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Improving risk assessment in schizophrenia: epidemiological investigation of criminal history factors

Published online by Cambridge University Press:  02 January 2018

Katrina Witt
Affiliation:
Department of Psychiatry, University of Oxford, Warneford Hospital, Oxford, UK
Paul Lichtenstein
Affiliation:
Department of Medical Epidemiology and Biostatistics, Karolinska Institutet, Stockholm, Sweden
Seena Fazel*
Affiliation:
Department of Psychiatry, University of Oxford, Warneford Hospital, Oxford, UK
*
S. Fazel, University of Oxford, Department of Psychiatry, Warneford Hospital, Oxford, OX3 7JX, UK. Email: seena.fazel@psych.ox.ac.uk
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Abstract

Background

Violence risk assessment in schizophrenia relies heavily on criminal history factors.

Aims

To investigate which criminal history factors are most strongly associated with violent crime in schizophrenia.

Method

A total of 13 806 individuals (8891 men and 4915 women) with two or more hospital admissions for schizophrenia were followed up for violent convictions. Multivariate hazard ratios for 15 criminal history factors included in different risk assessment tools were calculated. The incremental predictive validity of these factors was estimated using tests of discrimination, calibration and reclassification.

Results

Over a mean follow-up of 12.0 years, 17.3% of men (n=1535) and 5.7% of women (n=281) were convicted of a violent offence. Criminal history factors most strongly associated with subsequent violence for both men and women were a previous conviction for a violent offence; for assault, illegal threats and/or intimidation; and imprisonment. However, only a previous conviction for a violent offence was associated with incremental predictive validity in both genders following adjustment for young age and comorbid substance use disorder.

Conclusions

Clinical and actuarial approaches to assess violence risk can be improved if included risk factors are tested using multiple measures of performance.

Type
Papers
Copyright
Copyright © Royal College of Psychiatrists, 2015 

Although there is strong evidence that patients with schizophrenia are at increased risk of violence compared with the general population, Reference Fazel, Långström, Hjern, Grann and Lichtenstein1 and current treatment guidelines in both the UK 2 and USA 3 recommend that violence risk should be assessed in all patients, there is uncertainty over the best method to do this. Current approaches rely on a combination of clinical opinion, which some have argued is unreliable, Reference Murray and Thompson4 and structured tools, which have not been validated in patients with schizophrenia Reference Singh, Serper, Reinharth and Fazel5 and have mixed evidence for their predictive accuracy. Reference Fazel, Singh, Doll and Grann6 In clinical practice, regardless of the approach used, criminal history factors are integral to any assessment. Reference Walsh, Buchanan and Fahy7 Consequently all violence risk assessment tools include them and many weight them heavily in deriving risk categories. There is considerable variation, however, in which criminal history items are included and a recent meta-analysis found large differences in their strength of association. Reference Witt, van Dorn and Fazel8 A review of commonly used tools found that 14 different criminal history factors are currently included in existing risk assessment tools. Reference Singh, Serper, Reinharth and Fazel5 Identifying the criminal history factor with the most predictive accuracy may, therefore, improve the assessment of risk. We investigated the strength of association for a number of criminal history risk factors using a longitudinal data-set of 13 806 individuals diagnosed with schizophrenia over a 22 year period. We also investigated which factors incrementally improved risk prediction beyond known risk factors in men and women separately. We separated genders as recent work suggests that the strength of associated for some criminal history risk factors may differ by gender. Reference Hastings, Krishnan, Tangney and Stuewig9,Reference Sturup, Monahan and Kristiansson10 In addition, as many patients will not have a criminal history, we investigated whether family criminal factors were associated with violent crime in those without a criminal history before diagnosis with schizophrenia. Reference Kooyman, Walsh, Stevens, Burns, Tyrer and Tattan11

Method

Participants

Using the ten-digit identification number assigned to all Swedish residents, including migrants, Reference Lunde, Lundeborg, Lettenstrom, Thygesen and Huebner12 several Swedish population-based registries were linked. First, the Swedish Hospital Discharge Register (HDR) was used to identify all people diagnosed with schizophrenia according to either the eighth (1973–1986; code 295), ninth (1987–1996; code 295) or tenth (1997 onwards; code F20) revisions of the International Classification of Disease (ICD). 1315 The HDR is an accurate record of the prevalence of schizophrenia in Sweden as less than 1% of discharge records had missing personal identification numbers between 1988 and 2000. Reference Fazel and Grann16 Additionally, HDR diagnoses demonstrate good concordance when compared with diagnoses made according to DSM-III-R Reference Vares, Ekholm, Sedvall, Hall and Jönsson17 or DSM-IV criteria. Reference Dalman, Broms, Cullberg and Allebeck18Reference Lichtenstein, Bjork, Hultman, Scolnick, Sklar and Sullivan20 As previous research has used two diagnoses to improve diagnostic specificity, Reference Fazel, Långström, Hjern, Grann and Lichtenstein1 we included all individuals with at least two separate discharge diagnoses of schizophrenia between 1 January 1973 and 31 December 2004.

