Next Article in Journal
Management of the Medico-Legal Dispute of Healthcare-Related SARS-CoV-2 Infections: Evaluation Criteria and Case Study in a Large University Hospital in Northwest Italy from 2020 to 2021
Next Article in Special Issue
Risk Factors and Protective Factors of Internet Addiction in University Students during the Pandemic: Implications for Prevention and Treatment
Previous Article in Journal
The Correlation of Built Environment on Hypertension, and Weight Status amongst Adolescence in Saudi Arabia
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Polysubstance Use Patterns among Outpatients Undergoing Substance Use Disorder Treatment: A Latent Class Analysis

by
Natale Salvatore Bonfiglio
1,2,*,
Igor Portoghese
3,
Roberta Renati
1,2,
Maria Lidia Mascia
1 and
Maria Pietronilla Penna
1
1
Department of Pedagogy, Psychology, Philosophy, University of Cagliari, 09126 Cagliari, Italy
2
Noah SRL, 27100 Pavia, Italy
3
Department of Medical Sciences and Public Health, University of Cagliari, 09124 Cagliari, Italy
*
Author to whom correspondence should be addressed.
Int. J. Environ. Res. Public Health 2022, 19(24), 16759; https://doi.org/10.3390/ijerph192416759
Submission received: 5 November 2022 / Revised: 5 December 2022 / Accepted: 12 December 2022 / Published: 14 December 2022
(This article belongs to the Special Issue Assessment and Intervention of Addictive Behavior)

Abstract

:
Substance Use Disorders (SUDs) pose significant challenges to both individuals and society at large. The primary focus of existing research with clinical SUD populations has been on individual substances, but research is required to better understand the profiles of individuals who use different substances simultaneously. The purpose of the current study was, therefore, to identify patterns of use among subjects (n = 1025) who reported using multiple substances by adopting a Latent Class Analysis (LCA) methodology. The Addiction Severity Index (ASI-lite) was included as a measure of substance misuse, we performed LCA to identify patterns of substance use through the administration of the ASI-Lite. Responses were collected from the following substances: alcohol, cannabis/cannabinoids, opioids and heroin, and cocaine. Results identified two latent classes: (1) alcohol use dominant, and (2) poly-abuser use dominants. Class 1 represented 60.0% of the sample and refers to individuals with the dominant use of alcohol, of those a higher proportion (47%) reported low-frequency use (1 to 7 days per month) and 26% reported a frequency of use of 24 to 30 days per month. Furthermore, 18% used alcohol in combination with cocaine. Class 2 represents 40.0% of the sample. This class is characterized by low-frequency and high-frequency users of several substances. The results obtained highlight the importance of deepening the study of the concomitant use of substances in individuals with SUDs to better understand the health risk of the combined use of two or more substances.

1. Introduction

The simultaneous (at the same time) or on separate occasions (sequential use) consumption of more than one drug over a given period is broadly defined as polysubstance use [1]. Most of the research on substance use disorders (SUD) has focused on the use of an individual substance [2], giving less importance to polysubstance use engaged by drug users, for example, the simultaneous use of cocaine and heroin or the frequent combined use of cannabis with other illegal substances [3,4,5,6,7,8]. Indeed, considering both sequential and simultaneous polydrug use, the average of substances used at the same time is 3.5, as reported by drug-dependent individuals [2,9]. Despite the variation in the combination of drugs, typically the primary drugs (or dependence) are alcohol, opioids or heroin, and amphetamine/methamphetamine, while cocaine and cannabis are reported to be the secondary-or tertiary substance of use [2].
The rate of multiple drug use disorders has been significantly increasing in recent years [10]. Studies on study prevalence have indicated a high rate of polydrug use among individuals with opioid use disorder (30–49.7%) or in patients receiving treatment (65%) [10]. Moreover, more than two-thirds (79%) of subjects reporting the combination of cocaine and heroin or opioid uses declared to have followed one or more service treatments.
Users report the intentional combination of substances to enhance the effects of intoxication or to alleviate the symptoms of withdrawal [11]. Hence, the identification of distinct patterns of substance use is particularly useful for researchers and clinicians during treatment programs. For example, the use of multiple drugs could be problematic in a treatment setting to maintain methadone therapy [12,13,14]. Furthermore, identifying which substances tend to be used together can help make therapeutic approaches more effective and better understand the risks to physical, mental, or social functioning [15,16,17].
The high rate of polysubstance use is alarming given the impact it can have on both the severity and treatment outcomes of SUDs [2]. Individuals who are polysubstance users are more resistant to change over time, and the unchanged pattern of polysubstance use could foster underlying social or individual problems and risk factors [18].
Polydrug use can be unfavorable to the effectiveness of treatment programs since patients engaging in the use of more drugs simultaneously or concurrently are at increased risk of dropping out [19,20] or less responsive to treatment [21,22,23,24] or more impulsive [25,26].
Polydrug use is also associated with worse outcomes and has a high risk of relapse [27,28] and premature mortality due to drug overdose [29], exhibiting aggressive behavior, suicidal ideation and attempts [30,31]. Yang and colleagues have recently reported an association between polydrug use and major depression, dysthymia, in a study evaluating polydrug use among Chinese heroin users [32].
One of the main limitations of several studies on substance use is to not consider more than two substances as patterns of polysubstance (e.g., alcohol only, marijuana only) [33] or to identify few classes, for example, no/low use, polysubstance use, and single substance classes [34,35]. For this reason, a deeper understanding of polysubstance use as a complex pattern is crucial because of its high intrinsic degree of complexity.
Recently, research using Latent Class Analysis (LCA) focused on identifying patterns of use of multiple substances [21,36,37,38,39,40]. LCA has been used in several studies to empirically detect substance use patterns [41,42,43,44] using observed characteristics properly combined to identify unobserved classes (defined as latent) within a heterogeneous sample [36]. Based on the similarity of response patterns, LCA can also be used to identify subgroups starting from a heterogeneous population [45]. It is possible, therefore, to identify through LCA subtypes of subjects exhibiting similar patterns of characteristics.
As the use of multiple substances among individuals becomes more prevalent, the need to know the patterns of co-occurring substance use become more important to better facilitate the creation of personalized treatment programs [17,24]. We aim, therefore, to employ LCA to discover current (past 30-days) patterns of polysubstance use among subjects who reported substance use in their lifetime. In addition, substance users’ demographic characteristics (e.g., age) have been used to identify high-risk categories of subjects.

