| Literature DB >> 34873146 |
Massimiliano Mazza1, Kornelius Kammler-Sücker2,3, Tagrid Leménager4, Falk Kiefer4, Bernd Lenz4.
Abstract
Due to its high ecological validity, virtual reality (VR) technology has emerged as a powerful tool for mental health research. Despite the wide use of VR simulations in research on mental illnesses, the study of addictive processes through the use of VR environments is still at its dawn. In a systematic literature search, we identified 38 reports of research projects using highly immersive head-mounted displays, goggles, or CAVE technologies to provide insight into treatment mechanisms of addictive behaviors. So far, VR research has mainly addressed the roles of craving, psychophysiology, affective states, cognition, and brain activity in addiction. The computer-generated VR environments offer very realistic, dynamic, interactive, and complex real-life simulations requesting active participation. They create a high sense of immersion in users by combining stereoscopic three-dimensional visual, auditory, olfactory, and tactile perceptions, tracking systems responding to user movements, and social interactions. VR is an emerging tool to study how proximal multi-sensorial cues, contextual environmental cues, as well as their interaction (complex cues) modulate addictive behaviors. VR allows for experimental designs under highly standardized, strictly controlled, predictable, and repeatable conditions. Moreover, VR simulations can be personalized. They are currently refined for psychotherapeutic interventions. Embodiment, eye-tracking, and neurobiological factors represent novel future directions. The progress of VR applications has bred auspicious ways to advance the understanding of treatment mechanisms underlying addictions, which researchers have only recently begun to exploit. VR methods promise to yield significant achievements to the addiction field. These are necessary to develop more efficacious and efficient preventive and therapeutic strategies.Entities:
Mesh:
Year: 2021 PMID: 34873146 PMCID: PMC8648903 DOI: 10.1038/s41398-021-01739-3
Source DB: PubMed Journal: Transl Psychiatry ISSN: 2158-3188 Impact factor: 6.222
Fig. 1PRISMA flow diagram of the study selection process.
It illustrates the numbers of records identified, excluded and included, and reasons for exclusions. HMD head-mounted display.
VR studies according to treatment mechanism addressed.
| Publication | Target behavior | Mechanism | Country | Case number | Mean age (years) ± SD | Social component | VR Technique | |
|---|---|---|---|---|---|---|---|---|
| Lee et al. (2003) | [ | Cigarette smoking | C | Korea | 22 (0% ♀) | Not reported | + | HMD |
| Bordnick et al. (2004) | [ | Nicotine dependence | C | USA | 13 (69% ♀) | 37.1 ± 12.2 | + | HMD |
| Lee et al. (2004) | [ | Cigarette smoking | C, PA | Korea | 16 (0% ♀) | 17.1 ± 0.8 | + | HMD |
| Saladin et al. (2006) | [ | Crack cocaine dependence | C, PA | USA | 11 (55% ♀) | 42.1 ± 7.3 | + | HMD |
| Carter et al. (2008) | [ | Nicotine dependence | C | USA | 22 (% ♀ not reported) | 20.8 ± 1.4 | + | HMD |
| Bordnick et al. (2008) | [ | Alcohol use disorder | C, CBA | USA | 32 (20% ♀) | 39.5 ± 10.1 | + | HMD |
| Lee et al. (2009) | [ | Alcohol dependence | CBA | Korea | 20 VR (0% ♀) 18 CBT (0% ♀) 15 controls (0% ♀) | 38.6 ± 5.9 37.5 ± 4.6 38.6 ± 4.6 | + | Goggles |
| Moon and Lee (2009) | [ | Cigarette smoking | CBA | Korea | 8 (0% ♀) | 17.0 ± 0.8 | + | HMD |
| Bordnick et al. (2009) | [ | Cannabis abuse or dependence | C, CBA | USA | 20 (20% ♀) | 26.8 ± 6.7 | + | HMD |
| Girard et al. (2009) | [ | Cigarette smoking | O | Canada | 91 (57% ♀) | 44 ± 11 | — | HMD |
| Lee et al. (2008) | [ | Alcohol dependence | C | Korea | 14 patients (0% ♀) 14 controls (0% ♀) | 39.6 ± 6.0 36.8 ± 7.4 | + | HMD |
| Ferrer-García et al. (2010) | [ | Cigarette smoking | C | Spain | 27 (31% ♀) | 29.7 ± 13.4 | + | HMD |
