Haya Fatimah, Michael D Hunter, Marina A Bornovalova
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Using timeline follow-back data from <i>N</i> = 139 adults with a substance use disorder transitioning back to the community after residential treatment, we examined individual differences and the criterion-related validity of DWPM parameters to determine the clinical utility of the double-well model. While nonuse was the predominant stable state across participants, we found significant between-subjects variability steepness and RR. These individual differences were predictable via demographics, baseline psychopathology, treatment history, and treatment condition. Steepness and RR also predicted long-term outcomes, including life satisfaction and criminal behavior, above and beyond traditional metrics of relapse (proportion of days used and time to first use). Thus, the DWPM is a strong theoretical and statistical representation of the underlying relapse processes. Moreover, the parameters show criterion-related validity and may be useful in precision medicine. 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This model describes posttreatment substance use in terms of a dynamical system with stable equilibria of abstinence and relapse, person-specific dominant equilibria (tilt), the ease of changing between equilibria (steepness), and an overall relapse risk (RR). Using timeline follow-back data from <i>N</i> = 139 adults with a substance use disorder transitioning back to the community after residential treatment, we examined individual differences and the criterion-related validity of DWPM parameters to determine the clinical utility of the double-well model. While nonuse was the predominant stable state across participants, we found significant between-subjects variability steepness and RR. These individual differences were predictable via demographics, baseline psychopathology, treatment history, and treatment condition. 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引用次数: 0
摘要
药物使用复发很难定义,以往的工作使用的都是一刀切的临时定义。研究人员呼吁对复吸这一概念和模式进行动态和个性化的理解,这就需要新的统计工具。我们的目标是开发并验证一种新型的潜在复吸过程统计模型:双井潜能模型(DWPM)。该模型以一个动态系统来描述治疗后的药物使用情况,该动态系统具有戒断和复吸的稳定平衡、特定人群的主导平衡(倾斜)、平衡之间变化的难易程度(陡度)以及总体复吸风险(RR)。我们利用 N = 139 名在住院治疗后重返社区的药物使用障碍成人的时间线跟踪数据,研究了个体差异和 DWPM 参数的标准相关有效性,以确定双井模型的临床实用性。虽然不使用是所有参与者的主要稳定状态,但我们发现受试者之间的陡度和RR存在显著差异。这些个体差异可以通过人口统计学、基线精神病理学、治疗史和治疗条件预测。除了传统的复吸指标(吸毒天数比例和首次吸毒时间)之外,陡度和RR还能预测长期结果,包括生活满意度和犯罪行为。因此,DWPM 在理论和统计上都很好地反映了潜在的复吸过程。此外,这些参数还显示出与标准相关的有效性,可用于精准医疗。(PsycInfo Database Record (c) 2024 APA, 版权所有)。
Modeling the dynamics of addiction relapse via the double-well potential system.
Substance use relapse is difficult to define, and previous work has used one-size-fits-all ad hoc definitions. Researchers have called for a dynamic and personalized understanding of relapse as a concept and model, necessitating novel statistical tools. We aimed to develop and validate a novel statistical model of latent relapse processes: the double-well potential model (DWPM). This model describes posttreatment substance use in terms of a dynamical system with stable equilibria of abstinence and relapse, person-specific dominant equilibria (tilt), the ease of changing between equilibria (steepness), and an overall relapse risk (RR). Using timeline follow-back data from N = 139 adults with a substance use disorder transitioning back to the community after residential treatment, we examined individual differences and the criterion-related validity of DWPM parameters to determine the clinical utility of the double-well model. While nonuse was the predominant stable state across participants, we found significant between-subjects variability steepness and RR. These individual differences were predictable via demographics, baseline psychopathology, treatment history, and treatment condition. Steepness and RR also predicted long-term outcomes, including life satisfaction and criminal behavior, above and beyond traditional metrics of relapse (proportion of days used and time to first use). Thus, the DWPM is a strong theoretical and statistical representation of the underlying relapse processes. Moreover, the parameters show criterion-related validity and may be useful in precision medicine. (PsycInfo Database Record (c) 2024 APA, all rights reserved).