Oliva Vincenzo, De Prisco Michele, Pons-Cabrera Maria Teresa, Guzmán Pablo, Anmella Gerard, Hidalgo-Mazzei Diego, Grande Iria, Fanelli Giuseppe, Fabbri Chiara, Serretti Alessandro, Fornaro Michele, Iasevoli Felice, de Bartolomeis Andrea, Murru Andrea, Vieta Eduard, Fico Giovanna
Bipolar and Depressive Disorders Unit, Institute of Neurosciences, Hospital Clinic, University of Barcelona, IDIBAPS, CIBERSAM, 170 Villarroel St., 12-0, 08036 Barcelona, Catalonia, Spain.
Department of Biomedical and Neuromotor Sciences, University of Bologna, 40123 Bologna, Italy.
J Clin Med. 2022 Jul 6;11(14):3935. doi: 10.3390/jcm11143935.
Substance use disorder (SUD) is a common comorbidity in individuals with bipolar disorder (BD), and it is associated with a severe course of illness, making early identification of the risk factors for SUD in BD warranted. We aimed to identify, through machine-learning models, the factors associated with different types of SUD in BD. We recruited 508 individuals with BD from a specialized unit. Lifetime SUDs were defined according to the DSM criteria. Random forest (RF) models were trained to identify the presence of (i) any (SUD) in the total sample, (ii) alcohol use disorder (AUD) in the total sample, (iii) AUD co-occurrence with at least another SUD in the total sample (AUD+SUD), and (iv) any other SUD among BD patients with AUD. Relevant variables selected by the RFs were considered as independent variables in multiple logistic regressions to predict SUDs, adjusting for relevant covariates. AUD+SUD could be predicted in BD at an individual level with a sensitivity of 75% and a specificity of 75%. The presence of AUD+SUD was positively associated with having hypomania as the first affective episode (OR = 4.34 95% CI = 1.42-13.31), and the presence of hetero-aggressive behavior (OR = 3.15 95% CI = 1.48-6.74). Machine-learning models might be useful instruments to predict the risk of SUD in BD, but their efficacy is limited when considering socio-demographic or clinical factors alone.
物质使用障碍(SUD)是双相情感障碍(BD)患者中常见的共病情况,且与严重的病程相关,因此有必要尽早识别BD患者中SUD的危险因素。我们旨在通过机器学习模型识别与BD中不同类型SUD相关的因素。我们从一个专科单位招募了508名BD患者。终生SUD根据《精神疾病诊断与统计手册》标准定义。训练随机森林(RF)模型以识别:(i)总样本中任何(SUD)的存在;(ii)总样本中酒精使用障碍(AUD)的存在;(iii)总样本中AUD与至少另一种SUD同时出现(AUD+SUD);以及(iv)患有AUD的BD患者中的任何其他SUD。RF选择的相关变量在多元逻辑回归中被视为自变量,以预测SUD,并对相关协变量进行调整。在个体水平上,BD中AUD+SUD的预测敏感性为75%,特异性为75%。AUD+SUD的存在与以轻躁狂作为首次情感发作呈正相关(OR = 4.34,95%CI = 1.42 - 13.31),与存在异质性攻击行为呈正相关(OR = 3.15,95%CI = 1.48 - 6.74)。机器学习模型可能是预测BD中SUD风险的有用工具,但仅考虑社会人口统计学或临床因素时其效果有限。