Inferring Trajectories of Psychotic Disorders Using Dynamic Causal Modeling.

Computational psychiatry (Cambridge, Mass.) Pub Date : 2023-08-28 eCollection Date: 2023-01-01 DOI:10.5334/cpsy.94
Jingwen Jin, Peter Zeidman, Karl J Friston, Roman Kotov
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Abstract

Introduction: Illness course plays a crucial role in delineating psychiatric disorders. However, existing nosologies consider only its most basic features (e.g., symptom sequence, duration). We developed a Dynamic Causal Model (DCM) that characterizes course patterns more fully using dense timeseries data. This foundational study introduces the new modeling approach and evaluates its validity using empirical and simulated data.

Methods: A three-level DCM was constructed to model how latent dynamics produce symptoms of depression, mania, and psychosis. This model was fit to symptom scores of nine patients collected prospectively over four years, following first hospitalization. Simulated subjects based on these empirical data were used to evaluate model parameters at the subject-level. At the group-level, we tested the accuracy with which the DCM can estimate the latent course patterns using Parametric Empirical Bayes (PEB) and leave-one-out cross-validation.

Results: Analyses of empirical data showed that DCM accurately captured symptom trajectories for all nine subjects. Simulation results showed that parameters could be estimated accurately (correlations between generative and estimated parameters >= 0.76). Moreover, the model could distinguish different latent course patterns, with PEB correctly assigning simulated patients for eight of nine course patterns. When testing any pair of two specific course patterns using leave-one-out cross-validation, 30 out of 36 pairs showed a moderate or high out-of-samples correlation between the true group-membership and the estimated group-membership values.

Conclusion: DCM has been widely used in neuroscience to infer latent neuronal processes from neuroimaging data. Our findings highlight the potential of adopting this methodology for modeling symptom trajectories to explicate nosologic entities, temporal patterns that define them, and facilitate personalized treatment.

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运用动态因果模型推断精神障碍的发展轨迹
介绍病程在描述精神障碍方面起着至关重要的作用。然而,现有的疾病学只考虑其最基本的特征(如症状序列、持续时间)。我们开发了一个动态因果模型(DCM)的应用程序,该模型使用密集的时间序列数据更充分地表征课程模式。这项基础研究介绍了新的建模方法,并使用经验和模拟数据评估其有效性。方法。构建了一个三级DCM来模拟潜在动力如何产生抑郁、躁狂和精神病症状。该模型适用于首次住院后四年内前瞻性收集的9名患者的症状评分。基于这些经验数据的模拟受试者被用于在受试者水平上评估模型参数。在小组层面,我们测试了DCM使用参数经验贝叶斯(PEB)估计潜在课程模式的准确性,并省略了一个交叉验证。后果对经验数据的分析表明,DCM准确地捕捉到了所有9名受试者的症状轨迹。模拟结果表明,参数可以准确估计(生成参数和估计参数之间的相关性>=0.76)。此外,该模型可以区分不同的潜在病程模式,PEB可以正确地为模拟患者分配9种病程模式中的8种。当测试两种特定的课程模式时,省略一种交叉验证,正确分配24个虚拟科目中的23个。结论DCM在神经科学中被广泛用于从神经成像数据推断潜在的神经元过程。我们的研究结果强调了采用这种方法对症状轨迹建模的潜力,以解释病因实体、定义它们的时间模式,并促进个性化治疗。
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来源期刊
CiteScore
4.30
自引率
0.00%
发文量
0
审稿时长
17 weeks
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