Literature DB >> 35143823

Framework for Integrating Equity Into Machine Learning Models: A Case Study.

Juan C Rojas1, John Fahrenbach2, Sonya Makhni3, Scott C Cook4, James S Williams2, Craig A Umscheid3, Marshall H Chin3.   

Abstract

Predictive analytic models leveraging machine learning methods increasingly have become vital to health care organizations hoping to improve clinical outcomes and the efficiency of care delivery for all patients. Unfortunately, predictive models could harm populations that have experienced interpersonal, institutional, and structural biases. Models learn from historically collected data that could be biased. In addition, bias impacts a model's development, application, and interpretation. We present a strategy to evaluate for and mitigate biases in machine learning models that potentially could create harm. We recommend analyzing for disparities between less and more socially advantaged populations across model performance metrics (eg, accuracy, positive predictive value), patient outcomes, and resource allocation and then identify root causes of the disparities (eg, biased data, interpretation) and brainstorm solutions to address the disparities. This strategy follows the lifecycle of machine learning models in health care, namely, identifying the clinical problem, model design, data collection, model training, model validation, model deployment, and monitoring after deployment. To illustrate this approach, we use a hypothetical case of a health system developing and deploying a machine learning model to predict the risk of mortality in 6 months for patients admitted to the hospital to target a hospital's delivery of palliative care services to those with the highest mortality risk. The core ethical concepts of equity and transparency guide our proposed framework to help ensure the safe and effective use of predictive algorithms in health care to help everyone achieve their best possible health.
Copyright © 2022 American College of Chest Physicians. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  bias; disparities; equity; framework; machine learning

Mesh:

Year:  2022        PMID: 35143823      PMCID: PMC9424327          DOI: 10.1016/j.chest.2022.02.001

Source DB:  PubMed          Journal:  Chest        ISSN: 0012-3692            Impact factor:   10.262


  21 in total

1.  Ensuring Fairness in Machine Learning to Advance Health Equity.

Authors:  Alvin Rajkomar; Michaela Hardt; Michael D Howell; Greg Corrado; Marshall H Chin
Journal:  Ann Intern Med       Date:  2018-12-04       Impact factor: 25.391

2.  Making Policy on Augmented Intelligence in Health Care.

Authors:  Elliott Crigger; Christopher Khoury
Journal:  AMA J Ethics       Date:  2019-02-01

3.  Deep Learning-A Technology With the Potential to Transform Health Care.

Authors:  Geoffrey Hinton
Journal:  JAMA       Date:  2018-09-18       Impact factor: 56.272

4.  Cost and utilization outcomes of patients receiving hospital-based palliative care consultation.

Authors:  Joan D Penrod; Partha Deb; Carol Luhrs; Cornelia Dellenbaugh; Carolyn W Zhu; Tsivia Hochman; Matthew L Maciejewski; Evelyn Granieri; R Sean Morrison
Journal:  J Palliat Med       Date:  2006-08       Impact factor: 2.947

5.  Critical Theory, Culture Change, and Achieving Health Equity in Health Care Settings.

Authors:  Jelena Todic; Scott C Cook; Sivan Spitzer-Shohat; James S Williams; Brenda A Battle; Joel Jackson; Marshall H Chin
Journal:  Acad Med       Date:  2022-06-23       Impact factor: 7.840

6.  Accuracy and completeness of mortality data in the Department of Veterans Affairs.

Authors:  Min-Woong Sohn; Noreen Arnold; Charles Maynard; Denise M Hynes
Journal:  Popul Health Metr       Date:  2006-04-10

7.  Medical big data: promise and challenges.

Authors:  Choong Ho Lee; Hyung-Jin Yoon
Journal:  Kidney Res Clin Pract       Date:  2017-03-31

8.  Predicting 30-days mortality for MIMIC-III patients with sepsis-3: a machine learning approach using XGboost.

Authors:  Nianzong Hou; Mingzhe Li; Lu He; Bing Xie; Lin Wang; Rumin Zhang; Yong Yu; Xiaodong Sun; Zhengsheng Pan; Kai Wang
Journal:  J Transl Med       Date:  2020-12-07       Impact factor: 5.531

Review 9.  Eliminating Explicit and Implicit Biases in Health Care: Evidence and Research Needs.

Authors:  Monica B Vela; Amarachi I Erondu; Nichole A Smith; Monica E Peek; James N Woodruff; Marshall H Chin
Journal:  Annu Rev Public Health       Date:  2022-01-12       Impact factor: 21.870

10.  Machine Learning Approaches to Predict 6-Month Mortality Among Patients With Cancer.

Authors:  Ravi B Parikh; Christopher Manz; Corey Chivers; Susan Harkness Regli; Jennifer Braun; Michael E Draugelis; Lynn M Schuchter; Lawrence N Shulman; Amol S Navathe; Mitesh S Patel; Nina R O'Connor
Journal:  JAMA Netw Open       Date:  2019-10-02
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  1 in total

1.  A bias evaluation checklist for predictive models and its pilot application for 30-day hospital readmission models.

Authors:  H Echo Wang; Matthew Landers; Roy Adams; Adarsh Subbaswamy; Hadi Kharrazi; Darrell J Gaskin; Suchi Saria
Journal:  J Am Med Inform Assoc       Date:  2022-07-12       Impact factor: 7.942

  1 in total

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