2. Materials and Methods

2.1. Participants

The study was conducted at some outpatient centers in Milan (Italy). Participants were attending government specialist addiction treatment services located in Italy. Subjects entered the treatment pathway after being referred by other services or voluntarily. After the initial referral, subjects were entered on a waiting list. Once vacancies became available, subjects were provided with an initial psychiatric interview and a second psychological interview for diagnostic purposes. They would then fill out the ASI-lite lasting 30 min, which was administered by an outside psychological professional in test administration. Subjects could then be in acute intoxication during this entry phase. Following this initial assessment phase, subjects were taken into treatment.
To be included in the study, patients have to be (i) older than 18 years old, and (ii) diagnosed according to DSM- 5 (diagnostic and statistical manual of mental disorders, fifth revision) (Salvatore Bonfiglio et al., 2021 [28]).
During the study period (January 2015 to December 2020) 2750 individuals completed an assessment at several services for psychoactive substance treatment. The dependence was defined as a disorder in accordance with DSM-5) criteria, with substance misuse lasting more than six months and not following any medical treatment for substance abuse (e.g., methadone). Considering the inclusion and exclusion criteria, this left a final sample of 1754 individuals (269 subjects using methadone and, 727 subjects that did not use any one or more substances within the last 30 days were excluded).
Eligible patients provided written informed consent. The study protocol fully adhered to the guidelines of the ethics committee of the University of Pavia (Italy). Data and information regarding the study were kept confidential from participants and managed in accordance with the relevant provisions (EU Regulation 2016/679-RGDP) and the “code of ethics and good conduct for the processing of personal data for statistical and scientific purposes (provision of the guarantor no. 2 of 16 June 2004)”. Anonymity was guaranteed using codes.

2.2. Measures

Demographics, type of substance, and frequency of use in the last 30 days were collected from an admission log compiled when subjects were admitted into the service unit.
The Addiction Severity Index (ASI-lite) was used, to include measures of substance misuse from the following drugs in the previous 30 days: alcohol, cocaine, opioids, heroin, amphetamines, cannabis, other opioids [19,46]. The ASI-lite is a semi-structured interview developed to collect information from patients to identify gravity of psychoactive substances use [47]. The following problem areas are covered by the ASI interview: 1. medical; 2. employment; 3. use of alcohol; 4. use of other substances; 5. legality; 6. family and social functions; 7. Psychiatric. The lite version of the ASI consists of a small number of items (125) compared to the original version. The items selected in the lite version can be quantified; it is then possible, from these, to calculate a composite score in relation to each area. Items were translated into Italian and then back-translated into English by a native English speaker. For this study, the following questions “How many days in the past 30 did you use alcohol/cocaine/heroin/opioid/cannabis (any use at all)?”, and “How many days in the past 30 did you use more than one substance per day?” have been used.

2.3. Data Analysis

An LCA was performed in order to identify category patterns of use from ASI-Lite responses relative to the following five substances: alcohol, cannabis or THC or cannabinoids, opioids, cocaine and heroin. Amphetamines/methamphetamines and barbiturates/sedatives were removed from the analyses due to their low rate of use. The ASI-Lite scores were reclassified to reflect the number of times per week of use for each substance. We hypothesized that our data would have a zero-inflated Poisson distribution for each substance, and therefore, we included the following categorical classifications: 0 (0 days of use reported), 1 (1–7 days per month), 2 of use per week (8–15 days per month), 3 (16–23 days per month), and 4 (24–30 days per month).
The robust maximum likelihood (MLR) estimator MPlus 7 was used to estimate LCAs. We have included from one to six classes to estimate. LCAs were conducted using 5000 random sets of values and 1000 iterations to avoid converging [48,49]. We retained classes considering the consistency with theoretical meaning, the conformity of the extracted classes and the statistical appropriateness of the extracted solution [50,51,52].
The following goodness-of-fit indices were measured: the Akaike information criterion (AIC), the Bayesian information criterion (BIC), the Sample Adjusted Bayesian information criterion (SABIC), the approximate Bayes factor (BF), the Constant AIC (CAIC) and the approximate correct model probability (cmP). Smaller AIC, BIC, SABIC and CAIC values indicate a better fit. The BF compares two models at a time (k and k + 1 model) and the k-class model with BF > 3 is considered the best and more parsimonious model. The cmP compares all models under consideration and the model with cmP > 0.10 could be considered a candidate model. Furthermore, two statistical tests were considered: the adjusted Lo–Mendell–Rubin likelihood ratio test (adjusted LMR-LRT; [53]) and the parametric bootstrapped likelihood ratio test (BLRT; [49]). Both tests compare a (k − 1) class model with a k-class model and non-significant p values support the k − 1 class model. Moreover, a larger degree of separation between classes is indicated by a higher entropy. Information criteria are visually presented through “elbow plots”, showing the improvements related to additional classes [54]. More precisely, when the slope flattens, an optimal number of classes should be inspected by considering one more and one less class. The assignment of patients to classes was conducted according to their posterior class membership probabilities.
A one-way ANOVA for continuous variables and a Chi-square for qualitative variables were used to evaluate significant differences between the extracted clusters and characteristics of patients.

3. Results

3.1. Participant Characteristics

A cross-sectional survey study has been carried out. A total of 1354 questionnaires were returned from the initial 1754; missing covariate >5% (400), missing responses >5% (329) and those who declared gambling (120) as their main addiction were removed. The final sample was composed of 905 subjects.
As shown in Table 1, most of the sample subjects (n = 841, 82%) were males (mean age = 38.22; SD = 11.73). The mean age of first use of illicit substances was 23.13 (SD = 10.42) and the duration of the substance use was 10.85 years (SD = 10.15). Regarding employment, 53.5% were employed.

3.2. Latent Profile Analysis

LCA was conducted among the 1025 individuals. Table 2 reported the model fit statistics and a brief class description for the solution ranging from 1 to 6-classes. Figure 1 reported the Elbow plot of the information criteria.
Taken as a whole, the two-class solution showed the better fit as it was supported by all the fit indices and BLRT tests (Table 2). The calculated average posterior probabilities of class membership were 0.83 and 0.89, showing low cross-probabilities of 0.17 and 0.11.
Alcohol use dominant (class 1) and polysubstance use dominant (class 2) were the two identified clusters, as shown in Figure 1. The former class represents 60.0% of the sample (n = 543, latent class membership probability = 0.82); 47.4% endorsed alcohol use 1 to 7 days per month, and 26.3% endorsed alcohol use more than 24 to 30 days per month. Additionally, nearly everyone did not use heroin and opioids in this group, and only 17.9% of participants used cocaine 1–7 days per month. The second class represents 40.0% of the sample (n = 362, latent class membership probability = 0.87). In this class, 24.6% endorsed alcohol use 24 to 30 days per month, and 20.6% endorsed alcohol use 1 to 7 days per month, 11.3% used heroin 24 to 30 days per month and 7.6% used heroin 1 to 7 days per month. 26.9% of participants used cocaine 1 to 7 days per month, and 16.4% used cocaine 16 to 23 days per month; 6.7% used opioids 24 to 30 days per month, and 21.4% used cannabis 24 to 30 days per month.
Table 3 shows the differences between the two types of clusters related to patient characteristics.
A significant difference has been found between cluster type and “main substance” (Χ2 = 116; df = 4; p ≤ 0.001) and between cluster type and “tobacco use” (Χ2 = 17.2; df = 1; p ≤ 0.001). Moreover, a significant difference has been found between cluster type and “age” (F(1904) = 40.2; p ≤ 0.001), “age first use” (F(1900) = 20.2; p ≤ 0.001) and “monthly spending to buy substance” (F(1882) = 4.1; p ≤ 0.044).

