A REVIEW OF ARTIFICIAL INTELLIGENCE-BASED DOWN SYNDROME DETECTION TECHNIQUES

A Review of Artificial Intelligence-Based Down Syndrome Detection Techniques

A Review of Artificial Intelligence-Based Down Syndrome Detection Techniques

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Background: Down syndrome (DS) is one of the most prevalent chromosomal abnormalities affecting global healthcare.Recent advances in artificial intelligence (AI) and machine learning (ML) have enhanced DS diagnostic accuracy.However, there is a lack of thorough evaluations analyzing the overall impact and effectiveness of AI-based DS diagnostic approaches.Objectives: This review intends to identify methodologies and technologies used in AI-driven DS diagnostics.

It evaluates the performance of AI models in terms of standard evaluation metrics, highlighting their strengths and limitations.Methodology: In order to ensure transparency and COMBO STRAW BENT rigor, the authors followed the preferred reporting items for systematic reviews and meta-analyses (PRISMA) guidelines.They extracted 1175 articles from major academic databases.By leveraging inclusion and exclusion criteria, a final set of 25 articles was selected.

Outcomes: The findings revealed significant advancements in AI-powered DS diagnostics across diverse data modalities.The modalities, including facial images, ultrasound scans, and genetic data, demonstrated strong potential for early DS diagnosis.Despite these advancements, this review outlined the limitations of AI approaches.Small and imbalanced datasets reduce the generalizability of the AI Hand Soap models.

The authors present actionable strategies to enhance the clinical adoptions of these models.

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