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Novel prognostication of patients with spinal and pelvic chondrosarcoma using deep survival neural networks

机译:深深生存神经网络脊髓和骨盆软骨瘤患者的新推出预后

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We used the Surveillance, Epidemiology, and End Results (SEER) database to develop and validate deep survival neural network machine learning (ML) algorithms to predict survival following a spino-pelvic chondrosarcoma diagnosis. The SEER 18 registries were used to apply the Risk Estimate Distance Survival Neural Network (RED_SNN) in the model. Our model was evaluated at each time window with receiver operating characteristic curves and areas under the curves (AUCs), as was the concordance index (c-index). The subjects (n?=?1088) were separated into training (80%, n?=?870) and test sets (20%, n?=?218). The training data were randomly sorted into training and validation sets using 5-fold cross validation. The median c-index of the five validation sets was 0.84 (95% confidence interval 0.79–0.87). The median AUC of the five validation subsets was 0.84. This model was evaluated with the previously separated test set. The c-index was 0.82 and the mean AUC of the 30 different time windows was 0.85 (standard deviation 0.02). According to the estimated survival probability (by 62?months), we divided the test group into five subgroups. The survival curves of the subgroups showed statistically significant separation (p??0.001). This study is the first to analyze population-level data using artificial neural network ML algorithms for the role and outcomes of surgical resection and radiation therapy in spino-pelvic chondrosarcoma.
机译:我们使用监控,流行病学和最终结果(SEER)数据库来开发和验证深处生存神经网络机学习(ML)算法,以预测脊髓盆腔软骨瘤诊断后的存活。 SEER 18注册管理机构用于在模型中应用风险估计距离生存神经网络(RED_SNN)。我们的模型在每个时间窗口中评估了接收器操作特征曲线和曲线(AUC)的区域,如同协调索引(C-Index)。将受试者(n?= 1088)分成训练(80%,n?= 870)和测试组(20%,n?= 218)。使用5倍交叉验证将培训数据随机分类为培训和验证集。五个验证组的中位数C折射率为0.84(95%置信区间0.79-0.87)。五个验证子集的中位数AUC为0.84。使用先前分离的测试集进行评估该模型。 C折射率为0.82,30个不同时间窗口的平均AUC为0.85(标准偏差0.02)。根据估计的存活概率(62〜30次),我们将测试组分为五个亚组。亚组的存活曲线显示出统计学上显着的分离(p≤0.001)。本研究是第一个使用人工神经网络ML算法分析人工神经网络ML算法的人口水平数据,用于脊髓盆腔骨肉瘤外科切除和放射治疗的作用和结果。

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