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Novel machine learning model to improve performance of an early warning system in hospitalized patients: a retrospective multisite cross-validation study.
Salehinejad, Hojjat; Meehan, Anne M; Rahman, Parvez A; Core, Marcia A; Borah, Bijan J; Caraballo, Pedro J.
Afiliación
  • Salehinejad H; Kern Center for the Science of Health Care Delivery, Mayo Clinic, Rochester, MN, USA.
  • Meehan AM; Department of Artificial Intelligence and Informatics, Mayo Clinic, Rochester, MN, USA.
  • Rahman PA; Department of Medicine, Mayo Clinic, Rochester, MN, USA.
  • Core MA; Kern Center for the Science of Health Care Delivery, Mayo Clinic, Rochester, MN, USA.
  • Borah BJ; Department of Information Technology, Mayo Clinic, Rochester, MN, USA.
  • Caraballo PJ; Kern Center for the Science of Health Care Delivery, Mayo Clinic, Rochester, MN, USA.
EClinicalMedicine ; 66: 102312, 2023 Dec.
Article en En | MEDLINE | ID: mdl-38192596
ABSTRACT

Background:

Threshold-based early warning systems (EWS) are used to predict adverse events (Aes). Machine learning (ML) algorithms that incorporate all EWS scores prior to an event may perform better in hospitalized patients.

Methods:

The deterioration index (DI) is a proprietary EWS. A threshold of DI >60 is used to predict a composite AE all-cause mortality, cardiac arrest, transfer to intensive care, and evaluation by the rapid response team in practice. The DI scores were collected for adult patients (≥18 y-o) hospitalized on medical or surgical services during 8-23-2021 to 3-31-2022 from four different Mayo Clinic sites in the United States. A novel ML model was developed and trained on a retrospective cohort of hospital encounters. DI scores were represented in a high-dimensional space using random convolution kernels to facilitate training of a classifier and the area under the receiver operator characteristics curve (AUC) was calculated. Multiple time intervals prior to an AE were analyzed. A leave-one-out cross-validation protocol was used to evaluate performance across separate clinic sites.

Findings:

Three different classifiers were trained on 59,617 encounter-derived DI scores in high-dimensional feature space and the AUCs were compared to two threshold models. All three tested classifiers improved the AUC over the threshold approaches from 0.56 and 0.57 to 0.76, 0.85 and 0.94. Time interval analysis of the top performing classifier showed best accuracy in the hour before an event occurred (AUC 0.91), but prediction held up even in the 12 h before an AE (AUC 0.80 at minus 12 h, 0.81 at minus 9 h, 0.85 at minus 6 h, and 0.88 at minus 3 h before an AE). Multisite cross-validation using leave-one-out approach on data from four different clinical sites showed broad generalization performance of the top performing ML model with AUC of 0.91, 0.91, 0.95, and 0.91.

Interpretation:

A novel ML model that incorporates all the longitudinal DI scores prior to an AE in a hospitalized patient performs better at outcome prediction than the currently used threshold model. The use of clinical data, a generalized ML technique, and successful multisite cross-validation demonstrate the feasibility of our model in clinical implementation.

Funding:

No funding to report.
Palabras clave

Texto completo: 1 Colección: 01-internacional Banco de datos: MEDLINE Tipo de estudio: Guideline / Prognostic_studies / Risk_factors_studies Idioma: En Revista: EClinicalMedicine Año: 2023 Tipo del documento: Article País de afiliación: Estados Unidos

Texto completo: 1 Colección: 01-internacional Banco de datos: MEDLINE Tipo de estudio: Guideline / Prognostic_studies / Risk_factors_studies Idioma: En Revista: EClinicalMedicine Año: 2023 Tipo del documento: Article País de afiliación: Estados Unidos