4. Discussion

In this study, we aimed to extend drug addiction research through the identification of poly-abusers’ latent classes among Italian adult drug users attending several addiction treatment services, based on simultaneous substance use. We followed a recent line of research on drug use, in which a person-centered approach is applied, identifying empirical patterns of poly-abusers, as a means of LCA. In our study, we identified two clusters: (1) alcohol use dominant and (2) polyabuser use dominants. The two-class solution appears to be coherent with some of the patterns found in the literature, with a variation in co-used substance combinations, in which alcohol is typically the primary drug of dependence [55,56,57], along with cocaine [58,59], alcohol [60], opioids [27,61,62], or cannabis [63]. For example, the combinations of opioids and stimulants are common with both cocaine (“speedball”) and methamphetamine (“bombita”); the use of opioids to reduce overexcitation following cocaine use and the use of amphetamine or cocaine to prevent opioid-related withdrawal symptoms has been noted [64,65,66]. Cannabis and tobacco are often used simultaneously, especially because tobacco serves as an effective delivery system for cannabis [63].
The first class refers to individuals with a dominant use of alcohol, of those, the higher proportion (47%) reported a low-frequency use (1 to 7 days per month) and 26% reported a frequency of use of 24 to 30 days per month. Furthermore, 18% used alcohol in combination with cocaine. Alcohol is one of the most used drugs, and up to 290 million people have been worldwide diagnosed with alcohol use disorder [67]. Our results are consistent with what has been found in the literature showing that alcohol is frequently used especially with psychostimulants such as cocaine [2,68,69]. A meta-analysis identified that cocaine and alcohol (12% of the population analyzed) were the most common combinations (out of a possible 36 combinations) with a 24–98% range of probabilities for simultaneous use [70] and 37–96% of concurrent cocaine and alcohol use. The greater phenomena of euphoria and increased perception of well-being reported by subjects using cocaine and alcohol may explain the enhanced subjective experience of these drugs. Both human and animal models on post-cocaine anxiety experience, report how alcohol consumption dissipates anxiety that persists after cocaine euphoria [71]. Moreover, studies have shown how combined cocaine and alcohol use can enhance and, respectively, reinforce each other through the properties of each substance. The reinforcing process is addressed via both affective and pharmacokinetic interactions, increasing intake as well as the potential for adverse consequences [70].
Many studies have shown that the psychological consequences associated with the use of alcohol in combination with other drugs are more severe than with alcohol used alone [72,73]. Moreover, also the social consequences have been reported, and particularly related to legal, accidents and health problems [55], lifetime sexually transmitted infections and incarceration [37]. Moreover, co-occurring alcohol disorder and drug use have been associated with a greater frequency of problems associated with the treatment and remission of symptoms [74,75] as well as the prevalence of psychological and social harms [72] and more intense drug consumption and drug-craving [76,77]. Moreover, studies showed that subjects dependent on both alcohol and illegal drug use compared to those with single dependency show comorbidities with mental health problems such as anxiety and depression with a double probability [78]. Compared with subjects with single drug use, those with two or more dependencies and patients receiving treatment for alcohol combined with a second illegal drug are more likely to exhibit affective and antisocial personality disorders [79]. For example, cocaine use in patients who are also alcohol abusers is more likely to result in cocaine-related depression and psychosis compared to users without alcohol abuse [60], or other comorbid mental disorders including anxiety [80,81,82].
The second class refers to poly-abusers who use alcohol in combination with heroin, cocaine, opioids, or cannabis. Class 1 is characterized by low-frequency and high-frequency users for several substances. Some researchers had highlighted poly-abuse patterns [68,83], despite most of the research literature on this topic focusing mainly on the combination of two substances. Even with a moderate rate, the use of alcohol in this category is still present.
Some typical characteristics of the subjects for each of the clusters were highlighted to show a typical profile for each of the clusters. For some of these, some significant differences were found, as presented in Table 3. For example, subjects in cluster 1 use tobacco significantly more, have a higher average age, started using substances at a higher age, and spend significantly less on the substance than subjects in cluster 2. In addition, although not significantly, subjects in cluster 1 are mostly employed, while those in cluster 2 are mostly unemployed, and have about one year more addiction than subjects in cluster 2. Gender is more or less equally distributed in both clusters.
The possibility of highlighting typical profiles with typical characteristics may have important implications in clinical practice to identify appropriate therapeutic interventions and treatments and improve efficacy. It is possible, once it is understood which typical profile or cluster patients fill, to construct ad-hoc interventions based on risk and protective factors. It is possible, moreover, to consider typical characteristics of the subject that adhere to the profile, to tailor an intervention more efficiently.
Alcohol may represent one of the most widely used substances for a poly-abuser. Studies have shown that drinking frequency continues to remain stable also in young and adult people, while the quantity drinking alcohol has been shown to decrease over time, especially binge drinking, [84,85], in relation to demographic characteristics such as age, or the amount of use of other substances [83]. Indeed, considering the motivational models’ perspective [83], alcohol dependence satisfies heterogeneous reasons, such as coping with threats to self-esteem, minimizing negative emotions, self-medication, socializing and so on, in cultural and social contexts in which drugs and other drugs (i.e., alcohol) are accepted or justified by the expectations of individuals in terms of positive outcomes related to substance uses [86,87,88,89].
Overall, the findings of our work support previous works showing that illicit drugs are rarely used in isolation [90,91], and the probability of at least weekly use with adverse interactions with other drugs is high. People often use more than one substance at the same time to produce interactive effects (i.e., synergistic) and/or additive or interactive drug effects [92]; this is why polydrug use poses significant health risks for deleterious outcomes and may be a broad indicator of severity [68]. For example, the combination of alcohol and cocaine produces a unique compound with changes in cocaine metabolism that increase blood cocaine levels, producing the psychoactive metabolite cocaethylene that can enhance the risk of cardiotoxicity or other acute adverse outcomes [60,93]. Among cannabis users, contemporary alcohol consumption may increase the risk for alcohol-related blackouts (i.e., the periods of impaired memory that could form during a drinking episode) [94].

