Litcius/Paper detail

Deep Learning Applications for Dyslexia Prediction

Norah Dhafer Alqahtani, Bander Alzahrani, Muhammad Sher Ramzan

2023Applied Sciences45 citationsDOIOpen Access PDF

Abstract

Dyslexia is a neurological problem that leads to obstacles and difficulties in the learning process, especially in reading. Generally, people with dyslexia suffer from weak reading, writing, spelling, and fluency abilities. However, these difficulties are not related to their intelligence. An early diagnosis of this disorder will help dyslexic children improve their abilities using appropriate tools and specialized software. Machine learning and deep learning methods have been implemented to recognize dyslexia with various datasets related to dyslexia acquired from medical and educational organizations. This review paper analyzed the prediction performance of deep learning models for dyslexia and summarizes the challenges researchers face when they use deep learning models for classification and diagnosis. Using the PRISMA protocol, 19 articles were reviewed and analyzed, with a focus on data acquisition, preprocessing, feature extraction, and the prediction model performance. The purpose of this review was to aid researchers in building a predictive model for dyslexia based on available dyslexia-related datasets. The paper demonstrated some challenges that researchers encounter in this field and must overcome.

Topics & Concepts

DyslexiaComputer scienceFluencyArtificial intelligenceDeep learningReading (process)SpellingLearning disabilityMachine learningNatural language processingCognitive psychologyPsychologyDevelopmental psychologyMathematics educationLawLinguisticsPhilosophyPolitical scienceEEG and Brain-Computer InterfacesReading and Literacy DevelopmentTactile and Sensory Interactions