Yan Yan, Galaz Jose, Marvald Joshua, Love Tanzy, Yellon Steven, Gomez-Lopez Nardhy, Mehrmohammadi Mohammad
Department of Imaging Sciences, University of Rochester Medical Center, Rochester, NY, USA.
Center for Molecular Medicine and Genetics, Wayne State University, Detroit, MI, USA.
Sci Rep. 2025 May 10;15(1):16359. doi: 10.1038/s41598-025-98765-8.
Cervical remodeling during pregnancy is a critical process that, if untimely, can lead to complications such as preterm birth (PTB). This study introduces a novel multi-parametric approach combining non-invasive imaging modalities to quantify cervical tissue changes during pregnancy and postpartum in a murine model. By integrating ultrasound-based measurements of cervical length, photoacoustic imaging of the collagen-to-water ratio, and elastography for tissue elasticity alongside histological assessments, this method provides a comprehensive evaluation of cervical remodeling. The findings reveal that combining these parameters significantly improves the accuracy of gestational age prediction compared to individual measurements, with a tri-parametric model achieving 85.3% prediction accuracy compared to 65.4% accuracy with histological analysis alone. This approach not only enhances the understanding of cervical remodeling but also holds potential as a minimally invasive, point-of-care diagnostic tool for early detection of cervical ripening and PTB risk. Ultimately, these advancements could inform clinical strategies for pregnancy management and labor induction, improving maternal and neonatal outcomes.
孕期宫颈重塑是一个关键过程,若时机不当,可能导致早产(PTB)等并发症。本研究引入了一种新颖的多参数方法,结合非侵入性成像模式,以量化小鼠模型孕期和产后宫颈组织的变化。通过整合基于超声的宫颈长度测量、胶原与水比例的光声成像以及组织弹性的弹性成像,并结合组织学评估,该方法对宫颈重塑进行了全面评估。研究结果表明,与单独测量相比,结合这些参数可显著提高孕周预测的准确性,三参数模型的预测准确率达到85.3%,而仅组织学分析的准确率为65.4%。这种方法不仅增进了对宫颈重塑的理解,还具有作为微创即时诊断工具早期检测宫颈成熟和PTB风险的潜力。最终,这些进展可为妊娠管理和引产的临床策略提供依据,改善母婴结局。