The American Psychiatric Association (APA) has updated its Privacy Policy and Terms of Use, including with new information specifically addressed to individuals in the European Economic Area. As described in the Privacy Policy and Terms of Use, this website utilizes cookies, including for the purpose of offering an optimal online experience and services tailored to your preferences.

Please read the entire Privacy Policy and Terms of Use. By closing this message, browsing this website, continuing the navigation, or otherwise continuing to use the APA's websites, you confirm that you understand and accept the terms of the Privacy Policy and Terms of Use, including the utilization of cookies.

×
ArticlesFull Access

Effects of Risk-Based Firearm Seizure Laws in Connecticut and Indiana on Suicide Rates, 1981–2015

Abstract

Objective:

This study evaluated whether risk-based firearm seizure laws in Connecticut and Indiana affect suicide rates.

Methods:

A quasi-experimental design using annual state-level panel data from the 50 states between 1981 and 2015 was used. When analyses controlled for a range of risk factors for population-level suicide rates, the effects of Connecticut and Indiana’s firearm seizure laws on firearm and nonfirearm suicide rates were evaluated by using the synthetic-control methodology and difference-in-place placebo tests. Sensitivity analyses employed regression-based difference-in-differences analyses with randomization inference.

Results:

Indiana’s firearm seizure law was associated with a 7.5% reduction in firearm suicides in the ten years following its enactment, an effect specific to suicides with firearms and larger than that seen in any comparison state by chance alone. Enactment of Connecticut’s law was associated with a 1.6% reduction in firearm suicides immediately after its passage and a 13.7% reduction in firearm suicides in the post–Virginia Tech period, when enforcement of the law substantially increased. Regression-based sensitivity analyses showed that these findings were robust to alternative specifications. Whereas Indiana demonstrated an aggregate decrease in suicides, Connecticut’s estimated reduction in firearm suicides was offset by increased nonfirearm suicides.

Conclusions:

Risk-based firearm seizure laws were associated with reduced population-level firearm suicide rates, and evidence for a replacement effect was mixed.

Noncriminalizing firearm seizure laws are important in the United States, where strong gun rights protections make it difficult to legally prohibit many individuals at risk of injuring themselves or others from possessing firearms. Even when individuals are prohibited by federal law from owning firearms, they may be allowed to keep the guns they have because they live in states without legal mechanisms to remove them. In 1999, Connecticut became the first state to enact firearm seizure legislation following a mass shooting at the state lottery headquarters (1). Indiana followed suit in 2005 after the fatal shooting of a police officer in Indianapolis. Indiana’s law permits warrantless seizure of a person’s firearms if a police officer believes the person has a “mental illness” and is “dangerous,” defined as an imminent or future “risk of personal injury” to self or others (2). Connecticut’s law requires an “independent investigation” by police if they believe that a person poses “a risk of imminent personal injury” to self or others, followed by a warrant request, with several formal checks on the judge’s ability to order the seizure and retention of firearms by law enforcement (1).

Connecticut’s law is thus more stringent, although the “warrant first” requirement is often circumvented in practice (3). There was an eight-year lag after the enactment of Connecticut’s firearm seizure legislation during which time very few guns were seized, but seizure rates increased fivefold following the mass shooting at Virginia Tech on April 16, 2007 (3). By contrast, Indiana’s enactment in 2005 corresponded almost immediately with meaningful levels of enforcement (4,5). Of the 762 individuals exposed to firearm seizures between 1999 and 2013 in Connecticut, 21 committed suicide (six via firearm) (3). In Indiana, 404 people were exposed to firearm seizure in Marion County (Indianapolis) between 2006 and 2013 (5), although outcomes of these cases are unknown.

