Department of Thoracic Surgery, Shanghai Pulmonary Hospital, Tongji University School of Medicine, Shanghai, China.
College of Design and Innovation, Tongji University, Shanghai, China.
JAMA Netw Open. 2020 Jun 1;3(6):e205842. doi: 10.1001/jamanetworkopen.2020.5842.
There is a lack of studies exploring the performance of a deep learning survival neural network in non-small cell lung cancer (NSCLC).
To compare the performances of DeepSurv, a deep learning survival neural network with a tumor, node, and metastasis staging system in the prediction of survival and test the reliability of individual treatment recommendations provided by the deep learning survival neural network.
DESIGN, SETTING, AND PARTICIPANTS: In this population-based cohort study, a deep learning-based algorithm was developed and validated using consecutive cases of newly diagnosed stages I to IV NSCLC between January 2010 and December 2015 in a Surveillance, Epidemiology, and End Results database. A total of 127 features, including patient characteristics, tumor stage, and treatment strategies, were assessed for analysis. The algorithm was externally validated on an independent test cohort, comprising 1182 patients with stage I to III NSCLC diagnosed between January 2009 and December 2013 in Shanghai Pulmonary Hospital. Analysis began January 2018 and ended June 2019.
The deep learning survival neural network model was compared with the tumor, node, and metastasis staging system for lung cancer-specific survival. The C statistic was used to assess the performance of models. A user-friendly interface was provided to facilitate the survival predictions and treatment recommendations of the deep learning survival neural network model.
Of 17 322 patients with NSCLC included in the study, 13 361 (77.1%) were white and the median (interquartile range) age was 68 (61-74) years. The majority of tumors were stage I disease (10 273 [59.3%]) and adenocarcinoma (11 985 [69.2%]). The median (interquartile range) follow-up time was 24 (10-43) months. There were 3119 patients who had lung cancer-related death during the follow-up period. The deep learning survival neural network model showed more promising results in the prediction of lung cancer-specific survival than the tumor, node, and metastasis stage on the test data set (C statistic = 0.739 vs 0.706). The population who received the recommended treatments had superior survival rates than those who received treatments not recommended (hazard ratio, 2.99; 95% CI, 2.49-3.59; P < .001), which was verified by propensity score-matched groups. The deep learning survival neural network model visualization was realized by a user-friendly graphic interface.
The deep learning survival neural network model shows potential benefits in prognostic evaluation and treatment recommendation with respect to lung cancer-specific survival. This novel analytical approach may provide reliable individual survival information and treatment recommendations.
目前缺乏研究探索深度学习生存神经网络在非小细胞肺癌(NSCLC)中的表现。
比较 DeepSurv 在预测生存方面的表现,DeepSurv 是一种基于深度学习的生存神经网络,与肿瘤、淋巴结和转移分期系统相结合,测试由深度学习生存神经网络提供的个体治疗建议的可靠性。
设计、设置和参与者:在这项基于人群的队列研究中,在 Surveillance、Epidemiology、和 End Results 数据库中,使用 2010 年 1 月至 2015 年 12 月期间新诊断的 I 期至 IV 期 NSCLC 的连续病例,开发并验证了一种基于深度学习的算法。评估了包括患者特征、肿瘤分期和治疗策略在内的 127 个特征。该算法在上海肺科医院 2009 年 1 月至 2013 年 12 月期间诊断的 1182 例 I 期至 III 期 NSCLC 的独立测试队列中进行了外部验证。分析于 2018 年 1 月开始,2019 年 6 月结束。
将深度学习生存神经网络模型与肺癌特异性生存的肿瘤、淋巴结和转移分期系统进行比较。C 统计量用于评估模型的性能。提供了一个用户友好的界面,以方便深度学习生存神经网络模型的生存预测和治疗建议。
在这项研究中,共有 17322 例 NSCLC 患者,其中 13361 例(77.1%)为白人,中位(四分位距)年龄为 68(61-74)岁。大多数肿瘤为 I 期疾病(10273 例[59.3%])和腺癌(11985 例[69.2%])。中位(四分位距)随访时间为 24(10-43)个月。在随访期间,有 3119 例患者死于肺癌相关疾病。在测试数据集上,深度学习生存神经网络模型在预测肺癌特异性生存方面的表现优于肿瘤、淋巴结和转移分期(C 统计量分别为 0.739 与 0.706)。接受推荐治疗的人群的生存率优于接受不推荐治疗的人群(危险比,2.99;95%CI,2.49-3.59;P<0.001),这在倾向评分匹配组中得到了验证。通过一个用户友好的图形界面实现了深度学习生存神经网络模型的可视化。
深度学习生存神经网络模型在预测肺癌特异性生存方面显示出潜在的优势,在预后评估和治疗建议方面具有优势。这种新的分析方法可以提供可靠的个体生存信息和治疗建议。