Stephanie Homan, Zachary Roman, Anja Ries, Prabhakaran Santhanam, Sofia Michel, Anna-Marie Bertram, Nina Klee, Carlo Berther, Sarina Blaser, Marion Gabi, Philipp Homan, Hanne Scheerer, Michael Colla, Stefan Vetter, Sebastian Olbrich, Erich Seifritz, Isaac Galatzer-Levy, Tobias Kowatsch, Urte Scholz, Birgit Kleim
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This study aims to build upon previous approaches that averaged SI trajectories by adopting a method that respects the temporal nature of SI.</p><p><strong>Methods: </strong>First, we applied longitudinal clustering to ecological momentary assessment (EMA) data on SI, with five daily assessments over 28 days from 51 psychiatric patients (61% female, mean age = 35.26, SD = 12.54). We used the KmlShape algorithm, which takes raw SI scores and the measurement occasion index as input. Second, we regressed each identified subgroup against established clinical risk factors for SI, including a history of suicidal thoughts and behaviors, hopelessness, depression diagnosis, anxiety disorder diagnosis, and history of abuse.</p><p><strong>Results: </strong>Four distinct subgroups with unique SI patterns were identified: (1) \"High SI, moderate variability\" (high mean, medium variability, high maximum); (2) \"Lowest SI, lowest variability\" (lowest mean, lowest variability, lowest maximum); (3) \"Low SI, moderate variability\" (low mean, medium variability, high maximum); and (4) \"Highest SI, highest variability\" (highest mean, highest variability, highest maximum). Furthermore, these subgroups were significantly associated with clinical characteristics. For instance, the subgroup with the least severe SI (\"lowest SI, lowest variability\") showed the lowest levels of hopelessness (beta = -0.95, 95% CI = -1.04, -0.86), whereas the subgroup with the most severe SI (\"highest SI, highest variability\") exhibited the highest levels of hopelessness (beta = 0.84, 95% CI = 0.72, 0.95).</p><p><strong>Conclusion: </strong>Applying longitudinal clustering to EMA data from patients with SI enables the identification of well-defined and distinct SI subgroups with clearer clinical characteristics. This approach is a crucial step toward a deeper understanding of SI and serves as a foundation for enhancing prediction and prevention efforts.</p><p><strong>Trial registration: </strong>10DL12_183251.</p>","PeriodicalId":9029,"journal":{"name":"BMC Psychiatry","volume":"25 1","pages":"469"},"PeriodicalIF":3.4000,"publicationDate":"2025-05-08","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC12063377/pdf/","citationCount":"0","resultStr":"{\"title\":\"Subgrouping suicidal ideations: an ecological momentary assessment study in psychiatric inpatients.\",\"authors\":\"Stephanie Homan, Zachary Roman, Anja Ries, Prabhakaran Santhanam, Sofia Michel, Anna-Marie Bertram, Nina Klee, Carlo Berther, Sarina Blaser, Marion Gabi, Philipp Homan, Hanne Scheerer, Michael Colla, Stefan Vetter, Sebastian Olbrich, Erich Seifritz, Isaac Galatzer-Levy, Tobias Kowatsch, Urte Scholz, Birgit Kleim\",\"doi\":\"10.1186/s12888-025-06861-w\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Background: </strong>Suicidal ideation (SI) is one of the strongest predictors of suicide attempts, yet reliable prediction models for suicide risk remain scarce. A key challenge is that SI can fluctuate over time, potentially reflecting different subgroups that may offer important insights for suicide risk prediction. This study aims to build upon previous approaches that averaged SI trajectories by adopting a method that respects the temporal nature of SI.</p><p><strong>Methods: </strong>First, we applied longitudinal clustering to ecological momentary assessment (EMA) data on SI, with five daily assessments over 28 days from 51 psychiatric patients (61% female, mean age = 35.26, SD = 12.54). We used the KmlShape algorithm, which takes raw SI scores and the measurement occasion index as input. Second, we regressed each identified subgroup against established clinical risk factors for SI, including a history of suicidal thoughts and behaviors, hopelessness, depression diagnosis, anxiety disorder diagnosis, and history of abuse.