Electronic Medical Records Clinical Trial
Official title:
Patient Centered Evaluation of Computerized Patient Records System
The VHA is a leader in electronic medical records (EMR) use for patient care. It is believed that EMR use by doctors will improve patient-centeredness of visits, and improve clinical care. The proposed study will determine how doctors should use the EMR during patient consultations. We will also develop a training program to improve doctors ability to communicate with patients while using EMR.
Anticipated Impact on Veterans Healthcare: Health information technology (HIT), including
electronic medical records (EMR) has the potential to improve the quality and safety of
ambulatory care. The VHA is a leader in EMR implementation. It is believed that EMR use by
physicians will improve patient-centeredness of visits, and healthcare outcomes. The
proposed clinical trial addresses the need for rigorous research on EMR use,
patient-centered care, and relevant health outcomes. Both physician-patient communication
and EMR use are cross-cutting clinical issues with broad implications for patient care
within the VHA. Consequently, the proposed project is directly related to the VHA's mission
to use HIT to improve the quality health care for veteran patients.
BACKGROUND/RATIONALE EMRs can potentially improve quality and safety of ambulatory care.
However, little research systematically documents the effect of EMRs on patient-centered
care. Studies of the EMR's effect on patient-provider communication have been observational
and had small sample sizes. Overall, these studies reported varied success regarding
providers integrating the EMR into office visits, and suggest that further research is
needed to evaluate the effectiveness of training providers in patient-centered communication
and EMR use.
OBJECTIVES The PACE aims were to study how EMR use affects patient-provider communication
behaviors, and patient-centered care and related health outcomes; to develop a unique
provider training program tailored to patient-centered EMR use; and to evaluate the effect
of the training intervention on patient-provider communication, patient-centered care, and
provider EMR use.
METHODS
The study used a quasi-experimental (pre-post intervention design) carried out in three
phases:
1. Pre-intervention: A pre-intervention patient-provider visit was conducted for each
patient-provider pair. Visits were video recorded and reviewed for verbal and nonverbal
patient-provider communication. MORAE software was used to record provider-EMR
interaction data, including page views, navigation, and mouse clicks. Data were
collected for related outcomes (patient and provider satisfaction).
2. Training: Findings from pre-intervention data guided development of a multifaceted
provider training intervention promoting patient-centered EMR appropriation. The
training intervention was delivered via a full day training workshop and individual
feedback sessions.
3. Post-intervention: A second round of visits was conducted with the same
patient-provider pairs and similar data were collected as in pre-intervention. Within
group analyses (pre-post) were used to test whether the training intervention resulted
in significant improvements in (a) patient-centered EMR use and (b) related outcomes
(patient and provider satisfaction).
IMPACT PACE findings emphasize the need to address EMR usability by the VHA hi2 (Health
Informatics Initiative) and iEHR team.
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Endpoint Classification: Efficacy Study, Intervention Model: Single Group Assignment, Masking: Open Label, Primary Purpose: Health Services Research
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