Abstract 16450: Early Identification of High Risk Cardiac Decompensation Phenotypes via Real-time Electronic Health Record Data

Circulation ◽  
2020 ◽  
Vol 142 (Suppl_3) ◽  
Author(s):  
William Ratliff ◽  
Zachary K Wegermann ◽  
Harvey Shi ◽  
Michael Gao ◽  
mark sendak ◽  
...  

Introduction: Early identification of cardiac decompensation remains critical for improved patient outcomes. Digital phenotypes using real-time electronic health record (EHR) data offer an unbiased method to detect decompensation in at-risk individuals. Methods: Phenotypes designed to detect cardiac decompensation and its sequelae were retrospectively evaluated in 108,697 adult patient hospitalizations at a single center from October 2015-August 2018. The 6 phenotypes included hypotension, end organ dysfunction (EOD), hypoperfusion (concomitant hypotension and EOD), escalating vasoactive medication use (vasoactive meds), respiratory decline, and respiratory intervention. Median time from admission to phenotype development was measured in hours. In-hospital mortality and unanticipated ICU transfers were determined across all phenotypes and phenotype combinations. Results: Prevalence and time to detection varied across all six phenotypes (Table 1), with EOD found most frequently (35.7%) and detected earliest (3.4h, IQR 0.9-26.2h). Among individual phenotypes, patients with hypoperfusion had the highest rates of unanticipated ICU transfer (20.62%) and in-hospital mortality (20.99%). Patients meeting at least one phenotype had a 5.90% ICU transfer rate and 5.04% in-hospital mortality rate, compared to 0.62% mortality and 2.19% ICU transfer rates for patients meeting zero phenotypes. Among the 41 measured phenotype combinations, patients meeting all 6 phenotypes had the highest rates of unanticipated ICU transfer (28.75%) and in-hospital mortality (36.45%). Conclusions: Digital phenotypes of decompensation using real-world EHR data identify patients at higher risk of unexpected ICU transfer and in-hospital mortality at early times points in the hospitalization. Further studies will evaluate if implementation of a digital phenotype detection tool can improve care pathways and outcomes.

2010 ◽  
Vol 125 (6) ◽  
pp. 843-850 ◽  
Author(s):  
Michael S. Calderwood ◽  
Richard Platt ◽  
Xuanlin Hou ◽  
Jessica Malenfant ◽  
Gillian Haney ◽  
...  

2020 ◽  
Vol 17 (4) ◽  
pp. 351-359
Author(s):  
Steven B Zeliadt ◽  
Scott Coggeshall ◽  
Eva Thomas ◽  
Hannah Gelman ◽  
Stephanie L Taylor

Electronic health record data can be used in multiple ways to facilitate real-world pragmatic studies. Electronic health record data can provide detailed information about utilization of treatment options to help identify appropriate comparison groups, access historical clinical characteristics of participants, and facilitate measuring longitudinal outcomes for the treatments being studied. An additional novel use of electronic health record data is to assess and understand referral pathways and other business practices that encourage or discourage patients from using different types of care. We describe an ongoing study utilizing access to real-time electronic health record data about changing patterns of complementary and integrative health services to demonstrate how electronic health record data can provide the foundation for a pragmatic study when randomization is not feasible. Conducting explanatory trials of the value of emerging therapies within a healthcare system poses ethical and pragmatic challenges, such as withholding access to specific services that are becoming widely available to patients. We describe how prospective examination of real-time electronic health record data can be used to construct and understand business practices as potential surrogates for direct randomization through an instrumental variables analytic approach. In this context, an example of a business practice is the internal hiring of acupuncturists who also provide yoga or Tai Chi classes and can offer these classes without additional cost compared to community acupuncturists. Here, the business practice of hiring internal acupuncturists is likely to encourage much higher rates of combined complementary and integrative health use compared to community referrals. We highlight the tradeoff in efficiency of this pragmatic approach and describe use of simulations to estimate the potential sample sizes needed for a variety of instrument strengths. While real-time monitoring of business practices from electronic health records provides insights into the validity of key independence assumptions associated with the instrumental variable approaches, we note that there may be some residual confounding by indication or selection bias and describe how alternative sources of electronic health record data can be used to assess the robustness of instrumental variable assumptions to address these challenges. Finally, we also highlight that while some clinical outcomes can be obtained directly from the electronic health record, such as longitudinal opioid utilization and pain intensity levels for the study of the value of complementary and integrative health, it is often critical to supplement clinical electronic health record–based measures with patient-reported outcomes. The experience of this example in evaluating complementary and integrative health demonstrates the use of electronic health record data in several novel ways that may be of use for designing future pragmatic trials.


2011 ◽  
Vol 4 (0) ◽  
Author(s):  
Michael Klompas ◽  
Chaim Kirby ◽  
Jason McVetta ◽  
Paul Oppedisano ◽  
John Brownstein ◽  
...  

Author(s):  
José Carlos Ferrão ◽  
Mónica Duarte Oliveira ◽  
Daniel Gartner ◽  
Filipe Janela ◽  
Henrique M. G. Martins

Sign in / Sign up

Export Citation Format

Share Document