多模式预测耐药精神分裂症患者是否需要氯氮平;一项针对首发精神病的试点研究

Q2 Medicine
Jonatan M. Panula , Athanasios Gotsopoulos , Jussi Alho , Jaana Suvisaari , Maija Lindgren , Tuula Kieseppä , Tuukka T. Raij
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引用次数: 0

摘要

多达三分之一的精神分裂症患者对一线抗精神病药物治疗无效。这部分患者可能会从非典型抗精神病药物氯氮平中获益,但开始治疗的时间往往被推迟,这可能会使预后恶化。如果能预测出哪些患者在症状出现时对传统抗精神病药物无效,就能为这类患者提供快速治疗。我们从 38 名首发精神病患者的病历中收集了数据,其中有 7 名患者对传统抗精神病药物没有反应。我们利用临床数据(包括医疗记录)、体素形态计量核磁共振成像数据和观看电影时获得的受试者间相关 fMRI 数据来预测未来的治疗阻力。利用神经网络模型,我们正确预测了 7 名耐药患者中的 6 名和 31 名不需要氯氮平治疗的患者中的 25 名的未来耐药情况。在使用成像数据和临床数据的同时,预测结果也有了明显改善。神经网络模型的准确性明显高于支持向量机算法的准确性。这些结果支持这样一种观点,即耐药性精神分裂症可能是精神病的一个独立实体,其特点是大脑形态和功能发生变化,而这些变化可能是在症状早期就能检测到的生物标志物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal prediction of the need of clozapine in treatment resistant schizophrenia; a pilot study in first-episode psychosis

As many as one third of the patients diagnosed with schizophrenia do not respond to first-line antipsychotic medication. This group may benefit from the atypical antipsychotic medication clozapine, but initiation of treatment is often delayed, which may worsen prognosis. Predicting which patients do not respond to traditional antipsychotic medication at the onset of symptoms would provide fast-tracked treatment for this group of patients. We collected data from patient records of 38 first-episode psychosis patients, of whom seven did not respond to traditional antipsychotic medications. We used clinical data including medical records, voxel-based morphometry MRI data and inter-subject correlation fMRI data, obtained during movie viewing, to predict future treatment resistance. Using a neural network model, we correctly predicted future treatment resistance in six of the seven treatment resistance patients and 25 of 31 patients who did not require clozapine treatment. Prediction improved significantly when using imaging data in tandem with clinical data. The accuracy of the neural network model was significantly higher than the accuracy of a support vector machine algorithm. These results support the notion that treatment resistant schizophrenia could represent a separate entity of psychotic disorders, characterized by morphological and functional changes in the brain which could represent biomarkers detectable at early onset of symptoms.

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来源期刊
Biomarkers in Neuropsychiatry
Biomarkers in Neuropsychiatry Medicine-Psychiatry and Mental Health
CiteScore
4.00
自引率
0.00%
发文量
12
审稿时长
7 weeks
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