精神疾病候选生物标志物:该领域的现状。

IF 73.3 1区 医学 Q1 Medicine
World Psychiatry Pub Date : 2023-06-01 DOI:10.1002/wps.21078
Anissa Abi-Dargham, Scott J Moeller, Farzana Ali, Christine DeLorenzo, Katharina Domschke, Guillermo Horga, Amandeep Jutla, Roman Kotov, Martin P Paulus, Jose M Rubio, Gerard Sanacora, Jeremy Veenstra-VanderWeele, John H Krystal
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引用次数: 0

摘要

精神病学领域由于缺乏强大、可靠和有效的生物标志物而受到阻碍,这些生物标志物可以帮助客观诊断患者并提供个性化的治疗建议。在这里,我们回顾并批判性地评估了精神神经科学文献中最有前景的自闭症谱系障碍、精神分裂症、焦虑症和创伤后应激障碍、严重抑郁症和双相情感障碍以及物质使用障碍的生物标志物的证据。审查的候选生物标志物包括各种神经成像、遗传、分子和外周检测,目的是确定疾病的易感性或存在,并预测治疗反应或安全性。这篇综述强调了生物标志物验证过程中的一个关键缺口。在过去的50年里,一项巨大的社会投资已经确定了许多候选生物标志物。然而,到目前为止,这些措施中的绝大多数尚未被证明足够可靠、有效和有用,无法在临床上采用。现在是时候考虑战略投资是否可以打破这一僵局了,将重点放在少数有前途的候选人身上,以通过对特定指标的最终测试。一些有前景的最终测试候选者包括N170信号,这是一种使用脑电图测量的事件相关大脑电位,用于自闭症谱系障碍的亚组识别;纹状体静息状态功能性磁共振成像(fMRI)测量,如纹状体连接性指数(SCI)和功能性纹状体异常(FSA)指数,用于预测精神分裂症的治疗反应;误差相关负性(ERN),一种用于预测广泛性焦虑症首次发作的电生理指标,以及用于预测社交焦虑症治疗反应的静息状态和大脑结构连接组学指标。分类的替代形式可能有助于概念化和测试潜在的生物标志物。需要进行合作,将遗传学和神经成像之外的生物系统纳入其中,使用移动健康工具在自然环境中在线远程获取选定的测量结果可能会大大推动这一领域的发展。为明确的目标应用设定具体的基准,同时制定适当的供资和伙伴关系机制,也至关重要。最后,永远不要忘记,为了使生物标志物具有可操作性,它需要在个体水平上具有临床预测性,并在临床环境中可行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Candidate biomarkers in psychiatric disorders: state of the field.

The field of psychiatry is hampered by a lack of robust, reliable and valid biomarkers that can aid in objectively diagnosing patients and providing individualized treatment recommendations. Here we review and critically evaluate the evidence for the most promising biomarkers in the psychiatric neuroscience literature for autism spectrum disorder, schizophrenia, anxiety disorders and post-traumatic stress disorder, major depression and bipolar disorder, and substance use disorders. Candidate biomarkers reviewed include various neuroimaging, genetic, molecular and peripheral assays, for the purposes of determining susceptibility or presence of illness, and predicting treatment response or safety. This review highlights a critical gap in the biomarker validation process. An enormous societal investment over the past 50 years has identified numerous candidate biomarkers. However, to date, the overwhelming majority of these measures have not been proven sufficiently reliable, valid and useful to be adopted clinically. It is time to consider whether strategic investments might break this impasse, focusing on a limited number of promising candidates to advance through a process of definitive testing for a specific indication. Some promising candidates for definitive testing include the N170 signal, an event-related brain potential measured using electroencephalography, for subgroup identification within autism spectrum disorder; striatal resting-state functional magnetic resonance imaging (fMRI) measures, such as the striatal connectivity index (SCI) and the functional striatal abnormalities (FSA) index, for prediction of treatment response in schizophrenia; error-related negativity (ERN), an electrophysiological index, for prediction of first onset of generalized anxiety disorder, and resting-state and structural brain connectomic measures for prediction of treatment response in social anxiety disorder. Alternate forms of classification may be useful for conceptualizing and testing potential biomarkers. Collaborative efforts allowing the inclusion of biosystems beyond genetics and neuroimaging are needed, and online remote acquisition of selected measures in a naturalistic setting using mobile health tools may significantly advance the field. Setting specific benchmarks for well-defined target application, along with development of appropriate funding and partnership mechanisms, would also be crucial. Finally, it should never be forgotten that, for a biomarker to be actionable, it will need to be clinically predictive at the individual level and viable in clinical settings.

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来源期刊
World Psychiatry
World Psychiatry Nursing-Psychiatric Mental Health
CiteScore
64.10
自引率
7.40%
发文量
124
期刊介绍: World Psychiatry is the official journal of the World Psychiatric Association. It aims to disseminate information on significant clinical, service, and research developments in the mental health field. World Psychiatry is published three times per year and is sent free of charge to psychiatrists.The recipient psychiatrists' names and addresses are provided by WPA member societies and sections.The language used in the journal is designed to be understandable by the majority of mental health professionals worldwide.
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