Four additional states (California, Washington, Oregon, and Florida) have recently passed risk-based firearm seizure laws. Although the specifics of each piece of legislation vary, all of these laws (also called red flag, risk warrant, gun violence restraining order, or extreme risk protection order laws) allow firearm seizures that are time limited, with a level of judicial oversight and due process, and that apply to persons who are not already prohibited from owning guns. To date, 19 other states have proposed such legislation, and federal policies are being considered. However, little information is available regarding the effect of such legislation. One exception comes from a recent evaluation of Connecticut’s law, which found decreased firearm suicide rates among individuals subjected to firearm seizures; the study also found a partial replacement effect, whereby reductions in firearm suicides were offset by increases in nonfirearm suicides (3).

Although firearm seizure laws in Indiana and Connecticut were enacted in response to firearm homicides, data show that these laws have functioned primarily as a means of permitting law enforcement to remove guns from individuals perceived as being at risk of suicide (37). In this study, we evaluated the effect of firearm seizure legislation in Connecticut and Indiana on state-level suicide rates. We examined firearm and nonfirearm suicide rates separately, with the expectation that any observed effects would be specific to firearm suicides and to test whether these effects were offset by increased nonfirearm suicides.

Methods

Study Design and Data

We merged several sources of state-level panel data from 1981 to 2015 to evaluate the effects of firearm seizure legislation on suicide rates in Indiana and Connecticut. The outcome variables, firearm and nonfirearm suicide rates per 100,000 population, came from the Centers for Disease Control and Prevention’s (CDC’s) Web-Based Injury Statistics Query and Reporting System (WISQARS) (8). The key independent variable was the enactment of firearm seizure legislation in Connecticut (October 1, 1999) and Indiana (July 1, 2005). We also evaluated the effect of Connecticut’s increased enforcement of its firearm seizure law, which, following Swanson and colleagues (3), we dated to the mass shooting at Virginia Tech (April 16, 2007).

Finally, we selected state-level covariates shown to be associated with state-level suicide rates, including age, sex, race-ethnicity, high school completion, poverty, unemployment, spirit alcohol consumption, violent crime, population density, and household gun ownership. For age, we calculated the percentage of each state’s population ages 15 to 24 (9) and ≥65 (10) by using data from the U.S. Census. U.S. Census data were also used to calculate the percentage of each states’ population that was white, black, and Hispanic (10,11); percentage of adults with a high school diploma (9,12); percentage below the federal poverty threshold (13,14); percentage male (9,10); and the population density of each state (residents per square mile) (15). We used data from the Bureau of Labor Statistics to calculate the annual unemployment rate (13,14), and data from the National Institute on Alcohol Abuse and Alcoholism were used to calculate average per capita gallons of spirit ethanol consumption (16). We used the FBI’s Uniform Crime Report to obtain annual state-level violent crime rates. Finally, we calculated a widely used proxy for household firearm ownership rates (17,18), represented as firearm suicides as a percentage of all suicides, by using data from the CDC’s WISQARS.

All data were publicly available. The study did not involve human participants, and institutional review board approval was not required.

Statistical Analysis

We employed the synthetic-control method to examine the impacts of firearm seizure laws on state-level suicide rates in Indiana and Connecticut (19). The synthetic-control method constructs a weighted combination of donor states to best fit the prelaw characteristics and suicide trends of Indiana and Connecticut, estimating an empirically derived counterfactual (1921). Pre- and postlaw comparisons between Indiana or Connecticut and their synthetic-control units thus allowed for a comparison between rates of suicide observed in the affected states to expected rates had the legislation not been implemented. This methodology produces control units with better preintervention fit to the treated unit compared with other methodologies, allowing for more valid inferences regarding the effect of policy change (1921).

The prelaw period was used to generate synthetic controls for firearm and nonfirearm suicide rates in Indiana and Connecticut. As recommended, we limited analysis of outcomes to no more than ten years postintervention (20). Connecticut’s preenactment period was 1981 to 1998 and postenactment was 1999 to 2009. The preenactment period for tests of Connecticut’s increased enforcement was 1981 to 2006 and postenforcement was 2007 to 2015. Indiana’s preenactment period was 1981 to 2004, and postenactment was 2005 to 2015. States were excluded from the donor pool if they enacted similar legislation during each state’s respective follow-up period (21). Ultimately, Connecticut’s enactment donor pool included 48 states, excluding Indiana, and its postenforcement donor pool included 47 states, excluding Indiana and California. Indiana’s donor pool included 47 states, excluding Connecticut and California. Outcome data were smoothed by using three-year moving averages, [(y-1)+y+(y+1)]/3, to reduce year-to-year volatility in suicide rates (22).

