Can ECT and rTMS Finally Help Us Trust in Precision Psychiatry?

IF 5.3 2区 医学 Q1 PSYCHIATRY
Robert M. Lundin
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As such, clinicians require growing trust in their ability to determine and, to some degree, predict which type of ECT (determined by lead placement, pulse width and stimulus dose in relation to threshold) is likely to lead to remission with additional consideration of obtaining a favourable side-effect profile [<span>3</span>]. For the practising ECT clinician, complexity increases where the specific use of anaesthetic and augmenting agents, selection of titration protocols and procedural timings need to be considered [<span>4</span>]. This is particularly important since the elements of ECT practice that require rating of features are often more impacted by the practitioner's experience level [<span>5</span>].</p><p>As we approach 40 years since its inception, the issue of trust in rTMS is less linked to stigma and external factors where it is easier to directly demonstrate modulation of neuronal activity, which the patient can observe. However, trust in selecting optimal treatment parameters remains a subject of intense research after all this time. Although the choices will sound similar (target site, pulses and number of sessions), the fundamental parameters considered, in addition to potential target brain structures, remain the same [<span>6</span>]. The issue is that for both life-saving treatments, there can be ambiguity around whether new patients should start ECT, rTMS or an alternative treatment like ketamine. Then, if they do, a number of optimal treatment parameters need to be decided by the clinician with limited ability to personalise this to the patient.</p><p>Plenty of lofty promises have been made about the potential of digital psychiatry. However, one of the biggest is to use machine-learning algorithms to step beyond the capabilities of traditional statistics and reveal connections that have previously not been apparent to us [<span>7</span>]. Despite the promise, machine learning has been criticised for not readily demonstrating to clinicians how individual factors influence the output, leading to a lack of transparency, understanding and mistrust from clinicians using them. This is particularly difficult when models are later demonstrated to have a negative impact, and the reasons cannot be thoroughly dissected. Furthermore, most precision psychiatry studies have remained pilot projects and have never made it into clinical practice [<span>8</span>].</p><p>In this edition, two articles address these issues around trust, which will hopefully progress the leap into clinical utility for precision psychiatry for ECT and rTMS. The first paper by Blanken repurposes data from two previous RCTs to perform a network analysis not only to predict remission from depression using ECT through baseline symptoms but also to provide an assessment of the impact of these individual symptoms (referred to as nodes). This study also highlights the importance of considering the passing of time between data points in machine-learning analysis. In this way, they are not only able to identify suicidal ideations, retardation and hypochondriasis as predictive factors but also help build trust by quantifying their impact on the model [<span>9</span>].</p><p>Oostra addresses the uncertainty around treatment parameters through a large meta-regression and meta-analysis study comparing the relative impact of more treatment sessions compared with more pulses for high-frequent or low-frequent rTMS of the left or right dorsolateral prefrontal cortex (dlPFC) in treatment-resistant depression. They identify the largest mean difference in the groups receiving 1200–1500 and 360–450 high-frequency and low-frequency pulses per session, respectively. Adding increased trust in this number of pulses, the authors shift the focus to session numbers [<span>10</span>].</p><p>Considering the building momentum, how do we ensure the potential of precision ECT and rTMS can be fulfilled? Machine learning algorithms rely on two things. The first is a large, high-quality dataset, and the second is useful clinical questions. We have already covered above that neurostimulation has important clinical questions that still need to be explored. Blanken has already demonstrated the utility of reusing two high-quality RCTs, and ECT is no stranger to large consortiums and datasets [<span>11, 12</span>]. Though these often focus on different things, data on imaging, EEG, clinical and demographic data, blood results, genetics and other physiological results at various time points could all provide relevance to treatment factors. 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引用次数: 0

Abstract

As a medical discipline, psychiatry has long grappled with the concept of trust. While there are many reasons for this, it remains a contemporary issue for two of our most crucial treatments for treatment-resistant conditions: electroconvulsive therapy (ECT) and repetitive transcranial magnetic stimulation (rTMS).

This lack of trust has translated into divergent and polarised patient and media narratives for ECT despite extensive evidence of its highly effective treatment [1, 2]. With increased understanding of mechanisms and sophistication of treatment, the clinical procedure of prescribing ECT is also becoming more challenging. As such, clinicians require growing trust in their ability to determine and, to some degree, predict which type of ECT (determined by lead placement, pulse width and stimulus dose in relation to threshold) is likely to lead to remission with additional consideration of obtaining a favourable side-effect profile [3]. For the practising ECT clinician, complexity increases where the specific use of anaesthetic and augmenting agents, selection of titration protocols and procedural timings need to be considered [4]. This is particularly important since the elements of ECT practice that require rating of features are often more impacted by the practitioner's experience level [5].

