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Predicting Social Anxiety Treatment Outcome Based on Therapeutic Email Conversations

机译:基于治疗性电子邮件对话的社交焦虑症治疗结果预测

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摘要

Predicting therapeutic outcome in the mental health domain is of utmost importance to enable therapists to provide the most effective treatment to a patient. Using information from the writings of a patient can potentially be a valuable source of information, especially now that more and more treatments involve computer-based exercises or electronic conversations between patient and therapist. In this paper, we study predictive modeling using writings of patients under treatment for a social anxiety disorder. We extract a wealth of information from the text written by patients including their usage of words, the topics they talk about, the sentiment of the messages, and the style of writing. In addition, we study trends over time with respect to those measures. We then apply machine learning algorithms to generate the predictive models. Based on a dataset of 69 patients, we are able to show that we can predict therapy outcome with an area under the curve of 0.83 halfway through the therapy and with a precision of 0.78 when using the full data (i.e., the entire treatment period). Due to the limited number of participants, it is hard to generalize the results, but they do show great potential in this type of information.
机译:在心理健康领域中预测治疗结果对于使治疗师能够为患者提供最有效的治疗至关重要。使用来自患者作品的信息可能会成为有价值的信息来源,尤其是由于越来越多的治疗方法涉及基于计算机的练习或患者与治疗师之间的电子对话,这尤其有用。在本文中,我们使用社交焦虑症接受治疗的患者的文献研究预测模型。我们从患者撰写的文本中提取了大量信息,包括他们的用词方式,他们谈论的主题,信息的情感以及写作风格。此外,我们研究了这些指标随时间的变化趋势。然后,我们应用机器学习算法来生成预测模型。基于69位患者的数据集,我们能够证明我们可以在治疗中途以0.83的曲线下面积预测治疗结果,而使用全部数据(即整个治疗期间)则可以以0.78的精度进行预测。由于参与者的数量有限,因此很难一概而论,但他们的确在此类信息中显示出巨大的潜力。

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