5. Conclusions

Polysubstance use could have more serious implications for practice and substance treatment compared to mono-substance use because of its association with worse treatment outcomes, including higher rates of relapse, higher mortality rates and poorer treatment retention. It is necessary to better understand the mechanism that leads individuals with SUDs to polysubstance use, to better understand the health risk of the combined use of two or more substances, including use on the same time (concurrent/simultaneous) or on separate occasions (sequential use). Therefore, understanding how those mechanisms work and what is the impact of polysubstance use on the users is crucial for more successful emergency responses and for improvements in long-term treatment outcomes.

Limitations and Future Directions

Considering the important strengths of our study, future research should be considered in order to address some limitations. Firstly, the low number of women who participated in the study compared to men should be considered with caution. It should be considered, however, that in Italian treatment centers and services for addiction it is common to find much lower percentages of women in treatment compared to men.
A second limitation concerns the distribution proportion of the participants in relation to their substance of addiction. Some subgroups are unbalanced with respect to this variable, due to a small number of participants. However, this aspect is also linked to the characteristics of the subjects who have access to addiction care services in Italy.
Moreover, we did not measure the percentage of subjects that compiled the ASI-Lite being in an intoxication condition. This could limit the interpretation of the results.
Furthermore, the non-probabilistic sampling procedure should be a problem for the generalization of the results, due to the practical difficulties in collecting data in this population of patients. Finally, as our study was cross-sectional, it remains to be determined whether classes will emerge over time. Future research should investigate the stability of classes over time and the effect of important antecedents.

Author Contributions

Conceptualization, N.S.B. and R.R.; Data curation, N.S.B., I.P. and R.R.; Formal analysis, N.S.B. and I.P.; Methodology, N.S.B. and R.R.; Supervision, N.S.B. and R.R.; Writing—original draft, N.S.B., I.P. and R.R.; Writing—review and editing, N.S.B., I.P., M.P.P., M.L.M. and R.R. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

The study was approved by the Ethic Committee of University of Pavia, approval code 02/2016; approval date 14 July 2016.

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

No data available.

Conflicts of Interest

The authors declare no conflict of interest. The company had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript, or in the decision to publish the results.

