Leveraging Clinically Relevant Biometric Constraints To Supervise A Deep Learning Model For The Accurate Caliper Placement To Obtain Sonographic Measurements Of The Fetal Brain
Hari Shankar, Adithya Narayan, Shefali Jain, Divya Singh, Pooja Vyas,, Nivedita Hegde, Purbayan Kar, Abhi Lad, Jens Thang, Jagruthi Atada, Duy, Nguyen, PS Roopa, Akhila Vasudeva, Prathima Radhakrishnan, Sripad Krishna, Devalla

TL;DR
This study introduces a deep learning model that automates caliper placement in fetal brain ultrasound images, leveraging biometric constraints to improve accuracy and assist less experienced clinicians in fetal neurodevelopment assessment.
Contribution
The paper presents a novel deep learning approach that incorporates biometric constraints for automated caliper placement in fetal brain ultrasound analysis, enhancing accuracy and clinical utility.
Findings
Deep learning model achieves error rates comparable to experienced clinicians.
Biometric constraints improve caliper placement accuracy.
Model generalizes well across different datasets.
Abstract
Multiple studies have demonstrated that obtaining standardized fetal brain biometry from mid-trimester ultrasonography (USG) examination is key for the reliable assessment of fetal neurodevelopment and the screening of central nervous system (CNS) anomalies. Obtaining these measurements is highly subjective, expertise-driven, and requires years of training experience, limiting quality prenatal care for all pregnant mothers. In this study, we propose a deep learning (DL) approach to compute 3 key fetal brain biometry from the 2D USG images of the transcerebellar plane (TC) through the accurate and automated caliper placement (2 per biometry) by modeling it as a landmark detection problem. We leveraged clinically relevant biometric constraints (relationship between caliper points) and domain-relevant data augmentation to improve the accuracy of a U-Net DL model (trained/tested on: 596…
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Taxonomy
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Concatenated Skip Connection · Convolution · Max Pooling · U-Net
