Deployment and validation of the CLL treatment infection model adjoined to an EHR system

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Standard

Deployment and validation of the CLL treatment infection model adjoined to an EHR system. / Agius, Rudi; Riis-Jensen, Anders C.; Wimmer, Bettina; da Cunha-Bang, Caspar; Murray, Daniel Dawson; Poulsen, Christian Bjorn; Bertelsen, Marianne B.; Schwartz, Berit; Lundgren, Jens Dilling; Langberg, Henning; Niemann, Carsten Utoft.

I: npj Digital Medicine, Bind 7, Nr. 1, 147, 2024.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Agius, R, Riis-Jensen, AC, Wimmer, B, da Cunha-Bang, C, Murray, DD, Poulsen, CB, Bertelsen, MB, Schwartz, B, Lundgren, JD, Langberg, H & Niemann, CU 2024, 'Deployment and validation of the CLL treatment infection model adjoined to an EHR system', npj Digital Medicine, bind 7, nr. 1, 147. https://doi.org/10.1038/s41746-024-01132-6

APA

Agius, R., Riis-Jensen, A. C., Wimmer, B., da Cunha-Bang, C., Murray, D. D., Poulsen, C. B., Bertelsen, M. B., Schwartz, B., Lundgren, J. D., Langberg, H., & Niemann, C. U. (2024). Deployment and validation of the CLL treatment infection model adjoined to an EHR system. npj Digital Medicine, 7(1), [147]. https://doi.org/10.1038/s41746-024-01132-6

Vancouver

Agius R, Riis-Jensen AC, Wimmer B, da Cunha-Bang C, Murray DD, Poulsen CB o.a. Deployment and validation of the CLL treatment infection model adjoined to an EHR system. npj Digital Medicine. 2024;7(1). 147. https://doi.org/10.1038/s41746-024-01132-6

Author

Agius, Rudi ; Riis-Jensen, Anders C. ; Wimmer, Bettina ; da Cunha-Bang, Caspar ; Murray, Daniel Dawson ; Poulsen, Christian Bjorn ; Bertelsen, Marianne B. ; Schwartz, Berit ; Lundgren, Jens Dilling ; Langberg, Henning ; Niemann, Carsten Utoft. / Deployment and validation of the CLL treatment infection model adjoined to an EHR system. I: npj Digital Medicine. 2024 ; Bind 7, Nr. 1.

Bibtex

@article{66f8da7a70f142848b483b8b206c26bb,
title = "Deployment and validation of the CLL treatment infection model adjoined to an EHR system",
abstract = "Research algorithms are seldom externally validated or integrated into clinical practice, leaving unknown challenges in deployment. In such efforts, one needs to address challenges related to data harmonization, the performance of an algorithm in unforeseen missingness, automation and monitoring of predictions, and legal frameworks. We here describe the deployment of a high-dimensional data-driven decision support model into an EHR and derive practical guidelines informed by this deployment that includes the necessary processes, stakeholders and design requirements for a successful deployment. For this, we describe our deployment of the chronic lymphocytic leukemia (CLL) treatment infection model (CLL-TIM) as a stand-alone platform adjoined to an EPIC-based Danish Electronic Health Record (EHR), with the presentation of personalized predictions in a clinical context. CLL-TIM is an 84-variable data-driven prognostic model utilizing 7-year medical patient records and predicts the 2-year risk composite outcome of infection and/or treatment post-CLL diagnosis. As an independent validation cohort for this deployment, we used a retrospective population-based cohort of patients diagnosed with CLL from 2018 onwards (n = 1480). Unexpectedly high levels of missingness for key CLL-TIM variables were exhibited upon deployment. High dimensionality, with the handling of missingness, and predictive confidence were critical design elements that enabled trustworthy predictions and thus serves as a priority for prognostic models seeking deployment in new EHRs. Our setup for deployment, including automation and monitoring into EHR that meets Medical Device Regulations, may be used as step-by-step guidelines for others aiming at designing and deploying research algorithms into clinical practice.",
author = "Rudi Agius and Riis-Jensen, {Anders C.} and Bettina Wimmer and {da Cunha-Bang}, Caspar and Murray, {Daniel Dawson} and Poulsen, {Christian Bjorn} and Bertelsen, {Marianne B.} and Berit Schwartz and Lundgren, {Jens Dilling} and Henning Langberg and Niemann, {Carsten Utoft}",
note = "Publisher Copyright: {\textcopyright} The Author(s) 2024.",
year = "2024",
doi = "10.1038/s41746-024-01132-6",
language = "English",
volume = "7",
journal = "npj Digital Medicine",
issn = "2398-6352",
publisher = "Nature Publishing Group",
number = "1",

}

RIS

TY - JOUR

T1 - Deployment and validation of the CLL treatment infection model adjoined to an EHR system

AU - Agius, Rudi

AU - Riis-Jensen, Anders C.