References

  1. Connor, J.; Gullo, M.; White, A.; Kelly, A. Polysubstance use. Curr. Opin. Psychiatry 2014, 27, 269–275. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  2. Crummy, E.A.; O’Neal, T.J.; Baskin, B.M.; Ferguson, S.M. One Is Not Enough: Understanding and Modeling Polysubstance Use. Front. Neurosci. 2020, 14, 569. [Google Scholar] [CrossRef] [PubMed]
  3. Tyndall, M.W.; Currie, S.; Johnston, C.; Li, K.; O’Shaughnessy, M.; Schechter, M.T. Changing patterns of drug use: Vancouver Canada—1996 to 1999 (abstract 347P). Can. J. Infect. Dis. 2000, 11 (Suppl. B), 66B. [Google Scholar]
  4. Marsden, J.; Gossop, M.; Stewart, D.; Rolfe, A.; Farrell, M. Psychiatric symptoms among clients seeking treatment for drug dependence. Br. J. Psychiatry 2000, 176, 285–289. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  5. Cangemi, S.; Giorgi, I.; Bonfiglio, N.S.; Renati, R.; Vittadini, G. Impulsiveness and time perception in alcohol dependent patients in alcoholic rehabilitation treatment. G Ital. Med. Lav. Ergon. 2010, 32 (Suppl. B), B23–B28. [Google Scholar]
  6. Bonfiglio, N.S.; Mascia, M.L.; Cataudella, S.; Penna, M.P. Digital Help for Substance Users (SU): A Systematic Review. Int. J. Environ. Res. Public Health 2022, 19, 11309. [Google Scholar] [CrossRef]
  7. Bonfiglio, N.S.; Renati, R.; Agus, M.; Penna, M.P. Development of the motivation to use substance questionnaire. Drug Alcohol Depend. 2022, 234, 109414. [Google Scholar] [CrossRef]
  8. Bonfiglio, N.S.; Renati, R.; Agus, M.; Penna, M.P. Validation of a substance craving questionnaire (SCQ) in Italian population. Addict. Behav. Rep. 2019, 9, 100172. [Google Scholar] [CrossRef]
  9. Onyeka, I.N.; Uosukainen, H.T.; Korhonen, M.; Beynon, C.; Bell, J.S.; Ronkainen, K.; Föhr, J.; Tiihonen, J.; Kauhanen, J. Sociodemographic Characteristics and Drug Abuse Patterns of Treatment-Seeking Illicit Drug Abusers in Finland, 1997–2008: The Huuti Study. J. Addict. Dis. 2012, 31, 350–362. [Google Scholar] [CrossRef]
  10. Hassan, A.N.; Le Foll, B. Polydrug use disorders in individuals with opioid use disorder. Drug Alcohol Depend. 2019, 198, 28–33. [Google Scholar] [CrossRef]
  11. Gormley, M.A.; Blondino, C.T.; Taylor, D.D.H.; Lowery, E.; Clifford, J.S.; Burkart, B.; Graves, W.C.; Prom-Wormley, E.C.; Lu, J. Assessment of Co-Occurring Substance Use During Opiate Treatment Programs in the United States. Epidemiol. Rev. 2020, 42, 79–102. [Google Scholar] [CrossRef]
  12. Fischer, B. Prescriptions, power and politics: The turbulent history of methadone maintenance in Canada. J. Public Health Policy 2000, 21, 187. [Google Scholar] [CrossRef]
  13. Fischer, B.; Kirst, M.; Rehm, J.; Marsh, D.; Bondy, S.; Tyndall, M. The phenomenon of so-called ‘other drug use’ among opiate addicts in the North American context: Evidence, consequences, questions. In Beigebrauch: Offene Grenzen der Substitution; Jellinek, C., Westermann, B., Bellmann, G., Eds.; Deutscher Studienverlag: Weinheim, Germany, 2000; pp. 95–117. [Google Scholar]
  14. Brands, B.; Blake, J.; Sproule, B.; Gourlay, D.; Busto, U. Prescription opioid abuse in patients presenting for methadone maintenance treatment. Drug Alcohol Depend. 2004, 73, 199–207. [Google Scholar] [CrossRef]
  15. Tucker, J.S.; Huang, W.; Green, H.D., Jr.; Pollard, M.S. Patterns of Substance Use and Associations with Mental, Physical, and Social Functioning: A Latent Class Analysis of a National Sample of U.S. Adults Ages 30–80. Subst. Use Misuse 2020, 56, 131–139. [Google Scholar] [CrossRef]
  16. Büttner, A. Neuropathological Studies in Polydrug Abusers. In Neuropathology of Drug Addictions and Substance Misuse; Academic Press, Elsevier: Amsterdam, The Netherlands, 2016; pp. 884–889. [Google Scholar] [CrossRef]
  17. Bonfilgio, N.S.; Renati, R.; Pessa, E.; Penna, M.P. The Influence of Resilience Factors in the Treatment of Substances Addiction: A Multylayer Perceptron Predictive Model. In Proceedings of the 2018 IEEE International Symposium on Medical Measurements and Applications (MeMeA), Rome, Italy, 11–13 June 2018. [Google Scholar] [CrossRef]
  18. Merrin, G.J.; Thompson, K.; Leadbeater, B.J. Transitions in the use of multiple substances from adolescence to young adulthood. Drug Alcohol Depend. 2018, 189, 147–153. [Google Scholar] [CrossRef]
  19. McLellan, A.T.; Lewis, D.C.; O’Brien, C.P.; Kleber, H.D. Drug dependence, a chronic medical illness implications for treatment, insurance, and outcomes evaluation. J. Am. Med. Assoc. 2000, 284, 1689–1695. [Google Scholar] [CrossRef]
  20. Franklyn, A.M.; Eibl, J.K.; Gauthier, G.J.; Pellegrini, D.; Lightfoot, N.E.; Marsh, D.C. The impact of cocaine use in patients enrolled in opioid agonist therapy in Ontario, Canada. Int. J. Drug Policy 2017, 48, 1–8. [Google Scholar] [CrossRef]
  21. Betts, K.S.; Chan, G.; McIlwraith, F.; Dietze, P.; Whittaker, E.; Burns, L.; Alati, R. Differences in polysubstance use patterns and drug-related outcomes between people who inject drugs receiving and not receiving opioid substitution therapies. Addiction 2016, 111, 1214–1223. [Google Scholar] [CrossRef]
  22. Coulson, C.; Ng, F.; Geertsema, M.; Dodd, S.; Berk, M. Client-reported reasons for non-engagement in drug and alcohol treatment. Drug Alcohol Rev. 2009, 28, 372–378. [Google Scholar] [CrossRef]
  23. Mazzoleni, M.; Previdi, F.; Bonfiglio, N.S. Classification algorithms analysis for brain–computer interface in drug craving therapy. Biomed. Signal Process. Control 2019, 52, 463–472. [Google Scholar] [CrossRef]
  24. Bonfiglio, N.S.; Mascia, M.L.; Penna, M.P. Digital Treatment Paths for Substance Use Disorders (SUDs). Int. J. Environ. Res. Public Health 2022, 19, 7322. [Google Scholar] [CrossRef] [PubMed]
  25. Roberta, R.; Bonfiglio, N.S.; Patrone, L.; Rollo, D.; Penna, M.P. The Use of Cognitive Training and TDCS for the Treatment of an High Potential Subject: A Case Study. In Proceedings of the 2021 IEEE International Symposium on Medical Measurements and Applications (MeMeA), Lausanne, Switzerland, 23–25 June 2021. [Google Scholar] [CrossRef]
  26. Salvatore, B.N.; Renati, R.; Parodi, D.; Pessa, E.; Rollo, D.; Penna, M.P. Use of Training with BCI (Brain Computer Interface) in the Management of Impulsivity. In Proceedings of the 2020 IEEE International Symposium on Medical Measurements and Applications (MeMeA), Virtual, 31 May–2 June 2020. [Google Scholar] [CrossRef]
