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Accepted for/Published in: JMIR Medical Informatics

Date Submitted: Sep 8, 2019
Date Accepted: Apr 9, 2020
Date Submitted to PubMed: Jun 1, 2020

The final, peer-reviewed published version of this preprint can be found here:

Precision Health–Enabled Machine Learning to Identify Need for Wraparound Social Services Using Patient- and Population-Level Data Sets: Algorithm Development and Validation

Kasthurirathne SN, Grannis S, Halverson PK, Morea J, Menachemi N, Vest JR

Precision Health–Enabled Machine Learning to Identify Need for Wraparound Social Services Using Patient- and Population-Level Data Sets: Algorithm Development and Validation

JMIR Med Inform 2020;8(7):e16129

DOI: 10.2196/16129

PMID: 32479414

PMCID: 7380999

Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.

Use of Patient and Population-Level Datasets to Identify Need of Wraparound Social Services: A Precision Health Enabled Machine Learning Approach

  • Suranga N Kasthurirathne; 
  • Shaun Grannis; 
  • Paul K Halverson; 
  • Justin Morea; 
  • Nir Menachemi; 
  • Joshua R Vest

ABSTRACT

Background:

Emerging interest in precision health and the increasing availability of varied patient and population-level datasets present considerable potential to enable analytical approaches to identify and mitigate the effects of upstream social issues. These issues are not satisfactorily addressed in typical medical care encounters and thus opportunities to improve health outcomes, reduced costs and improve care coordination are not realized. Further, methodological expertise on the use of varied patient and population-level datasets and machine learning to predict need of upstream services is limited.

Objective:

To leverage a comprehensive range of patient and population-level data measuring clinical, behavioral and social determinants of health (SDoH) to develop decision models capable of identifying patients in need of various “wraparound” social services that mitigate the effects of upstream social needs.

Methods:

We leveraged comprehensive patient and population-level datasets representing an individual’s clinical, behavioral and SDoH to build decision models capable of predicting need for behavioral health, dietitian, social work, or other SDoH service referrals. We also evaluated the value of population-level SDoH datasets in improving machine learning performance.

Results:

Decision models for each wraparound service reported performance measures ranging between 56% and 99%. These results were statistically superior to performance measures reported during a previous machine learning effort using a limited dataset. However, inclusion of additional population-level SDoH did not contribute to any performance improvements in our population of vulnerable patients seeking care at a safety net provider. Optimal decision models were integrated into nine federally qualified health center sites operated by Eskenazi Health of Indianapolis, Indiana. These models are currently in operation at these clinics, where they are used to predict need of wraparound services to patients presenting for primary care.

Conclusions:

Precision health enabled decision models that leverage a wide range of patient and population-level datasets and advanced machine learning methods are capable of predicting need of various wraparound social services with considerable performance measures.


 Citation

Please cite as:

Kasthurirathne SN, Grannis S, Halverson PK, Morea J, Menachemi N, Vest JR

Precision Health–Enabled Machine Learning to Identify Need for Wraparound Social Services Using Patient- and Population-Level Data Sets: Algorithm Development and Validation

JMIR Med Inform 2020;8(7):e16129

DOI: 10.2196/16129

PMID: 32479414

PMCID: 7380999

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