...
首页> 外文期刊>Artificial intelligence in medicine >Improving prediction for medical institution with limited patient data: Leveraging hospital-specific data based on multicenter collaborative research network
【24h】

Improving prediction for medical institution with limited patient data: Leveraging hospital-specific data based on multicenter collaborative research network

机译:利用有限患者数据提高医学机构预测:利用多中心协同研究网络的特定医院数据

获取原文
获取原文并翻译 | 示例
           

摘要

Background and objective: Clinical decision support assisted by prediction models usually faces the challenges of limited clinical data and a lack of labels when the model is developed with data from a single medical institution. Accordingly, research on multicenter clinical collaborative networks, which can provide external medical data, has received increasing attention. With the increasing availability of machine learning techniques such as transfer learning, leveraging large-scale patient data from multiple hospitals to build data-driven predictive models with clinical application potential provides an alternative solution to address the problem of limited patient data.Methods: A multicenter hybrid semi-supervised transfer learning model (MHSTL) is proposed in this study on the basis of unified common data model to ensure multicenter data standardized representation. Then the hospital-specific features, along with the co-occurrence features across domains, are aligned through a representation learning architecture that is built based on deep neural networks and the newly proposed neural decision forest model. In this process, limited patient data from the target hospital, both labeled and unlabeled, are incorporated during the feature adaptation process, thereby contributing to better model performance. Without patient-level data sharing, the proposed model learning strategy which overcomes feature misalignment and distribution divergence, enables the multi-source transfer learning process in the case of insufficient and unlabeled patient data at target hospital.Results: The effectiveness of the proposed transfer learning model was evaluated on a collaborative research network of colorectal cancer patients in the US and China. The results demonstrate that the proposed model can achieve much better performance for predicting target risk with limited resources on patient data than baseline models . Better discrimination and calibration ability are also observed when sufficient labeled data are not available in the target hospital for prognosis prediction tasks . Further exploratory experiments show that the proposed approach exhibits good model generalizability regardless of the data heterogeneity. With the help of the SHapley Additive exPlanations for model interpretation, the effectiveness of incorporating hospital-specific features in the transfer learning model is shown.Conclusions: In this study, the proposed method can develop prediction models from multiple source hospitals and exhibit good performance by leveraging cross-domain hospital-specific feature information, therefore enhancing the model prediction when applied to single medical institution with limited patient data.
机译:背景和目的:预测模型辅助的临床决策支持通常面临有限临床数据的挑战以及当模型与来自单一医学机构的数据开发的临床数据和缺乏标签。因此,可以提供外部医疗数据的多中心临床协同网络的研究得到了不断的关注。随着机器学习技术的增加,如转移学习,利用来自多个医院的大规模患者数据建立具有临床应用潜力的数据驱动的预测模型,提供了解决有限患者数据问题的替代解决方案。方法:多中心本研究基于统一的公共数据模型提出了混合半监督转移学习模型(MHSTL),以确保多中心数据标准化表示。然后,特定于医院的特征以及跨域的共同发生功能,通过基于深度神经网络和新提出的神经决策林模型构建的表示学习架构对齐。在该过程中,在特征适应过程中,在标记和未标记的目标医院的有限患者数据,从而有助于更好的模型性能。如果没有患者级数据共享,所提出的模型学习策略克服了特征错位和分配分配,可以在目标医院的患者数据不足和未标记的患者数据的情况下实现多源转移学习过程。结果:建议转移学习的有效性在美国和中国的结肠直肠癌患者的协作研究网络中评估了模型。结果表明,所提出的模型可以实现更好的性能,以预测患者数据资源有限的目标风险而不是基线模型。当目标医院不适用于预后预测任务时,还会观察到更好的辨别和校准能力。进一步的探索性实验表明,无论数据异质性如何,该方法呈现出良好的型号相互性。借助于朔芙添加剂的模型解释解释,显示了在转移学习模型中纳入特定于医院特征的有效性。结论:在本研究中,所提出的方法可以开发来自多个源医院的预测模型并表现出良好的表现利用跨域医院特定的特征信息,从而提高了用有限患者数据应用于单一医学机构时的模型预测。

著录项

  • 来源
    《Artificial intelligence in medicine》 |2021年第3期|102024.1-102024.13|共13页
  • 作者单位

    Zhejiang Univ Coll Biomed Engn & Instrument Sci Engn Res Ctr EMR & Intelligent Expert Syst Minist Educ 38 Zheda Rd Hangzhou 310027 Zhejiang Peoples R China;

    Zhejiang Univ Coll Biomed Engn & Instrument Sci Engn Res Ctr EMR & Intelligent Expert Syst Minist Educ 38 Zheda Rd Hangzhou 310027 Zhejiang Peoples R China;

    Zhejiang Univ Coll Biomed Engn & Instrument Sci Engn Res Ctr EMR & Intelligent Expert Syst Minist Educ 38 Zheda Rd Hangzhou 310027 Zhejiang Peoples R China;

    Zhejiang Univ Coll Biomed Engn & Instrument Sci Engn Res Ctr EMR & Intelligent Expert Syst Minist Educ 38 Zheda Rd Hangzhou 310027 Zhejiang Peoples R China;

    Zhejiang Univ Affiliated Hosp 2 Sch Med Dept Surg Oncol Hangzhou Peoples R China;

    Zhejiang Univ Affiliated Hosp 2 Sch Med Dept Surg Oncol Hangzhou Peoples R China;

    Zhejiang Univ Coll Biomed Engn & Instrument Sci Engn Res Ctr EMR & Intelligent Expert Syst Minist Educ 38 Zheda Rd Hangzhou 310027 Zhejiang Peoples R China|Res Ctr Healthcare Data Sci Zhejiang Lab Hangzhou Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Transfer learning; Data-limited settings; Distributed data mining; Model generalizability; Clinical decision support systems; Prognosis prediction;

    机译:转移学习;数据限制设定;分布式数据挖掘;型号概括性;临床决策支持系统;预后预测;

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号