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Machine Learning Increases Diagnosticity in Psychometric Evaluation of Alexithymia in Fibromyalgia

机译:机器学习增加了纤维肌痛的亚伦比亚肌的心理测量评价诊断性

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Here, we report an investigation on the accuracy of the Toronto Alexithymia Scale, a measure to assess alexithymia, a multidimensional construct often associate to fibromyalgia. Two groups of participants, patients with fibromyalgia ( n = 38), healthy controls ( n = 38) were administered the Toronto Alexithymia Scale and background tests. Machine learning models achieved an overall accuracy higher than 80% in detecting both patients with fibromyalgia and healthy controls. The parameter which alone has demonstrated maximum efficiency in classifying the single subject within the two groups has been the item 3 of the alexithymia scale. The analysis of the most informative features, based on all scales administered, revealed that item 3 and 13 of the alexithymia questionnaire and the visual analog scale scores were the most informative attributes in correctly classifying participants (accuracy above 85%). An additional analyses using only the alexithymia scale subset of items and the visual analog scale scores has shown that the predictors which efficiently classified patients with fibromyalgia and controls were the item 3 and 7 (accuracy = 85.53%). Our findings suggest that machine learning models analysis based on the Toronto Alexithymia Scale subset of items scores accurately distinguish patients with fibromyalgia from healthy controls.
机译:在这里,我们报告了对多伦多的准确性的调查,评估亚朗的衡量标准,一种多维构建体通常与纤维肌痛相关。两组参与者,纤维肌痛(n = 38),健康对照(n = 38)被施用多伦多alexithymia标度和背景测试。机器学习模型在检测纤维肌痛和健康对照的患者中,总精度高于80%。单独的参数在两组内分类单个主题的最大效率已经是Alexithymia级的第3项。基于所有秤的所有尺度的最具信息丰富的特征分析显示,亚朗的第3和第13项,视觉模拟规模分数是正确分类参与者(高于85%的准确性)中最具信息的属性。仅使用Alexithymia Scale的项目和视觉模拟规模分数的额外分析表明,有效分类纤维肌痛和对照患者的预测因子是项目3和7(精度= 85.53%)。我们的研究结果表明,基于多伦多的机器学习模型分析,基于多伦多的Allexithymia Scale的项目差异分解精确区分纤维肌痛的患者免受健康的对照。

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