Anderson Elizabeth C, Srinivasan Gokul, Howe Caitlin G, Zhang Edward, Jeon Catherine, Paruchuri Gnan Suchir Gupta, Zhang Leah, Hwang Lindsay, Sengar Aditya, Reddy Neha, Karan Anmol, Chen Andrew, Shen Julia, Owo Onyinyechi, Caraballo-Bobea ZoëFaith, Khatchikian Camilo, Palys Thomas J, Vaickus Louis J, Madan Juliete C, Karagas Margaret R, Bentz Jessica L, Levy Joshua J
Department of Epidemiology, Geisel School of Medicine at Dartmouth, Lebanon, NH, USA.
Department of Pathology and Laboratory Medicine and the Department of Computational Biomedicine, Cedars-Sinai Medical Center, Los Angeles, CA, USA.
medRxiv. 2025 Apr 23:2025.04.22.25325465. doi: 10.1101/2025.04.22.25325465.
Quantification of placental histopathological structures is challenging due to a limited number of perinatal pathologists, constrained resources, and subjective assessments prone to variability. Objective standardization of placental structure is crucial for easing the burden on pathologists, gaining deeper insights into placental growth and adaptation, and ultimately improving maternal and fetal health outcomes.
Leveraging advancements in deep-learning segmentation, we developed an automated approach to detect over 9 million placenta chorionic villi from 1,531 term placental whole slide images from the New Hampshire Birth Cohort Study. Using unsupervised clustering, we successfully identified biologically relevant villi subtypes that align with previously reported classifications - terminal, mature intermediate, and immature intermediate - demonstrating consistent size distributions and comparable abundance. We additionally defined tertile-based combinations of villi area and circularity to characterize villous geometry. This study applies these cutting-edge AI methods to quantify villi features and examine their association with maternal and infant characteristics, including gestational age at delivery, maternal age, and infant sex.
Increasing gestational age at delivery was statistically significantly associated (p=0.003) with an increase in the proportion of mature intermediate villi and a decrease in the proportion of the smallest, most circular villi (p < 0.001). Maternal age and infant sex were not statistically significantly associated with measures of villous geometry.
This work presents a workflow that objectively standardizes chorionic villi subtypes and geometry to enhance understanding of placental structure and function, while providing insights into the efficiency, growth, and the architecture of term placentas which can be used to inform future clinical care.
由于围产期病理学家数量有限、资源受限以及主观评估容易出现差异,对胎盘组织病理学结构进行量化具有挑战性。胎盘结构的客观标准化对于减轻病理学家的负担、更深入地了解胎盘生长和适应性以及最终改善母婴健康结局至关重要。
利用深度学习分割技术的进步,我们开发了一种自动化方法,从新罕布什尔州出生队列研究的1531张足月胎盘全切片图像中检测出900多万个胎盘绒毛。通过无监督聚类,我们成功识别出与先前报道的分类一致的生物学相关绒毛亚型——终末型、成熟中间型和未成熟中间型——展示了一致的大小分布和可比的丰度。我们还定义了基于三分位数的绒毛面积和圆形度组合来表征绒毛几何形状。本研究应用这些前沿的人工智能方法来量化绒毛特征,并检查它们与母婴特征的关联,包括分娩时的孕周、母亲年龄和婴儿性别。
分娩时孕周增加与成熟中间型绒毛比例增加以及最小、最圆的绒毛比例降低在统计学上显著相关(p = 0.003)(p < 0.001)。母亲年龄和婴儿性别与绒毛几何形状指标在统计学上无显著关联。
这项工作提出了一种工作流程,该流程客观地标准化绒毛亚型和几何形状,以增强对胎盘结构和功能的理解,同时提供对足月胎盘的效率、生长和结构的见解,可用于为未来的临床护理提供参考。