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Effect of Predictive Model on ED Physician Assessments of Patient Disposition

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Boston Children's Hospital

Status

Begins enrollment in a year or more

Conditions

Patient Outcome Assessment

Treatments

Diagnostic Test: Baseline model
Diagnostic Test: Fairness-aware model

Study type

Interventional

Funder types

Other

Identifiers

NCT06434220
IRB-P00048537

Details and patient eligibility

About

The goal of this study is to measure the impact of fairness-aware algorithms on physician predictions of ED patient admission. Using an experimentally validated machine learning model tuned for equitable outcomes, the investigators quantify the impact of model recommendations on ED physician assessments of admission risk in a silent, prospective study. The investigators survey ED physicians who are not currently caring for patients using live site data. To quantify the impact of the model on ED physician assessments of admission risk, the investigators collect physician assessments before and after consulting the (original or updated) model prediction.

The investigators measure ED physician adherence to model suggestions, along with the predictive accuracy and equity of downstream patient outcomes. The outcome of this study is an empirical measure of the extent to which fair ML models may influence admission decisions to mitigate health care disparities.

Full description

Specific Aims/Objectives:

  1. Measure the effect of the sharing of a model prediction of admission on an attending physician's assessment of patient disposition within one hour from presentation at a tertiary academic pediatric hospital.
  2. Measure the effect of the sharing of a model prediction from a model tuned for equal subgroup performance on an attending physician's assessment of patient disposition within one hour from presentation at a tertiary academic pediatric hospital.

Background and Significance:

Machine learning (ML) models increasingly provide clinical decision support (CDS) to care teams to help prioritize individuals for specific care based on their predicted health needs and outcomes. AI/ML methods can have a particularly high impact on resource allocation in emergency departments (EDs) across the U.S., which have been described by the Institute for Medicine as "nearing the breaking point" of over-capacity. Unfortunately, models often perform poorly on disinvested subpopulations relative to the population as a whole. As a result, ML models may exacerbate downstream health disparities by under-performing on marginalized patient subpopulations, especially when models are expanded to multiple care centers and or used without subgroup monitoring for long periods of time.

Many prediction models have been developed in recent years to predict patient disposition from the ED, including a prediction tool developed by our group and currently in piloting stages at Boston Children's Hospital, South Shore Hospital, and Children's Hospital of Los-Angeles. Our prediction tool, the Predictor of Patient Placement (POPP) provides an accurate, real-time likelihood of admission based on data available in the electronic health record at the time of the visit. Advance notice of likely admissions can have an important impact on ED waiting and boarding times with the potential to improve flow and patient satisfaction.

To this end, the investigation team has submitted a grant proposal to the National Library of Medicine (NLM) [1R01LM014300 - 01A1] that researches the development and validation of fairness-aware prediction models of patient admission. Aim 2 of this grant studies the effect of these models on ED physician assessments of patient disposition, and corresponds to this protocol. The NLM has indicated its intention to fund this proposal and the investigators are in the process of submitting documents to finalize the award. This component of the study is slated for year 3 of the study.

Preliminary Studies

The investigators conducted a series of initial retrospective studies that established that patient admission could be predicted with machine learning models ahead of time in the BCH ED, progressively during the visit, as well as across other medical centers with good accuracy (AUROC 0.9-0.93).

Next, the investigators found that the accuracy of POPP in predicting admission likelihood added value to the gestalt assessments of ED attending physicians. The positive predictive value for the prediction of admission was 66% for the clinicians, 73% for POPP, and 86% for a hybrid model combining the two.

Finally, the investigators developed methods for post-processing the ED prediction models to make them well-calibrated across patient demographic groups defined by race, sex, and insurance product.

The model predictions are currently used to help with bed coordination, but given their high value, may also improve decision making at the bed-side. With this study, our goal is to now test, in a simulated, safe, and realistic setting, how model recommendations affect the assessments of admission likelihood by ED attending physicians.

Enrollment

10 estimated patients

Sex

All

Ages

18 to 65 years old

Volunteers

Accepts Healthy Volunteers

Inclusion criteria

  • Board certified emergency department attending physicians currently employed by Boston Children's Hospital

Exclusion criteria

  • Physicians are excluded from completely surveys for patients who they are currently caring for

Trial design

Primary purpose

Other

Allocation

Randomized

Interventional model

Sequential Assignment

Masking

Triple Blind

10 participants in 3 patient groups

Physician assessment before intervention
No Intervention group
Description:
No intervention. Physician is surveyed to provide their assessment of patient disposition.
Physician assessment after baseline model intervention
Active Comparator group
Description:
Physician is shown a baseline model recommendation for patient disposition including description of factors driving the model prediction.
Treatment:
Diagnostic Test: Baseline model
Physician assessment after fairness-aware model intervention
Active Comparator group
Description:
Physician is shown a model recommendation form a model tuned for subgroup performance for patient disposition including description of factors driving the model prediction.
Treatment:
Diagnostic Test: Fairness-aware model

Trial contacts and locations

0

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Central trial contact

William La Cava, PhD; Andrew Fine, MD

Data sourced from clinicaltrials.gov

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