Predictors were averaged across the preintervention period, and mean scores for each synthetic-control unit and its target state were calculated. Following Abadie and colleagues (20), we entered three preintervention observations of the dependent variable. For Connecticut, we entered firearm and nonfirearm suicide rates from 1982, 1990, and 1998 for postenactment analyses, and 1982, 1994, and 2006 for postenforcement analyses. For Indiana, we entered rates from 1982, 1993, and 2004. All covariates were entered in the construction of the synthetic-control units. Degree of fit between synthetic-control units and their respective states was assessed with the root mean square prediction error (RMSPE), a measure of the spread of the preintervention synthetic-control trends around the target state’s trends.

Because the synthetic-control method does not provide standard measures of statistical inference, we employed “so-called placebo” tests (20,21,23). Like permutation tests, so-called placebo tests iteratively construct a sampling distribution. Specifically, so-called difference-in-place placebo tests iteratively construct synthetic-control units for each state in the donor pool and run analyses as though each state had implemented legislation in the specified year. By arbitrarily assigning the law to each state and comparing its effect relative to each state’s unique synthetic-control unit, difference-in-place placebo tests generate a distribution of effects for states where no law was enacted. The distribution provides information on the rarity of observing an effect as large as that in the target state by chance alone. We excluded states with poor prelaw fit to their synthetic counterparts, defined as RMSPE values ≥5 times those in Indiana or Connecticut (20,23).

Sensitivity Analysis

Sensitivity analyses employed regression-based difference-in-differences tests. The data set was employed with a pre-post indicator variable representing the firearm law enactment, coded 0 prior to the enactment of the law and 1 afterward, with the year of enactment coded as a fraction according to the day the law was enacted. Time (pre versus post) was entered as a fixed effect, and the interaction between time and the state of interest (Indiana or Connecticut) was used as an estimator of the differential effect of the law on suicide rates. Negative binomial regression was used to account for the dispersion observed in the data, and standard errors were adjusted to account for clustering. After testing for variance inflation to ensure efficient model specification, analyses controlled for all predictors entered in the synthetic-control analyses. Finally, because difference-in-differences tests with a small number of treated clusters can underestimate standard errors (24), follow-up analyses employed randomization inference to account for within-group correlation of model errors (24,25). All analyses were conducted in Stata 15.0.

Results

There were 15,130 firearm suicides in Indiana and 4,020 in Connecticut from 1981 to 2015. Indiana’s rate of 7.21 per 100,000 population was more than twice as high as Connecticut’s rate of 3.28 during this period. Table 1 shows states with nonzero weights in the construction of synthetic Indiana and Connecticut across firearm and nonfirearm suicide rates. The synthetic controls for Indiana’s firearm (RMSPE=.123) and nonfirearm (RMSPE=.102) suicide rates evidenced a good fit to the preintervention data. For Connecticut’s postenactment analyses, the synthetic controls showed a good fit to the state’s nonfirearm suicide rate (RMSPE=.147) and an acceptable fit to the firearm suicide rate (RMSPE=.289). The synthetic controls for Connecticut’s postenforcement analyses evidenced an acceptable fit to the state’s firearm (RMSPE=.203) and nonfirearm (RMSPE=.182) suicide rates.

