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. 2024 Jan:145:19-26.
doi: 10.1016/j.placenta.2023.11.005. Epub 2023 Nov 15.

Automated detection of microscopic placental features indicative of maternal vascular malperfusion using machine learning

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Automated detection of microscopic placental features indicative of maternal vascular malperfusion using machine learning

Purvasha Patnaik et al. Placenta. 2024 Jan.

Abstract

Introduction: Hypertensive disorders of pregnancy (HDP) and fetal growth restriction (FGR) are common obstetrical complications, often with pathological features of maternal vascular malperfusion (MVM) in the placenta. Currently, clinical placental pathology methods involve a manual visual examination of histology sections, a practice that can be resource-intensive and demonstrates moderate-to-poor inter-pathologist agreement on diagnostic outcomes, dependant on the degree of pathologist sub-specialty training.

Methods: This study aims to apply machine learning (ML) feature extraction methods to classify digital images of placental histopathology specimens, collected from cases of HDP [pregnancy induced hypertension (PIH), preeclampsia (PE), PE + FGR], normotensive FGR, and healthy pregnancies, according to the presence or absence of MVM lesions. 159 digital images were captured from histological placental specimens, manually scored for MVM lesions (MVM- or MVM+) and used to develop a support vector machine (SVM) classifier model, using features extracted from pre-trained ResNet18. The model was trained with data augmentation and shuffling, with the performance assessed for patch-level and image-level classification through measurements of accuracy, precision, and recall using confusion matrices.

Results: The SVM model demonstrated accuracies of 70 % and 79 % for patch-level and image-level MVM classification, respectively, with poorest performance observed on images with borderline MVM presence, as determined through post hoc observation.

Discussion: The results are promising for the integration of ML methods into the placental histopathological examination process. Using this study as a proof-of-concept will lead our group and others to carry ML models further in placental histopathology.

Keywords: Computer-aided diagnosis; Digital histopathology; Fetal growth restriction; Gestational hypertension; Hypertensive disorders of pregnancy; Image classification; Maternal vascular malperfusion; Preeclampsia; Supervised machine learning; Support vector machine; Whole-slide imaging.

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Conflict of interest statement

Declaration of competing interest The authors declare the following financial interests/personal relationships which may be considered as potential competing interests:Shannon Bainbridge and Adrian Chan reports financial support was provided by Canadian Institutes of Health Research. Shannon Bainbridge and Adrian Chan reports financial support was provided by Natural Sciences and Engineering Research Council of Canada.

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