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Novel Preoperative Risk Stratification Using Digital Phenotyping Applying a Scalable Machine-Learning Approach.
Laferrière-Langlois, Pascal; Imrie, Fergus; Geraldo, Marc-Andre; Wingert, Theodora; Lahrichi, Nadia; van der Schaar, Mihaela; Cannesson, Maxime.
Afiliação
  • Laferrière-Langlois P; From the Department of Anesthesiology and Perioperative Medicine, UCLA David Geffen School of Medicine, Los Angeles, California.
  • Imrie F; Department of Mathematics and Industrial Engineering, Polytechnique Montreal, Montréal, Québec, Canada.
  • Geraldo MA; Maisonneuve-Rosemont Hospital Research Center, Montréal, Québec, Canada.
  • Wingert T; Department of Anesthesiology and Pain Medicine, Maisonneuve-Rosemont Hospital, Centre intégré universitaire de santé et service sociaux de l'Est de L'Ile de Montréal, Montréal, Québec, Canada.
  • Lahrichi N; Department of Electrical and Computer Engineering, University of California in Los Angeles, Los Angeles, California.
  • van der Schaar M; Department of Mathematics and Industrial Engineering, Polytechnique Montreal, Montréal, Québec, Canada.
  • Cannesson M; Maisonneuve-Rosemont Hospital Research Center, Montréal, Québec, Canada.
Anesth Analg ; 2023 Dec 05.
Article em En | MEDLINE | ID: mdl-38051671
ABSTRACT

BACKGROUND:

Classification of perioperative risk is important for patient care, resource allocation, and guiding shared decision-making. Using discriminative features from the electronic health record (EHR), machine-learning algorithms can create digital phenotypes among heterogenous populations, representing distinct patient subpopulations grouped by shared characteristics, from which we can personalize care, anticipate clinical care trajectories, and explore therapies. We hypothesized that digital phenotypes in preoperative settings are associated with postoperative adverse events including in-hospital and 30-day mortality, 30-day surgical redo, intensive care unit (ICU) admission, and hospital length of stay (LOS).

METHODS:

We identified all laminectomies, colectomies, and thoracic surgeries performed over a 9-year period from a large hospital system. Seventy-seven readily extractable preoperative features were first selected from clinical consensus, including demographics, medical history, and lab results. Three surgery-specific datasets were built and split into derivation and validation cohorts using chronological occurrence. Consensus k -means clustering was performed independently on each derivation cohort, from which phenotypes' characteristics were explored. Cluster assignments were used to train a random forest model to assign patient phenotypes in validation cohorts. We reconducted descriptive analyses on validation cohorts to confirm the similarity of patient characteristics with derivation cohorts, and quantified the association of each phenotype with postoperative adverse events by using the area under receiver operating characteristic curve (AUROC). We compared our approach to American Society of Anesthesiologists (ASA) alone and investigated a combination of our phenotypes with the ASA score.

RESULTS:

A total of 7251 patients met inclusion criteria, of which 2770 were held out in a validation dataset based on chronological occurrence. Using segmentation metrics and clinical consensus, 3 distinct phenotypes were created for each surgery. The main features used for segmentation included urgency of the procedure, preoperative LOS, age, and comorbidities. The most relevant characteristics varied for each of the 3 surgeries. Low-risk phenotype alpha was the most common (2039 of 2770, 74%), while high-risk phenotype gamma was the rarest (302 of 2770, 11%). Adverse outcomes progressively increased from phenotypes alpha to gamma, including 30-day mortality (0.3%, 2.1%, and 6.0%, respectively), in-hospital mortality (0.2%, 2.3%, and 7.3%), and prolonged hospital LOS (3.4%, 22.1%, and 25.8%). When combined with the ASA score, digital phenotypes achieved higher AUROC than the ASA score alone (hospital mortality 0.91 vs 0.84; prolonged hospitalization 0.80 vs 0.71).

CONCLUSIONS:

For 3 frequently performed surgeries, we identified 3 digital phenotypes. The typical profiles of each phenotype were described and could be used to anticipate adverse postoperative events.

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2023 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2023 Tipo de documento: Article