| Traylor et al. (2011) | [ | Nicotine / alcohol dependence | C | USA | 14 double dependents (29% ♀) 7 nicotine dependents (57% ♀) | 38.4 ± 9.7 39.3 ± 11.0 | + | HMD |
| Choi et al. (2011) | [ | Nicotine dependence | C, PA | Korea | 10 (10% ♀) | 26.2 ± 5.1 | + | CAVE |
| Acker and MacKillop (2013) | [ | Nicotine dependence | C | USA | 47 (39% ♀) | 28 ± 10.8 | — | HMD |
| Giroux et al. (2013) | [ | Gambling | C | Canada | 10 (40% ♀) | 63.4 ± 7.2 | + | HMD |
| Park et al. (2014) | [ | Nicotine dependence | C | Korea | 15 CET (0% ♀) 15 CBT (0% ♀) | 30.7 ± 6.6 33.1 ± 5.5 | + | CAVE |
| Kaganoff et al. (2012) | [ | Nicotine dependence | C, CBA | USA | 46 (48% ♀) | 46.9 ± 9.3 | + | HMD |
| Park et al. (2015) | [ | Gambling | C, PA | Korea | 12 (0% ♀) | 32.3 ± 6.4 | + | CAVE |
| Thompson-Lake et al. (2015) | [ | Nicotine dependence | C, PA | USA | 36 (39% ♀) | Not reported | + | HMD |
| Bordnick et al. (2012) | [ | Nicotine dependence | C, CBA | USA | 25 replacement therapy (40% ♀) 21 VR skill training (57% ♀) | 46.2 ± 8.4 47.9 ± 10.4 | + | HMD |
| Park et al. (2016) | [ | Excessive internet gaming | CBA | Korea | 12 gaming addiction (VRT, 0% ♀) 12 gaming addiction (CBT, 0% ♀) 12 casual gaming (0% ♀) | 23.6 ± 2.7 24.2 ± 3.2 23.3 ± 2.9 | + | Goggles |
| Giovancarli et al. (2016) | [ | Nicotine dependence | SP | France | Not reported | — | + | HMD |
| Bouchard et al. (2017) | [ | Gambling | C, CBA | Canada | 28 frequent and 36 infrequent (% ♀ not reported) 34 pathological (35% ♀) 25 pathological (50% ♀) | Not reported 45 ± 12.6 47 ± 12.8 | + | HMD HMD HMD |
| Shin et al. (2018) | [ | Internet gaming disorder | C | Korea | 34 Internet gaming disorder (0% ♀) 30 controls (0% ♀) | 17.2 ± 4.6 18.6 ± 5.0 | + | HMD |
| Chen et al. (2018) | [ | Stimulant addiction disorder | SP | China | 180 (% ♀ not reported) | — | — | HMD |
| Wang et al. (2018) | [ | Methamphetamine dependence | C, PA | China | 61 abstinent (0% ♀) 45 controls (0% ♀) | 33.6 ± 7.3 34.3 ± 8.6 | + | HMD |
| Wang et al. (2019) | [ | Methamphetamine dependence | C, PA | China | 31 intervention (0% ♀) 29 waiting list (0% ♀) 612 intervention (17% ♀) 276 waiting list (25% ♀) | 35.0 ± 7.5 32.6 ± 6.6 34.0 ± 7.6 33.4 ± 7.8 | + + | HMD HMD |
| Ghiţă et al. (2019) | [ | Alcohol use disorder | C | Spain | 13 AUD (38% ♀) 14 social drinkers (86% ♀) | 48 ± 4.8 23 ± 5.6 | + | HMD |
| Tan et al. (2019) | [ | Methamphetamine use disorder | C, PA, CBA | China | 60 (0% ♀) | 35.4 ± 5.6 | + | HMD |
| Simon et al. (2020) | [ | Heavy alcohol drinking | C | Belgium | 18 heavy drinkers (44% ♀) 21 occasional drinkers (52% ♀) | 24.6 ± 3.1 23.7 ± 2.9 | + | HMD |
| Liu et al. (2020) | [ | Methamphetamine use disorder | SP | China | 95 (% ♀ not reported) | — | Not reported | HMD |
| Ding et al. (2020) | [ | Methamphetamine dependence | PA, CBA | China | 333 dependents (0% ♀) 332 controls (0% ♀) | 33.8 ± 6.5 33.6 ± 7.9 | + | HMD |
| Hernández-Serrano et al. (2020) | [ | Alcohol use disorder | C | Spain | 15 VR-CET + TAU and 27 TAU (50% ♀) | 54.6 ± 7.7 | + | HMD |
| Amato et al. (2020) | [ | Alcohol effects | CBA | Australia | 54 (56% ♀) | 20.7 ± 2.1 | + | HMD |
| Lee et al. (2020) | [ | Internet gaming disorder | PA | Korea | 23 addicted (0% ♀) 29 controls (0% ♀) | 18.9 ± 3.9 19.8 ± 3.9 | + | HMD |
| Tsai et al. (2021) | [ | Methamphetamine use disorder | C, PA | Taiwan | 26 addicted (19% ♀) 11 controls (36% ♀) | Not reported | + | HMD |
| Ghiţă et al. (2021) | [ | Alcohol use disorder | PA, CBA | Spain | 1 addicted (0% ♀) | 49 | + | HMD |
Social component refers to social interaction or pressure, animate video, or presence of an avatar.
C craving, CBA cognition and brain activity, CBT cognitive behavioral therapy, CET cue-exposure therapy, HMD head-mounted display, O others, PA physiology and affective states, SP study protocol, TAU treatment as usual, VR virtual reality, VRT VR therapy.