Predictors of Treatment Outcome in Adolescent Depression.

Q1 Psychology Current Treatment Options in Psychiatry Pub Date : 2021-03-01 Epub Date: 2021-01-11 DOI:10.1007/s40501-020-00237-5
Yuen-Siang Ang, Diego A Pizzagalli
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Abstract

Purpose of review: Major Depressive Disorder is a global public health concern that is common in adolescents. Targeting this illness at the early stages of development is critical and could lead to better long-term outcomes because the adolescent brain is highly plastic and, hence, neural systems are likely to be more malleable to interventions. Although a variety of treatments are available, there are currently no guidelines to inform clinicians which intervention might be most suitable for a given youth. Here, we discuss current knowledge of prognostic and prescriptive markers of treatment outcome in adolescent depression, highlight two major limitations of the extant literature and suggest future directions for this important area of research.

Recent findings: Despite significant effort, none of the potential demographic (gender, age, race), environmental (parental depression, family functioning) and clinical (severity of depression, comorbid diagnoses, suicidality, hopelessness) predictors have been robustly replicated to warrant implementation in clinical care. Studies on biomarkers that truly reflect pathophysiology are scarce and difficult to draw conclusions from.

Summary: More efforts should be directed towards potential neurobiological predictors of treatment outcome. Moreover, rather than evaluating potential predictors in isolation, modern machine learning methods could also be used to build models that combine information across a large array of features and predict treatment outcome for individual patients. These strategies hold promise for advancing personalized healthcare in adolescent depression, which remains a high clinical priority.

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青少年抑郁症治疗结果的预测因素
综述目的:重度抑郁症是一种全球性的公共卫生问题,在青少年中很常见。在发育的早期阶段针对这种疾病是至关重要的,可能会带来更好的长期结果,因为青少年的大脑具有高度的可塑性,因此神经系统可能更容易受到干预。虽然有各种各样的治疗方法,但目前还没有指导方针告诉临床医生哪种干预措施可能最适合特定的年轻人。在这里,我们讨论了目前对青少年抑郁症治疗结果的预后和处方标记的了解,强调了现有文献的两个主要局限性,并提出了这一重要研究领域的未来方向。最近的发现:尽管付出了巨大的努力,但没有一个潜在的人口统计学(性别、年龄、种族)、环境(父母抑郁、家庭功能)和临床(抑郁严重程度、合并症诊断、自杀倾向、绝望感)预测因素得到有力的复制,以保证在临床护理中实施。真正反映病理生理的生物标志物研究很少,难以得出结论。总结:更多的努力应该指向治疗结果的潜在神经生物学预测因子。此外,现代机器学习方法也可以用来建立模型,将大量特征的信息结合起来,预测个体患者的治疗结果,而不是孤立地评估潜在的预测因素。这些策略有望推进青少年抑郁症的个性化医疗保健,这仍然是一个高度临床优先事项。
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来源期刊
Current Treatment Options in Psychiatry
Current Treatment Options in Psychiatry Psychology-Clinical Psychology
CiteScore
5.70
自引率
0.00%
发文量
28
期刊介绍: This journal focuses on the latest advances in the multifaceted treatment of psychiatric disorders. Designed for physicians and other mental health professionals, Current Treatment Options in Psychiatry offers expert reviews on the management of a range of mental health conditions, includingSchizophrenia and other psychotic disordersSubstance use disordersAnxiety, obsessive-compulsive, and related disordersMood disordersEating and other impulse control disordersPersonality disordersArticles cover a range of established and emerging treatment options across the lifespan, and their innovative, hands-on format makes them ideal for informing treatment decisions at the point of care.We accomplish this by appointing leaders in the field to serve as Section Editors in key areas. Section Editors, in turn, select the most pressing topics as well as experts to present the latest research, assess the efficacy of available treatment options, and discuss special considerations.Additionally, an international Editorial Board—representing a range of disciplines within psychiatry and psychology—ensures that the journal content includes current, emerging research and suggests articles of special interest to their country or region.
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