Trajectory modeling and response prediction in transcranial magnetic stimulation for depression

Aaron N. McInnes , Sarah T. Olsen , Christi R.P. Sullivan, Dawson C. Cooper, Saydra Wilson, Ayse Irem Sonmez, C. Sophia Albott, Stephen C. Olson, Carol B. Peterson, Barry R. Rittberg, Alexander Herman, Matej Bajzer, Ziad Nahas, Alik S. Widge
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Abstract

Background

Repetitive transcranial magnetic stimulation (rTMS) therapy could be improved by more accurate and earlier prediction of response. Latent class mixture (LCMM) and non-linear mixed effects (NLME) modeling have been applied to model the trajectories of antidepressant response (or non-response) to TMS, but it is not known whether such models are useful in predicting clinically meaningful change in symptom severity, i.e. categorical (non)response as opposed to continuous scores.

Methods

We compared LCMM and NLME approaches to model the antidepressant response to TMS in a naturalistic sample of 238 patients receiving rTMS for treatment resistant depression, across multiple coils and protocols. We then compared the predictive power of those models.

Results

LCMM trajectories were influenced largely by baseline symptom severity, but baseline symptoms provided little predictive power for later antidepressant response. Rather, the optimal LCMM model was a nonlinear two-class model that accounted for baseline symptoms. This model accurately predicted patient response at 4 weeks of treatment (AUC=0.70, 95 % CI=[0.52–0.87]), but not before. NLME offered slightly improved predictive performance at 4 weeks of treatment (AUC=0.76, 95 % CI=[0.58–0.94], but likewise, not before.

Conclusions

In showing the predictive validity of these approaches to model response trajectories to rTMS, we provided preliminary evidence that trajectory modeling could be used to guide future treatment decisions.

经颅磁刺激治疗抑郁症的轨迹建模和反应预测
背景通过更准确、更早地预测反应,可改善复发性经颅磁刺激(rTMS)疗法。潜类混合(LCMM)和非线性混合效应(NLME)建模已被用于对经颅磁刺激治疗的抗抑郁反应(或无反应)轨迹建模,但这些模型是否有助于预测症状严重程度的临床意义变化(即分类(非)反应而非连续得分)尚不清楚。我们比较了 LCMM 和 NLME 方法,以 238 名接受经颅磁刺激治疗耐药抑郁症的患者为自然样本,通过多个线圈和方案建立经颅磁刺激抗抑郁反应模型。结果LCMM 轨迹主要受基线症状严重程度的影响,但基线症状对后期抗抑郁反应的预测力很小。相反,最佳的 LCMM 模型是一个考虑了基线症状的非线性两类模型。该模型可准确预测患者在治疗 4 周后的反应(AUC=0.70,95 % CI=[0.52-0.87]),但在治疗 4 周前则无法预测。NLME 在治疗 4 周时的预测性能略有提高(AUC=0.76,95 % CI=[0.58-0.94],但同样地,在治疗 4 周之前也没有提高。
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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