Ultrasound Imaging based recognition of prenatal anomalies: A systematic clinical engineeringreview

N. Sriraam, Babu Chinta, S. Suresh, Suresh Sudarshan
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Abstract

For prenatal screening, ultrasound imaging allows for real-time observation of developing fetal anatomy. Understanding normal and aberrant forms through extensive fetal structural assessment enables for early detection and intervention. However, the reliability of anomaly diagnosis varies depending on operator expertise and device limits. First trimester scans in conjunction with circulating biochemical markers are critical in identifying high-risk pregnancies, but they also pose technical challenges. Recent engineering advancements in automated diagnosis, such as AI-based ultrasound image processing and multimodal data fusion, are developing to improve screening efficiency, accuracy, and consistency. Still, creating trust in these data-driven solutions is necessary for integration and acceptability in clinical settings. Transparency can be promoted by explainable AI (XAI) technologies that provide visual interpretations and illustrate the underlying diagnostic decision making process. An explanatory framework based on deep learning is suggested to construct charts depicting anomaly screening results from ultrasound video feeds. AI modeling can then be applied to these charts to connect defects with probable deformations. Overall, engineering approaches that increase imaging, automation, and interpretability hold enormous promise for altering traditional workflows and expanding diagnostic capabilities for better prenatal care.
基于超声成像的产前畸形识别:系统性临床工程回顾
在产前筛查方面,超声成像可实时观察胎儿的发育解剖结构。通过广泛的胎儿结构评估,了解正常和异常胎儿的形态,以便及早发现和干预。然而,异常诊断的可靠性因操作者的专业知识和设备限制而异。怀孕头三个月的扫描与循环生化标记物相结合,对识别高危妊娠至关重要,但也带来了技术挑战。最近在自动诊断方面取得的工程技术进步,如基于人工智能的超声图像处理和多模态数据融合,正在提高筛查效率、准确性和一致性。不过,要在临床环境中实现整合和可接受性,就必须建立对这些数据驱动解决方案的信任。可解释的人工智能(XAI)技术可提供可视化解释并说明基本诊断决策过程,从而提高透明度。建议采用基于深度学习的解释框架来构建图表,描述超声波视频馈送的异常筛查结果。然后,可将人工智能建模应用于这些图表,将缺陷与可能的变形联系起来。总之,提高成像、自动化和可解释性的工程方法在改变传统工作流程和扩展诊断能力以改善产前护理方面大有可为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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