Definition and quantification of 3-dimensional imaging targets to
phenotype pre-eclampsia subtypes: an exploratory study
Abstract
Objective: Pre-eclampsia is a severe placenta related complication of
pregnancy and aetiological knowledge, with limited early diagnostic and
therapeutic options. Phenotyping of native placental three-dimensional
(3D) morphology offers a novel approach to improve our understanding of
the functional and structural placental abnormalities underlying this
clinical syndrome. The aim of this project was to develop a 3D placental
imaging protocol using multiphoton microscopy (MPM) and demonstrate
quantifiable imaging targets for phenotyping 3D features of
pre-eclampsia. Design: Exploratory pilot study. Setting: Single centre,
MUMC. Sample: Formalin fixed placental biopsies from: term control
(n=3), pre-eclampsia (n=3), preterm birth (n=2), 2nd trimester placenta
(n=1), and intra-uterine growth restriction cases without pre-eclampsia
(n=2). Methods: Placental slabs were visualised with MPM. Collagen and
cytoplasm (based on inherent signal), and fluorescently stained nuclei
and blood vessels, enabled the visualization of villous tissue with
subcellular resolution. Segmentation based on pixel classification, deep
learning, and clustering algorithms were used to generate quantifiable
features. Main outcome measures: Trophoblast arrangement, 3D-villous
tree structure, syncytial knots, fibrosis, and 3D-vascular networks were
identified as imaging targets. Villous morphology, vascular fraction,
vascular network (i.e., branchpoint density and diameter), nuclear
density, and knot fraction were quantified to describe placental
phenotypes. Results: Pre-eclamptic placentas had disorganized
trophoblast arrangement, decreased vascular fraction, and altered vessel
diameters, compared to control placentas. The developed 3D-methodology
indicated that placental vasculature, syncytial knotting, and villous
growth are altered in pre-eclampsia. Conclusion: Our preliminary data
demonstrate the potential of the developed quantification method for
phenotyping pre-eclampsia, to improve future disease stratification.