Dynamic suicide topic modelling: Deriving population-specific, psychosocial and time-sensitive suicide risk variables from Electronic Health Record psychotherapy notes

IF 3.2 3区 心理学 Q1 PSYCHOLOGY, CLINICAL
Maxwell Levis, Joshua Levy, Vincent Dufort, Carey J. Russ, Brian Shiner
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Abstract

In the machine learning subfield of natural language processing, a topic model is a type of unsupervised method that is used to uncover abstract topics within a corpus of text. Dynamic topic modelling (DTM) is used for capturing change in these topics over time. The study deploys DTM on corpus of electronic health record psychotherapy notes. This retrospective study examines whether DTM helps distinguish closely matched patients that did and did not die by suicide. Cohort consists of United States Department of Veterans Affairs (VA) patients diagnosed with Posttraumatic Stress Disorder (PTSD) between 2004 and 2013. Each case (those who died by suicide during the year following diagnosis) was matched with five controls (those who remained alive) that shared psychotherapists and had similar suicide risk based on VA's suicide prediction algorithm. Cohort was restricted to patients who received psychotherapy for 9+ months after initial PTSD diagnoses (cases = 77; controls = 362). For cases, psychotherapy notes from diagnosis until death were examined. For controls, psychotherapy notes from diagnosis until matched case's death date were examined. A Python-based DTM algorithm was utilized. Derived topics identified population-specific themes, including PTSD, psychotherapy, medication, communication and relationships. Control topics changed significantly more over time than case topics. Topic differences highlighted engagement, expressivity and therapeutic alliance. This study strengthens groundwork for deriving population-specific, psychosocial and time-sensitive suicide risk variables.

动态自杀主题建模:从电子健康记录心理治疗笔记中导出特定人群、心理社会和时间敏感的自杀风险变量
在自然语言处理的机器学习子领域中,主题模型是一种无监督的方法,用于发现文本语料库中的抽象主题。动态主题建模(DTM)用于捕获这些主题随时间的变化。本研究将DTM应用于电子健康档案心理治疗笔记的语料库。这项回顾性研究探讨了DTM是否有助于区分自杀和非自杀的密切匹配患者。该队列由2004年至2013年期间被诊断患有创伤后应激障碍(PTSD)的美国退伍军人事务部(VA)患者组成。根据VA的自杀预测算法,每个病例(在诊断后一年内死于自杀的人)与五个对照组(那些仍然活着的人)相匹配,这些对照组共享心理治疗师,自杀风险相似。队列仅限于在首次诊断为PTSD后接受心理治疗9个月以上的患者(病例= 77;对照= 362)。在一些病例中,研究人员检查了从诊断到死亡的心理治疗记录。对于对照组,研究人员检查了从诊断到匹配病例死亡日期的心理治疗记录。采用基于python的DTM算法。衍生主题确定了特定人群的主题,包括创伤后应激障碍、心理治疗、药物治疗、沟通和关系。随着时间的推移,对照主题的变化明显大于案例主题。主题差异突出了参与、表达能力和治疗联盟。这项研究加强了获得特定人群、社会心理和时间敏感的自杀风险变量的基础。
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来源期刊
Clinical psychology & psychotherapy
Clinical psychology & psychotherapy PSYCHOLOGY, CLINICAL-
CiteScore
6.30
自引率
5.60%
发文量
106
期刊介绍: Clinical Psychology & Psychotherapy aims to keep clinical psychologists and psychotherapists up to date with new developments in their fields. The Journal will provide an integrative impetus both between theory and practice and between different orientations within clinical psychology and psychotherapy. Clinical Psychology & Psychotherapy will be a forum in which practitioners can present their wealth of expertise and innovations in order to make these available to a wider audience. Equally, the Journal will contain reports from researchers who want to address a larger clinical audience with clinically relevant issues and clinically valid research.
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