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Decoding Activity in Broca's Area Predicts the Occurrence of Auditory Hallucinations Across Subjects

机译:Broca区域的解码活动预测了受试者幻听的发生

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BACKGROUND: Functional magnetic resonance imaging (fMRI) capture aims at detecting auditory-verbal hallucinations (AVHs) from continuously recorded brain activity. Establishing efficient capture methods with low computational cost that easily generalize between patients remains a key objective in precision psychiatry. To address this issue, we developed a novel automatized fMRI-capture procedure for AVHs in patients with schizophrenia (SCZ). METHODS: We used a previously validated but labor-intensive personalized fMRI-capture method to train a linear classifier using machine learning techniques. We benchmarked the performances of this classifier on 2320 AVH periods versus resting-state periods obtained from SCZ patients with frequent symptoms (n = 23). We characterized patterns of blood oxygen level-dependent activity that were predictive of AVH both within and between subjects. Generalizability was assessed with a second independent sample gathering 2000 AVH labels (n = 34 patients with SCZ), while specificity was tested with a nonclinical control sample performing an auditory imagery task (840 labels, n = 20). RESULTS: Our between-subject classifier achieved high decoding accuracy (area under the curve = 0.85) and discriminated AVH from rest and verbal imagery. Optimizing the parameters on the first schizophrenia dataset and testing its performance on the second dataset led to an out-of-sample area under the curve of 0.85 (0.88 for the converse test). We showed that AVH detection critically depends on local blood oxygen level-dependent activity patterns within Broca's area. CONCLUSIONS: Our results demonstrate that it is possible to reliably detect AVH states from fMRI blood oxygen level-dependent signals in patients with SCZ using a multivariate decoder without performing complex preprocessing steps. These findings constitute a crucial step toward brain-based treatments for severe drug-resistant hallucinations.
机译:背景:功能性磁共振成像 (fMRI) 捕获旨在从连续记录的大脑活动中检测听觉-言语幻觉 (AVH)。建立计算成本低、易于在患者之间泛化的高效捕获方法仍然是精准精神病学的关键目标。为了解决这个问题,我们开发了一种用于精神分裂症 (SCZ) 患者 AVH 的新型自动化 fMRI 捕获程序。方法: 我们使用一种先前验证但劳动密集型的个性化 fMRI 捕获方法,使用机器学习技术训练线性分类器。我们对该分类器在 2320 个 AVH 周期与从频繁症状 (n = 23) 的 SCZ 患者获得的静息状态周期的性能进行了基准测试。我们表征了在受试者内部和受试者之间预测 AVH 的血氧水平依赖性活动的模式。使用收集 2000 个 AVH 标签的第二个独立样本(n = 34 名 SCZ 患者)评估可推广性,同时使用执行听觉意象任务的非临床对照样本(840 个标签,n = 20)测试特异性。结果:我们的受试者间分类器实现了高解码精度(曲线下面积 = 0.85),并将 AVH 与休息和口头图像区分开来。优化第一个精神分裂症数据集上的参数并在第二个数据集上测试其性能,导致曲线下的样本外面积为 0.85(相反检验为 0.88)。我们发现,AVH的检测严重依赖于Broca区域内的局部血氧水平依赖性活动模式。结论:我们的结果表明,使用多变量解码器可以从 SCZ 患者的 fMRI 血氧水平依赖性信号中可靠地检测 AVH 状态,而无需执行复杂的预处理步骤。这些发现是朝着基于大脑的严重耐药幻觉治疗迈出的关键一步。

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