Using algorithms to initiate needs-based interventions for people on antipsychotic medication: implementation protocol
IntroductionNon-adherence to antipsychotic medications for individuals with serious mental illness increases risk of relapse and hospitalisation. Real time monitoring of adherence would allow for early intervention. AI2 is a both a personal nudging system and a clinical decision support tool that ap...
Main Authors: | , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
BMJ Publishing Group
2020-07-01
|
Series: | BMJ Health & Care Informatics |
Online Access: | https://informatics.bmj.com/content/27/1/e100084.full |
id |
doaj-18195b907bc145609878147a7bcbc47d |
---|---|
record_format |
Article |
spelling |
doaj-18195b907bc145609878147a7bcbc47d2020-12-14T15:13:52ZengBMJ Publishing GroupBMJ Health & Care Informatics2632-10092020-07-0127110.1136/bmjhci-2019-100084Using algorithms to initiate needs-based interventions for people on antipsychotic medication: implementation protocolLydia Oakey-NeateGeoff SchraderJörg StrobelTarun BastiampillaiYasmin van KasterenNiranjan BidargaddiIntroductionNon-adherence to antipsychotic medications for individuals with serious mental illness increases risk of relapse and hospitalisation. Real time monitoring of adherence would allow for early intervention. AI2 is a both a personal nudging system and a clinical decision support tool that applies machine learning on Medicare prescription and benefits data to raise alerts when patients have discontinued antipsychotic medications without supervision, or when essential routine health checks have not been performed.Methods and analysisWe outline two intervention models using AI2. In the first use-case, the personal nudging system, patients receive text messages when an alert of a missed medication or routine health check is detected by AI2. In the second use-case, as a clinical decision support tool, AI2 generated alerts are presented as flags through a dashboard to the community mental health professionals. Implementation protocols for different scenarios of AI2, along with a mixed-methods evaluation, are planned to identify pragmatic issues necessary to inform a larger randomised control trial, as well as improve the application.Ethics and disseminationThis study protocol has been approved by The Southern Adelaide Clinical Human Research Ethics Committee. The dissemination of this trial will serve to inform further implementation of the AI2 into daily personal and clinical practice.https://informatics.bmj.com/content/27/1/e100084.full |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Lydia Oakey-Neate Geoff Schrader Jörg Strobel Tarun Bastiampillai Yasmin van Kasteren Niranjan Bidargaddi |
spellingShingle |
Lydia Oakey-Neate Geoff Schrader Jörg Strobel Tarun Bastiampillai Yasmin van Kasteren Niranjan Bidargaddi Using algorithms to initiate needs-based interventions for people on antipsychotic medication: implementation protocol BMJ Health & Care Informatics |
author_facet |
Lydia Oakey-Neate Geoff Schrader Jörg Strobel Tarun Bastiampillai Yasmin van Kasteren Niranjan Bidargaddi |
author_sort |
Lydia Oakey-Neate |
title |
Using algorithms to initiate needs-based interventions for people on antipsychotic medication: implementation protocol |
title_short |
Using algorithms to initiate needs-based interventions for people on antipsychotic medication: implementation protocol |
title_full |
Using algorithms to initiate needs-based interventions for people on antipsychotic medication: implementation protocol |
title_fullStr |
Using algorithms to initiate needs-based interventions for people on antipsychotic medication: implementation protocol |
title_full_unstemmed |
Using algorithms to initiate needs-based interventions for people on antipsychotic medication: implementation protocol |
title_sort |
using algorithms to initiate needs-based interventions for people on antipsychotic medication: implementation protocol |
publisher |
BMJ Publishing Group |
series |
BMJ Health & Care Informatics |
issn |
2632-1009 |
publishDate |
2020-07-01 |
description |
IntroductionNon-adherence to antipsychotic medications for individuals with serious mental illness increases risk of relapse and hospitalisation. Real time monitoring of adherence would allow for early intervention. AI2 is a both a personal nudging system and a clinical decision support tool that applies machine learning on Medicare prescription and benefits data to raise alerts when patients have discontinued antipsychotic medications without supervision, or when essential routine health checks have not been performed.Methods and analysisWe outline two intervention models using AI2. In the first use-case, the personal nudging system, patients receive text messages when an alert of a missed medication or routine health check is detected by AI2. In the second use-case, as a clinical decision support tool, AI2 generated alerts are presented as flags through a dashboard to the community mental health professionals. Implementation protocols for different scenarios of AI2, along with a mixed-methods evaluation, are planned to identify pragmatic issues necessary to inform a larger randomised control trial, as well as improve the application.Ethics and disseminationThis study protocol has been approved by The Southern Adelaide Clinical Human Research Ethics Committee. The dissemination of this trial will serve to inform further implementation of the AI2 into daily personal and clinical practice. |
url |
https://informatics.bmj.com/content/27/1/e100084.full |
work_keys_str_mv |
AT lydiaoakeyneate usingalgorithmstoinitiateneedsbasedinterventionsforpeopleonantipsychoticmedicationimplementationprotocol AT geoffschrader usingalgorithmstoinitiateneedsbasedinterventionsforpeopleonantipsychoticmedicationimplementationprotocol AT jorgstrobel usingalgorithmstoinitiateneedsbasedinterventionsforpeopleonantipsychoticmedicationimplementationprotocol AT tarunbastiampillai usingalgorithmstoinitiateneedsbasedinterventionsforpeopleonantipsychoticmedicationimplementationprotocol AT yasminvankasteren usingalgorithmstoinitiateneedsbasedinterventionsforpeopleonantipsychoticmedicationimplementationprotocol AT niranjanbidargaddi usingalgorithmstoinitiateneedsbasedinterventionsforpeopleonantipsychoticmedicationimplementationprotocol |
_version_ |
1724383432606220288 |