Drug Interactions in Outpatients.

Sponsor
University of Buenos Aires (Other)
Overall Status
Suspended
CT.gov ID
NCT03943524
Collaborator
DrApp S.A. (Other)
200
3
2
40
66.7
1.7

Study Details

Study Description

Brief Summary

Multiple morbidity is increasing, especially in elderly people, with a corresponding increase in polypharmacy and inappropriate prescriptions. According to different evaluations, between 25 and 75% of patients aged 75 or older are exposed to 5 or more drugs. There is increasing evidence that polypharmacy can cause more harm than good, especially in elderly people, due to factors such as drug-drug and drug-disease interactions.

Many strategies were proposed to reduce polypharmacy and inappropriate prescribing, but there is little evidence to show benefit. There is an urgent need to implement effective strategies. The application methodology must be simple so that it does not fail in daily practice.

For the current plan, an electronic medical record, named "DrApp", will be used, which will include a drug interaction program, (Interax-AI), which will automatically indicate the medication prescriptions that involve a risk for the patient.

All outpatient indications followed by physicians using the DrApp electronic history will be registered. The indications will be compared in the 4 months prior to the incorporation of the Interax-AI program with the 4 months after the incorporation of the program. Between both stages a period of 2 weeks will be established in which the data will not be recorded. The minimum & maximum number of patients that will be included in each stage are 100 & 200.

The primary end point is to compare the total number of indications per inpatient, before the availability of the Interax-AI program and after the application of this program.

The objective is to evaluate if the computer program of detection of drug interactions allows to limit the polypharmacy in outpatients.

Condition or Disease Intervention/Treatment Phase
  • Device: Interax-AI
N/A

Detailed Description

Multiple morbidity is increasing, especially in elderly people, with a corresponding increase in polypharmacy and inappropriate prescriptions. According to different evaluations, between 25 and 75% of patients aged 75 or older are exposed to 5 or more drugs. There is increasing evidence that polypharmacy can cause more harm than good, especially in elderly people, due to factors such as drug-drug and drug-disease interactions.

Many strategies were proposed to reduce polypharmacy and inappropriate prescribing, but there is little evidence to show benefit. There is an urgent need to implement effective strategies. The application methodology must be simple so that it does not fail in daily practice.

For the current plan, an electronic medical record, named "DrApp", will be used, which will include a drug interaction program, (Interax-AI), which will automatically indicate the medication prescriptions that involve a risk for the patient.

All outpatient indications followed by physicians using the DrApp electronic history will be registered. The indications will be compared in the 4 months prior to the incorporation of the Interax-AI program with the 4 months after the incorporation of the program. Between both stages a period of 2 weeks will be established in which the data will not be recorded. The minimum & maximum number of patients that will be included in each stage are 100 & 200.

The primary end point is to compare the total number of indications per inpatient, before the availability of the Interax-AI program and after the application of this program.

The objective is to evaluate if the computer program of detection of drug interactions allows to limit the polypharmacy in outpatients.

Study Design

Study Type:
Interventional
Anticipated Enrollment :
200 participants
Allocation:
Non-Randomized
Intervention Model:
Sequential Assignment
Intervention Model Description:
Allocation: Non-Randomized An electronic medical record, DrApp, will be used, which will include a drug interaction program, Interax-AI, which will automatically indicate the medication prescriptions that involve a risk for the patient. All indications of each outpatient will be registered. The indications will be compared in the 4 months prior to the incorporation of the Interax-AI program with the 4 months after the incorporation of the program. Between both stages a period of 2 weeks will be established in which the data will not be recorded. The minimum number of patients that will be included in each stage is 100 and the maximum 200. Masking: Triple (Participant, Care Provider, Investigator) Primary Purpose: PreventionAllocation: Non-Randomized An electronic medical record, DrApp, will be used, which will include a drug interaction program, Interax-AI, which will automatically indicate the medication prescriptions that involve a risk for the patient. All indications of each outpatient will be registered. The indications will be compared in the 4 months prior to the incorporation of the Interax-AI program with the 4 months after the incorporation of the program. Between both stages a period of 2 weeks will be established in which the data will not be recorded. The minimum number of patients that will be included in each stage is 100 and the maximum 200. Masking: Triple (Participant, Care Provider, Investigator) Primary Purpose: Prevention
Masking:
Quadruple (Participant, Care Provider, Investigator, Outcomes Assessor)
Primary Purpose:
Prevention
Official Title:
Evaluation of a Drug Interactions Software (Interax-AI) in Outpatients.
Actual Study Start Date :
Aug 1, 2019
Actual Primary Completion Date :
Dec 1, 2021
Anticipated Study Completion Date :
Dec 1, 2022

