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首页> 外文期刊>American journal of psychiatry >Connectome-Based Prediction of Cocaine Abstinence.
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Connectome-Based Prediction of Cocaine Abstinence.

机译:基于Cocaine禁欲的基于连接的预测。

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The authors sought to identify a brain-based predictor of cocaine abstinence by using connectome-based predictive modeling (CPM), a recently developed machine learning approach. CPM is a predictive tool and a method of identifying networks that underlie specific behaviors ("neural fingerprints"). Fifty-three individuals participated in neuroimaging protocols at the start of treatment for cocaine use disorder, and again at the end of 12 weeks of treatment. CPM with leave-one-out cross-validation was conducted to identify pretreatment networks that predicted abstinence (percent cocaine-negative urine samples during treatment). Networks were applied to posttreatment functional MRI data to assess changes over time and ability to predict abstinence during follow-up. The predictive ability of identified networks was then tested in a separate, heterogeneous sample of individuals who underwent scanning before treatment for cocaine use disorder (N=45). CPM predicted abstinence during treatment, as indicated by a significant correspondence between predicted and actual abstinence values (r=0.42, df=52). Identified networks included connections within and between canonical networks implicated in cognitive/executive control (frontoparietal, medial frontal) and in reward responsiveness (subcortical, salience, motor/sensory). Connectivity strength did not change with treatment, and strength at posttreatment assessment also significantly predicted abstinence during follow-up (r=0.34, df=39). Network strength in the independent sample predicted treatment response with 64% accuracy by itself and 71% accuracy when combined with baseline cocaine use. These data demonstrate that individual differences in large-scale neural networks contribute to variability in treatment outcomes for cocaine use disorder, and they identify specific abstinence networks that may be targeted in novel interventions.
机译:作者试图通过使用基于连接的预测模型(CPM),即最近开发的机器学习方法来识别可卡因禁止的基于脑的预测因子。 CPM是一种预测工具和一种识别基础特定行为(“神经指纹”)的网络的方法。五十三个人在可卡因使用障碍的治疗开始时参与神经影像动物方案,并在12周的治疗结束时再次。进行了休假交叉验证的CPM,以确定预测预测禁欲的预处理网络(治疗期间可卡因阴性尿液样品百分比)。网络应用于后期功能MRI数据,以评估随着时间的推移和能力的变化和能力在随访期间预测禁欲。然后在接受可卡因治疗前进行扫描的单独的,异质样品中鉴定网络的预测能力在用于可卡因使用障碍(n = 45)。 CPM在治疗期间预测禁欲,如预测和实际禁欲值之间的显着对应(r = 0.42,df = 52)所示。所识别的网络包括在涉及认知/执行控制(前进,内侧,前部)和奖励响应性(皮尺,显着,电动机/感官)中的规范网络内和典型网络之间的连接。连接力量没有随治疗而改变,并且在后续预测期间的后处理评估的强度也显着预测禁欲(r = 0.34,df = 39)。独立样本中的网络强度预测治疗响应,在与基线可卡因使用结合时,自身精度的精度为64%,精度为71%。这些数据表明,大规模神经网络中的个体差异有助于可卡因使用障碍的治疗结果的可变性,并且他们识别可能以新颖的干预措施靶向的特定禁欲网络。

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