Engineering Research Center of EMR and Intelligent Expert System, Ministry of Education, Collaborative Innovation Center for Diagnosis and Treatment of Infectious Diseases, Key Laboratory for Biomedical Engineering of Ministry of Education, College of Biomedical Engineering and Instrument Science, Zhejiang University, No. 38 Zheda Road, Hangzhou 310027, Zhejiang Province, China.
Department of Surgical Oncology, Second Affiliated Hospital, Zhejiang University School of Medicine, No. 88 Jiefang Road, HangZhou 31009, Zhejiang Province, China.
J Biomed Inform. 2018 Oct;86:1-14. doi: 10.1016/j.jbi.2018.08.008. Epub 2018 Aug 10.
Clinical prognosis prediction plays an important role in clinical research and practice. The construction of prediction models based on electronic health record data has recently become a research focus. Due to the lack of external validation, prediction models based on single-center, hospital-specific datasets may not perform well with datasets from other medical institutions. Therefore, research investigating prognosis prediction model construction based on a collaborative analysis of multi-center electronic health record data could increase the number and coverage of patients used for model training, enrich patient prognostic features and ultimately improve the accuracy and generalization of prognosis prediction.
A web service for individual prognosis prediction based on multi-center clinical data collaboration without patient-level data sharing (POPCORN) was proposed. POPCORN focuses on solving key issues in multi-center collaborative research based on electronic health record systems; these issues include the standardization of clinical data expression, the preservation of patient privacy during model training and the effect of case mix variance on the prediction model construction and application. POPCORN is based on a multivariable meta-analysis and a Bayesian framework and can construct suitable prediction models for multiple clinical scenarios that can effectively adapt to complex clinical application environments.
POPCORN was validated using a joint, multi-center collaborative research network between China and the United States with patients diagnosed with colorectal cancer. The performance of the models based on POPCORN was comparable to that of the standard prognosis prediction model; however, POPCORN did not expose raw patient data. The prediction models had similar AUC, but the BMA model had the lowest ECI across all prediction models, indicating that this model had better calibration performance than the other models, especially for patients in Chinese hospitals.
The POPCORN system can build prediction models that perform well in complex clinical application scenarios and can provide effective decision support for individual patient prognostic predictions.
临床预后预测在临床研究和实践中具有重要作用。基于电子健康记录数据构建预测模型已成为研究热点。由于缺乏外部验证,基于单中心、医院特定数据集的预测模型可能无法在其他医疗机构的数据集上表现良好。因此,研究基于多中心电子健康记录数据的协作分析构建预后预测模型,可以增加用于模型训练的患者数量和覆盖范围,丰富患者预后特征,最终提高预后预测的准确性和泛化能力。
提出了一种基于多中心临床数据协作的个体预后预测的 Web 服务(POPCORN),无需共享患者级数据。POPCORN 专注于解决基于电子健康记录系统的多中心协作研究中的关键问题,包括临床数据表达的标准化、模型训练过程中患者隐私的保护,以及病例组合变异性对预测模型构建和应用的影响。POPCORN 基于多变量荟萃分析和贝叶斯框架,可以构建适用于多种临床场景的预测模型,能够有效适应复杂的临床应用环境。
使用中美联合多中心协作研究网络对经诊断患有结直肠癌的患者进行了 POPCORN 的验证。基于 POPCORN 的模型性能与标准预后预测模型相当,但 POPCORN 并未暴露原始患者数据。预测模型的 AUC 相似,但 BMA 模型的 ECI 最低,表明该模型的校准性能优于其他模型,尤其是对中国医院的患者。
POPCORN 系统可以构建在复杂临床应用场景中表现良好的预测模型,为个体患者预后预测提供有效的决策支持。