</p><p><strong>Results: </strong>Four distinct subgroups with unique SI patterns were identified: (1) \\\"High SI, moderate variability\\\" (high mean, medium variability, high maximum); (2) \\\"Lowest SI, lowest variability\\\" (lowest mean, lowest variability, lowest maximum); (3) \\\"Low SI, moderate variability\\\" (low mean, medium variability, high maximum); and (4) \\\"Highest SI, highest variability\\\" (highest mean, highest variability, highest maximum). Furthermore, these subgroups were significantly associated with clinical characteristics. 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引用次数: 0
摘要
背景:自杀意念(SI)是自杀企图的最强预测因子之一,然而可靠的自杀风险预测模型仍然缺乏。一个关键的挑战是SI可以随时间波动,潜在地反映不同的亚组,这可能为自杀风险预测提供重要的见解。本研究旨在通过采用一种尊重SI时间性质的方法,在以前的方法的基础上对SI轨迹进行平均。方法:首先,我们对51例精神病患者(61%为女性,平均年龄为35.26岁,SD = 12.54)的SI生态瞬时评估(EMA)数据进行纵向聚类分析。我们使用了KmlShape算法,该算法将原始SI分数和测量场合指数作为输入。其次,我们将每个确定的亚组与确定的SI临床危险因素进行回归,包括自杀念头和行为史、绝望、抑郁诊断、焦虑障碍诊断和虐待史。结果:鉴定出具有独特SI模式的四个不同亚群:(1)“高SI,中等变异性”(高平均值,中等变异性,高最大值);(2)“最低SI,最低变异性”(最低平均值,最低变异性,最低最大值);(3)“低SI,中等变异性”(低平均值,中等变异性,高最大值);和(4)“最高SI,最高变异性”(最高平均值,最高变异性,最高最大值)。此外,这些亚组与临床特征显著相关。例如,具有最低SI的亚组(“最低SI,最低变异性”)表现出最低水平的绝望(beta = -0.95, 95% CI = -1.04, -0.86),而具有最严重SI的亚组(“最高SI,最高变异性”)表现出最高水平的绝望(beta = 0.84, 95% CI = 0.72, 0.95)。结论:将纵向聚类方法应用于SI患者的EMA数据,可以识别出定义明确且具有更清晰临床特征的SI亚群。该方法是深入了解SI的关键一步,并为加强预测和预防工作奠定了基础。试验注册号:10DL12_183251。
Subgrouping suicidal ideations: an ecological momentary assessment study in psychiatric inpatients.
Background: Suicidal ideation (SI) is one of the strongest predictors of suicide attempts, yet reliable prediction models for suicide risk remain scarce. A key challenge is that SI can fluctuate over time, potentially reflecting different subgroups that may offer important insights for suicide risk prediction. This study aims to build upon previous approaches that averaged SI trajectories by adopting a method that respects the temporal nature of SI.
Methods: First, we applied longitudinal clustering to ecological momentary assessment (EMA) data on SI, with five daily assessments over 28 days from 51 psychiatric patients (61% female, mean age = 35.26, SD = 12.54). We used the KmlShape algorithm, which takes raw SI scores and the measurement occasion index as input. Second, we regressed each identified subgroup against established clinical risk factors for SI, including a history of suicidal thoughts and behaviors, hopelessness, depression diagnosis, anxiety disorder diagnosis, and history of abuse.
Results: Four distinct subgroups with unique SI patterns were identified: (1) "High SI, moderate variability" (high mean, medium variability, high maximum); (2) "Lowest SI, lowest variability" (lowest mean, lowest variability, lowest maximum); (3) "Low SI, moderate variability" (low mean, medium variability, high maximum); and (4) "Highest SI, highest variability" (highest mean, highest variability, highest maximum). Furthermore, these subgroups were significantly associated with clinical characteristics. For instance, the subgroup with the least severe SI ("lowest SI, lowest variability") showed the lowest levels of hopelessness (beta = -0.95, 95% CI = -1.04, -0.86), whereas the subgroup with the most severe SI ("highest SI, highest variability") exhibited the highest levels of hopelessness (beta = 0.84, 95% CI = 0.72, 0.95).
Conclusion: Applying longitudinal clustering to EMA data from patients with SI enables the identification of well-defined and distinct SI subgroups with clearer clinical characteristics. This approach is a crucial step toward a deeper understanding of SI and serves as a foundation for enhancing prediction and prevention efforts.
期刊介绍:
BMC Psychiatry is an open access, peer-reviewed journal that considers articles on all aspects of the prevention, diagnosis and management of psychiatric disorders, as well as related molecular genetics, pathophysiology, and epidemiology.