Improving risk management for violence in mental health services: a multimethods approach

Author:

Coid Jeremy W1,Ullrich Simone1,Kallis Constantinos1,Freestone Mark1,Gonzalez Rafael1,Bui Laura1,Igoumenou Artemis1,Constantinou Anthony2,Fenton Norman2,Marsh William2,Yang Min3,DeStavola Bianca4,Hu Junmei5,Shaw Jenny6,Doyle Mike6,Archer-Power Laura6,Davoren Mary1,Osumili Beatrice7,McCrone Paul7,Barrett Katherine8,Hindle David8,Bebbington Paul9

Affiliation:

1. Violence Prevention Research Unit, Wolfson Institute of Preventive Medicine, Queen Mary University of London, London, UK

2. School of Electronic Engineering and Computer Science, Risk and Information Management, Queen Mary University of London, London, UK

3. West China Research Centre for Rural Health Development, Sichuan University, Chengdu, China

4. Centre for Statistical Methodology, London School of Hygiene and Tropical Medicine, London, UK

5. Basic and Forensic Medicine, Sichuan University, Chengdu, China

6. Institute of Brain Behaviour and Mental Health, University of Manchester, Manchester, UK

7. Health Services and Population Research, Institute of Psychiatry, King’s College London, UK

8. Lay advisor, London, UK

9. Department of Mental Health Sciences, University College London, London, UK

Abstract

BackgroundMental health professionals increasingly carry out risk assessments to prevent future violence by their patients. However, there are problems with accuracy and these assessments do not always translate into successful risk management.ObjectivesOur aim was to improve the accuracy of assessment and identify risk factors that are causal to be targeted by clinicians to ensure good risk management. Our objectives were to investigate key risks at the population level, construct new static and dynamic instruments, test validity and construct new models of risk management using Bayesian networks.Methods and resultsWe utilised existing data sets from two national and commissioned a survey to identify risk factors at the population level. We confirmed that certain mental health factors previously thought to convey risk were important in future assessments and excluded others from subsequent parts of the study. Using a first-episode psychosis cohort, we constructed a risk assessment instrument for men and women and showed important sex differences in pathways to violence. We included a 1-year follow-up of patients discharged from medium secure services and validated a previously developed risk assessment guide, the Medium Security Recidivism Assessment Guide (MSRAG). We found that it is essential to combine ratings from static instruments such as the MSRAG with dynamic risk factors. Static levels of risk have important modifying effects on dynamic risk factors for their effects on violence and we further demonstrated this using a sample of released prisoners to construct risk assessment instruments for violence, robbery, drugs and acquisitive convictions. We constructed a preliminary instrument including dynamic risk measures and validated this in a second large data set of released prisoners. Finally, we incorporated findings from the follow-up of psychiatric patients discharged from medium secure services and two samples of released prisoners to construct Bayesian models to guide clinicians in risk management.ConclusionsRisk factors for violence identified at the population level, including paranoid delusions and anxiety disorder, should be integrated in risk assessments together with established high-risk psychiatric morbidity such as substance misuse and antisocial personality disorder. The incorporation of dynamic factors resulted in improved accuracy, especially when combined in assessments using actuarial measures to obtain levels of risk using static factors. It is important to continue developing dynamic risk and protective measures with the aim of identifying factors that are causally related to violence. Only causal factors should be targeted in violence prevention interventions. Bayesian networks show considerable promise in developing software for clinicians to identify targets for intervention in the field. The Bayesian models developed in this programme are at the prototypical stage and require further programmer development into applications for use on tablets. These should be further tested in the field and then compared with structured professional judgement in a randomised controlled trial in terms of their effectiveness in preventing future violence.FundingThe National Institute for Health Research Programme Grants for Applied Research programme.

Funder

National Institute for Health Research

Publisher

National Institute for Health Research

Subject

Automotive Engineering

Reference468 articles.

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