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子宫腺肉瘤个性化生存预测模型的开发与验证:一项基于人群的深度学习研究

Development and Validation of a Personalized Survival Prediction Model for Uterine Adenosarcoma: A Population-Based Deep Learning Study.

作者信息

Qu Wenjie, Liu Qingqing, Jiao Xinlin, Zhang Teng, Wang Bingyu, Li Ningfeng, Dong Taotao, Cui Baoxia

机构信息

Cheeloo College of Medicine, Shandong University, Jinan, China.

Department of Obstetrics and Gynecology, Qilu Hospital of Shandong University, Jinan, China.

出版信息

Front Oncol. 2021 Feb 18;10:623818. doi: 10.3389/fonc.2020.623818. eCollection 2020.

Abstract

BACKGROUND

The aim was to develop a personalized survival prediction deep learning model for adenosarcoma patients using the surveillance, epidemiology and end results (SEER) database.

METHODS

A total of 797 uterine adenosarcoma patients were enrolled in this study. Duplicated and useless variables were excluded, and 15 variables were selected for further analyses, including age, grade, positive lymph nodes or not, marital status, race, tumor extension, stage, and surgery or not. We created our deep survival learning (DSL) model to manipulate the data, which was randomly split into a training set (n = 519, 65%), validation set (n = 143, 18%) and testing set (n = 143, 18%). The Cox proportional hazard (CPH) model was also included comparatively. Finally, personalized survival curves were plotted for randomly selected patients.

RESULTS

The c-index for the CPH model was 0.726, and the Brier score was 0.17. For our deep survival learning model, we achieved a c-index of 0.774 and a Brier score of 0.14 in the external testing set. In addition, the limitations of the traditional staging system were revealed, and a personalized survival prediction system based on our risk scoring grouping was developed.

CONCLUSIONS

Our study developed a deep neural network model for adenosarcoma. The performance of this model was superior to that of the traditional Cox proportional hazard model. In addition, a personalized survival prediction system was developed based on our deep survival learning model, which provided more accurate prognostic information for adenosarcoma patients.

摘要

背景

目的是利用监测、流行病学和最终结果(SEER)数据库为腺肉瘤患者开发一种个性化生存预测深度学习模型。

方法

本研究共纳入797例子宫腺肉瘤患者。排除重复和无用变量,选择15个变量进行进一步分析,包括年龄、分级、淋巴结是否阳性、婚姻状况、种族、肿瘤扩展、分期以及是否接受手术。我们创建了深度生存学习(DSL)模型来处理数据,将其随机分为训练集(n = 519,65%)、验证集(n = 143,18%)和测试集(n = 143,18%)。同时纳入Cox比例风险(CPH)模型进行比较。最后,为随机选择的患者绘制个性化生存曲线。

结果

CPH模型的c指数为0.726,Brier评分为0.17。对于我们的深度生存学习模型,在外部测试集中,我们实现了c指数为0.774,Brier评分为0.14。此外,揭示了传统分期系统的局限性,并开发了基于我们风险评分分组的个性化生存预测系统。

结论

我们的研究为腺肉瘤开发了一种深度神经网络模型。该模型的性能优于传统的Cox比例风险模型。此外,基于我们的深度生存学习模型开发了一种个性化生存预测系统,为腺肉瘤患者提供了更准确的预后信息。

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