As we approach 40 years since its inception, the issue of trust in rTMS is less linked to stigma and external factors where it is easier to directly demonstrate modulation of neuronal activity, which the patient can observe. However, trust in selecting optimal treatment parameters remains a subject of intense research after all this time. Although the choices will sound similar (target site, pulses and number of sessions), the fundamental parameters considered, in addition to potential target brain structures, remain the same [6]. The issue is that for both life-saving treatments, there can be ambiguity around whether new patients should start ECT, rTMS or an alternative treatment like ketamine. Then, if they do, a number of optimal treatment parameters need to be decided by the clinician with limited ability to personalise this to the patient.

Plenty of lofty promises have been made about the potential of digital psychiatry. However, one of the biggest is to use machine-learning algorithms to step beyond the capabilities of traditional statistics and reveal connections that have previously not been apparent to us [7]. Despite the promise, machine learning has been criticised for not readily demonstrating to clinicians how individual factors influence the output, leading to a lack of transparency, understanding and mistrust from clinicians using them. This is particularly difficult when models are later demonstrated to have a negative impact, and the reasons cannot be thoroughly dissected. Furthermore, most precision psychiatry studies have remained pilot projects and have never made it into clinical practice [8].

In this edition, two articles address these issues around trust, which will hopefully progress the leap into clinical utility for precision psychiatry for ECT and rTMS. The first paper by Blanken repurposes data from two previous RCTs to perform a network analysis not only to predict remission from depression using ECT through baseline symptoms but also to provide an assessment of the impact of these individual symptoms (referred to as nodes). This study also highlights the importance of considering the passing of time between data points in machine-learning analysis. In this way, they are not only able to identify suicidal ideations, retardation and hypochondriasis as predictive factors but also help build trust by quantifying their impact on the model [9].

Oostra addresses the uncertainty around treatment parameters through a large meta-regression and meta-analysis study comparing the relative impact of more treatment sessions compared with more pulses for high-frequent or low-frequent rTMS of the left or right dorsolateral prefrontal cortex (dlPFC) in treatment-resistant depression. They identify the largest mean difference in the groups receiving 1200–1500 and 360–450 high-frequency and low-frequency pulses per session, respectively. Adding increased trust in this number of pulses, the authors shift the focus to session numbers [10].

Considering the building momentum, how do we ensure the potential of precision ECT and rTMS can be fulfilled? Machine learning algorithms rely on two things. The first is a large, high-quality dataset, and the second is useful clinical questions. We have already covered above that neurostimulation has important clinical questions that still need to be explored. Blanken has already demonstrated the utility of reusing two high-quality RCTs, and ECT is no stranger to large consortiums and datasets [11, 12]. Though these often focus on different things, data on imaging, EEG, clinical and demographic data, blood results, genetics and other physiological results at various time points could all provide relevance to treatment factors. For trust to increase, ECT and rTMS need to utilise their multimodal nature to combine their vast sources of data with explainable machine learning (often referred to as ‘explainable Ai’ or ‘xAi’) as demonstrated in the network approach by Blanken, where each node's impact can be explained [13].

Maturity is also becoming apparent with the standardisation in the reporting of machine learning studies through tools like the Transparent Reporting of multivariable prediction models for Individual Prognosis Or Diagnosis with Artificial Intelligence (TRIPOD + AI) [14]. However, studies so far generally look at prediction performance alone or compare this to the performance of expert clinicians (known as expert in the loop). For clinicians to start trusting the machine, new approaches need to be considered regarding how the two can work together to boost the performance of predictions.

While this creates exciting possibilities, it also raises some interesting questions for us to ponder. How do we create the right environments for psychiatrists and machine learning experts to work together? Expanding on this, how much should we expect the average psychiatrist to understand about digital psychiatry to be able to trust the intervention delivered? Regardless of the final approach, we must accomplish it in a way that does not add any patient or public mistrust in psychiatry.

The paper was conceptualized, written, and approved by R.M.L.

The author declares no conflicts of interest.