Censoring because of death or emigration was identified from the Cause of Death Register (CoD) and Migration Register respectively. The CoD records information on an individual’s date, location and cause of death (as recorded on their death certificate) according to the ICD. The CDR has been reported to be 99.7% complete. Reference Johansson and Westerling21 The Migration Register records the date an individual emigrates from Sweden, provided they are leaving for a minimum period of 1 year. Reference Miettunen, Suvisaari, Haukka, Isohanni, Tsuang, Tohen and Jones22

Finally, the Multi-Generation Register (MGR) was used to link each participant to their mother and father. As the MGR records the personal identification number of an individual and their parents, 23 it is possible to use the MGR to identify an individual’s mother, father and siblings. By linking this information with the National Crime Register (NCR), information on whether an individual’s mother, father or siblings have been convicted of any offences in Sweden can also be ascertained. The MGR has good coverage: only 16% of individuals have missing information on parents. 24

Statistics Sweden, an independent Government agency, manages the administration of these population registries. This agency merged the registries and assigned each participant an identification number specific to this study. The coding sheet that linked the ten digit identification number to the study identification number was then destroyed to ensure anonymity. Reference Singh, Grann, Lichtenstein, Långström and Fazel25 The Karolinska Institutet Ethics Committee gave approval for the study (number: 2005/174-31/4).

Measures

Violent crime

Data on convictions for violent offences were obtained from the NCR. Coverage of the NCR is complete; only 0.001% of convictions recorded between 1988 and 2000 were missing personal identification numbers. Reference Fazel and Grann16 Violence was determined from conviction data for two reasons. First, criminal cases cannot be resolved without conviction through plea bargaining or by pleading not guilty by reason of insanity in Sweden. Second, conviction data is recorded in the NCR even if the individual is sentenced to a non-custodial sentence, is transferred to a forensic psychiatric institution at sentencing or receives a fine or caution. Reference Fazel, Grann, Carlstrom, Lichtenstein and Långström26 For these reasons the NCR reflects the extent of resolved criminality in Sweden. Reference Fazel, Grann, Carlstrom, Lichtenstein and Långström26

Violent convictions were defined as convictions for homicide, aggravated assault, common assault, any sexual assault (for example rape, sexual coercion and child molestation), aggravated robbery, robbery, kidnapping, arson and illegal threats or intimidation. Attempted offences were also included, where relevant. The decision to include threats and intimidation as violent offences is consistent with work in this area. Reference Fazel, Långström, Hjern, Grann and Lichtenstein1,Reference Fazel and Grann16,Reference Singh, Grann, Lichtenstein, Långström and Fazel25Reference Grann and Fazel28

Criminal history risk factors

Criminal history risk factors were coded from the crime register. In this study we used risk factors identified from a review of the existing literature Reference Witt, van Dorn and Fazel8 and from a systematic review of items included in existing violence risk assessment tools. Reference Singh, Serper, Reinharth and Fazel5 We also investigated other criminal history risk factors that have been used in risk assessment but have not been replicated and are therefore not included in previous reviews (online Tables DS1 and DS2 for men and women, respectively). A full description of the coding used for each criminal history risk factor reported in this study is provided in online Table DS3.

Analyses

As we were concerned with identifying the criminal history risk factors that predict violence risk in those with schizophrenia, for the purposes of the present study, those convicted of a violent offence subsequent to their diagnosis with schizophrenia were considered to be violent offenders. Individuals were therefore followed from the date of second discharge from hospital with a diagnosis of schizophrenia until conviction for a violent offence, death, emigration or end of follow-up (31 December 2004), whichever came first. We excluded periods in prison and forensic psychiatric hospital from time at risk. As almost all prisoners in Sweden are released on parole after serving two-thirds of their sentence Reference Lappi-Seppälä, Tonry, Tonry and Lappi-Seppälä29,Reference van Hofer, Tham, Ruggiero and Ryan30 (for sentences over 1 month’s duration), time spent in custody was calculated adjusting for this. Only 1.8% of the custodial sentences received by this cohort were for 1 month or less.

Cox proportional hazards regression was used to investigate the association between each criminal history risk factor and time until conviction for a violent offence. Cox regression generates hazard ratios (HRs) and accompanying 95% confidence intervals, which represent the ratio of the event rate. The proportional hazards assumption was assessed from the plot of the scaled Schoenfeld residuals. The residuals for all risk factors formed approximately parallel lines, suggesting there were no major violations of the proportionality assumption.

