Children’s Health and Disease, Yunnan Clinical Medical Cente
[4] Kunming Children’s Hospital (Children’s Hospital Affiliated to Kunming Medical University),Department of Otolaryngology
[5] Kunming Children’s Hospital (Children’s Hospital Affiliated to Kunming Medical University),Department of Oncology, Yunnan Children Solid Tumor Treatment Center
[6] Kunming Children’s Hospital (Children’s Hospital Affiliated to Kunming Medical University),Department of Pathology
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摘要
Small cell carcinoma of the bladder (SCCB) is a rare urological tumor. The prognosis of SCCB is abysmal. Therefore, this study aimed to construct nomograms that predict overall survival (OS) and cancer-specific survival (CSS) in SCCB patients. Information on patients diagnosed with SCCB during 2004–2018 was obtained from the Surveillance, Epidemiology, and End Results (SEER) database. Univariate and multivariate Cox regression models analyzed Independent risk factors affecting patients' OS and CSS. Nomograms predicting the OS and CSS were constructed based on the multivariate Cox regression model results. The calibration curve verified the accuracy and reliability of the nomograms, the concordance index (C-index), and the area under the curve (AUC). Decision curve analysis (DCA) assessed the potential clinical value. 975 patients were included in the training set (N = 687) and the validation set (N = 288). Multivariate COX regression models showed that age, marital status, AJCC stage, T stage, M stage, surgical approach, chemotherapy, tumor size, and lung metastasis were independent risk factors affecting the patients' OS. However, distant lymph node metastasis instead AJCC stage is the independent risk factor affecting the CSS in the patients. We successfully constructed nomograms that predict the OS and CSS for SCCB patients. The C index of the training set and the validation set of the OS were 0.747 (95% CI 0.725–0.769) and 0.765 (95% CI 0.736–0.794), respectively. The C index of the CSS were 0.749 (95% CI 0.710–0.773) and 0.786 (95% CI 0.755–0.817), respectively, indicating that the predictive models of the nomograms have excellent discriminative power. The calibration curve and the AUC also show good accuracy and discrimination of the nomograms. To sum up, We established nomograms to predict the OS and CSS of SCCB patients. The nomograms have undergone internal cross-validation and show good accuracy and reliability. The DCA shows that the nomograms have an excellent clinical value that can help doctors make clinical-assisted decision-making.
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