Using conversation topics for predicting therapy outcomes in schizophrenia.

Biomedical informatics insights Pub Date : 2013-07-15 eCollection Date: 2013-01-01 DOI:10.4137/BII.S11661
Christine Howes, Matthew Purver, Rose McCabe
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引用次数: 23

Abstract

Previous research shows that aspects of doctor-patient communication in therapy can predict patient symptoms, satisfaction and future adherence to treatment (a significant problem with conditions such as schizophrenia). However, automatic prediction has so far shown success only when based on low-level lexical features, and it is unclear how well these can generalize to new data, or whether their effectiveness is due to their capturing aspects of style, structure or content. Here, we examine the use of topic as a higher-level measure of content, more likely to generalize and to have more explanatory power. Investigations show that while topics predict some important factors such as patient satisfaction and ratings of therapy quality, they lack the full predictive power of lower-level features. For some factors, unsupervised methods produce models comparable to manual annotation.

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利用谈话话题预测精神分裂症的治疗结果。
先前的研究表明,治疗中医患沟通的各个方面可以预测患者的症状、满意度和未来对治疗的依从性(精神分裂症等疾病的一个重要问题)。然而,到目前为止,自动预测仅在基于低级词汇特征的情况下才显示出成功,而且尚不清楚这些特征在多大程度上可以推广到新数据,也不清楚它们的有效性是否取决于它们捕获的风格、结构或内容方面。在这里,我们检查使用主题作为内容的更高层次的措施,更有可能概括,并有更多的解释力。调查表明,虽然主题预测了一些重要因素,如患者满意度和治疗质量评分,但它们缺乏较低水平特征的全部预测能力。对于某些因素,无监督方法产生的模型可与手动注释相媲美。
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