Univariate associations between each criminal history risk factor and violence were calculated separately for men and women. As univariate hazard ratios do not indicate whether a novel risk factor contributes meaningfully to the prediction of risk in clinical practice, Reference Grund and Sabin31 we followed standard guidelines in general medicine for evaluating the incremental validity of novel risk factors, Reference Hlatky, Greenland, Arnett, Ballantyne, Criqui and Elkind32 by investigating their predictive value when added to a baseline model of age and diagnosis with a substance use disorder; based on a lifetime diagnosis on the HDR according to ICD criteria. We chose to adjust for these factors as they have been identified as independently associated with violence risk in prior epidemiological work. Reference Fazel, Långström, Hjern, Grann and Lichtenstein1,Reference Swanson, Swartz, Van Dorn, Elbogen, Wagner and Rosenheck33 Age was measured at the point of the second discharge diagnosis of schizophrenia and was dichotomised as is typically done in risk assessment. We used <32 and ≥32 years as this cut-off best discriminates risk groups in this data-set. Reference Singh, Grann, Lichtenstein, Långström and Fazel25 In a sensitivity analysis, we also modelled age as a linear variable instead of a dichotomous one.

In addition to remaining significantly associated with violence following adjustment for age and comorbid substance use disorder, a clinically important risk factor must also demonstrate an improvement in discrimination, calibration and reclassification. Reference Ioannidis and Tzoulaki34 Consequently, estimates of improvement in discrimination, calibration, and reclassification were calculated for each criminal history risk factor. Discrimination, which refers to the ability of a model to distinguish between those who do and do not have the outcome of interest, was assessed using Harrell’s c-index. Reference Harrell35 The c-index, which ranges from 0.5 to 1, with 1 demonstrating perfect discrimination, assesses the probability that a violent person scores higher than a non-violent person. Reference Maltoni, Scarpi, Pittureri, Martini, Montanari and Amaducci36 The c-index can be interpreted like an area under the curve (AUC), but has the advantage that it allows for censoring and is therefore preferred for survival analyses. Reference Pencina and D'Agostino37 Calibration, which examines goodness of fit, was assessed statistically using the likelihood ratio test. This indicates whether the addition of a new risk factor significantly improves model fit. Additionally, work also suggests that reclassification, may be important when determining the incremental predictive validity of a novel risk marker. Reference Ioannidis and Tzoulaki34 Reclassification indicates whether the addition of a criminal history risk factor improves the proportion of variance explained by the model, and was assessed using change in Royston’s R2. Reference Royston38,Reference Royston and Sauebrei39 Although there are presently no guidelines to determine how these measures should be combined, in other research a risk factor with the best performance would be the one with the an increase of at least 0.5% in the c-index, with adequate calibration. Reference Nguyen and Kattan40 If there were a number of factors that meet these two criteria, we interpreted the risk factor associated with the greatest increase in both the c-index and Royston’s R2 as important for the assessment of violence risk. All analyses were made using Stata version 11 for Windows.

Subgroup analysis

Criminal history risk factors were also assessed separately for men with and without a history of criminal conviction prior to diagnosis with schizophrenia (online Table DS4). Given the small number of events involved, these additional analyses were not conducted for women.

Results

We identified 8891 (64.4%) men and 4915 (35.6%) women diagnosed with schizophrenia between 1973 and 2004 (Table 1). Average age at diagnosis for men was 29.2 years (s.d. = 7.0, range 18–48) and for women 29.0 years (s.d. = 7.4, range 18–49). Average duration of follow-up, excluding years spent in custody, was 11.5 years (s.d. = 8.2, range 0.08–30.8) for men and 12.7 (s.d. = 8.1, range 0.1–30.8) for women.

Table 1 Age and gender of individuals with diagnoses of schizophrenia in a Swedish national cohort (n = 13806)

n (%)
Overall cohort Criminal history prior to diagnosis No criminal history prior to diagnosis
Age, years Total Men Women Men Women Men Women
<20 635 (4.6) 409 (4.6) 226 (4.6) 111 (2.4) 22 (2.3) 298 (6.8) 204 (5.2)
20–24 3 307 (24.0) 2 215 (24.9) 1 092 (22.2) 908 (20.2) 146 (15.3) 1 307 (29.8) 946 (23.9)
25–29 3 731 (27.0) 2 482 (27.9) 1 249 (25.4) 1 242 (27.6) 224 (23.4) 1 240 (28.2) 1 025 (25.9)
<30 6 132 (44.4) 3 784 (42.6) 2 348 (47.8) 2 240 (49.8) 565 (59.0) 1 544 (35.2) 1 783 (45.0)
Total 13 805Footnote a (100.0) 8 890Footnote a (100.0) 4 915 (100.0) 4 501Footnote a (100.0) 957 (100.0) 4 389 (100.0) 3 958 (100.0)

a. Data on age at diagnosis was missing for one person.

