"A Machine Learning Approach for Early Dyslexia Screening in a Minoritized Language Context: The Case of Catalan"
收藏DataCite Commons2025-11-11 更新2026-05-03 收录
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https://ieee-dataport.org/documents/machine-learning-approach-early-dyslexia-screening-minoritized-language-context-case
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"Learning to read is a fundamental skill for academic success and a key tool for enabling individuals to fully participate in society. However, approximately 10% of children face difficulties in acquiring this skill due to dyslexia, a neurodevelopmental disorder that affects reading and writing acquisition. Dyslexia is often underdiagnosed, and affected children are typically identified only after experiencing academic failure, despite the fact that the condition is unrelated to general intelligence. Developing dyslexia detection methods is particularly challenging in minoritized languages, where the smaller number of speakers makes it difficult to gather the large datasets typically required to train machine learning models. In this work, we present an approach for screening dyslexia in Catalan using a gamified test that combines linguistic exercises with machine learning techniques. To achieve this, we designed the content of a computer game, collected data from 730 children \u2014155 of whom were diagnosed with dyslexia\u2014 who played the game, and developed a prediction model using various machine learning classifiers along with targeted feature selection. Our method achieved the highest balanced accuracy when using a Single-Layer Perceptron (SLP) classifier (87.46%) and a linear Support Vector Machine (SVM) classifier (86.67%), both applied to a selected subset of features. These results highlight the potential for cost-effective, online early screening of dyslexia in children who speak minoritized languages, especially in contexts where collecting large datasets is not feasible."
提供机构:
IEEE DataPort
创建时间:
2025-11-11