  27. Wang, L.; Min, J.E.; Krebs, E.; Evans, E.; Huang, D.; Liu, L.; Hser, Y.-I.; Nosyk, B. Polydrug use and its association with drug treatment outcomes among primary heroin, methamphetamine, and cocaine users. Int. J. Drug Policy 2017, 49, 32–40. [Google Scholar] [CrossRef] [PubMed]
  28. Bonfiglio, N.S.; Renati, R.; di Lucia, K.; Rollo, D.; Penna, M.P. The Use of Cognitive Training, Combined with TDCS, for Craving Reduction and Inhibitory Control Improvement in Cocaine Dependence: A Case Study. In Proceedings of the 2021 IEEE International Symposium on Medical Measurements and Applications (MeMeA), Lausanne, Switzerland, 23–25 June 2021. [Google Scholar] [CrossRef]
  29. Gjersing, L.; Bretteville-Jensen, A.L. Patterns of substance use and mortality risk in a cohort of ‘hard-to-reach’ polysubstance users. Addiction 2017, 113, 729–739. [Google Scholar] [CrossRef] [PubMed]
  30. Martinotti, G.; Carli, V.; Tedeschi, D.; Di Giannantonio, M.; Roy, A.; Janiri, L.; Sarchiapone, M. Mono- and polysubstance dependent subjects differ on social factors, childhood trauma, personality, suicidal behaviour, and comorbid Axis I diagnoses. Addict. Behav. 2009, 34, 790–793. [Google Scholar] [CrossRef] [PubMed]
  31. Steele, J.L.; Peralta, R. Are Polydrug Users More Physically and Verbally Aggressive? An Assessment of Aggression Among Mono- Versus Polydrug Users in a University Sample. J. Interpers. Violence 2017, 35, 4444–4467. [Google Scholar] [CrossRef]
  32. Yang, M.; Huang, S.-C.; Liao, Y.-H.; Deng, Y.-M.; Run, H.-Y.; Liu, P.-L.; Liu, X.-W.; Liu, T.-B.; Xiao, S.-Y.; Hao, W. Clinical characteristics of poly-drug abuse among heroin dependents and association with other psychopathology in compulsory isolation treatment settings in China. Int. J. Psychiatry Clin. Pract. 2017, 22, 129–135. [Google Scholar] [CrossRef]
  33. Tomczyk, S.; Isensee, B.; Hanewinkel, R. Latent classes of polysubstance use among adolescents—A systematic review. Drug Alcohol Depend. 2015, 160, 12–29. [Google Scholar] [CrossRef]
  34. Gonçalves, J.R.; Nappo, S.A. Factors that lead to the use of crack cocaine in combination with marijuana in Brazil: A qualitative study. BMC Public Health 2015, 15, 706. [Google Scholar] [CrossRef] [Green Version]
  35. Leeman, R.F.; Sun, Q.; Bogart, D.; Beseler, C.L.; Sofuoglu, M.; Sun, M.Q.; Bogart, M.D. Comparisons of Cocaine-Only, Opioid-Only, and Users of Both Substances in the National Epidemiologic Survey on Alcohol and Related Conditions (NESARC). Subst. Use Misuse 2016, 51, 553–564. [Google Scholar] [CrossRef] [Green Version]
  36. Hagenaars, J.A. Applied Latent Class Analysis; Cambridge University Press: Cambridge, UK, 2010. [Google Scholar]
  37. Hedden, S.; Martins, S.; Malcolm, R.; Floyd, L.; Cavanaugh, C.; Latimer, W. Patterns of illegal drug use among an adult alcohol dependent population: Results from the National Survey on Drug Use and Health. Drug Alcohol Depend. 2010, 106, 119–125. [Google Scholar] [CrossRef] [Green Version]
  38. Monga, N.; Rehm, J.; Fischer, B.; Brissette, S.; Bruneau, J.; El-Guebaly, N.; Noël, L.; Tyndall, M.; Wild, C.; Leri, F.; et al. Using latent class analysis (LCA) to analyze patterns of drug use in a population of illegal opioid users. Drug Alcohol Depend. 2007, 88, 1–8. [Google Scholar] [CrossRef]
  39. Schneider, K.E.; Park, J.N.; Allen, S.T.; Weir, B.W.; Sherman, S.G. Patterns of polysubstance use and overdose among people who inject drugs in Baltimore, Maryland: A latent class analysis. Drug Alcohol Depend. 2019, 201, 71–77. [Google Scholar] [CrossRef]
  40. Kuramoto, S.; Bohnert, A.; Latkin, C. Understanding subtypes of inner-city drug users with a latent class approach. Drug Alcohol Depend. 2011, 118, 237–243. [Google Scholar] [CrossRef] [Green Version]
  41. Blow, F.C.; Walton, M.A.; Barry, K.L.; Murray, R.L.; Cunningham, R.M.; Massey, L.S.; Chermack, S.T.; Booth, B.M. Alcohol and drug use among patients presenting to an inner-city emergency department: A latent class analysis. Addict. Behav. 2011, 36, 793–800. [Google Scholar] [CrossRef] [Green Version]
  42. Chen, L.-Y.; Crum, R.M.; Martins, S.S.; Kaufmann, C.N.; Strain, E.C.; Mojtabai, R. Patterns of concurrent substance use among nonmedical ADHD stimulant users: Results from the National Survey on Drug Use and Health. Drug Alcohol Depend. 2014, 142, 86–90. [Google Scholar] [CrossRef] [Green Version]
  43. Scherer, M.; Harrell, P.; Romano, E. Marijuana and Other Substance Use Among Motor Vehicle Operators: A Latent Class Analysis. J. Stud. Alcohol Drugs 2015, 76, 916–923. [Google Scholar] [CrossRef] [Green Version]
  44. Shiu-Yee, K.; Brincks, A.M.; Feaster, D.J.; Frimpong, J.A.; Nijhawan, A.; Mandler, R.N.; Schwartz, R.; del Rio, C.; Metsch, L.R. Patterns of Substance Use and Arrest Histories Among Hospitalized HIV Drug Users: A Latent Class Analysis. AIDS Behav. 2018, 22, 2757–2765. [Google Scholar] [CrossRef]
  45. Lubke, G.H.; Muthén, B. Investigating population heterogeneity with factor mixture models. Psychol. Methods 2005, 10, 21–39. [Google Scholar] [CrossRef] [Green Version]
  46. Cacciola, J.S.; Alterman, A.I.; McLellan, A.T.; Lin, Y.-T.; Lynch, K.G. Initial evidence for the reliability and validity of a “Lite” version of the Addiction Severity Index. Drug Alcohol Depend. 2007, 87, 297–302. [Google Scholar] [CrossRef]
  47. McLellan, A.T.; Cacciola, J.S.; Zanis, D. The Addiction Severity Index-Lite; Center for the Studies on Addiction, University of Pennsylvania/Philadelphia VA Medical Center: Philadelphia, PA, USA, 1997. [Google Scholar]
  48. Hipp, J.R.; Bauer, D.J. Local solutions in the estimation of growth mixture models. Psychol. Methods 2006, 11, 36–53. [Google Scholar] [CrossRef] [Green Version]
  49. McLachlan, G.J.; Peel, D. Finite Mixture Models; Wiley: New York, NY, USA, 2000. [Google Scholar]
  50. Bauer, D.J.; Curran, P.J. Distributional Assumptions of Growth Mixture Models: Implications for Overextraction of Latent Trajectory Classes. Psychol. Methods 2003, 8, 338–363. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  51. Marsh, H.; Lüdtke, O.; Trautwein, U.; Morin, A. Classical Latent Profile Analysis of Academic Self-Concept Dimensions: Synergy of Person- and Variable-Centered Approaches to Theoretical Models of Self-Concept. Struct. Equ. Model. Multidiscip. J. 2009, 16, 191–225. [Google Scholar] [CrossRef] [Green Version]
