Cargando…
A Focus Group Exploration of Automated Case-Finders to Identify High-Risk Heart Failure Patients Within an Urban Safety Net Hospital
BACKGROUND: Leveraging “big data” as a means of informing cost-effective care holds potential in triaging high-risk heart failure (HF) patients for interventions within hospitals seeking to reduce 30-day readmissions. OBJECTIVE: Explore provider’s beliefs and perceptions about using an electronic he...
Autores principales: | , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
AcademyHealth
2016
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5019323/ https://www.ncbi.nlm.nih.gov/pubmed/27683666 http://dx.doi.org/10.13063/2327-9214.1225 |
_version_ | 1782453037265059840 |
---|---|
author | Patterson, Mark E. Miranda, Derick Schuman, Greg Eaton, Christopher Smith, Andrew Silver, Brad |
author_facet | Patterson, Mark E. Miranda, Derick Schuman, Greg Eaton, Christopher Smith, Andrew Silver, Brad |
author_sort | Patterson, Mark E. |
collection | PubMed |
description | BACKGROUND: Leveraging “big data” as a means of informing cost-effective care holds potential in triaging high-risk heart failure (HF) patients for interventions within hospitals seeking to reduce 30-day readmissions. OBJECTIVE: Explore provider’s beliefs and perceptions about using an electronic health record (EHR)-based tool that uses unstructured clinical notes to risk-stratify high-risk heart failure patients. METHODS: Six providers from an inpatient HF clinic within an urban safety net hospital were recruited to participate in a semistructured focus group. A facilitator led a discussion on the feasibility and value of using an EHR tool driven by unstructured clinical notes to help identify high-risk patients. Data collected from transcripts were analyzed using a thematic analysis that facilitated drawing conclusions clustered around categories and themes. RESULTS: From six categories emerged two themes: (1) challenges of finding valid and accurate results, and (2) strategies used to overcome these challenges. Although employing a tool that uses electronic medical record (EMR) unstructured text as the benchmark by which to identify high-risk patients is efficient, choosing appropriate benchmark groups could be challenging given the multiple causes of readmission. Strategies to mitigate these challenges include establishing clear selection criteria to guide benchmark group composition, and quality outcome goals for the hospital. CONCLUSION: Prior to implementing into practice an innovative EMR-based case-finder driven by unstructured clinical notes, providers are advised to do the following: (1) define patient quality outcome goals, (2) establish criteria by which to guide benchmark selection, and (3) verify the tool’s validity and reliability. Achieving consensus on these issues would be necessary for this innovative EHR-based tool to effectively improve clinical decision-making and in turn, decrease readmissions for high-risk patients. |
format | Online Article Text |
id | pubmed-5019323 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2016 |
publisher | AcademyHealth |
record_format | MEDLINE/PubMed |
spelling | pubmed-50193232016-09-28 A Focus Group Exploration of Automated Case-Finders to Identify High-Risk Heart Failure Patients Within an Urban Safety Net Hospital Patterson, Mark E. Miranda, Derick Schuman, Greg Eaton, Christopher Smith, Andrew Silver, Brad EGEMS (Wash DC) Article BACKGROUND: Leveraging “big data” as a means of informing cost-effective care holds potential in triaging high-risk heart failure (HF) patients for interventions within hospitals seeking to reduce 30-day readmissions. OBJECTIVE: Explore provider’s beliefs and perceptions about using an electronic health record (EHR)-based tool that uses unstructured clinical notes to risk-stratify high-risk heart failure patients. METHODS: Six providers from an inpatient HF clinic within an urban safety net hospital were recruited to participate in a semistructured focus group. A facilitator led a discussion on the feasibility and value of using an EHR tool driven by unstructured clinical notes to help identify high-risk patients. Data collected from transcripts were analyzed using a thematic analysis that facilitated drawing conclusions