Predicting emergency department visits and hospitalizations for patients with heart failure in home healthcare using a time series risk model

Author:

Chae Sena1ORCID,Davoudi Anahita2ORCID,Song Jiyoun3ORCID,Evans Lauren2ORCID,Hobensack Mollie3ORCID,Bowles Kathryn H24ORCID,McDonald Margaret V2ORCID,Barrón Yolanda2ORCID,Rossetti Sarah Collins35ORCID,Cato Kenrick6ORCID,Sridharan Sridevi2ORCID,Topaz Maxim237ORCID

Affiliation:

1. College of Nursing, The University of Iowa , Iowa City, Iowa, USA

2. Center for Home Care Policy & Research, VNS Health , New York, New York, USA

3. Columbia University School of Nursing , New York City, New York, USA

4. Department of Biobehavioral Health Sciences, University of Pennsylvania School of Nursing , Philadelphia, Pennsylvania, USA

5. Department of Biomedical Informatics, Columbia University , New York City, New York, USA

6. Department of Family and Community Health, University of Pennsylvania School of Nursing , Philadelphia, Pennsylvania, USA

7. Data Science Institute, Columbia University , New York City, New York, USA

Abstract

Abstract Objectives Little is known about proactive risk assessment concerning emergency department (ED) visits and hospitalizations in patients with heart failure (HF) who receive home healthcare (HHC) services. This study developed a time series risk model for predicting ED visits and hospitalizations in patients with HF using longitudinal electronic health record data. We also explored which data sources yield the best-performing models over various time windows. Materials and Methods We used data collected from 9362 patients from a large HHC agency. We iteratively developed risk models using both structured (eg, standard assessment tools, vital signs, visit characteristics) and unstructured data (eg, clinical notes). Seven specific sets of variables included: (1) the Outcome and Assessment Information Set, (2) vital signs, (3) visit characteristics, (4) rule-based natural language processing-derived variables, (5) term frequency-inverse document frequency variables, (6) Bio-Clinical Bidirectional Encoder Representations from Transformers variables, and (7) topic modeling. Risk models were developed for 18 time windows (1–15, 30, 45, and 60 days) before an ED visit or hospitalization. Risk prediction performances were compared using recall, precision, accuracy, F1, and area under the receiver operating curve (AUC). Results The best-performing model was built using a combination of all 7 sets of variables and the time window of 4 days before an ED visit or hospitalization (AUC = 0.89 and F1 = 0.69). Discussion and Conclusion This prediction model suggests that HHC clinicians can identify patients with HF at risk for visiting the ED or hospitalization within 4 days before the event, allowing for earlier targeted interventions.

Funder

Agency for Healthcare Research and Quality

National Institute for Nursing Research

Reducing Health Disparities

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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