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Prediction of psychosis across protocols and risk cohorts using automated language analysis

机译:使用自动语言分析对各种方案和风险人群的精神病进行预测

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摘要

Language and speech are the primary source of data for psychiatrists to diagnose and treat mental disorders. In psychosis, the very structure of language can be disturbed, including semantic coherence (e.g., derailment and tangentiality) and syntactic complexity (e.g., concreteness). Subtle disturbances in language are evident in schizophrenia even prior to first psychosis onset, during prodromal stages. Using computer‐based natural language processing analyses, we previously showed that, among English‐speaking clinical (e.g., ultra) high‐risk youths, baseline reduction in semantic coherence (the flow of meaning in speech) and in syntactic complexity could predict subsequent psychosis onset with high accuracy. Herein, we aimed to cross‐validate these automated linguistic analytic methods in a second larger risk cohort, also English‐speaking, and to discriminate speech in psychosis from normal speech. We identified an automated machine‐learning speech classifier – comprising decreased semantic coherence, greater variance in that coherence, and reduced usage of possessive pronouns – that had an 83% accuracy in predicting psychosis onset (intra‐protocol), a cross‐validated accuracy of 79% of psychosis onset prediction in the original risk cohort (cross‐protocol), and a 72% accuracy in discriminating the speech of recent‐onset psychosis patients from that of healthy individuals. The classifier was highly correlated with previously identified manual linguistic predictors. Our findings support the utility and validity of automated natural language processing methods to characterize disturbances in semantics and syntax across stages of psychotic disorder. The next steps will be to apply these methods in larger risk cohorts to further test reproducibility, also in languages other than English, and identify sources of variability. This technology has the potential to improve prediction of psychosis outcome among at‐risk youths and identify linguistic targets for remediation and preventive intervention. More broadly, automated linguistic analysis can be a powerful tool for diagnosis and treatment across neuropsychiatry.
机译:语言和言语是精神科医生诊断和治疗精神疾病的主要数据来源。在精神病中,语言的结构可能会受到干扰,包括语义连贯性(例如出轨和切线)和句法复杂性(例如具体性)。在精神分裂症中,甚至在第一次精神病发作之前,在前驱阶段,语言上的细微干扰也是明显的。使用基于计算机的自然语言处理分析,我们先前表明,在英语为英语的临床(例如,超高)高危年轻人中,语义连贯性(言语中的意思流)和句法复杂性的基线下降可以预测随后的精神病发病率高。在本文中,我们旨在在第二个更大的风险人群(也就是说英语)中对这些自动语言分析方法进行交叉验证,并将精神病患者的语言与正常语言区分开。我们确定了一种自动的机器学习语音分类器–包括语义一致性的降低,一致性的更大变化和所有格代词的使用减少–在预测精神病发作(协议内)方面的准确度为83%,交叉验证的准确性为在原始风险队列中(跨协议),有79%的精神病发作预测,在将新发精神病患者的言语与健康个体的言语区别开来时,准确性为72%。分类器与先前确定的手动语言预测器高度相关。我们的研究结果支持自动自然语言处理方法的实用性和有效性,以表征精神病性疾病各个阶段的语义和语法干扰。下一步将是将这些方法应用于更大的风险人群中,以进一步测试可重复性(还使用英语以外的其他语言),并确定变异性的来源。这项技术有可能改善高危青少年对精神病预后的预测,并确定补救和预防干预的语言目标。更广泛地说,自动语言分析可以是跨神经精神病学进行诊断和治疗的强大工具。

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