TABLE 1. States contributing to the construction of synthetic-control units for Indiana and Connecticut, by type of suicide and weighta

StateWeight
Indiana
 Firearm suicide
  AK.054
  ME.168
  MI.165
  MN.128
  MS.099
  NH.077
  ND.191
  SC.062
  VT.050
  WI.005
 Nonfirearm suicide
  KY.250
  ME.039
  MA.054
  MN.148
  NH.071
  OH.176
  SC.069
  UT.126
  VA.068
Connecticut
 Enactment
  Firearm suicide
   HI.129
   MA.544
   NH.244
   RI.069
   VT.014
  Nonfirearm suicide
   MN.072
   MT.123
   NE.252
   NJ.342
   NY.21
 Enforcement
  Firearm suicide
   FL.112
   HI.270
   NY.420
   ND.047
   RI.152
  Nonfirearm suicide
   CO.058
   FL.012
   HI.005
   NE.357
   NH.109
   NJ.433
   OR.027

aIndiana’s donor pool consisted of 47 states, excluding Indiana, Connecticut, and California. Connecticut’s donor pool consisted of 48 states, excluding Connecticut and Indiana, during the postenactment period (1999–2009) and 47 states, excluding Connecticut, Indiana, and California, during the postenforcement period (2007–2015). Only states with nonzero weights are listed.

TABLE 1. States contributing to the construction of synthetic-control units for Indiana and Connecticut, by type of suicide and weighta

Enlarge table

Table 2 presents preintervention means for all predictors entered into the models for Indiana and Connecticut. In general, each state closely mirrored its synthetic control in terms of gender, age, race-ethnicity, education, unemployment, and gun ownership rates. Each state’s poverty rates were slightly lower than those of its respective synthetic-control units, and there were some differences in spirit alcohol consumption. Both states evidenced higher population density than their synthetic controls, and Indiana’s violent crime rate was higher than its synthetic control. Each state’s synthetic-control units closely approximated preintervention rates of firearm and nonfirearm suicide.

TABLE 2. State-level and synthetic-control unit characteristics of Indiana and Connecticut before enactment and increased enforcement of firearm seizure lawsa

Indiana (enactment, 2005)Connecticut (enactment, 1999)Connecticut (enforcement, 2007)
Synthetic-control unitSynthetic-control unitSynthetic-control unit
CovariateState levelFirearm SuicidesNonfirearm suicidesState levelFirearm suicidesNonfirearm suicidesState levelFirearm suicidesNonfirearm suicides
Male (%).49.49.49.48.49.49.48.49.49
Age 15–24 (%)15.4815.2615.4414.3815.1714.6913.7714.6814.29
Age ≥65 (%)12.2812.2711.8613.4312.8313.1213.5013.4513.03
White (%)87.5185.8786.9381.6981.6879.1579.4259.4779.50
Black (%)8.398.788.218.533.528.858.969.367.80
Hispanic (%)2.911.692.777.614.717.808.9211.178.77
High school graduate (%).58.59.57.61.61.59.62.60.62
Below the federal poverty threshold (%)11.1812.6012.287.899.3412.048.0012.859.66
Unemployment rate (%)5.635.635.635.025.025.434.735.434.66
Spirit alcohol consumption (mean gallons of ethanol per capita).64.91.74.961.19.80.90.77.90
Population density (per square mile)161.0570.33155.92675.49538.60454.23688.07392.80502.65
Violent crime rate (per 100,000 population)402.66323.64363.08438.69444.17521.93398.15574.04400.47
Gun ownership rate (firearm suicide/total suicide ratio).61.60.60.43.37.46.41.36.46
Preenactment suicide rate (per 100,000 population)a
 T1 firearm7.027.023.563.833.563.67
 T1 nonfirearm4.924.884.844.954.844.86
 T2 firearm 7.857.803.953.914.364.01
 T2 nonfirearm4.574.555.205.135.024.88
 T3 firearm 6.486.712.973.272.402.70
 T3 nonfirearm5.195.224.694.815.405.37

aA synthetic-control unit is a weighted combination of other states that best fit the characteristics and suicide trends in Indiana and Connecticut before enactment of the firearm seizure laws. Separate synthetic-control units were constructed for firearm and nonfirearm suicides. Three preenactment observations of the dependent variables were included in all synthetic-control analyses, with one observation each from the beginning, middle, and end of the preenactment period. Thus times 1, 2, and 3 correspond to 1982, 1990, and 1998 for Connecticut's enactment analysis and to 1982, 1994, and 2006 for Connecticut's enforcement analysis. For Indiana's enactment analysis, preenactment observations of the dependent variables are from 1982, 1993, and 2004.

