Predicting remission after acute phase pharmacotherapy in patients with bipolar I depression: A machine learning approach with cross-trial and cross-drug replication.

IF 5 2区 医学 Q1 CLINICAL NEUROLOGY Bipolar Disorders Pub Date : 2024-10-03 DOI:10.1111/bdi.13506
Jean Marrero-Polanco, Jeremiah B Joyce, Caroline W Grant, Paul E Croarkin, Arjun P Athreya, William V Bobo
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Abstract

Objectives: Interpatient variability in bipolar I depression (BP-D) symptoms challenges the ability to predict pharmacotherapeutic outcomes. A machine learning workflow was developed to predict remission after 8 weeks of pharmacotherapy (total score of ≤8 on the Montgomery Åsberg Depression Rating Scale [MADRS]).

Methods: Supervised machine learning models were trained on data from BP-D patients treated with olanzapine (N = 168) and were externally validated on patients treated with olanzapine/fluoxetine combination (OFC; N = 131) and lamotrigine (LTG; N = 126). Top predictors were used to develop a prognosis rule informing how many symptoms should change and by how much within 4 weeks to increase the odds of achieving remission.

Results: An AUC of 0.76 (NIR:0.59; p = 0.17) was established to predict remission in olanzapine-treated subjects. These trained models achieved AUCs of 0.70 with OFC (NIR:0.52; p < 0.03) and 0.73 with LTG (NIR:0.52; p < 0.003), demonstrating external replication of prediction performance. Week-4 changes in four MADRS symptoms (reported sadness, reduced sleep, reduced appetite, and concentration difficulties) were top predictors of remission. Across all pharmacotherapies, three or more of these symptoms needed to improve by ≥2 points at Week-4 to have a 65% chance of achieving remission at 8 weeks (OR: 3.74, 95% CI: 2.45-5.76; p < 9.3E-11).

Conclusion: Machine learning strategies achieved cross-trial and cross-drug replication in predicting remission after 8 weeks of pharmacotherapy for BP-D. Interpretable prognoses rules required only a limited number of depressive symptoms, providing a promising foundation for developing simple quantitative decision aids that may, in the future, serve as companions to clinical judgment at the point of care.

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预测双相 I 型抑郁症患者急性期药物治疗后的缓解情况:跨试验和跨药物复制的机器学习方法。
目标:双相抑郁症(BP-D)症状的患者间差异对预测药物治疗结果的能力提出了挑战。我们开发了一种机器学习工作流程,用于预测药物治疗 8 周后的缓解情况(蒙哥马利Åsberg 抑郁评分量表 [MADRS] 总分≤8):在接受奥氮平治疗的BP-D患者(168人)的数据上训练了有监督的机器学习模型,并在接受奥氮平/氟西汀联合治疗(OFC;131人)和拉莫三嗪治疗(LTG;126人)的患者身上进行了外部验证。预测指标的最高值被用来制定预后规则,告知患者在4周内应改变多少症状以及改变的程度,以增加获得缓解的几率:预测奥氮平治疗受试者病情缓解的AUC为0.76(NIR:0.59; p = 0.17)。这些训练有素的模型对 OFC 的 AUC 达到 0.70(NIR:0.52;p 结论:机器学习策略实现了跨试验和跨学科的一致性:机器学习策略在预测 BP-D 8 周药物治疗后的缓解方面实现了跨试验和跨药物复制。可解释的预后规则只需要有限数量的抑郁症状,这为开发简单的定量辅助决策工具奠定了良好的基础。
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来源期刊
Bipolar Disorders
Bipolar Disorders 医学-精神病学
CiteScore
8.20
自引率
7.40%
发文量
90
审稿时长
6-12 weeks
期刊介绍: Bipolar Disorders is an international journal that publishes all research of relevance for the basic mechanisms, clinical aspects, or treatment of bipolar disorders and related illnesses. It intends to provide a single international outlet for new research in this area and covers research in the following areas: biochemistry physiology neuropsychopharmacology neuroanatomy neuropathology genetics brain imaging epidemiology phenomenology clinical aspects and therapeutics of bipolar disorders Bipolar Disorders also contains papers that form the development of new therapeutic strategies for these disorders as well as papers on the topics of schizoaffective disorders, and depressive disorders as these can be cyclic disorders with areas of overlap with bipolar disorders. The journal will consider for publication submissions within the domain of: Perspectives, Research Articles, Correspondence, Clinical Corner, and Reflections. Within these there are a number of types of articles: invited editorials, debates, review articles, original articles, commentaries, letters to the editors, clinical conundrums, clinical curiosities, clinical care, and musings.
期刊最新文献
Early use of long-acting injectable antipsychotics in bipolar disorder type I: An expert consensus. Psychotherapy online: Bridging the gap between recommendations and reality. Commentary on 'Comorbidity of bipolar disorder and borderline personality disorder: Phenomenology, course and treatment considerations' by Temes et al. The Holy Grail revisited: What works for whom? Predicting remission after acute phase pharmacotherapy in patients with bipolar I depression: A machine learning approach with cross-trial and cross-drug replication.
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