Testi Matteo, Fiorentino Maria Chiara, Ballabio Matteo, Visani Giorgio, Ciccozzi Massimo, Frontoni Emanuele, Moccia Sara, Vessio Gennaro
Artificial Venture Builder, London, UK.
Department of Information Engineering, Università Politecnica delle Marche, Ancona, Italy.
Med Biol Eng Comput. 2025 Sep 8. doi: 10.1007/s11517-025-03436-5.
Fetal standard plane detection is essential in prenatal care, enabling accurate assessment of fetal development and early identification of potential anomalies. Despite significant advancements in machine learning (ML) in this domain, its integration into clinical workflows remains limited-primarily due to the lack of standardized, end-to-end operational frameworks. To address this gap, we introduce FetalMLOps, the first comprehensive MLOps framework specifically designed for fetal ultrasound imaging. Our approach adopts a ten-step MLOps methodology that covers the entire ML lifecycle, with each phase meticulously adapted to clinical needs. From defining the clinical objective to curating and annotating fetal US datasets, every step ensures alignment with real-world medical practice. ETL (extract, transform, load) processes are developed to standardize, anonymize, and harmonize inputs, enhancing data quality. Model development prioritizes architectures that balance accuracy and efficiency, using clinically relevant evaluation metrics to guide selection. The best-performing model is deployed via a RESTful API, following MLOps best practices for continuous integration, delivery, and performance monitoring. Crucially, the framework embeds principles of explainability and environmental sustainability, promoting ethical, transparent, and responsible AI. By operationalizing ML models within a clinically meaningful pipeline, FetalMLOps bridges the gap between algorithmic innovation and real-world application, setting a precedent for trustworthy and scalable AI adoption in prenatal care.
胎儿标准平面检测在产前护理中至关重要,能够准确评估胎儿发育情况并早期识别潜在异常。尽管机器学习(ML)在该领域取得了重大进展,但其融入临床工作流程的程度仍然有限,主要原因是缺乏标准化的端到端操作框架。为了弥补这一差距,我们引入了FetalMLOps,这是首个专门为胎儿超声成像设计的全面MLOps框架。我们的方法采用了十步MLOps方法,涵盖了整个ML生命周期,每个阶段都精心适配临床需求。从定义临床目标到整理和标注胎儿超声数据集,每一步都确保与实际医疗实践保持一致。开发了ETL(提取、转换、加载)流程,以标准化、匿名化和协调输入,提高数据质量。模型开发优先考虑平衡准确性和效率的架构,使用临床相关评估指标来指导选择。遵循MLOps关于持续集成、交付和性能监控的最佳实践,通过RESTful API部署性能最佳的模型。至关重要的是,该框架融入了可解释性和环境可持续性原则,促进符合道德、透明和负责任的人工智能。通过在具有临床意义的流程中运行ML模型,FetalMLOps弥合了算法创新与实际应用之间的差距,为在产前护理中采用可靠且可扩展的人工智能树立了先例。