Case-based reasoning approach for diagnostic screening of children with developmental delays
Zichen Song, Jiakang Li, Songning Lai, Sitan Huang

TL;DR
This paper presents a hybrid CNN-Transformer and Case-Based Reasoning system to improve early screening of children with developmental delays using bone age images, aiming to enhance detection efficiency and support early intervention.
Contribution
It introduces a novel hybrid model combining CNN-Transformer with CBR for efficient screening of developmental delays in children, leveraging image recognition and case-based problem solving.
Findings
The hybrid model effectively identifies developmental delays from bone age images.
Screening accuracy and efficiency are improved compared to traditional methods.
The system supports early diagnosis, enabling timely intervention.
Abstract
According to the World Health Organization, the population of children with developmental delays constitutes approximately 6% to 9% of the total population. Based on the number of newborns in Huaibei, Anhui Province, China, in 2023 (94,420), it is estimated that there are about 7,500 cases (suspected cases of developmental delays) of suspicious cases annually. Early identification and appropriate early intervention for these children can significantly reduce the wastage of medical resources and societal costs. International research indicates that the optimal period for intervention in children with developmental delays is before the age of six, with the golden treatment period being before three and a half years of age. Studies have shown that children with developmental delays who receive early intervention exhibit significant improvement in symptoms; some may even fully recover. This…
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Taxonomy
TopicsEducational and Psychological Assessments · Intelligent Tutoring Systems and Adaptive Learning