TABLE 2. State-level and synthetic-control unit characteristics of Indiana and Connecticut before enactment and increased enforcement of firearm seizure lawsa

Enlarge table

Figure 1 provides a panel of suicide rates in Indiana and Connecticut relative to their synthetic counterparts before and after implementation of firearm seizure legislation, providing a comparison between states’ actual suicide trends and trends that would be expected had no legislation been implemented. Indiana’s firearm suicide rate closely tracked its synthetic control across the prelaw period, with each showing an average rate of 7.30 firearm suicides per 100,000 population between 1981 and 2004. A distinctive gap emerged after the Indiana law’s enactment in 2005, with mean postenactment firearm suicide rates of 6.98 and 7.55 for Indiana and its synthetic control, respectively, showing a 7.5% reduction in firearm suicide rates in Indiana across the postenactment period. Given the 5,105 firearm suicides in Indiana between 2005 and 2015 (8), these analyses indicate that 383 firearm suicides might have been prevented across 10 years as a result of the law. This effect was specific to firearm suicides, with Indiana evidencing 1.0% more nonfirearm suicides than its synthetic counterpart postenactment. Given the 4,428 nonfirearm suicides in Indiana between 2005 and 2015 (8), this suggests that 44 nonfirearm suicides might be attributed to the law.

FIGURE 1.

FIGURE 1. Synthetic-control analyses of suicide rates in Indiana and Connecticut before and after enactment and increased enforcement of firearm seizure laws, by type of suicidea

aThe analysis compares suicide rates in Indiana and Connecticut with those of a synthetic-control unit, a weighted combination of other states that best fit the characteristics and suicide trends in Indiana and Connecticut before enactment of the firearm seizure laws. The y-axis represents suicide rate per 100,000 population. Dashed vertical lines correspond to Indiana’s enactment of firearm seizure law on July 1, 2005 (panels A and B); Connecticut’s enactment of firearm seizure law on October 1, 1999 (panels C and D); and Connecticut’s increased enforcement of firearm seizure law on April 16, 2007 (panels E and F).

Both Connecticut and its synthetic counterpart showed mean firearm suicide rates of 3.75 per 100,000 population from 1981 to 1998, and Connecticut’s mean postenactment rate was 1.6% lower than that of its synthetic counterpart. Postenactment nonfirearm suicides were 5.7% higher in Connecticut than for its synthetic counterpart. When the point of intervention was moved forward to the period following the Virginia Tech shooting (postenforcement), firearm suicide rates in Connecticut (2.69 per 100,000 population) were distinctly lower than in the synthetic control (3.12 per 100,000 population), a 13.7% mean decrease in firearm suicides from 2007 to 2015. Given that there were 933 firearm suicides in Connecticut between 2007 and 2015 (8), these estimates suggest that enforcement of Connecticut’s law might have prevented an estimated 128 firearm suicides during this eight-year period. There was a 6.5% postenforcement increase in Connecticut’s nonfirearm suicide rates, and this increase coincided precisely with the law’s increased enforcement. There were 2,153 nonfirearm suicides in Connecticut between 2007 and 2015 (8), and this suggests that 140 nonfirearm suicides might be attributed to the increased enforcement of the law.

Figure 2 provides a panel of so-called placebo tests applying the synthetic-control method to each state in the donor pool to generate a random distribution of postlaw effects to test the rarity of obtaining effects as large as those seen in Indiana and Connecticut by chance alone. When we arbitrarily assigned exposure to the law’s enactment to other states in the donor pool, there was a very low probability of observing a treatment effect on firearm suicide rates as large as that seen in Indiana (Figure 2A). Of the 47 states in Indiana’s donor pool for which synthetic controls were constructed, seven were excluded because of poor preenactment fit. Of the remaining 39 states for which placebo tests were calculated, none exhibited mean postenactment decreases as large as Indiana’s. Indiana’s 1.0% increase in nonfirearm suicides relative to its synthetic control was similar to the variation observed in states that enacted no firearm seizure legislation, with 13 of 39 states displaying larger increases (Figure 2B).