Univariate analyses

In men, 1535 (17.3%) were convicted of a violent offence. The most common violent conviction for these men was for illegal threats (45.7% of violent men), followed by common assault (33.7%), sexual offences (6.3%), arson (3.6%), aggravated assault (3.6%), robbery (3.3%), homicide (2.7%) and kidnapping (1.1%). Of the criminal history factors identified from previous reviews as being predictive of risk, a previous conviction for assault, a violent offence and having served a term of imprisonment were all strongly associated with violent crime after discharge (Table 2). We also investigated factors included in some risk assessments, although they have not been emphasised in previous systematic reviews, and found some of these were associated with violent crime, notably: conviction for illegal threats and for weapon use. When age was modelled continuously, there were no material changes to these associations (results not presented).

Table 2 Univariate associations between criminal history risk factors and violent crime in men with schizophreniaFootnote a (n = 8891)

Violent, n Non-violent, n
Risk factors measured prior to diagnosis With
risk factor
Without
risk factor
With
risk factor
Without
risk factor
Hazard ratio
(95% CI)
z P
Conviction for assault 280 1255 522 6834 3.1 (2.7–3.6) 17.1 <0.001
Conviction for a violent offence 509 1026 1102 6254 3.1 (2.8–3.4) 20.5 <0.001
History of imprisonment (juvenile and/or adult) 267 1268 543 6813 2.9 (2.6–3.3) 15.8 <0.001
Conviction for illegal threats and/or intimidation 220 1315 479 6877 2.7 (2.4–3.1) 13.6 <0.001
Conviction for weapon use 119 1416 267 7089 2.5 (2.1–3.1) 9.7 <0.001
Mother convicted of a violent offence 23 1512 41 7313 2.5 (1.7–3.8) 4.4 <0.001
Conviction for a non-violent offence 803 732 2303 5053 2.4 (2.2–2.7) 17.4 <0.001
Most recent conviction for a violent offence 240 1295 631 6725 2.2 (1.9–2.5) 11.1 <0.001
One or more conviction/s under 18 years of age 329 1206 926 6430 2.0 (1.8–2.3) 11.5 <0.001
Parent convicted of a violent offence 115 1420 312 7042 1.9 (1.6–2.3) 6.5 <0.001
Most recent conviction for a non-violent offence 506 1029 1545 5811 1.8 (1.6–2.0) 10.7 <0.001
Father convicted of a violent offence 96 1439 279 7075 1.8 (1.4–2.2) 5.4 <0.001
Conviction for a sexual offence 24 1511 82 7274 1.7 (1.1–2.6) 2.7 <0.01
Age at first conviction for any offenceFootnote b 1.0 (1.0–1.0) 2.5 <0.05
Age at first conviction for a violent offenceFootnote c 1.0 (1.0–1.0) –2.8 <0.01

a. Risk factors ranked in descending order according to hazard ratio (HR) magnitude. For risk factors measured continuously, numbers with and without the risk factor cannot be calculated.

b. Rounding to two decimal places, HR = 1.01, 95% CI 1.00–1.02.

c. Rounding to two decimal places, HR = 0.98, 95% CI 0.96–0.99.

Fewer women were convicted of a violent offence following diagnosis with schizophrenia (n = 281, 5.7%). The most common violent conviction for these women was for threats and intimidation (43.8%), followed by common assault (31.3%), arson (13.9%), aggravated assault (6.0%), homicide (2.5%), robbery (1.1%) and sexual offences (0.7%) and kidnapping (0.7%). Similar risk factors to those found in men were strongly associated with violence in women. A previous conviction for weapon use, however, was more strongly associated with subsequent violence in women (Table 3). As with men, modelling age as a continuous, rather than as a dichotomous, variable did not materially change these associations (results not presented).

