Warren Alpert Medical School of Brown University, Providence, RI, USA.
Department of Obstetrics and Gynecology, Eastern VA Medical College, Norfolk, VA, USA.
Fetal Pediatr Pathol. 2023 Dec;42(6):860-869. doi: 10.1080/15513815.2023.2246571. Epub 2023 Aug 12.
Previous studies identified microscopic changes associated with intrauterine retention of stillbirths based on clinical time of death. The objective of this study was to utilize unsupervised machine learning (not reliant on subjective measures) to identify features associated with time from death to delivery. Data were derived from the Stillbirth Collaborative Research Network. Features were chosen for entry into hierarchical cluster analysis, including fetal and placental changes. A four-cluster solution (coefficient = 0.983) correlated with relative time periods of "no retention," "mild retention," "moderate retention," and "severe retention." Loss of nuclear basophilia within fetal organs were found at varying rates among these clusters. Hierarchical cluster analysis is able to classify stillbirths based on histopathological changes, roughly correlating to length of intrauterine retention. Such clusters, which rely solely on objective fetal and placental findings, can help clinicians more accurately assess the interval from death to delivery.
先前的研究基于临床死亡时间,确定了与死胎宫内滞留相关的微观变化。本研究的目的是利用无监督机器学习(不依赖于主观测量)来识别与从死亡到分娩时间相关的特征。数据来自死胎协作研究网络。选择特征输入层次聚类分析,包括胎儿和胎盘变化。四个聚类解决方案(系数=0.983)与“无滞留”、“轻度滞留”、“中度滞留”和“重度滞留”的相对时间段相关。在这些聚类中,胎儿器官内核嗜碱性丧失的发生率不同。层次聚类分析能够根据组织病理学变化对死胎进行分类,大致与宫内滞留时间相关。这些仅依赖于客观胎儿和胎盘发现的聚类,可以帮助临床医生更准确地评估从死亡到分娩的时间间隔。