Literature DB >> 28598890

Comparing Population-based Risk-stratification Model Performance Using Demographic, Diagnosis and Medication Data Extracted From Outpatient Electronic Health Records Versus Administrative Claims.

Hadi Kharrazi1, Winnie Chi, Hsien-Yen Chang, Thomas M Richards, Jason M Gallagher, Susan M Knudson, Jonathan P Weiner.   

Abstract

BACKGROUND: There is an increasing demand for electronic health record (EHR)-based risk stratification and predictive modeling tools at the population level. This trend is partly due to increased value-based payment policies and the increasing availability of EHRs at the provider level. Risk stratification models, however, have been traditionally derived from claims or encounter systems. This study evaluates the challenges and opportunities of using EHR data instead of or in addition to administrative claims for risk stratification.
METHODS: This study used the structured EHR records and administrative claims of 85,581 patients receiving outpatient care at a large integrated provider system. Common data elements for risk stratification (ie, age, sex, diagnosis, and medication) were extracted from outpatient EHR records and administrative claims. The performance of a validated risk-stratification model was assessed using data extracted from claims alone, EHR alone, and claims and EHR combined.
RESULTS: EHR-derived metrics overlapped considerably with administrative claims (eg, number of chronic conditions). The accuracy of the model, when using EHR data alone, was acceptable with an area under the curve of ∼0.81 for hospitalization and ∼0.85 for identifying top 1% utilizers using the concurrent model. However, when using EHR data alone, the predictive model explained a lower amount of variation in utilization-based outcomes compared with administrative claims. DISCUSSION: The results show a promising performance of models predicting cost and hospitalization using outpatient EHR's diagnosis and medication data. More research is needed to evaluate the benefits of other EHR data types (eg, lab values and vital signs) for risk stratification.

Entities:  

Mesh:

Year:  2017        PMID: 28598890     DOI: 10.1097/MLR.0000000000000754

Source DB:  PubMed          Journal:  Med Care        ISSN: 0025-7079            Impact factor:   2.983


  33 in total

1.  Incomplete Comparisons Between the Predictive Power of Data From Administrative Claims and Electronic Health Records.

Authors:  Gary E Weissman; Michael Harhay
Journal:  Med Care       Date:  2018-02       Impact factor: 2.983

2.  Comparing the Trends of Electronic Health Record Adoption Among Hospitals of the United States and Japan.

Authors:  Takako Kanakubo; Hadi Kharrazi
Journal:  J Med Syst       Date:  2019-06-11       Impact factor: 4.460

3.  Measuring Population Health in a Large Integrated Health System to Guide Goal Setting and Resource Allocation: A Proof of Concept.

Authors:  Elizabeth R Stevens; Qinlian Zhou; Kimberly A Nucifora; Glen B Taksler; Marc N Gourevitch; Matthew C Stiefel; Patricia Kipnis; R Scott Braithwaite
Journal:  Popul Health Manag       Date:  2018-12-04       Impact factor: 2.459

4.  Use of a medication-based risk adjustment index to predict mortality among veterans dually-enrolled in VA and medicare.

Authors:  Thomas R Radomski; Xinhua Zhao; Joseph T Hanlon; Joshua M Thorpe; Carolyn T Thorpe; Jennifer G Naples; Florentina E Sileanu; John P Cashy; Jennifer A Hale; Maria K Mor; Leslie R M Hausmann; Julie M Donohue; Katie J Suda; Kevin T Stroupe; Chester B Good; Michael J Fine; Walid F Gellad
Journal:  Healthc (Amst)       Date:  2019-04-26

5.  Identifying vulnerable older adult populations by contextualizing geriatric syndrome information in clinical notes of electronic health records.

Authors:  Tao Chen; Mark Dredze; Jonathan P Weiner; Hadi Kharrazi
Journal:  J Am Med Inform Assoc       Date:  2019-08-01       Impact factor: 4.497

6.  Predictive modeling of service discontinuation in transitional age youth with recent behavioral health service use.

Authors:  Christopher Bory; Timothy Schmutte; Larry Davidson; Robert Plant
Journal:  Health Serv Res       Date:  2021-08-27       Impact factor: 3.402

7.  Effective resource management using machine learning in medicine: an applied example.

Authors:  Johanna McCord; Vanessa Buchan; Alan Williams; Ann-Marie Mekhail; James Williams
Journal:  BMJ Simul Technol Enhanc Learn       Date:  2018-06-22

8.  Assessing the Impact of Body Mass Index Information on the Performance of Risk Adjustment Models in Predicting Health Care Costs and Utilization.

Authors:  Hadi Kharrazi; Hsien-Yen Chang; Sara E Heins; Jonathan P Weiner; Kimberly A Gudzune
Journal:  Med Care       Date:  2018-12       Impact factor: 2.983

9.  How to Classify Super-Utilizers: A Methodological Review of Super-Utilizer Criteria Applied to the Utah Medicaid Population, 2016-2017.

Authors:  Carl J Grafe; Roberta Z Horth; Nelson Clayton; Angela Dunn; Navina Forsythe
Journal:  Popul Health Manag       Date:  2019-08-19       Impact factor: 2.459

Review 10.  Risk prediction and segmentation models used in the United States for assessing risk in whole populations: a critical literature review with implications for nurses' role in population health management.

Authors:  Alvin D Jeffery; Sharon Hewner; Lisiane Pruinelli; Deborah Lekan; Mikyoung Lee; Grace Gao; Laura Holbrook; Martha Sylvia
Journal:  JAMIA Open       Date:  2019-01-04
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