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Multimodal predictive modeling of individual treatment outcome in cocaine dependence with combined neuroimaging and behavioral predictors

机译:可卡因依赖性个体治疗结果的多模式预测模型,结合神经影像学和行为预测器

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Background: Developing personalized treatments for cocaine dependence remains a significant clinical challenge. Positron emission tomography (PET) has shown that the ["CJraclopride signal in the ventral striatum is associated with treatment success in a positively reinforced contingency management program. The present study investigates whether this signal can be used to predict treatment outcome at an individual level.Methods: Predictive models were developed using PET signals from 5 regions of the striatum and follow-up data in 24 patients, and evaluated using cross-validation.Results: The ventral striatal PET signal alone can predict individual treatment response with a substantial degree of accuracy (cross-validated correct rate = 82%). Incorporating information from other regions-of-interest (ROIs) in the striatum does not improve predictive performance, except for a small improvement with adding the posterior caudate. The addition of baseline demographic variables, including baseline severity measures, does not improve predictive performance. On the other hand, early treatment response and motivation, reflected by cumulative clinic attendance, performs as well as the PET signal (83%) by week 3 in the 24-week study. The combined model with both PET signals and cumulative clinic attendance demonstrates a significant improvement of performance, peaking at 96% during week 3 of the trial. Conclusions: These results suggest that a multimodal model can predict treatment success in cocaine dependence at an individual level, and pose hypotheses for the underlying neural circuitry mechanisms responsible for individual variations in treatment outcome.
机译:背景:开发可卡因依赖的个性化治疗仍然是一项重大的临床挑战。正电子发射断层扫描(PET)已显示,在积极增强的应急管理程序中,腹侧纹状体中的[CJraclopride信号与治疗成功相关。本研究调查了该信号是否可用于预测个体水平的治疗结果。方法:使用来自纹状体5个区域的PET信号和24例患者的随访数据建立预测模型,并使用交叉验证进行评估。结果:仅腹侧纹状体PET信号可以准确地预测个体治疗反应(经过交叉验证的正确率= 82%)。将纹状体中其他感兴趣区域(ROI)的信息并入并不能改善预测性能,除了在增加尾状尾骨方面有很小的改善外。包括基线严重程度指标,并不能改善预测性能。另一方面,早期治疗反应和在为期24周的研究中,第3周的临床表现和累积的PET信号(83%)表现出良好的动机。结合了PET信号和累积的临床就诊率的组合模型证明了性能的显着改善,在试验的第3周达到了96%的峰值。结论:这些结果表明,多模式模型可以在个体水平上预测可卡因依赖治疗的成功,并对可能导致治疗结果个体差异的潜在神经回路机制提出假设。

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