Table 3 Univariate associations between criminal history risk factors and violent crime in women with schizophreniaFootnote a (n = 4915)

Violent, n Non-violent, n
Risk factors measured prior to diagnosis With
risk factor
Without
risk factor
With
risk factor
Without
risk factor
Hazard ratio
(95% CI)
z P
Conviction for weapon use 9 272 21 4613 8.7 (4.1–18.6) 5.7 <0.001
Conviction for assault 25 256 67 4567 8.5 (5.6–12.9) 10.0 <0.001
Conviction for a violent offence 54 227 160 4474 8.0 (5.9–10.8) 13.4 <0.001
History of imprisonment (juvenile and/or adult) 9 272 26 4608 7.3 (3.6–14.9) 5.5 <0.001
Most recent conviction for a violent offence 39 242 116 4518 7.1 (5.1–10.1) 11.2 <0.001
Conviction for illegal threats and/or intimidation 18 263 56 4578 6.5 (3.9–10.8) 7.2 <0.001
One or more conviction/s under 18 years of age 29 252 127 4507 4.5 (3.0–6.7) 7.4 <0.001
Conviction for a non-violent offence 94 187 566 4068 4.1 (3.2–5.3) 11.2 <0.001
Mother convicted of a violent offence 4 277 23 4611 3.0 (0.9–9.6) 1.8 0.06
Most recent conviction for a non-violent offence 66 215 486 4148 2.9 (2.2–3.9) 7.7 <0.001
Parent convicted of a violent offence 21 260 187 4447 2.0 (1.3–3.2) 3.1 <0.01
Father convicted of a violent offence 18 263 169 4465 1.9 (1.2–3.2) 2.6 <0.01
Age at first conviction for a violent offenceFootnote b 1.0 (1.0–1.1) 1.1 0.26
Age at first conviction for any offenceFootnote c 1.0 (1.0–1.0) 3.8 <0.001

a. As no females were convicted of a sexual offence, this risk factor could not be included. Risk factors ranked in descending order according to hazard ratio (HR) magnitude. For risk factors measured continuously, numbers with and without the risk factor cannot be calculated.

b. Rounding to two decimal places, HR = 1.02, 95% CI 0.98–1.07.

c. Rounding to two decimal places, HR = 1.03, 95% CI 1.01–1.04.

Subgroup analysis

Of those men with a criminal history prior to diagnosis with schizophrenia (n = 4502, 50.6%), a total of 1051 (23.3%) were convicted of a violent offence during follow-up. The most common conviction was for threats and intimidation (48.0%), followed by common assault (32.4%), sexual offences (5.4%), arson (3.0%), aggravated assault (3.7%), robbery (3.4%), homicide (2.9%) and kidnapping (1.2%). The factors most strongly associated with violence in this group were similar to those for men in the overall cohort (Table DS3).

None of the familial criminal history risk factors were significantly associated with increased violence risk for those men who were not convicted of a violent offence prior to diagnosis with schizophrenia (n = 4389, 49.4%) (results not presented).

Discrimination, calibration, and reclassification analyses

We investigated all the factors for discrimination, calibration and reclassification. This analysed whether they added incremental predictive accuracy to a baseline model of young age (<32 years) and comorbid substance use disorder. We found that a previous conviction for a violent offence is an important risk factor for this population as it was associated with the greatest increase in the c-index and Royston’s R2 , although adjusted hazard ratios were similar to those for some other factors (Tables 4 and 5). For men, the adjusted hazard ratio for previous violent conviction was 2.3 (95% CI 2.1–2.6), resulting in a c-index of 69.4 for the adjusted model including age and comorbid substance use disorder. For women, the adjusted hazard ratio for a previous violent conviction was 5.1 (95% CI 3.7–7.2). When included in a model with age and substance use disorder, this led to a c-index of 69.6. When age was modelled as continuously, similar results were found for both genders (results not presented).

Table 4 Incremental validity of criminal history risk factors in predicting violent crime in men with schizophreniaFootnote a (n = 8891)