FIGURE 2.

FIGURE 2. Placebo tests of the effects of firearm seizure laws implemented in Indiana and Connecticut on suicide rates, by type of suicidea

aPlacebo tests compare the change in suicide rate between each state and its synthetic-control unit, a weighted combination of other states that best fit the characteristics and suicide trends in the state before enactment of the firearm seizure laws. The y-axis represents the rate difference per 100,000 population between each state and its synthetic-control unit. Bars for California and Indiana are highlighted in black.

Of the 48 states in Connecticut’s donor pool, two were excluded because of poor preenactment fit, resulting in the construction of placebo tests for 46 states. Seventeen states showed a greater decrease than Connecticut in firearm suicides relative to their synthetic controls (Figure 2C), and 11 states demonstrated larger postenactment increases in nonfirearm suicide rates compared with Connecticut’s 5.7% increase (Figure 2D). When the point of intervention was moved to 2007 (enforcement after the Virginia Tech shooting), two states were removed from firearm suicide analyses because of poor preenforcement fit and none were removed from nonfirearm suicide analyses. The 13.7% post-2007 decrease in firearm suicides in Connecticut was large compared with other states, with just four states showing a larger average decrease from 2007 to 2015 (Figure 2E). Connecticut’s 6.5% increase in nonfirearm suicide rates was less unusual, with 11 states showing larger increases (Figure 2F).

Finally, sensitivity analyses employed difference-in-differences estimates by using negative binomial regression models with panel data from comparison states included in the synthetic-control analyses. Indiana's seizure law was associated with an estimated 5% reduction in overall suicide rates (p<.01) (Table 3). This effect was driven by a 10% reduction in firearm suicide rates (p<.001), which was partially offset by a 10% increase in nonfirearm suicide rates (p<.001). The enactment and increased enforcement of Connecticut’s law were associated with a 16% and 12% reduction in firearm suicide rates, respectively (p<.001 for both), with no evidence of a replacement effect. Randomization inference results accounting for within-group correlation of model errors did not alter the significance of these findings, except that Indiana’s increase in nonfirearm suicide rates was rendered nonsignificant (p=.06). [Results of this analysis are presented in a table in an online supplement to this article.]

TABLE 3. Association between enactment and enforcement of firearm seizure laws in Indiana and Connecticut and suicide ratesa

Annualized suicide rate per 100,000 population
Suicide method and stateIRR95% CIpRMSPE
All methods
 Indiana.95.92–.99<.011.87
 Connecticutb1.00.96–1.04.922.06
 Connecticutc1.01.97–1.04.682.00
Firearm
 Indiana.90.87–.94<.0011.61
 Connecticutb.84.80–.89<.0011.62
 Connecticutc.88.85–.92<.0011.61
Nonfirearm
 Indiana1.101.06–1.14<.001.78
 Connecticutb1.03.99–1.07.09.81
 Connecticutc.97.94–1.00.09.78

aResults are estimates. IRR, incidence rate ratio. RMSPE, root mean square prediction error. All analyses controlled for several percentages (state population Hispanic, white, black, male, age 15–24, age ≥65, high school graduate, below the federal poverty threshold, unemployed) and for the violent crime rate (per 100,000 population), population density (residents per square mile), and spirit alcohol consumption (mean gallons of ethanol per capita).

bEffects of 1999 enactment of law

cEffects of 2007 meaningful enforcement of law

TABLE 3. Association between enactment and enforcement of firearm seizure laws in Indiana and Connecticut and suicide ratesa

