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Multivariate predictive model for dyslexia diagnosis

机译:诊断阅读障碍的多元预测模型

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Dyslexia is a specific disorder of language development that mainly affects reading. Etiological researches have led to multiple hypotheses which induced various diagnosis methods and rehabilitation treatments so that many different tests are used by practitioners to identify dyslexia symptoms. Our purpose is to determine a subset of the most efficient ones by integrating them into a multivariate predictive model. A set of screening tasks that are the most commonly used and representative of the different cognitive aspects of dyslexia was proposed to 78 children from elementary school (mean age = 9 years ± 7 months) exempt from identified reading difficulties and to 35 dyslexic children attending a specialized consultation for dyslexia. We proposed a multi-step procedure: within each category, we first selected the most representative tasks using principal component analysis and then we implemented logistic regression models on the preselected variables. Spelling and reading tasks were considered separately. The model with the best predictive performance includes eight variables from four categories of tasks and classifies correctly 94% of the children. The sensitivity (91%) and the specificity (95%) are both high. Forty minutes are necessary to complete the test.
机译:阅读障碍是一种主要影响阅读的语言发展障碍。病因学研究导致了多种假说,这些假说引发了各种诊断方法和康复治疗,因此从业者使用许多不同的测试来识别阅读障碍症状。我们的目的是通过将最有效的子集集成到多变量预测模型中来确定它们的子集。提出了一组最常用的,代表阅读障碍的不同认知方面的筛查任务,建议对78名小学儿童(平均年龄= 9岁±7个月)免于确定的阅读困难,对35名患有阅读障碍的儿童进行阅读。阅读障碍的专业咨询。我们提出了一个多步骤的过程:在每个类别中,我们首先使用主成分分析选择最具代表性的任务,然后对预选变量实施逻辑回归模型。拼写和阅读任务是分开考虑的。具有最佳预测性能的模型包括来自四类任务的八个变量,并正确分类了94%的孩子。灵敏度(91%)和特异性(95%)都很高。完成测试需要40分钟。

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