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A Neurology Advanced Referral Management System (NARMS) Reduces Face-to-Face Consultations By Over Sixty Percent
Ulster Med J ; 92(1):19-23, 2023.
Article in English | PubMed Central | ID: covidwho-2233146
ABSTRACT

Background:

The COVID-19 pandemic has made neurology clinic waiting times longer. To prevent a build-up of patients waiting, we introduced a neurology advanced referral management system (NARMS) to deal with new referrals from GPs, using advice, investigations, or the telephone, as alternatives to face-to-face (FF) assessment.

Methods:

For six months, electronic referrals from GPs were triaged to the above categories. We recorded the numbers in each category, patient satisfaction, inter-consultant triage variation, re-referrals, and calculated CO2 emissions.

Results:

There were 573 referrals. Triage destinations were advice 33%, investigations 27%, telephone 17%, and FF 33%. Of patients referred for MRI, 95% were happy not to be seen if their investigation was normal. Less-experienced consultants triaged 20% and 30% respectively, to advice or investigations, compared with 40% by a triage-experienced neurologist. Four percent were re-referred. Numbers on the waiting list did not increase. CO2 emissions were reduced by 50%.

Discussion:

Two thirds of neurological referrals from GPs did not need to be seen FF and 50% were dealt with without the neurologist meeting the patient. Carbon emission was halved. This system should be employed more, with FF examination reserved for those patients who need a neurological examination for diagnosis and management.
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Collection: Databases of international organizations Database: PubMed Central Type of study: Qualitative research Language: English Journal: Ulster Med J Year: 2023 Document Type: Article

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Collection: Databases of international organizations Database: PubMed Central Type of study: Qualitative research Language: English Journal: Ulster Med J Year: 2023 Document Type: Article