Continual updating and monitoring of clinical prediction models: time for dynamic prediction systems?

被引:63
作者
David A. Jenkins
Glen P. Martin
Matthew Sperrin
Richard D. Riley
Thomas P. A. Debray
Gary S. Collins
Niels Peek
机构
[1] The University of Manchester,Division of Informatics, Imaging and Data Science, Faculty of Biology, Medicine and Health
[2] Manchester Academic Health Science Centre,NIHR Greater Manchester Patient Safety Translational Research Centre
[3] The University of Manchester,Centre for Prognosis Research, School of Primary, Community and Social Care
[4] Keele University,Julius Center for Health Sciences and Primary Care, University Medical Center Utrecht
[5] Utrecht University,Centre for Statistics in Medicine, Nuffield Department of Orthopaedics, Rheumatology and Musculoskeletal Sciences
[6] University of Oxford,NIHR Manchester Biomedical Research Centre
[7] The University of Manchester,undefined
[8] Manchester Academic Health Science Centre,undefined
关键词
Clinical prediction models; Dynamic model; Validation; Model updating; Model development; Learning health system;
D O I
10.1186/s41512-020-00090-3
中图分类号
学科分类号
摘要
Clinical prediction models (CPMs) have become fundamental for risk stratification across healthcare. The CPM pipeline (development, validation, deployment, and impact assessment) is commonly viewed as a one-time activity, with model updating rarely considered and done in a somewhat ad hoc manner. This fails to address the fact that the performance of a CPM worsens over time as natural changes in populations and care pathways occur. CPMs need constant surveillance to maintain adequate predictive performance. Rather than reactively updating a developed CPM once evidence of deteriorated performance accumulates, it is possible to proactively adapt CPMs whenever new data becomes available. Approaches for validation then need to be changed accordingly, making validation a continuous rather than a discrete effort. As such, “living” (dynamic) CPMs represent a paradigm shift, where the analytical methods dynamically generate updated versions of a model through time; one then needs to validate the system rather than each subsequent model revision.
引用
收藏
相关论文
共 50 条
  • [31] Time-Aware Explainable Recommendation via Updating Enabled Online Prediction
    Jiang, Tianming
    Zeng, Jiangfeng
    ENTROPY, 2022, 24 (11)
  • [32] Updating a clinical Knowledge-Based Planning prediction model for prostate radiotherapy
    Scaggion, Alessandro
    Fusella, Marco
    Cavinato, Samuele
    Dusi, Francesca
    El Khouzai, Badr
    Germani, Alessandra
    Pivato, Nicola
    Rossato, Marco Andrea
    Roggio, Antonella
    Scott, Anthony
    Sepulcri, Matteo
    Zandona, Roberto
    Paiusco, Marta
    PHYSICA MEDICA-EUROPEAN JOURNAL OF MEDICAL PHYSICS, 2023, 107
  • [33] Dynamic Model Updating and Dynamic Response Prediction Method of RV Reducer Based on Hierarchical Bayesian Inference
    Zhang, Dequan
    Li, Xingao
    Jia, Xinyu
    Ye, Nan
    Han, Xu
    Jixie Gongcheng Xuebao/Journal of Mechanical Engineering, 2024, 60 (11): : 135 - 144
  • [34] Clinical prediction models for serious infections in children: external validation in ambulatory care
    Bos, David A. G.
    De Burghgraeve, Tine
    De Sutter, An
    Buntinx, Frank
    Verbakel, Jan Y.
    BMC MEDICINE, 2023, 21 (01)
  • [35] Models for bacteraemia risk prediction. Clinical implications
    Clemente-Callejo, Carlota
    Julian-Jimenez, Agustin
    Javier Candel, Francisco
    Gonzalez del Castillo, Juan
    REVISTA ESPANOLA DE QUIMIOTERAPIA, 2022, 35 : 89 - 93
  • [36] Adaptation of Clinical Prediction Models for Application in Local Settings
    Kappen, Teus H.
    Vergouwe, Yvonne
    van Klei, Wilton A.
    van Wolfswinkel, Leo
    Kalkman, Cor J.
    Moons, Karel G. M.
    MEDICAL DECISION MAKING, 2012, 32 (03) : E1 - E10
  • [37] Approaches for Dealing with Seasonality in Clinical Prediction Models for Infections
    Canovas-Segura, Bernardo
    Morales, Antonio
    Juarez, Jose M.
    Campos, Manuel
    APPLIED SCIENCES-BASEL, 2023, 13 (14):
  • [38] Clinical prediction models for serious infections in children: external validation in ambulatory care
    David A. G. Bos
    Tine De Burghgraeve
    An De Sutter
    Frank Buntinx
    Jan Y. Verbakel
    BMC Medicine, 21
  • [39] Using marginal structural models to adjust for treatment drop-in when developing clinical prediction models
    Sperrin, Matthew
    Martin, Glen P.
    Pate, Alexander
    Van Staa, Tjeerd
    Peek, Niels
    Buchan, Iain
    STATISTICS IN MEDICINE, 2018, 37 (28) : 4142 - 4154
  • [40] Clinical prediction models in children that use repeated measurements with time-varying covariates: a scoping review
    Fung, Alastair
    Loutet, Miranda
    Roth, Daniel E.
    Wong, Elliott
    Gill, Peter J.
    Morris, Shaun K.
    Beyene, Joseph
    ACADEMIC PEDIATRICS, 2024, 24 (05) : 728 - 740