Robust Alignment of the Human Embryo in 3D Ultrasound using PCA and an Ensemble of Heuristic, Atlas-based and Learning-based Classifiers Evaluated on the Rotterdam Periconceptional Cohort
- URL: http://arxiv.org/abs/2511.03416v1
- Date: Wed, 05 Nov 2025 12:30:11 GMT
- Title: Robust Alignment of the Human Embryo in 3D Ultrasound using PCA and an Ensemble of Heuristic, Atlas-based and Learning-based Classifiers Evaluated on the Rotterdam Periconceptional Cohort
- Authors: Nikolai Herrmann, Marcella C. Zijta, Stefan Klein, Régine P. M. Steegers-Theunissen, Rene M. H. Wijnen, Bernadette S. de Bakker, Melek Rousian, Wietske A. P. Bastiaansen,
- Abstract summary: Standardized alignment of the embryo in 3D ultrasound images aids prenatal growth monitoring.<n>We propose an automated method for standardizing this alignment.<n>We tested our method on 2166 images longitudinally acquired 3D ultrasound scans from 1043 pregnancies.
- Score: 0.22485007639406515
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Standardized alignment of the embryo in three-dimensional (3D) ultrasound images aids prenatal growth monitoring by facilitating standard plane detection, improving visualization of landmarks and accentuating differences between different scans. In this work, we propose an automated method for standardizing this alignment. Given a segmentation mask of the embryo, Principal Component Analysis (PCA) is applied to the mask extracting the embryo's principal axes, from which four candidate orientations are derived. The candidate in standard orientation is selected using one of three strategies: a heuristic based on Pearson's correlation assessing shape, image matching to an atlas through normalized cross-correlation, and a Random Forest classifier. We tested our method on 2166 images longitudinally acquired 3D ultrasound scans from 1043 pregnancies from the Rotterdam Periconceptional Cohort, ranging from 7+0 to 12+6 weeks of gestational age. In 99.0% of images, PCA correctly extracted the principal axes of the embryo. The correct candidate was selected by the Pearson Heuristic, Atlas-based and Random Forest in 97.4%, 95.8%, and 98.4% of images, respectively. A Majority Vote of these selection methods resulted in an accuracy of 98.5%. The high accuracy of this pipeline enables consistent embryonic alignment in the first trimester, enabling scalable analysis in both clinical and research settings. The code is publicly available at: https://gitlab.com/radiology/prenatal-image-analysis/pca-3d-alignment.
Related papers
- UltraSeP: Sequence-aware Pre-training for Echocardiography Probe Movement Guidance [70.94473797093293]
We introduce a novel probe movement guidance algorithm that has the potential to be applied in guiding robotic systems or novices with probe pose adjustment for high-quality standard plane image acquisition.<n>Our approach learns personalized three-dimensional cardiac structural features by predicting the masked-out image features and probe movement actions in a scanning sequence.
arXiv Detail & Related papers (2024-08-27T12:55:54Z) - Intra-video Positive Pairs in Self-Supervised Learning for Ultrasound [65.23740556896654]
Self-supervised learning (SSL) is one strategy for addressing the paucity of labelled data in medical imaging.
In this study, we investigated the effect of utilizing proximal, distinct images from the same B-mode ultrasound video as pairs for SSL.
Named Intra-Video Positive Pairs (IVPP), the method surpassed previous ultrasound-specific contrastive learning methods' average test accuracy on COVID-19 classification.
arXiv Detail & Related papers (2024-03-12T14:57:57Z) - Localizing Scan Targets from Human Pose for Autonomous Lung Ultrasound
Imaging [61.60067283680348]
With the advent of COVID-19 global pandemic, there is a need to fully automate ultrasound imaging.
We propose a vision-based, data driven method that incorporates learning-based computer vision techniques.
