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Single- and Multi-label Prediction of Burden on Families of Schizophrenia Patients

机译:精神分裂症患者家庭负担的单标签和多标签预测

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Whereas there exist questionnaires used to measure the level of anxiety or depression in caregivers of schizophrenia patients, sometimes these symptoms take too long to be detected and the treatment needed is more difficult than it would have been if the burden had been detected at an earlier stage. In this paper we propose the use of automatic classification techniques to predict the output of such questionnaires (Hamilton and ECFOS-Ⅱ), making it possible to anticipate an appropriate treatment or advice for the family caregivers from Primary Care consultations. In particular, we apply standard (one class variable) and multi-dimensional classification approaches to predict caregiver anxiety, depression and answers to questionnaires. Our study has been carried out with a dataset containing data from 180 schizophrenia patients and their caregivers, and the results are very promising, obtaining accuracies of approximately 96%.
机译:尽管存在用于测量精神分裂症患者看护者的焦虑或抑郁水平的问卷,但有时这些症状花费的时间太长而无法被发现,并且与较早发现负担的情况相比,所需要的治疗更加困难。在本文中,我们建议使用自动分类技术来预测此类调查表的输出(汉密尔顿和ECFOS-Ⅱ),从而有可能从基层医疗咨询中为家庭看护人预测适当的治疗或建议。特别是,我们采用标准(一类变量)和多维分类方法来预测护理人员的焦虑,抑郁和问卷答复。我们的研究是通过一个数据集进行的,该数据集包含来自180位精神分裂症患者及其护理者的数据,结果非常有希望,获得了大约96%的准确性。

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