Litcius/Paper detail

Advancing fetal ultrasound diagnostics: Innovative methodologies for improved accuracy in detecting down syndrome

Dinesh Mavaluru, Sahithya Ravali Ravula, Jerlin Priya Lovelin Auguskani, Santhi Muttipoll Dharmarajlu, Amutha Chellathurai, Jayabrabu Ramakrishnan, Bharath Kumar Mamilla Mugaiahgari, T. Nadana Ravishankar

2024Medical Engineering & Physics10 citationsDOI

Abstract

This research work explores the integration of medical and information technology, particularly focusing on the use of data analytics and deep learning techniques in medical image processing. Specifically, it addresses the diagnosis and prediction of fetal conditions, including Down Syndrome (DS), through the analysis of ultrasound images. Despite existing methods in image segmentation, feature extraction, and classification, there is a pressing need to enhance diagnostic accuracy. Our research delves into a comprehensive literature review and presents advanced methodologies, incorporating sophisticated deep learning architectures and data augmentation techniques to improve fetal diagnosis. Moreover, the study emphasizes the clinical significance of accurate diagnostics, detailing the training and validation process of the AI model, ensuring ethical considerations, and highlighting the potential of the model in real-world clinical settings. By pushing the boundaries of current diagnostic capabilities and emphasizing rigorous clinical validation, this research work aims to contribute significantly to medical imaging and pave the way for more precise and reliable fetal health assessments.

Topics & Concepts

Computer scienceArtificial intelligenceMedical imagingProcess (computing)SegmentationData scienceFeature extractionAnalyticsDeep learningData extractionMachine learningMedical physicsMedicineMEDLINEOperating systemPolitical scienceLawFetal and Pediatric Neurological DisordersArtificial Intelligence in Healthcare and EducationCOVID-19 diagnosis using AI