  52. Muthén, B. Statistical and Substantive Checking in Growth Mixture Modeling: Comment on Bauer and Curran (2003). Psychol. Methods 2003, 8, 369–377. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  53. Lo, Y.; Mendell, N.R.; Rubin, D.B. Testing the number of components in a normal mixture. Biometrika 2001, 88, 767–778. [Google Scholar] [CrossRef]
  54. Morin, A.; Maïano, C.; Nagengast, B.; Marsh, H.; Morizot, J.; Janosz, M. General Growth Mixture Analysis of Adolescents’ Developmental Trajectories of Anxiety: The Impact of Untested Invariance Assumptions on Substantive Interpretations. Struct. Equ. Model. Multidiscip. J. 2011, 18, 613–648. [Google Scholar] [CrossRef]
  55. Midanik, L.T.; Tam, T.W.; Weisner, C. Concurrent and simultaneous drug and alcohol use: Results of the 2000 National Alcohol Survey. Drug Alcohol Depend. 2007, 90, 72–80. [Google Scholar] [CrossRef] [Green Version]
  56. Grant, B.F.; Harford, T.C. Concurrent and simultaneous use of alcohol with cocaine: Results of national survey. Drug Alcohol Depend. 1990, 25, 97–104. [Google Scholar] [CrossRef]
  57. Norton, R.; Colliver, J. Prevalence and patterns of combined alcohol and marijuana use. J. Stud. Alcohol 1988, 49, 378–380. [Google Scholar] [CrossRef]
  58. Roy, E.; Richer, I.; Arruda, N.; Vandermeerschen, J.; Bruneau, J. Patterns of cocaine and opioid co-use and polyroutes of administration among street-based cocaine users in Montréal, Canada. Int. J. Drug Policy 2013, 24, 142–149. [Google Scholar] [CrossRef] [Green Version]
  59. John, W.S.; Wu, L.-T. Trends and correlates of cocaine use and cocaine use disorder in the United States from 2011 to 2015. Drug Alcohol Depend. 2017, 180, 376–384. [Google Scholar] [CrossRef]
  60. Brady, J.; Li, G. Prevalence of alcohol and other drugs in fatally injured drivers. Addiction 2012, 108, 104–114. [Google Scholar] [CrossRef] [Green Version]
  61. Bobashev, G.; Tebbe, K.; Peiper, N.; Hoffer, L. Polydrug use among heroin users in Cleveland, OH. Drug Alcohol Depend. 2018, 192, 80–87. [Google Scholar] [CrossRef]
  62. Leri, F.; Bruneau, J.; Stewart, J. Understanding polydrug use: Review of heroin and cocaine co-use. Addiction 2002, 98, 7–22. [Google Scholar] [CrossRef]
  63. Strong, D.R.; Myers, M.G.; Pulvers, K.; Noble, M.; Brikmanis, K.; Doran, N. Marijuana use among US tobacco users: Findings from wave 1 of the population assessment of tobacco health (PATH) study. Drug Alcohol Depend. 2018, 186, 16–22. [Google Scholar] [CrossRef] [Green Version]
  64. Hunt, D.E.; Lipton, D.S.; Goldsmith, D.; Strug, D. Street pharmacology: Uses of cocaine and heroin in the treatment of addiction. Drug Alcohol Depend. 1984, 13, 375–387. [Google Scholar] [CrossRef]
  65. Ellis, M.S.; Kasper, Z.A.; Cicero, T.J. Twin epidemics: The surging rise of methamphetamine use in chronic opioid users. Drug Alcohol Depend. 2018, 193, 14–20. [Google Scholar] [CrossRef]
  66. Kreek, M.J. Opiate and Cocaine Addictions: Challenge for Pharmacotherapies. Pharmacol. Biochem. Behav. 1997, 57, 551–569. [Google Scholar] [CrossRef]
  67. UNODC. World Drug Report, 2019; UNODC: Vienna, Austria, 2019. [Google Scholar] [CrossRef]
  68. Conway, K.P.; Vullo, G.C.; Nichter, B.; Wang, J.; Compton, W.M.; Iannotti, R.J.; Simons-Morton, B. Prevalence and Patterns of Polysubstance Use in a Nationally Representative Sample of 10th Graders in the United States. J. Adolesc. Health 2013, 52, 716–723. [Google Scholar] [CrossRef] [Green Version]
  69. EMCDDA—European Monitoring Centre for Drugs and Drug Addiction. Available online: https://www.linkedin.com/company/emcdda (accessed on 5 November 2022).
  70. Liu, Y.; Williamson, V.G.; Setlow, B.; Cottler, L.B.; Knackstedt, L.A. The importance of considering polysubstance use: Lessons from cocaine research. Drug Alcohol Depend. 2018, 192, 16–28. [Google Scholar] [CrossRef]
  71. Margolin, A.; Avants, S.K.; Kosten, T.R. Abstinence Symptomatology Associated with Cessation of Chronic Cocaine Abuse Among Methadone-Maintained Patients. Am. J. Drug Alcohol Abus. 1996, 22, 377–388. [Google Scholar] [CrossRef]
  72. Hedden, S.L.; Malcolm, R.J.; Latimer, W.W. Differences between adult non-drug users versus alcohol, cocaine and concurrent alcohol and cocaine problem users. Addict. Behav. 2009, 34, 323–326. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  73. Brady, K. Features of cocaine dependence with concurrent alcohol abuse. Drug Alcohol Depend. 1995, 39, 69–71. [Google Scholar] [CrossRef] [PubMed]
  74. Karno, M.P.; Grella, C.E.; Niv, N.; Warda, U.; Moore, A.A. Do Substance Type and Diagnosis Make a Difference? A Study of Remission from Alcohol-Versus Drug-Use Disorders Using the National Epidemiologic Survey on Alcohol and Related Conditions. J. Stud. Alcohol Drugs 2008, 69, 491–495. [Google Scholar] [CrossRef] [PubMed]
  75. Ives, R.; Ghelani, P. Polydrug use (the use of drugs in combination): A brief review. Drugs Educ. Prev. Policy 2006, 13, 225–232. [Google Scholar] [CrossRef]
  76. Preston, K.L.; Jobes, M.L.; Phillips, K.A.; Epstein, D.H. Real-time assessment of alcohol drinking and drug use in opioid-dependent polydrug users. Behav. Pharmacol. 2016, 27, 579–584. [Google Scholar] [CrossRef] [Green Version]
  77. Saha, T.D.; Grant, B.F.; Chou, S.P.; Kerridge, B.T.; Pickering, R.P.; Ruan, W.J. Concurrent use of alcohol with other drugs and DSM-5 alcohol use disorder comorbid with other drug use disorders: Sociodemographic characteristics, severity, and psychopathology. Drug Alcohol Depend. 2018, 187, 261–269. [Google Scholar] [CrossRef]
  78. Kandel, D.B.; Huang, F.-Y.; Davies, M. Comorbidity between patterns of substance use dependence and psychiatric syndromes. Drug Alcohol Depend. 2001, 64, 233–241. [Google Scholar] [CrossRef]
  79. Conway, K.P.; Kane, R.J.; Ball, S.A.; Poling, J.C.; Rounsaville, B.J. Personality, substance of choice, and polysubstance involvement among substance dependent patients. Drug Alcohol Depend. 2003, 71, 65–75. [Google Scholar] [CrossRef]
  80. Hasin, D.S.; Stinson, F.S.; Ogburn, E.; Grant, B.F. Prevalence, Correlates, Disability, and Comorbidity of DSM-IV Alcohol Abuse and Dependence in the United States. Arch. Gen. Psychiatry 2007, 64, 830–842. [Google Scholar] [CrossRef] [Green Version]
  81. Merikangas, K.R.; Mehta, R.L.; Molnar, B.E.; Walters, E.E.; Swendsen, J.D.; Aguilar-Gaziola, S.; Bijl, R.; Borges, G.; Caraveo-Anduaga, J.J.; DeWit, D.J.; et al. Comorbidity of substance use disorders with mood and anxiety disorders: Results of the International Consortium in Psychiatric Epidemiology. Addict. Behav. 1998, 23, 893–907. [Google Scholar] [CrossRef] [Green Version]