Enlarge table

Discussion

This study found that firearm seizure legislation was associated with reductions in state-level firearm suicide rates and that these effects were robust to alternative specifications. Using panel data from the 50 states and controlling for population-level risk factors, Indiana’s synthetic-control analyses showed a 7.5% decrease in firearm suicides in the first decade postenactment. On the basis of this finding, we estimated that Indiana’s firearm seizure law may have prevented 383 firearm suicides in the first ten years after its enactment while contributing to 44 nonfirearm suicides. Although synthetic-control analyses showed that the enactment of Connecticut’s legislation was associated with only a 1.6% reduction in firearm suicides, the reduction increased to 13.7% following increased enforcement of the law after the 2007 Virginia Tech shooting. Thus we estimated that the increased enforcement of Connecticut’s firearm seizure law may have prevented 128 firearm suicides between 2007 and 2015 while contributing to 140 nonfirearm suicides.

Differences across states after enactment of the laws were generally specific to suicides with firearms, and evidence for a replacement effect was mixed. Little evidence of a replacement effect was found in Indiana, and results showed a substantial aggregate decrease in suicides. Connecticut’s increased enforcement of the law was associated with a sustained decrease in firearm suicides coupled with a sustained increase in nonfirearm suicides, compared with its synthetic counterpart. Although so-called placebo tests showed that Connecticut’s increase in nonfirearm suicides was not atypical, increased enforcement appears to have resulted in a moderate aggregate increase in suicides.

Our estimates are arguably high compared with those of Swanson and colleagues (3), who estimated that 72 suicides were prevented in Connecticut between 1999 and 2013. Our higher rates for 2007–2015 could have been partly due to observed continuous increases in enforcement after 2007 and differences in methodology. Thus, although convergence between results across methods suggests that many firearm suicides may have been prevented, our point estimate may be higher than the true count.

Some limitations should be considered. First, our analysis was conducted at the state level, and thus we were unable to look at regional variations in the implementation of firearm seizure laws in Indiana and Connecticut, and variations in other laws (for example, Connecticut’s Permit-to-Purchase legislation introduced in 1995) complicate the policy picture. Second, we were unable to account for precise variations in the enforcement of this legislation over time. Finally, although we included a variety of identified risk factors for population-level suicide rates, it is possible that there were additional factors for which we could not account. Despite these limitations, use of the synthetic-control methodology provided a rigorous analysis of the effect of firearm seizure laws on suicide rates, and these results were robust to alternative specifications.

Conclusions

Even though risk-based firearm seizure laws have typically been enacted in response to mass homicides, the laws have functioned primarily as a means of seizing firearms from suicidal individuals. These findings suggest that firearm seizure legislation is associated with meaningful reductions in population-level firearm suicide rates, with mixed evidence for a replacement effect.

The authors are with the School of Psychological Sciences, University of Indianapolis, Indianapolis. Mr. Phalen is also with the Department of Psychiatry, School of Medicine, University of Maryland, Baltimore.
Send correspondence to Dr. Kivisto (e-mail: ).

The authors report no financial relationships with commercial interests.

References

1 Conn Gen Stat: Title 29. 2016, chap 529, 29–38cGoogle Scholar

2 Ind Code §35-47-14 (2016)Google Scholar

3 Swanson J, Norko M, Lin H, et al.: Implementation and effectiveness of Connecticut’s risk-based gun removal law: does it prevent suicides? Law and Contemporary Problems 80:179–208, 2017Google Scholar

4 Parker GF: Application of a firearm seizure law aimed at dangerous persons: outcomes from the first two years. Psychiatric Services 61:478–482, 2010LinkGoogle Scholar

5 Parker GF: Circumstances and outcomes of a firearm seizure law: Marion County, Indiana, 2006–2013. Behavioral Sciences and the Law 33:308–322, 2015Crossref, MedlineGoogle Scholar

6 Rose V, Cummings L: Gun Seizure Law. Report no 2009-R-0306. Hartford, Connecticut General Assembly, Office of Legal Research, 2009. https://www.cga.ct.gov/2009/rpt/2009-R-0306.htmGoogle Scholar

7 Norko M, Baranoski M: Gun control legislation in Connecticut: effects on persons with mental illness. Connecticut Law Review 46:1609–1631, 2014Google Scholar