Arms and Interventions

Arm Intervention/Treatment
No Intervention: DrApp Without Interax-AI

There are approximately 100 outpatients in whom the indications were registered through the use of DrApp, before the implementation of the drug interactions detection module.

Experimental: DrApp With Interax-AI

There are approximately 100 outpatients in whom the indications were registered through the use of DrApp, AFTER the implementation of the drug interactions detection module (Interax-AI). Intervention: Device: Medication Interaction System of Dr App (Interax-AI)

Device: Interax-AI
Interax-AI is a drug interactions detection module for the electronic clinical history software DrApp

Outcome Measures

Primary Outcome Measures

  1. Prevalence of polypharmacy cases detected in outpatients of outpatient clinics of doctors using the electronic medical record application DrApp [1 year]

    Through the electronic medical record called DrApp, the quantity of medicines prescribed to each patient is quantified and used for calculation of polypharmacy prevalence in tha basal period (pre-introduction of Interax-AI) and late period (Post introduction of Interax-AI).

Secondary Outcome Measures

  1. Interax-AI associated change in the number of total prescribed drug per patient [1 year]

    Change in total prescribed drug per patient will be calculated as the differene between basal total prescribed drug per patient (Pre-Interax-AI) minus resulting total prescribed drug per patient (Post-Interax-AI)

  2. Number of total drug interactions per patient and subclassification by severity (in post-Interax-AI period). [1 year]

    The addition of the application called Interax-AI, will allow detecting the presence of drug interactions and their severity in the second phase. These will be reported as the total number of interactions reported per patient, and subclassificated into number of mild (no need to take action), moderate (require patient monitoring), and severe (possible contraindication) interactions detected per patient.

  3. Difference between Number of total drug interactions per patient in the local environment with those reported in the literature at the international level. [1 year]

    The difference will be calculated as the number of total drug interactions per patient minus the value (number of drug interaction per patient) reported in the bibliography at international level in similar populations.

Eligibility Criteria

Criteria

Ages Eligible for Study:
18 Years and Older
Sexes Eligible for Study:
All
Accepts Healthy Volunteers:
No
Inclusion Criteria:
  • Outpatients followed in outpatient clinics of doctors using the electronic medical record application DrApp
Exclusion Criteria:
  • Lack of registration of medications used by the patient in the DrApp application

Contacts and Locations

Locations

Site City State Country Postal Code
1 Centro de Vigilancia y Seguridad de Medicamentos Ciudad Autonoma de Buenos Aire Capital Federal Argentina C1121ABG
2 Instituto de Investigaciones Cardiológicas Prof. Dr. Alberto C. Taquini Ciudad Autonoma de Buenos Aire Capital Federal Argentina C1121
3 Hospital de Clínicas José de San Martín Ciudad autónoma de Buenos Aires Capital Federal Argentina 1121

Sponsors and Collaborators

  • University of Buenos Aires
  • DrApp S.A.

Investigators

None specified.

Study Documents (Full-Text)

None provided.

More Information

Publications

None provided.
Responsible Party:
Guillermo Alberto Keller, Head of Pharmacovigilance Program, University of Buenos Aires
ClinicalTrials.gov Identifier:
NCT03943524
Other Study ID Numbers:
  • RB-002
First Posted:
May 9, 2019
Last Update Posted:
May 25, 2022
Last Verified:
May 1, 2022
Individual Participant Data (IPD) Sharing Statement:
Yes
Plan to Share IPD:
Yes
Studies a U.S. FDA-regulated Drug Product:
No
Studies a U.S. FDA-regulated Device Product:
No
Keywords provided by Guillermo Alberto Keller, Head of Pharmacovigilance Program, University of Buenos Aires
Additional relevant MeSH terms:

Study Results

No Results Posted as of May 25, 2022