  82. Regier, D.A. Comorbidity of mental disorders with alcohol and other drug abuse. Results from the Epidemiologic Catchment Area (ECA) Study. JAMA 1990, 264, 2511–2518. [Google Scholar] [CrossRef]
  83. Stevens, A.K.; Gunn, R.L.; Sokolovsky, A.W.; Colby, S.M.; Jackson, K.M. Examining the heterogeneity of polysubstance use patterns in young adulthood by age and college attendance. Exp. Clin. Psychopharmacol. 2022, 30, 701–713. [Google Scholar] [CrossRef]
  84. Arria, A.M.; Caldeira, K.M.; Allen, H.K.; Vincent, K.B.; Bugbee, B.A.; O’Grady, K.E. Drinking Like an Adult? Trajectories of Alcohol Use Patterns Before and After College Graduation. Alcohol. Clin. Exp. Res. 2016, 40, 583–590. [Google Scholar] [CrossRef] [Green Version]
  85. Nealis, L.; Collins, J.-L.; Lee-Baggley, D.L.; Sherry, S.B.; Stewart, S.H. One of these things is not like the others: Testing trajectories in drinking frequency, drinking quantity, and alcohol-related problems in undergraduate women. Addict. Behav. 2016, 66, 66–69. [Google Scholar] [CrossRef]
  86. Cooper, M.L.; Kuntsche, E.; Levitt, A.; Barber, L.L.; Wolf, S. Motivational Models of Substance Use. In The Oxford Handbook of Substance Use and Substance Use Disorders; Oxford University Press: New York, NY, USA, 2015; Volume 1. [Google Scholar]
  87. Jones, B.T.; Corbin, W.; Fromme, K. A review of expectancy theory and alcohol consumption. Addiction 2001, 96, 57–72. [Google Scholar] [CrossRef]
  88. Cox, W.M.; Klinger, E. A motivational model of alcohol use. J. Abnorm. Psychol. 1988, 97, 168. [Google Scholar] [CrossRef]
  89. Kuntsche, E.; Knibbe, R.; Gmel, G.; Engels, R. Why do young people drink? A review of drinking motives. Clin. Psychol. Rev. 2005, 25, 841–861. [Google Scholar] [CrossRef]
  90. Martin, C.S. Timing of Alcohol and Other Drug Use. Alcohol Res. Health 2008, 31, 96–99. [Google Scholar]
  91. Quek, L.-H.; Chan, G.C.K.; White, A.; Connor, J.P.; Baker, P.J.; Saunders, J.B.; Kelly, A.B. Concurrent and Simultaneous Polydrug Use: Latent Class Analysis of an Australian Nationally Representative Sample of Young Adults. Front. Public Health 2013, 1, 61. [Google Scholar] [CrossRef] [Green Version]
  92. Wibberley, C.; Price, J. Patterns of Psycho-Stimulant Drug use Amongst ‘Social/Operational Users’: Implications for Services. Addict. Res. 2000, 8, 95–111. [Google Scholar] [CrossRef]
  93. Pennings, E.J.M.; Leccese, A.P.; De Wolff, F.A. Effects of concurrent use of alcohol and cocaine. Addiction 2002, 97, 773–783. [Google Scholar] [CrossRef] [PubMed]
  94. Schuckit, M.A.; Smith, T.L.; Shafir, A.; Clausen, P.; Danko, G.; Gonçalves, P.D.; Anthenelli, R.M.; Chan, G.; Kuperman, S.; Hesselbrock, M.; et al. Predictors of Patterns of Alcohol-Related Blackouts Over Time in Youth from the Collaborative Study of the Genetics of Alcoholism: The Roles of Genetics and Cannabis. J. Stud. Alcohol Drugs 2017, 78, 39–48. [Google Scholar] [CrossRef] [PubMed]
Figure 1. Elbow plot of the information criteria.
Figure 1. Elbow plot of the information criteria.
Ijerph 19 16759 g001
Table 1. Characteristics of the patients.
Table 1. Characteristics of the patients.
n (%)M (SD)
SexMale740 (81.8%)
Female165 (18.2%)
Age 37.72 (11.61)
Age first use (in years) 22.2 (9.6)
Years of addiction 11 (10.3)
Monthly spending to buy substances (in Euros) 618.5 (1620.6)
Main substanceAlcohol314 (34.7%)
THC/Cannabis112 (12.4%)
Cocaine361 (39.9%)
Heroin92 (10.2%)
Other26 (2.9%)
Use TobaccoYes789 (87.2%)
No116 (12.8%)
Employment statusNo406 (43.51%)
Yes579 (56.49%)
Table 2. Class description and indexes of the latent class analysis.
Table 2. Class description and indexes of the latent class analysis.
ModelLL#fpScalingAICCAICBICSABICAWEEntropyaLMRBLRTBFcmP
1 Class−4181.78201.0008403.558519.758499.758436.248529.75 NaNa0.460.313
2 Classes−4102.54411.0268287.088525.298484.298354.088545.790.489<0.001<0.00171.500.678
3 Classes−4073.73621.0608271.468631.698569.698372.788662.690.681ns<0.00181.580.009
4 Classes−4046.24831.0438258.488740.728657.728394.128782.220.745ns<0.05102.920.000
5 Classes−4021.071041.0788250.148854.408750.408420.118906.400.789nsns212.300.000
6 Classes−4003.141251.1188256.298982.568857.568460.579045.060.827nsns 0.000
Note. AIC = Akaike information criterion; aLMR = adjusted Lo–Mendell–Rubin likelihood ratio test; AWE = Approximate Weight of Evidence; BF = Bayes factor; CAIC = Constant AIC; BIC = Bayesian Information Criterion; cmP = approximate correct model probability; fp = free parameters; LL = log-likelihood; SABIC = Sample adjusted BIC; BLRT = bootstrap likelihood ratio test. Na = not available; ns = non-significant.
Table 3. Characteristics of the patients divided into the two different clusters.
Table 3. Characteristics of the patients divided into the two different clusters.
Cluster 1Cluster 2p Value
Main substanceAlcohol255 (28.2%)59 (6.5%)≤0.001
Heroin25 (2.8%)67 (7.4%)
Cocaine181 (20%)180 (19.9%)
THC/cannabis64 (7.1%)48 (5.3%)
Other18 (2%)8 (0.9%)
GenderMale438 (48.4%)302 (33.4%)0.292
Female105 (11.6%)60 (6.6%)
Employment statusYes243 (26.9%)163 (18%)0.935
No300 (33.1%)199 (22%)
TobaccoYes453 (50.1%)90 (9.9%)≤0.001
No336 (37.1%)26 (2.9%)
Age 39.7 (12)34.8 (10.4)≤0.001
Age first use (in years) 23.5 (10.7)20.5 (7.3)≤0.001
Years of addiction 11.4 (10.1)10.4 (9)0.122
Monthly spending to buy substance (in Euros) 529.3 (1878)754 (1111.1)0.044
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Share and Cite

MDPI and ACS Style

Bonfiglio, N.S.; Portoghese, I.; Renati, R.; Mascia, M.L.; Penna, M.P. Polysubstance Use Patterns among Outpatients Undergoing Substance Use Disorder Treatment: A Latent Class Analysis. Int. J. Environ. Res. Public Health 2022, 19, 16759. https://doi.org/10.3390/ijerph192416759

AMA Style

Bonfiglio NS, Portoghese I, Renati R, Mascia ML, Penna MP. Polysubstance Use Patterns among Outpatients Undergoing Substance Use Disorder Treatment: A Latent Class Analysis. International Journal of Environmental Research and Public Health. 2022; 19(24):16759. https://doi.org/10.3390/ijerph192416759

Chicago/Turabian Style

Bonfiglio, Natale Salvatore, Igor Portoghese, Roberta Renati, Maria Lidia Mascia, and Maria Pietronilla Penna. 2022. "Polysubstance Use Patterns among Outpatients Undergoing Substance Use Disorder Treatment: A Latent Class Analysis" International Journal of Environmental Research and Public Health 19, no. 24: 16759. https://doi.org/10.3390/ijerph192416759

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop