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Comparison of machine learning and conventional statistical modeling for predicting readmission following acute heart failure hospitalization.
Abdul-Samad, Karem; Ma, Shihao; Austin, David E; Chong, Alice; Wang, Chloe X; Wang, Xuesong; Austin, Peter C; Ross, Heather J; Wang, Bo; Lee, Douglas S.
Affiliation
  • Abdul-Samad K; Ted Rogers Centre for Heart Research, Toronto, Canada; University of Toronto, Toronto, Canada; ICES (formerly Institute for Clinical Evaluative Sciences), Toronto, Canada.
  • Ma S; University of Toronto, Toronto, Canada; Peter Munk Cardiac Centre of University Health Network, Toronto, Canada.
  • Austin DE; University of Waterloo, Kitchener, Ontario, Canada.
  • Chong A; ICES (formerly Institute for Clinical Evaluative Sciences), Toronto, Canada.
  • Wang CX; University of Toronto, Toronto, Canada; Peter Munk Cardiac Centre of University Health Network, Toronto, Canada.
  • Wang X; ICES (formerly Institute for Clinical Evaluative Sciences), Toronto, Canada.
  • Austin PC; ICES (formerly Institute for Clinical Evaluative Sciences), Toronto, Canada.
  • Ross HJ; Ted Rogers Centre for Heart Research, Toronto, Canada; Peter Munk Cardiac Centre of University Health Network, Toronto, Canada.
  • Wang B; University of Toronto, Toronto, Canada; Peter Munk Cardiac Centre of University Health Network, Toronto, Canada.
  • Lee DS; Ted Rogers Centre for Heart Research, Toronto, Canada; University of Toronto, Toronto, Canada; ICES (formerly Institute for Clinical Evaluative Sciences), Toronto, Canada; Peter Munk Cardiac Centre of University Health Network, Toronto, Canada. Electronic address: dlee@ices.on.ca.
Am Heart J ; 277: 93-103, 2024 Nov.
Article in En | MEDLINE | ID: mdl-39094840
ABSTRACT

INTRODUCTION:

Developing accurate models for predicting the risk of 30-day readmission is a major healthcare interest. Evidence suggests that models developed using machine learning (ML) may have better discrimination than conventional statistical models (CSM), but the calibration of such models is unclear.

OBJECTIVES:

To compare models developed using ML with those developed using CSM to predict 30-day readmission for cardiovascular and noncardiovascular causes in HF patients.

METHODS:

We retrospectively enrolled 10,919 patients with HF (> 18 years) discharged alive from a hospital or emergency department (2004-2007) in Ontario, Canada. The study sample was randomly divided into training and validation sets in a 21 ratio. CSMs to predict 30-day readmission were developed using Fine-Gray subdistribution hazards regression (treating death as a competing risk), and the ML algorithm employed random survival forests for competing risks (RSF-CR). Models were evaluated in the validation set using both discrimination and calibration metrics.

RESULTS:

In the validation sample of 3602 patients, RSF-CR (c-statistic=0.620) showed similar discrimination to the Fine-Gray competing risk model (c-statistic=0.621) for 30-day cardiovascular readmission. In contrast, for 30-day noncardiovascular readmission, the Fine-Gray model (c-statistic=0.641) slightly outperformed the RSF-CR model (c-statistic=0.632). For both outcomes, The Fine-Gray model displayed better calibration than RSF-CR using calibration plots of observed vs predicted risks across the deciles of predicted risk.

CONCLUSIONS:

Fine-Gray models had similar discrimination but superior calibration to the RSF-CR model, highlighting the importance of reporting calibration metrics for ML-based prediction models. The discrimination was modest in all readmission prediction models regardless of the methods used.
Subject(s)

Full text: 1 Database: MEDLINE Main subject: Patient Readmission / Models, Statistical / Machine Learning / Heart Failure Limits: Aged / Aged80 / Female / Humans / Male / Middle aged Country/Region as subject: America do norte Language: En Journal: Am Heart J Year: 2024 Type: Article Affiliation country: Canada

Full text: 1 Database: MEDLINE Main subject: Patient Readmission / Models, Statistical / Machine Learning / Heart Failure Limits: Aged / Aged80 / Female / Humans / Male / Middle aged Country/Region as subject: America do norte Language: En Journal: Am Heart J Year: 2024 Type: Article Affiliation country: Canada