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迈向慢性背痛的因果模型:挑战与机遇。

Toward a causal model of chronic back pain: Challenges and opportunities.

作者信息

Huie J Russell, Vashisht Rohit, Galivanche Anoop, Hadjadj Constance, Morshed Saam, Butte Atul J, Ferguson Adam R, O'Neill Conor

机构信息

Department of Neurosurgery, Brain and Spinal Injury Center, Weill Institutes for Neurosciences, University of California, San Francisco, San Francisco, CA, United States.

San Francisco Veterans Affairs Healthcare System, San Francisco, CA, United States.

出版信息

Front Comput Neurosci. 2023 Jan 11;16:1017412. doi: 10.3389/fncom.2022.1017412. eCollection 2022.

Abstract

Chronic low back pain (cLBP) afflicts 8. 2% of adults in the United States, and is the leading global cause of disability. Neuropsychiatric co-morbidities including anxiety, depression, and substance abuse- are common in cLBP patients. In particular, cLBP is a risk factor for opioid addiction, as more than 50% of opioid prescriptions in the United States are for cLBP. Misuse of these prescriptions is a common precursor to addiction. While associations between cLBP and neuropsychiatric disorders are well established, causal relationships for the most part are unknown. Developing effective treatments for cLBP, and associated co-morbidities, requires identifying and understanding causal relationships. Rigorous methods for causal inference, a process for quantifying causal effects from observational data, have been developed over the past 30 years. In this review we first discuss the conceptual model of cLBP that current treatments are based on, and how gaps in causal knowledge contribute to poor clinical outcomes. We then present cLBP as a "Big Data" problem and identify how advanced analytic techniques may close knowledge gaps and improve clinical outcomes. We will focus on causal discovery, which is a data-driven method that uses artificial intelligence (AI) and high dimensional datasets to identify causal structures, discussing both constraint-based (PC and Fast Causal Inference) and score-based (Fast Greedy Equivalent Search) algorithms.

摘要

慢性下腰痛(cLBP)困扰着8.2%的美国成年人,是全球致残的主要原因。神经精神共病,包括焦虑、抑郁和药物滥用,在cLBP患者中很常见。特别是,cLBP是阿片类药物成瘾的一个风险因素,因为美国超过50%的阿片类药物处方是用于治疗cLBP的。这些处方的滥用是成瘾的常见先兆。虽然cLBP与神经精神障碍之间的关联已得到充分证实,但在大多数情况下,因果关系尚不清楚。开发针对cLBP及其相关共病的有效治疗方法,需要识别和理解因果关系。在过去30年里,已经开发出了严格的因果推断方法,这是一个从观察数据中量化因果效应的过程。在这篇综述中,我们首先讨论当前治疗所基于的cLBP概念模型,以及因果知识的差距如何导致不良的临床结果。然后,我们将cLBP视为一个“大数据”问题,并确定先进的分析技术如何填补知识空白并改善临床结果。我们将专注于因果发现,这是一种数据驱动的方法,它使用人工智能(AI)和高维数据集来识别因果结构,同时讨论基于约束的(PC和快速因果推断)算法和基于分数的(快速贪婪等价搜索)算法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a828/9874096/e0ee11cbd305/fncom-16-1017412-g0001.jpg

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