Literature DB >> 24657098

The "Prediction of Alcohol Withdrawal Severity Scale" (PAWSS): systematic literature review and pilot study of a new scale for the prediction of complicated alcohol withdrawal syndrome.

José R Maldonado1, Yelizaveta Sher2, Judith F Ashouri3, Kelsey Hills-Evans4, Heavenly Swendsen5, Sermsak Lolak6, Anne Catherine Miller7.   

Abstract

BACKGROUND: To date, no screening tools for alcohol withdrawal syndromes (AWS) have been validated in the medically ill. Although several tools quantify the severity of AWS (e.g., Clinical Institute Withdrawal Assessment for Alcohol [CIWA]), none identify subjects at risk of AWS, thus missing the opportunity for timely prophylaxis. Moreover, there are no validated tools for the prediction of complicated (i.e., moderate to severe) AWS in the medically ill.
OBJECTIVES: Our goals were (1) to conduct a systematic review of the published literature on AWS to identify clinical factors associated with the development of AWS, (2) to use the identified factors to develop a tool for the prediction of alcohol withdrawal among patients at risk, and (3) to conduct a pilot study to assess the validity of the tool.
METHODS: For the creation of the Prediction of Alcohol Withdrawal Severity Scale (PAWSS), we conducted a systematic literature search using PRISMA (preferred reporting items for systematic reviews and meta-analyses) guidelines for clinical factors associated with the development of AWS, using PubMed, PsychInfo, MEDLINE, and Cochrane Databases. Eligibility criteria included: (i) manuscripts dealing with human subjects, age 18 years or older, (ii) manuscripts directly addressing descriptions of AWS or its predisposing factors, including case reports, naturalistic case descriptions, and all types of clinical trials (e.g., randomized, single-blind, or open label studies), (iii) manuscripts describing characteristics of alcohol use disorder (AUD), and (iv) manuscripts dealing with animal data (which were considered only if they directly dealt with variables described in humans). Obtained data were used to develop the Prediction of Alcohol Withdrawal Severity Scale, in order to assist in the identification of patients at risk for complicated AWS. A pilot study was conducted to assess the new tool's psychometric qualities on patients admitted to a general inpatient medicine unit over a 2-week period, who agreed to participate in the study. Blind to PAWSS results, a separate group of researchers retrospectively examined the medical records for evidence of AWS.
RESULTS: The search produced 2802 articles describing factors potentially associated with increased risk for AWS, increased severity of withdrawal symptoms, and potential characteristics differentiating subjects with various forms of AWS. Of these, 446 articles met inclusion criteria and underwent further scrutiny, yielding a total of 233 unique articles describing factors predictive of AWS. A total of 10 items were identified as correlated with complicated AWS (i.e., withdrawal hallucinosis, withdrawal-related seizures, and delirium tremens) and used to construct the PAWSS. During the pilot study, a total of 68 subjects underwent evaluation with PAWSS. In this pilot sample the sensitivity, specificity, and positive and negative predictive values of PAWSS were 100%, using the threshold score of 4. DISCUSSION: The results of the literature search identified 10 items which may be correlated with risk for complicated AWS. These items were assembled into a tool to assist in the identification of patients at risk: PAWSS. The results of this pilot study suggest that PAWSS may be useful in identifying risk of complicated AWS in medically ill, hospitalized individuals. PAWSS is the first validated tool for the prediction of severe AWS in the medically ill and its use may aid in the early identification of patients at risk for complicated AWS, allowing for prophylaxis against AWS before severe alcohol withdrawal syndromes develop.
Copyright © 2014 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Alcohol withdrawal; Alcohol withdrawal seizures; Alcohol withdrawal syndrome; Blackouts; DT; Delirium tremens; Kindling; PAWSS; Prediction; Prevention; Severe alcohol withdrawal syndrome

Mesh:

Substances:

Year:  2014        PMID: 24657098     DOI: 10.1016/j.alcohol.2014.01.004

Source DB:  PubMed          Journal:  Alcohol        ISSN: 0741-8329            Impact factor:   2.405


  15 in total

Review 1.  Identification and management of alcohol withdrawal syndrome.

Authors:  Antonio Mirijello; Cristina D'Angelo; Anna Ferrulli; Gabriele Vassallo; Mariangela Antonelli; Fabio Caputo; Lorenzo Leggio; Antonio Gasbarrini; Giovanni Addolorato
Journal:  Drugs       Date:  2015-03       Impact factor: 9.546

2.  Impact of Gabapentin Adjunct use with Benzodiazepines for the Treatment of Alcohol Withdrawal in a Psychiatric Hospital.

Authors:  Nina Vadiei; Tawny L Smith; Amy E Walton; Kimberly L Kjome
Journal:  Psychopharmacol Bull       Date:  2019-02-15

3.  Activity of hippocampal adult-born neurons regulates alcohol withdrawal seizures.

Authors:  Daehoon Lee; Balu Krishnan; Hai Zhang; Hee Ra Park; Eun Jeoung Ro; Yu-Na Jung; Hoonkyo Suh
Journal:  JCI Insight       Date:  2019-10-03

4.  Prevalence and Variation of Clinically Recognized Inpatient Alcohol Withdrawal Syndrome in the Veterans Health Administration.

Authors:  Tessa L Steel; Carol A Malte; Katharine A Bradley; Sharukh Lokhandwala; Catherine L Hough; Eric J Hawkins
Journal:  J Addict Med       Date:  2020 Jul/Aug       Impact factor: 3.702

5.  Evaluation of a Phenobarbital-Based Protocol for Severe Alcohol Withdrawal in Critically Ill Patients.

Authors:  Melanie Goodberlet; Kevin Dube; Mary Kovacevic; Paul Szumita; Jeremy DeGrado
Journal:  Hosp Pharm       Date:  2020-06-02

Review 6.  Alcohol Withdrawal Syndrome in Neurocritical Care Unit: Assessment and Treatment Challenges.

Authors:  Salia Farrokh; Christina Roels; Kent A Owusu; Sarah E Nelson; Aaron M Cook
Journal:  Neurocrit Care       Date:  2020-08-13       Impact factor: 3.210

7.  Factors associated with inability to access addiction treatment among people who inject drugs in Vancouver, Canada.

Authors:  Amy Prangnell; Ben Daly-Grafstein; Huiru Dong; Seonaid Nolan; M-J Milloy; Evan Wood; Thomas Kerr; Kanna Hayashi
Journal:  Subst Abuse Treat Prev Policy       Date:  2016-02-25

Review 8.  Alcohol withdrawal syndrome: mechanisms, manifestations, and management.

Authors:  S Jesse; G Bråthen; M Ferrara; M Keindl; E Ben-Menachem; R Tanasescu; E Brodtkorb; M Hillbom; M A Leone; A C Ludolph
Journal:  Acta Neurol Scand       Date:  2016-09-01       Impact factor: 3.209

9.  Acute inferior ST-elevation myocardial infarction due to delirium tremens: a case report.

Authors:  Maxwell D Mirande; George Kubac; Anh T Nguyen
Journal:  J Med Case Rep       Date:  2019-10-09

10.  Characterization of the GHB Withdrawal Syndrome.

Authors:  Casper J H Wolf; Harmen Beurmanjer; Boukje A G Dijkstra; Alexander C Geerlings; Marcia Spoelder; Judith R Homberg; Arnt F A Schellekens
Journal:  J Clin Med       Date:  2021-05-26       Impact factor: 4.241

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