Actionable Predictive Factors of Homelessness in a Psychiatric Population: Results from the REHABase Cohort Using a Machine Learning Approach

被引:1
|
作者
Lio, Guillaume [1 ,2 ,3 ]
Ghazzai, Malek [1 ]
Haesebaert, Frederic [4 ]
Dubreucq, Julien [5 ]
Verdoux, Helene [6 ]
Quiles, Clelia [6 ]
Jaafari, Nemat [7 ,8 ]
Chereau-Boudet, Isabelle [9 ]
Legros-Lafarge, Emilie [10 ]
Guillard-Bouhet, Nathalie [11 ]
Massoubre, Catherine [5 ,12 ]
Gouache, Benjamin [13 ]
Plasse, Julien [4 ,14 ,15 ,16 ]
Barbalat, Guillaume [4 ,14 ,15 ,16 ]
Franck, Nicolas [4 ,14 ,15 ,16 ]
Demily, Caroline [1 ,2 ,3 ]
机构
[1] Hop Vinatier, Ctr Excellence Autisme iMIND, Pole HU ADIS, F-69678 Bron, France
[2] CNRS, UMR 5229, Equipe Disorders Brain, Inst Marc Jeannerod, F-69100 Villeurbanne, France
[3] Univ Lyon 1, F-69100 Villeurbanne, France
[4] Hop Vinatier, Pole Ctr Rive Gauche, F-69678 Bron, France
[5] Ctr Hosp Univ St Etienne, F-42270 St Priest En Jarez, France
[6] Univ Bordeaux, Hop Charles Perrens, F-33405 Talence, France
[7] Univ Poitiers, Ctr Hosp Laborit, CREATIV, F-86000 Poitiers, France
[8] Univ Poitiers, URC Pierre Deniker, F-86000 Poitiers, France
[9] Ctr Hosp Univ Clermont Ferrand, Ctr Referent Conjoint Rehabil CRCR, F-63000 Clermont Ferrand, France
[10] Ctr Referent Rehabil Psychosociale Limoges C2RL77, F-87000 Limoges, France
[11] Ctr Hosp Laborit, F-86000 Poitiers, France
[12] Univ St Etienne, Fac Med, F-42023 St Etienne, France
[13] Ctr Hosp Alpes Isere, F-38120 St Egreve, France
[14] CH Vinatier, Ctr Ressource Rehabil Psychosociale & Remediat Co, F-69100 Bron, France
[15] Inst Marc Jeannerod, UMR 5229, F-69100 Bron, France
[16] Univ Lyon 1, F-69100 Bron, France
关键词
homelessness; antipsychotics; REHABase; psychotropic medication; classification and regression tree model (CART); machine learning; depression; MENTAL-ILLNESS; ANTIPSYCHOTIC POLYPHARMACY; EMERGENCY-DEPARTMENTS; RISK-FACTORS; HEALTH; VALIDITY; PEOPLE; RELIABILITY; PREVALENCE; MANAGEMENT;
D O I
10.3390/ijerph191912268
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Background: There is a lack of knowledge regarding the actionable key predictive factors of homelessness in psychiatric populations. Therefore, we used a machine learning model to explore the REHABase database (for rehabilitation database-n = 3416), which is a cohort of users referred to French psychosocial rehabilitation centers in France. Methods: First, we analyzed whether the different risk factors previously associated with homelessness in mental health were also significant risk factors in the REHABase. In the second step, we used unbiased classification and regression trees to determine the key predictors of homelessness. Post hoc analyses were performed to examine the importance of the predictors and to explore the impact of cognitive factors among the participants. Results: First, risk factors that were previously found to be associated with homelessness were also significant risk factors in the REHABase. Among all the variables studied with a machine learning approach, the most robust variable in terms of predictive value was the nature of the psychotropic medication (sex/sex relative mean predictor importance: 22.8, sigma = 3.4). Post hoc analyses revealed that first-generation antipsychotics (15.61%; p < 0.05 FDR corrected), loxapine (16.57%; p < 0.05 FWER corrected) and hypnotics (17.56%; p < 0.05 FWER corrected) were significantly associated with homelessness. Antidepressant medication was associated with a protective effect against housing deprivation (9.21%; p < 0.05 FWER corrected). Conclusions: Psychotropic medication was found to be an important predictor of homelessness in our REHABase cohort, particularly loxapine and hypnotics. On the other hand, the putative protective effect of antidepressants confirms the need for systematic screening of depression and anxiety in the homeless population.
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页数:12
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