Camus D, Gholam M, Conus P, Bonsack C, Gasser J, Moulin V
Direction des soins, département de psychiatrie, CHU de Vaudois (CHUV), route de Cery, n(o) 1, Bat, Les Cèdres, 1008 Prilly, Lausanne, Suisse.
Département de psychiatrie, centre d'épidémiologie psychiatrique et psychopathologie, CHU de Vaudois (CHUV), Lausanne, Suisse.
Encephale. 2022 Apr;48(2):155-162. doi: 10.1016/j.encep.2021.02.010. Epub 2021 May 20.
The prevention of Physical Violent Behavior (VB) toward others during psychiatric hospitalization is a major concern of clinicians. These VBs can have a deleterious impact on the victims, inpatients or caregivers, as well as on the therapeutic milieu. Such violence can also have negative consequences for the assailant patients, such as repeatedly being hospitalized under restraint, stigmatization, and difficulties reintegrating into the community.
This study explored individual (age, gender, marital status, living status, diagnostic) and institutional (type of admission, length of stay, number of previous hospitalizations) risk factors, and how their interactions could increase the risk of VB during psychiatric hospitalizations.
The study was carried out over a period of four years in the psychiatry department of the Lausanne University Hospital, on the 15 wards (219 beds) specialized in acute psychiatric care for adults. All the patients admitted to one of these wards during this period (n=4518), aged between 18 and 65 years, were included in the study. The sample was divided in two groups: non-violent patients (NVPs) and violent patients (VPs). VBs, defined as physical aggressions against another person, were assessed by the Staff Observation Aggression Scale - Revised (SOAS - R). Only physical assaults, associated or not with other types of violence, involving hospitalized patients were analyzed. Personal and institutional factors were extracted from the hospital database. Chi independence tests were used to assess differences between groups. Logistic regression models were used to identify the links between each factor and the VB. Classification and regression trees were used to study the hierarchical effect of factors, and combinations of factors, on VBs.
During the study period, 414 VBs were reported involving 199 patients (4.40 % of all patients). VPs were significantly younger, male, more likely to be unmarried and living in sheltered housing before hospitalization. In this group, the proportion of patients with diagnoses of schizophrenia, and/or schizophrenia with comorbid substance abuse and cognitive impairment, were higher compared to NVPs. VPs were more frequently admitted involuntarily, had a longer average length of stay and a greater number of previous hospitalizations. The logistic regression model performed on individual factors have shown a significant link between age (OR=0.99; CI: 0.97-1.00; P-value=0.024), living in sheltered housing before admission (OR=2.46; CI: 1.61-3.75; P-value<0.000), schizophrenic disorders (OR=2.18; CI: 1.35-3.57; P-value=0.001), schizophrenic disorders with substance abuse comorbidity (OR=2.00; CI: 1.16-3.37; P-value=0.016), cognitive impairment (OR=3.41; CI: 1,21-8.25; P-value=0.010), and VBs. The logistic regression model on institutional factors have shown a significant link between involuntary hospitalization (OR=4.38; CI: 3.20-6.08; P-value<0.000), length of previous stay (OR=1.01; CI: 1.00-1.01; P-value<0.000), number of previous hospitalizations (OR=1.06; CI: 1.00-1.12; P-value=0.031), and VBs. The logistic regression model on individual and institutional factors have shown a significant link between age (OR=0.99; CI: 0.97-1.00; P-value=0.008), living in sheltered housing before admission (OR=2.46: CI: 1.61-3.75; P-value=0.034), cognitive impairment (OR=3.41; CI: 1.21-8.25; P-value=0.074), involuntary hospitalization (OR=3.46; CI: 2.48-4.87; P-value<0.000), length of previous stay (OR=1.01; CI: 1.00-1.01; P-value<0.000), and VBs. The classification and regression trees have shown that the relationship between long length of stay and repeated hospitalizations mainly potentiate the risk of violence.
