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AI-Assisted 2D Fetal Brain Ultrasound for Intracranial Anomaly Detection (ALYSSIA)

S

Sanliurfa Mehmet Akif Inan Education and Research Hospital

Status

Active, not recruiting

Conditions

Ultrasound Imaging
Artificial Intelligence
Intracranial Anomalies

Treatments

Diagnostic Test: Alyssia - AI-Assisted Diagnostic Model for Fetal Brain Ultrasound

Study type

Observational

Funder types

Other

Identifiers

NCT07261618
E-47749665-050.04-4465
MEF University Ethics Committe (Other Identifier)

Details and patient eligibility

About

Timely detection of fetal brain anomalies is critical for improving prenatal counseling and postnatal neurological outcomes. Ultrasonography is the most commonly used and effective imaging method for evaluating fetal structures; however, diagnostic accuracy can be affected by operator experience, fetal position, and image quality, leading to variability in interpretation. Artificial intelligence (AI)-based image analysis offers a new opportunity to standardize diagnostic assessment and reduce subjectivity in ultrasound interpretation.

This study aims to evaluate the diagnostic accuracy and clinical applicability of an AI-assisted model (Alyssia) designed to analyze archived 2D fetal brain ultrasound images. The model will be trained and validated to distinguish between normal and abnormal intracranial findings, focusing particularly on the lateral ventricles and other relevant brain regions. The research employs an observational, retrospective design using anonymized ultrasound data obtained during routine prenatal examinations between 18 and 24 weeks of gestation.

Expert clinicians will review and label all eligible images to establish ground truth classifications for model training and validation. A deep learning-based algorithm will be developed to automatically classify these images, and its performance will be evaluated using accuracy, sensitivity, specificity, precision, and F1-score metrics. Misclassified cases will be qualitatively analyzed to determine contributing factors such as image quality, anatomical variability, and gestational differences.

By comparing AI model outputs with expert-labeled references, the study will assess the model's ability to enhance diagnostic standardization and reduce inter-observer variability. The findings are expected to provide valuable insights into the integration of AI-based decision support systems in prenatal neurosonography. Ultimately, this research aims to support earlier and more reliable detection of fetal brain anomalies, contributing to improved prenatal care and healthier outcomes for mothers and infants.

Enrollment

800 estimated patients

Sex

Female

Ages

18 to 45 years old

Volunteers

Accepts Healthy Volunteers

Inclusion criteria

  • Archived 2D fetal brain ultrasound images obtained during routine prenatal examinations.
  • Gestational age between 18 and 24 weeks at the time of imaging.
  • Maternal age between 18 and 45 years.
  • Clear visualization of the lateral ventricles and other intracranial regions.
  • Images meeting diagnostic quality standards suitable for analysis.
  • Fully anonymized images with no patient identifiers.
  • Availability of expert assessment to classify each image as normal or abnormal.

Exclusion criteria

  • Ultrasound images with poor diagnostic quality or motion artifacts.
  • Incomplete, duplicate, or corrupted image records.
  • Ambiguous gestational age or missing clinical metadata.
  • Images containing any identifiable patient information.
  • Cases outside the specified gestational window (before 18 or after 24 weeks).
  • Images unrelated to the fetal brain (misfiled or mislabeled data).

Trial design

800 participants in 2 patient groups

Normal Fetal Brain Images
Description:
Archived 2D fetal brain ultrasound images classified as normal by expert reviewers.
Treatment:
Diagnostic Test: Alyssia - AI-Assisted Diagnostic Model for Fetal Brain Ultrasound
Abnormal Fetal Brain Images
Description:
Archived 2D fetal brain ultrasound images with confirmed intracranial anomalies, labeled by experts.
Treatment:
Diagnostic Test: Alyssia - AI-Assisted Diagnostic Model for Fetal Brain Ultrasound

Trial contacts and locations

1

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Data sourced from clinicaltrials.gov

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