Risk factors measured prior to diagnosis Adjusted hazard
ratio (95% CI)
P Harrell’s c-index Likelihood ratio Adjusted Royston’s R 2
% (95% CI) Δ % Δ χ2 P % (95% CI) Δ %
Baseline model: young age + comorbid substance
use disorder
65.2 (63.9–66.6) 18.7 (15.3–22.7)
 + Conviction for violent offence 2.3 (2.1–2.6) <0.001 +4.2 193.1 <0.001 +6.8
 + Conviction for assault 2.2 (1.9–2.6) <0.001 +2.2 114.9 <0.001 +4.1
 + History of imprisonment (juvenile and/or adult) 1.9 (1.6–2.2) <0.001 +1.7 71.9 <0.001 +2.6
 + Conviction for illegal threats and/or intimidation 1.9 (1.7–2.3) <0.001 +1.7 67.3 <0.001 +2.4
 + Mother convicted for a violent offence 1.9 (1.3–3.0) <0.01 +0.2 8.2 <0.01 +1.9
 + Most recent conviction for a violent offence 1.8 (1.6–2.1) <0.001 +2.4 65.0 <0.001 +2.4
 + Conviction for weapon use 1.8 (1.5–2.2) <0.001 +1.0 31.0 <0.001 +1.1
 + Conviction for a non-violent offence 1.7 (1.5–1.9) <0.001 +3.9 87.9 <0.001 +3.2
 + Parent convicted for a violent offence 1.7 (1.4–2.0) <0.001 +0.5 24.0 <0.001 +0.9
 + Father convicted for a violent offence 1.6 (1.3–2.0) <0.001 +0.3 17.2 <0.001 +0.6
 + One or more conviction/s for any offence
under 18 years of age
1.5 (1.3–1.7) <0.001 +1.3 32.7 <0.001 +1.2
 + Conviction for a sexual offence 1.4 (0.9–2.2) 0.13 +0.2 2.4 0.12 +0.1
 + Most recent conviction for a non-violent offence 1.3 (1.2–1.5) <0.001 +2.2 22.5 <0.001 +0.8
Alternate model: young age + comorbid substance
use disorder + conviction for a violent offence
69.5 (68.1–70.8) 25.4 (22.0–31.0)
 + Mother convicted for a violent offence 1.6 (1.0–2.5) <0.05 +0.1 4.5 <0.05 +0.3
 + Conviction for a non-violent offence 1.4 (1.3–1.6) <0.001 +2.1 38.9 <0.001 +1.5
 + History of imprisonment (juvenile and/or adult) 1.4 (1.2–1.6) <0.001 +0.5 18.7 <0.001 +0.8
 + Parent convicted of a violent offence 1.4 (1.2–1.8) <0.001 +0.2 13.1 <0.01 +0.6
 + Father convicted of a violent offence 1.4 (1.1–1.7) <0.01 +0.1 9.4 <0.01 +0.5
 + Most recent conviction for a non-violent offence 1.3 (1.2–1.4) <0.001 +0.9 21.3 <0.001 +0.9
 + One or more conviction/s for any offence
under 18 years of age
1.1 (1.0–1.3) <0.05 +0.4 4.7 <0.05 +0.3

a. As the likelihood ratio test compares nested models, estimates for the baseline risk model alone cannot be calculated. Risk factors are ranked in descending order according to hazard ratio magnitude. Age at first conviction for any offence and age at first conviction for a violent offence were dropped from the baseline mode because of collinearity with young age. Conviction for assault, illegal threats and/or intimidation, weapon use, most recent conviction for a violent offence were dropped from the alternate model because of collinearity with conviction for a violent offence.

Table 5 Incremental validity of criminal risk factors in predicting violent crime in women with schizophrenia (n = 4915)

Risk factors measured prior to diagnosis Adjusted hazard
ratio (95% CI)
P Harrell’s c-index Likelihood ratio Adjusted Royston’s R 2
% (95% CI) Δ % Δ χ2 P % (95% CI) Δ %
Baseline model: young age + comorbid
substance use disorder
64.3 (62.9–65.6) 26.8 (17.6–37.1)
 + Conviction for weapon use 6.7 (3.0–14.9) <0.001 +0.6 18.6 <0.001 +3.2
 + Conviction for a violent offence 5.1 (3.7–7.2) <0.001 +5.3 78.0 <0.001 +13.4
 + Most recent conviction for a violent offence 5.0 (3.4–7.2) <0.001 +3.2 57.4 <0.001 +10.0
 + Conviction for assault 4.9 (3.1–7.8) <0.001 +3.2 37.2 <0.001 +6.5
 + Conviction for illegal threats and/or intimidation 3.6 (2.1–6.3) <0.001 +2.6 19.4 <0.001 +3.3
 + History of imprisonment (juvenile and/or adult) 3.0 (1.4–6.2) <0.01 +2.7 7.3 <0.01 +1.2
 + Conviction for a non-violent offence 2.7 (2.1–3.6) <0.001 +4.9 49.2 <0.001 +8.6
 + One or more conviction/s for any offence
under 18 years of age
2.7 (1.7–4.1) <0.001 +0.1 18.7 <0.001 +3.2
 + Most recent conviction for a non-violent offence 2.0 (1.5–2.7) <0.001 +3.1 20.2 <0.001 +3.5
 + Parent convicted of a violent offence 1.7 (1.1–2.7) <0.05 +0.9 4.7 <0.05 +0.7
 + Father convicted of a violent offence 1.6 (1.0–2.6) 0.07 +0.6 3.1 0.08 +0.4
Alternate model: young age + comorbid substance
use disorder + conviction for a violent offence
69.6 (68.3–70.9) 40.2 (33.6–48.7)
 + Conviction for a non-violent offence 2.1 (1.5–2.8) <0.001 +2.1 22.5 <0.001 +3.4
 + Most recent conviction for a non-violent offence 1.9 (1.4–2.6) <0.001 +1.6 17.3 <0.001 +2.6
 + Parent convicted of a violent offence 1.6 (1.0–2.6) <0.05 +0.2 4.1 <0.05 +0.5
 + One or more conviction/s for any offence
under 18 years of age
1.6 (1.0–2.6) 0.05 +0.1 4.7 <0.05 +0.6
 + History of imprisonment (juvenile and/or adult) 1.3 (0.6–2.8) 0.55 +0.4 0.4 0.51 –0.1