AU - Wimmer, Bettina

AU - da Cunha-Bang, Caspar

AU - Murray, Daniel Dawson

AU - Poulsen, Christian Bjorn

AU - Bertelsen, Marianne B.

AU - Schwartz, Berit

AU - Lundgren, Jens Dilling

AU - Langberg, Henning

AU - Niemann, Carsten Utoft

N1 - Publisher Copyright: © The Author(s) 2024.

PY - 2024

Y1 - 2024

N2 - Research algorithms are seldom externally validated or integrated into clinical practice, leaving unknown challenges in deployment. In such efforts, one needs to address challenges related to data harmonization, the performance of an algorithm in unforeseen missingness, automation and monitoring of predictions, and legal frameworks. We here describe the deployment of a high-dimensional data-driven decision support model into an EHR and derive practical guidelines informed by this deployment that includes the necessary processes, stakeholders and design requirements for a successful deployment. For this, we describe our deployment of the chronic lymphocytic leukemia (CLL) treatment infection model (CLL-TIM) as a stand-alone platform adjoined to an EPIC-based Danish Electronic Health Record (EHR), with the presentation of personalized predictions in a clinical context. CLL-TIM is an 84-variable data-driven prognostic model utilizing 7-year medical patient records and predicts the 2-year risk composite outcome of infection and/or treatment post-CLL diagnosis. As an independent validation cohort for this deployment, we used a retrospective population-based cohort of patients diagnosed with CLL from 2018 onwards (n = 1480). Unexpectedly high levels of missingness for key CLL-TIM variables were exhibited upon deployment. High dimensionality, with the handling of missingness, and predictive confidence were critical design elements that enabled trustworthy predictions and thus serves as a priority for prognostic models seeking deployment in new EHRs. Our setup for deployment, including automation and monitoring into EHR that meets Medical Device Regulations, may be used as step-by-step guidelines for others aiming at designing and deploying research algorithms into clinical practice.

AB - Research algorithms are seldom externally validated or integrated into clinical practice, leaving unknown challenges in deployment. In such efforts, one needs to address challenges related to data harmonization, the performance of an algorithm in unforeseen missingness, automation and monitoring of predictions, and legal frameworks. We here describe the deployment of a high-dimensional data-driven decision support model into an EHR and derive practical guidelines informed by this deployment that includes the necessary processes, stakeholders and design requirements for a successful deployment. For this, we describe our deployment of the chronic lymphocytic leukemia (CLL) treatment infection model (CLL-TIM) as a stand-alone platform adjoined to an EPIC-based Danish Electronic Health Record (EHR), with the presentation of personalized predictions in a clinical context. CLL-TIM is an 84-variable data-driven prognostic model utilizing 7-year medical patient records and predicts the 2-year risk composite outcome of infection and/or treatment post-CLL diagnosis. As an independent validation cohort for this deployment, we used a retrospective population-based cohort of patients diagnosed with CLL from 2018 onwards (n = 1480). Unexpectedly high levels of missingness for key CLL-TIM variables were exhibited upon deployment. High dimensionality, with the handling of missingness, and predictive confidence were critical design elements that enabled trustworthy predictions and thus serves as a priority for prognostic models seeking deployment in new EHRs. Our setup for deployment, including automation and monitoring into EHR that meets Medical Device Regulations, may be used as step-by-step guidelines for others aiming at designing and deploying research algorithms into clinical practice.

U2 - 10.1038/s41746-024-01132-6

DO - 10.1038/s41746-024-01132-6

M3 - Journal article

AN - SCOPUS:85195504620

VL - 7

JO - npj Digital Medicine

JF - npj Digital Medicine

SN - 2398-6352

IS - 1

M1 - 147

ER -

ID: 395073517