Our method attains an accuracy level of 15.52 (9.47) mm for probe positioning and 4.32 (3.69)deg for probe orientation, with a success rate above 80% under an error threshold of 25mm for all scan targets.
arXiv Detail & Related papers (2022-12-15T14:34:12Z) - Stain-invariant self supervised learning for histopathology image
analysis [74.98663573628743]
We present a self-supervised algorithm for several classification tasks within hematoxylin and eosin stained images of breast cancer.
Our method achieves the state-of-the-art performance on several publicly available breast cancer datasets.
arXiv Detail & Related papers (2022-11-14T18:16:36Z) - Phase Recognition in Contrast-Enhanced CT Scans based on Deep Learning
and Random Sampling [0.3670422696827525]
A fully automated system for interpreting abdominal computed tomography (CT) scans with multiple phases of contrast enhancement requires an accurate classification of the phases.
This work aims at developing and validating a precise, fast multi-phase classifier to recognize three main types of contrast phases in abdominal CT scans.
arXiv Detail & Related papers (2022-03-20T18:27:08Z) - Multi-Atlas Segmentation and Spatial Alignment of the Human Embryo in
First Trimester 3D Ultrasound [0.0]
We propose a framework for automatic segmentation and spatial alignment of the embryo using deep learning with minimal supervision.
Our framework learns to register the embryo to an atlas, which consists of the US images acquired at a range of gestational age.
We evaluated different fusion strategies to incorporate multiple atlases.
arXiv Detail & Related papers (2022-02-14T10:40:51Z) - Statistical Dependency Guided Contrastive Learning for Multiple Labeling
in Prenatal Ultrasound [56.631021151764955]
Standard plane recognition plays an important role in prenatal ultrasound (US) screening.
We build a novel multi-label learning scheme to identify multiple standard planes and corresponding anatomical structures simultaneously.
arXiv Detail & Related papers (2021-08-11T06:39:26Z) - Dopamine Transporter SPECT Image Classification for Neurodegenerative
Parkinsonism via Diffusion Maps and Machine Learning Classifiers [0.0]
This study aims to provide an automatic and robust method to classify the SPECT images into two types, namely Normal and Abnormal DaT-SPECT image groups.
The 3D images of N patients are mapped to an N by N pairwise distance matrix and training set are embedded into a low-dimensional space by using diffusion maps.
The feasibility of the method is demonstrated via Parkinsonism Progression Markers Initiative (PPMI) dataset of 1097 subjects and a clinical cohort from Kaohsiung Chang Gung Memorial Hospital (KCGMH-TW) of 630 patients.
arXiv Detail & Related papers (2021-04-06T06:30:15Z) - Assisted Probe Positioning for Ultrasound Guided Radiotherapy Using
Image Sequence Classification [55.96221340756895]
Effective transperineal ultrasound image guidance in prostate external beam radiotherapy requires consistent alignment between probe and prostate at each session during patient set-up.
We demonstrate a method for ensuring accurate probe placement through joint classification of images and probe position data.
Using a multi-input multi-task algorithm, spatial coordinate data from an optically tracked ultrasound probe is combined with an image clas-sifier using a recurrent neural network to generate two sets of predictions in real-time.
The algorithm identified optimal probe alignment within a mean (standard deviation) range of 3.7$circ$ (1.2$circ$) from
arXiv Detail & Related papers (2020-10-06T13:55:02Z) - Spontaneous preterm birth prediction using convolutional neural networks [8.47519763941156]
An estimated 15 million babies are born too early every year.
Approximately 1 million children die each year due to complications of preterm birth (PTB)
arXiv Detail & Related papers (2020-08-16T21:21:33Z) - Hybrid Attention for Automatic Segmentation of Whole Fetal Head in
Prenatal Ultrasound Volumes [52.53375964591765]
We propose the first fully-automated solution to segment the whole fetal head in US volumes.
The segmentation task is firstly formulated as an end-to-end volumetric mapping under an encoder-decoder deep architecture.
We then combine the segmentor with a proposed hybrid attention scheme (HAS) to select discriminative features and suppress the non-informative volumetric features.
arXiv Detail & Related papers (2020-04-28T14:43:05Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.