a. As the likelihood ratio test compares nested models, estimates for the baseline risk model alone cannot be calculated. Risk factors ranked in descending order according to hazard ratio magnitude. Age at first conviction for any offence and age at first conviction for a violent offence were dropped from the baseline mode because of collinearity with young age. Conviction for assault, illegal threats and/or intimidation, weapon use, most recent conviction for a violent offence were dropped from the alternate model because of collinearity with conviction for a violent offence.

In a second model (Alternate model 2, Table 4), we investigated the incremental predictive validity of adding the remaining criminal history factors to a model that included young age, comorbid substance use disorder and conviction for a violent offence. For this model, collinear variables were not included, and although adjusted hazard ratios were significant, small increases in both the c-index and Royston’s R2 were observed for most variables. In women (Alternate model 2, Table 5), however, adding a history of a non-violent offence may improve prediction. When age was measured continuously, there was no material difference to these findings (results not presented).

For men with a history of criminal offending prior to diagnosis, a previous conviction for a violent offence was also associated with the largest increase in the c-index (results not presented).

Discussion

Criminal history risk factors are frequently weighted most heavily in the assessment of violence risk. Previous work, however, suggests there is considerable variability in the strength of association for these risk factors in those with psychosis. Reference Witt, van Dorn and Fazel8 In this study, we examined which of these previously identified criminal history factors best predicted conviction for a violent crime in a population cohort of 13 806 individuals with schizophrenia who were followed for an average of 12 years.

This study provides some precision as to the relative strength of different criminal history risk factors in individuals with schizophrenia. Although univariate analyses showed that a number of criminal history risk factors were associated with violent crime in both men and women with schizophrenia, when these were added to a baseline model incorporating young age and comorbid substance use disorder, a history of violent conviction led to the greatest increase in discrimination (which indicates the probability that a violent individual scores higher than a non-violent individual), calibration (which indicates goodness of fit) and reclassification (which can be interpreted as indicating the change in predicted risk for an individual following the addition of a novel risk factor). Reference Lloyd-Jones41

In contrast to expert opinion, Reference Hastings, Krishnan, Tangney and Stuewig9,Reference Sturup, Monahan and Kristiansson10 results of the present study suggest that similar criminal history risk factors are associated with violence in both men and women with schizophrenia. However, the relative strength of these risk factors appears to differ by gender. A conviction for weapon use, for example, was more strongly associated with violence in females (unadjusted HR = 8.7) than in males (unadjusted HR = 2.5). This is likely because of the low base rates of such risk factors in women, and in our study 0.6% of women were convicted for weapon use compared with 4.3% of men.

One implication of our study is that it demonstrates the importance of looking beyond univariate analyses in the construction of risk prediction rules. We have proposed one approach to this, which has been validated in cardiovascular

medicine, Reference Hlatky, Greenland, Arnett, Ballantyne, Criqui and Elkind32 where the incremental predictive accuracy to existing risk models needs to be examined. Thus, we would suggest that future work should investigate whether any novel risk factors add to a baseline risk model that includes young age, comorbid substance misuse and a previous violent conviction. Although all currently used violence risk assessment instruments include criminal history items, Reference Singh, Serper, Reinharth and Fazel5 we found that a number of the items included in these instruments may not contribute to the prediction of violence in schizophrenia. These factors included previous convictions for sexual offences in men and possibly a parental history of violent offending in women.

In a subgroup analysis, we investigated whether the relative strength of these criminal history risk factors varied for men with and without a criminal history prior to diagnosis with schizophrenia. In men with a criminal history, similar risk factors were significantly associated with violence risk. In those without an offending past, no familial criminal history factors were significantly associated with violence risk.

The causes of violence are multifactorial, however, reflecting a number of genetic, historical, environmental and clinical risk factors. Reference Volavka and Citrome42 The assessment of violence risk in this population should be sensitive to the interplay of various background factors, and individual differences in how they have an impact on patients. It is therefore important to highlight that the pathways and mechanisms leading to violence in patients with schizophrenia should not be reduced to one set of risk factors. However, the focus of the current study is the assessment of violence risk rather than its aetiology, and we have investigated which of the heavily weighted criminal history factors should be part of clinical risk assessment.

