Mapping cell-to-tissue graphs across human placenta histology whole slide images using deep learning with HAPPY.
Claudia VaneaJelisaveta DžigurskiValentina RukinsOmri DodiSiim SiigurLiis SalumäeKaren MeirW Tony ParksDrorith Hochner-CelnikierAbigail FraserHagit HochnerTriin LaiskLinda M ErnstCecilia M LindgrenChristoffer NellåkerPublished in: Nature communications (2024)
Accurate placenta pathology assessment is essential for managing maternal and newborn health, but the placenta's heterogeneity and temporal variability pose challenges for histology analysis. To address this issue, we developed the 'Histology Analysis Pipeline.PY' (HAPPY), a deep learning hierarchical method for quantifying the variability of cells and micro-anatomical tissue structures across placenta histology whole slide images. HAPPY differs from patch-based features or segmentation approaches by following an interpretable biological hierarchy, representing cells and cellular communities within tissues at a single-cell resolution across whole slide images. We present a set of quantitative metrics from healthy term placentas as a baseline for future assessments of placenta health and we show how these metrics deviate in placentas with clinically significant placental infarction. HAPPY's cell and tissue predictions closely replicate those from independent clinical experts and placental biology literature.
Keyphrases
- deep learning
- single cell
- convolutional neural network
- artificial intelligence
- induced apoptosis
- high resolution
- rna seq
- healthcare
- machine learning
- public health
- mental health
- systematic review
- cell therapy
- endothelial cells
- gene expression
- optical coherence tomography
- endoplasmic reticulum stress
- pregnant women
- preterm infants
- health information
- health promotion
- oxidative stress
- mass spectrometry
- risk assessment
- cell proliferation
- birth weight
- weight gain
- cell death
- high density