clustered around categories and themes. RESULTS: From six categories emerged two themes: (1) challenges of finding valid and accurate results, and (2) strategies used to overcome these challenges. Although employing a tool that uses electronic medical record (EMR) unstructured text as the benchmark by which to identify high-risk patients is efficient, choosing appropriate benchmark groups could be challenging given the multiple causes of readmission. Strategies to mitigate these challenges include establishing clear selection criteria to guide benchmark group composition, and quality outcome goals for the hospital. CONCLUSION: Prior to implementing into practice an innovative EMR-based case-finder driven by unstructured clinical notes, providers are advised to do the following: (1) define patient quality outcome goals, (2) establish criteria by which to guide benchmark selection, and (3) verify the tool’s validity and reliability. Achieving consensus on these issues would be necessary for this innovative EHR-based tool to effectively improve clinical decision-making and in turn, decrease readmissions for high-risk patients. AcademyHealth 2016-08-11 /pmc/articles/PMC5019323/ /pubmed/27683666 http://dx.doi.org/10.13063/2327-9214.1225 Text en All eGEMs publications are licensed under a Creative Commons Attribution-Noncommercial-No Derivative Works 3.0 License http://creativecommons.org/licenses/by-nc-nd/3.0/ |
spellingShingle | Article Patterson, Mark E. Miranda, Derick Schuman, Greg Eaton, Christopher Smith, Andrew Silver, Brad A Focus Group Exploration of Automated Case-Finders to Identify High-Risk Heart Failure Patients Within an Urban Safety Net Hospital |
title | A Focus Group Exploration of Automated Case-Finders to Identify High-Risk Heart Failure Patients Within an Urban Safety Net Hospital |
title_full | A Focus Group Exploration of Automated Case-Finders to Identify High-Risk Heart Failure Patients Within an Urban Safety Net Hospital |
title_fullStr | A Focus Group Exploration of Automated Case-Finders to Identify High-Risk Heart Failure Patients Within an Urban Safety Net Hospital |
title_full_unstemmed | A Focus Group Exploration of Automated Case-Finders to Identify High-Risk Heart Failure Patients Within an Urban Safety Net Hospital |
title_short | A Focus Group Exploration of Automated Case-Finders to Identify High-Risk Heart Failure Patients Within an Urban Safety Net Hospital |
title_sort | focus group exploration of automated case-finders to identify high-risk heart failure patients within an urban safety net hospital |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5019323/ https://www.ncbi.nlm.nih.gov/pubmed/27683666 http://dx.doi.org/10.13063/2327-9214.1225 |
work_keys_str_mv | AT pattersonmarke afocusgroupexplorationofautomatedcasefinderstoidentifyhighriskheartfailurepatientswithinanurbansafetynethospital AT mirandaderick afocusgroupexplorationofautomatedcasefinderstoidentifyhighriskheartfailurepatientswithinanurbansafetynethospital AT schumangreg afocusgroupexplorationofautomatedcasefinderstoidentifyhighriskheartfailurepatientswithinanurbansafetynethospital AT eatonchristopher afocusgroupexplorationofautomatedcasefinderstoidentifyhighriskheartfailurepatientswithinanurbansafetynethospital AT smithandrew afocusgroupexplorationofautomatedcasefinderstoidentifyhighriskheartfailurepatientswithinanurbansafetynethospital AT silverbrad afocusgroupexplorationofautomatedcasefinderstoidentifyhighriskheartfailurepatientswithinanurbansafetynethospital AT pattersonmarke focusgroupexplorationofautomatedcasefinderstoidentifyhighriskheartfailurepatientswithinanurbansafetynethospital AT mirandaderick focusgroupexplorationofautomatedcasefinderstoidentifyhighriskheartfailurepatientswithinanurbansafetynethospital AT schumangreg focusgroupexplorationofautomatedcasefinderstoidentifyhighriskheartfailurepatientswithinanurbansafetynethospital AT eatonchristopher focusgroupexplorationofautomatedcasefinderstoidentifyhighriskheartfailurepatientswithinanurbansafetynethospital AT smithandrew focusgroupexplorationofautomatedcasefinderstoidentifyhighriskheartfailurepatientswithinanurbansafetynethospital AT silverbrad focusgroupexplorationofautomatedcasefinderstoidentifyhighriskheartfailurepatientswithinanurbansafetynethospital |