Strengths and limitations

The use of nationwide data enabled this study to achieve a sample size that is several orders of magnitude larger than previous investigations into criminal history risk factors for violence in individuals with schizophrenia. A novel feature of this approach is that the present study was able to investigate risk factors for violent crime separately for women with schizophrenia. To our knowledge, only one other study of 304 women with psychosis has done this, and found that a history of imprisonment was significantly associated with subsequent violence but, contrary to our findings, that assault was not. Reference Dean, Walsh, Moran, Tyrer, Creed and Byford43

Criminal history risk factors analysed in this study were coded from official register-based data. Therefore, the prevalence of violence in this study may underestimate the true extent of criminality in this population. Reference Fazel, Grann, Carlstrom, Lichtenstein and Långström26 As this was not a study of prevalence but of risk factors, however, the use of relatively hard outcome measures means that findings may be generalisable to non-Scandinavian countries. Furthermore, it also allowed for a larger sample and longer follow-up than a study based on clinical interviews with patients. However, it does mean that more sensitive measures of violence that did not lead to conviction were not included, and their relative contribution to risk prediction needs further research. When more sensitive measures have been used, such as a combination of both self- and collateral-reported violence, previous violence also represented the strongest indicator of subsequent violence risk. Reference Monahan, Steadman, Appelbaum, Robbins, Mulvey and Silver44

Another limitation is that we restricted our cohort to patients admitted to hospital on at least two separate occasions with schizophrenia. This is consistent with previous work using this cohort. Additionally, this decision was made to improve diagnostic specificity. This meant that although all crimes before second diagnosis were included in our analyses, these were, however, classified as criminal history factors. Further work will therefore need to investigate whether our findings are generalisable to first-episode psychosis. We have shown previously that there are similar base rates of violence in those individuals with only one discharge diagnosis for schizophrenia as compared with those with two or more diagnoses, Reference Fazel, Långström, Hjern, Grann and Lichtenstein1 suggesting some generalisablity.

The prevalence of schizophrenia in Sweden is very similar to that reported from other high-income countries according to a large meta-analysis. Reference Saha, Chant, Welham and McGrath45 In addition, the median prevalence rate of the broader category of psychosis at 1.0% has little variation across European countries. Reference Wittchen, Jacobi, Rehm, Gustavsson, Svensson and Jönsson46 Finally, age-adjusted disability-adjusted life years (DALYs) for schizophrenia are very close for Sweden (186), the UK (185) and the USA (186). Reference Mathers, Fat and Boerma47 Sweden also has similar rates of violent crime per head of population compared with most Western European countries, Reference Dolmén48 although it does have a lower rate of homicide than countries with more liberal gun ownership laws such as the USA. Reference Fazel and Grann16 As homicide is rare (accounting for 2% of the violent convictions in our sample), our findings are more relevant to general psychiatry than research focusing on homicide outcomes.

The most common conviction in our cohort was for threats and/or intimidation. This high proportion is not dissimilar to one other study, based on mentally ill offenders convicted of more serious violent offences in England and Wales. Reference Flynn, Rodway, Appleby and Shaw49 Other population studies on the association between violence and schizophrenia have not reported individual offence categories. Reference Fazel, Gulati, Linsell, Geddes and Grann50 Further work on the prevalence of individual violent offence types is therefore required to ascertain the generalisability of this finding to other jurisdictions. Finally, although have been no major changes to the definition for different offences within the Swedish legal system over the previous decade, the precise legal categories will vary by country.

Implications

This study suggests that a conviction for a violent crime prior to diagnosis may be the strongest predictor of subsequent convictions for violence in those with schizophrenia. Clinical assessment should prioritise this factor among the criminal factors investigated, and risk assessment tools should consider incorporating it into their schemes. Novel risk factors for predicting violence in schizophrenia need to consider incremental predictive validity beyond baseline models that include previous violent conviction, young age and comorbid substance misuse.

Funding

S.F. is supported by the Wellcome Trust (095806). P.L. is supported by the Swedish Council for Working Life and Social Research.

Acknowledgements

The authors are grateful to Christine Norby who extracted the data, the late Martin Grann for defining the criminal history variables and Daniel Lunn for statistical advice.

Footnotes

Declaration of interest

None.

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Figure 0

Table 1 Age and gender of individuals with diagnoses of schizophrenia in a Swedish national cohort (n = 13806)

Figure 1

Table 2 Univariate associations between criminal history risk factors and violent crime in men with schizophreniaa (n = 8891)

Figure 2

Table 3 Univariate associations between criminal history risk factors and violent crime in women with schizophreniaa (n = 4915)

Figure 3

Table 4 Incremental validity of criminal history risk factors in predicting violent crime in men with schizophreniaa (n = 8891)

Figure 4

Table 5 Incremental validity of criminal risk factors in predicting violent crime in women with schizophrenia (n = 4915)

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