The results of this study have shown the existence of a small group of vulnerable patients who accumulate constrained hospital stays during which violence occurs. Exploring the clinical profiles and institutional pathways of patients could help to better identify these patients and promote a more appropriate mode of support, such as intensive clinical case management. This model could facilitate the development of a clinical network and the links between the structures and partners caring for a patient. This would create a continuous support, avoiding or limiting the lack of continuity of care and care disruption.
在精神科住院期间预防针对他人的身体暴力行为(VB)是临床医生主要关注的问题。这些暴力行为会对受害者、住院患者或护理人员以及治疗环境产生有害影响。此类暴力行为对攻击者患者也可能产生负面后果,例如反复在约束下住院、被污名化以及重新融入社区困难。
本研究探讨个体(年龄、性别、婚姻状况、居住状况、诊断)和机构(入院类型、住院时间、既往住院次数)风险因素,以及它们之间的相互作用如何增加精神科住院期间发生VB的风险。
该研究在洛桑大学医院精神科进行,为期四年,涉及15个专门为成人提供急性精神科护理的病房(219张床位)。在此期间入住这些病房之一的所有患者(n = 4518),年龄在18至65岁之间,均纳入研究。样本分为两组:非暴力患者(NVP)和暴力患者(VP)。VB定义为对他人的身体攻击,通过修订后的工作人员观察攻击量表(SOAS - R)进行评估。仅分析涉及住院患者的身体攻击,无论是否与其他类型的暴力相关。个人和机构因素从医院数据库中提取。采用卡方独立性检验评估组间差异。使用逻辑回归模型确定每个因素与VB之间的关联。使用分类和回归树研究因素及其组合对VB的分层效应。
在研究期间,报告了414起VB事件,涉及199名患者(占所有患者的4.40%)。VP患者明显更年轻,男性居多,住院前更可能未婚且居住在庇护性住房中。与NVP相比,该组中诊断为精神分裂症和/或合并物质滥用及认知障碍的精神分裂症患者比例更高。VP患者更频繁地非自愿入院,平均住院时间更长,既往住院次数更多。对个体因素进行的逻辑回归模型显示年龄(OR = 0.99;CI:0.97 - 1.00;P值 = 0.024)、入院前居住在庇护性住房(OR = 2.46;CI:1.61 - 3.75;P值 < 0.000)、精神分裂症(OR = 2.18;CI:1.35 - 3.57;P值 = 0.001)、合并物质滥用的精神分裂症(OR = 2.00;CI:1.16 - 3.37;P值 = 0.016)、认知障碍(OR = 3.41;CI:1.21 - 8.25;P值 = 0.010)与VB之间存在显著关联。对机构因素进行的逻辑回归模型显示非自愿住院(OR = 4.38;CI:3.20 - 6.08;P值 < 0.000)、既往住院时间(OR = 1.01;CI:1.00 - 1.01;P值 < 0.000)、既往住院次数(OR = 1.06;CI:1.00 - 1.12;P值 = 0.031)与VB之间存在显著关联。对个体和机构因素进行的逻辑回归模型显示年龄(OR = 0.99;CI:0.97 - 1.00;P值 = 0.008)、入院前居住在庇护性住房(OR = 2.46:CI:1.61 - 3.75;P值 = 0.034)、认知障碍(OR = 3.41;CI:1.21 - 8.25;P值 = 0.074)、非自愿住院(OR = 3.46;CI:2.48 - 4.87;P值 < 0.000)、既往住院时间(OR = 1.01;CI:1.00 - 1.01;P值 < 0.000)与VB之间存在显著关联。分类和回归树显示住院时间长和反复住院之间的关系主要增加了暴力风险。
本研究结果表明存在一小部分脆弱患者,他们在住院期间多次受到约束,期间发生暴力行为。探索患者的临床特征和机构途径有助于更好地识别这些患者,并促进更合适的支持模式,如强化临床病例管理。这种模式可以促进临床网络的发展以及照顾患者的机构和合作伙伴之间的联系。这将提供持续的支持,避免或限制护理连续性的缺乏和护理中断。