8 Web-Based Injury Statistics Query and Reporting System (WISQARS). Fatal Injury Data and Nonfatal Injury Data. Atlanta, Centers for Disease Control and Prevention, Injury Prevention and Control, 2015. http://www.cdc.gov/injury/wisqars/index.htmlGoogle Scholar

9 Kessler RC, Borges G, Walters EE: Prevalence of and risk factors for lifetime suicide attempts in the National Comorbidity Survey. Archives of General Psychiatry 56:617–626, 1999Crossref, MedlineGoogle Scholar

10 Spicer RS, Miller TR: Suicide acts in 8 states: incidence and case fatality rates by demographics and method. American Journal of Public Health 90:1885–1891, 2000Crossref, MedlineGoogle Scholar

11 Zimmerman SL: States’ spending for public welfare and their suicide rates, 1960 to 1995: what is the problem? Journal of Nervous and Mental Disease 190:349–360, 2002Crossref, MedlineGoogle Scholar

12 Li Z, Page A, Martin G, et al.: Attributable risk of psychiatric and socio-economic factors for suicide from individual-level, population-based studies: a systematic review. Social Science and Medicine 72:608–616, 2011Crossref, MedlineGoogle Scholar

13 Agerbo E, Sterne JA, Gunnell DJ: Combining individual and ecological data to determine compositional and contextual socio-economic risk factors for suicide. Social Science and Medicine 64:451–461, 2007Crossref, MedlineGoogle Scholar

14 Qin P, Agerbo E, Mortensen PB: Suicide risk in relation to socioeconomic, demographic, psychiatric, and familial factors: a national register-based study of all suicides in Denmark, 1981–1997. American Journal of Psychiatry 160:765–772, 2003LinkGoogle Scholar

15 Middleton N, Gunnell D, Frankel S, et al.: Urban-rural differences in suicide trends in young adults: England and Wales, 1981–1998. Social Science and Medicine 57:1183–1194, 2003Crossref, MedlineGoogle Scholar

16 Landberg J: Per capita alcohol consumption and suicide rates in the US, 1950–2002. Suicide and Life-Threatening Behavior 39:452–459, 2009Crossref, MedlineGoogle Scholar

17 Kellermann AL, Rivara FP, Somes G, et al.: Suicide in the home in relation to gun ownership. New England Journal of Medicine 327:467–472, 1992Crossref, MedlineGoogle Scholar

18 Miller M, Azrael D, Hemenway D: Household firearm ownership and suicide rates in the United States. Epidemiology 13:517–524, 2002Crossref, MedlineGoogle Scholar

19 Abadie A, Gardeazabal J: The economic costs of conflict: a case study of the Basque country. American Economic Review 93:112–132, 2003CrossrefGoogle Scholar

20 Abadie A, Diamond A, Hainmueller J: Synthetic control methods for comparative case studies: estimating the effect of California’s tobacco control program. Journal of the American Statistical Association 105:493–505, 2010CrossrefGoogle Scholar

21 Abadie A, Diamond A, Hainmueller J: Comparative politics and the synthetic control method. American Journal of Political Science 59:495–510, 2015CrossrefGoogle Scholar

22 Crifasi CK, Meyers JS, Vernick JS, et al.: Effects of changes in permit-to-purchase handgun laws in Connecticut and Missouri on suicide rates. Preventive Medicine 79:43–49, 2015Crossref, MedlineGoogle Scholar

23 Abadie A, Diamond A, Hainmueller J: Synth: an R package for synthetic control methods in comparative case studies. Journal of Statistical Software 42:1–17, 2011CrossrefGoogle Scholar

24 Rokicki S, Cohen J, Fink G, et al.: Inference with difference-in-differences with a small number of groups: a review, simulation study, and empirical application using SHARE data. Medical Care 56:97–105, 2018Crossref, MedlineGoogle Scholar

25 Hess S: Randomization inference with Stata: a guide and software. Stata Journal 17:630–651, 2017CrossrefGoogle Scholar