ECT和rTMS最终能帮助我们信任精准精神病学吗?
作为一门医学学科,精神病学长期以来一直在努力解决信任的概念。虽然这有很多原因,但对于我们治疗难治性疾病的两种最重要的治疗方法:电痉挛治疗(ECT)和重复经颅磁刺激(rTMS),它仍然是一个当代问题。尽管有大量证据表明ECT治疗非常有效,但这种信任的缺乏已经转化为患者和媒体对ECT的分歧和两极分化的叙述[1,2]。随着对治疗机制和复杂程度的了解的增加,处方ECT的临床程序也变得越来越具有挑战性。因此,临床医生需要增强对他们的能力的信任,并在某种程度上预测哪种类型的ECT(由导联位置、脉冲宽度和与阈值相关的刺激剂量决定)可能导致缓解,并额外考虑获得有利的副作用情况[3]。对于执业的ECT临床医生来说,需要考虑麻醉和增强剂的具体使用、滴定方案的选择和手术时间的选择,从而增加了复杂性。这一点尤其重要,因为需要对特征进行评级的电痉挛疗法的实践要素往往更受从业人员经验水平的影响。随着rTMS问世近40年,对rTMS的信任问题与耻辱和外部因素的联系越来越少,在这些因素中,更容易直接证明神经元活动的调节,这是患者可以观察到的。然而,在选择最佳治疗参数的信任仍然是一个深入研究的主题。虽然选择听起来很相似(目标部位,脉冲和会话次数),但考虑到的基本参数,除了潜在的目标大脑结构,仍然是相同的。问题是,对于这两种拯救生命的治疗方法,新患者是否应该开始ECT、rTMS或氯胺酮等替代治疗可能存在歧异。然后,如果他们这样做,一些最佳的治疗参数需要由有限的能力的临床医生决定,以个性化的病人。关于数字精神病学的潜力,人们做出了许多崇高的承诺。然而,最大的挑战之一是使用机器学习算法超越传统统计学的能力,揭示我们以前没有发现的联系。尽管前景光明,但机器学习一直受到批评,因为它没有向临床医生展示个体因素如何影响输出,导致临床医生使用它们缺乏透明度、理解和不信任。当模型后来被证明有负面影响时,这一点尤其困难,而且无法彻底剖析其原因。此外,大多数精确精神病学研究仍然是试点项目,从未进入临床实践。在这个版本中,有两篇文章讨论了这些关于信任的问题,这将有望推动ECT和rTMS精确精神病学的临床应用。Blanken的第一篇论文重新利用了之前两项随机对照试验的数据,进行了网络分析,不仅通过基线症状预测ECT治疗的抑郁症缓解,而且还提供了对这些个体症状(称为节点)影响的评估。这项研究还强调了在机器学习分析中考虑数据点之间时间流逝的重要性。通过这种方式,他们不仅能够识别自杀意念、发育迟缓和疑病症作为预测因素,而且还可以通过量化它们对模型的影响来帮助建立信任。Oostra通过一项大型荟萃回归和荟萃分析研究来解决治疗参数的不确定性,该研究比较了更多治疗次数与更多脉冲对左或右背外侧前额叶皮质(dlPFC)的高频或低频rTMS的相对影响。他们发现,在每组分别接受1200-1500次高频脉冲和360-450次低频脉冲的人群中,平均差异最大。为了增加对脉冲数量的信任,作者将重点转移到会话数[10]上。考虑到目前的发展势头,我们如何确保精密ECT和rTMS的潜力得以发挥?机器学习算法依赖于两件事。第一个是一个大的、高质量的数据集,第二个是有用的临床问题。我们已经在上面提到,神经刺激有重要的临床问题需要探索。Blanken已经证明了重复使用两个高质量随机对照试验的效用,而ECT对于大型财团和数据集来说并不陌生[11,12]。 虽然这些通常关注不同的事情,但不同时间点的成像、脑电图、临床和人口统计数据、血液结果、遗传学和其他生理结果的数据都可以提供与治疗因素相关的数据。为了增加信任,ECT和rTMS需要利用其多模态特性,将其庞大的数据源与可解释的机器学习(通常称为“可解释的Ai”或“xAi”)结合起来,正如Blanken在网络方法中所展示的那样,其中每个节点的影响可以被解释为[13]。随着机器学习研究报告的标准化,如人工智能个体预后或诊断的多变量预测模型透明报告(TRIPOD + AI)[14]等工具的成熟度也越来越明显。然而,迄今为止的研究通常只关注预测性能,或将其与专家临床医生(称为循环专家)的性能进行比较。为了让临床医生开始信任机器,需要考虑如何将两者结合起来以提高预测效果的新方法。虽然这创造了令人兴奋的可能性,但它也提出了一些值得我们思考的有趣问题。我们如何为精神科医生和机器学习专家一起工作创造合适的环境?进一步说,我们应该期望普通的精神病医生对数字精神病学了解多少,才能相信所提供的干预措施?不管最终的方法是什么,我们必须以一种不会增加病人或公众对精神病学不信任的方式来完成它。本文由r.m.l构思、撰写和批准,作者声明无利益冲突。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Acta Psychiatrica Scandinavica
Acta Psychiatrica Scandinavica 医学-精神病学
CiteScore
11.20
自引率
3.00%
发文量
135
审稿时长
6-12 weeks
期刊介绍: Acta Psychiatrica Scandinavica acts as an international forum for the dissemination of information advancing the science and practice of psychiatry. In particular we focus on communicating frontline research to clinical psychiatrists and psychiatric researchers. Acta Psychiatrica Scandinavica has traditionally been and remains a journal focusing predominantly on clinical psychiatry, but translational psychiatry is a topic of growing importance to our readers. Therefore, the journal welcomes submission of manuscripts based on both clinical- and more translational (e.g. preclinical and epidemiological) research. When preparing manuscripts based on translational studies for submission to Acta Psychiatrica Scandinavica, the authors should place emphasis on the clinical significance of the research question and the findings. Manuscripts based solely on preclinical research (e.g. animal models) are normally not considered for publication in the Journal.
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