An automatic counting algorithm for the quantification and uncertainty analysis of the number of microglial cells trainable in small and heterogeneous datasets
- URL: http://arxiv.org/abs/2602.22974v1
- Date: Thu, 26 Feb 2026 13:13:43 GMT
- Title: An automatic counting algorithm for the quantification and uncertainty analysis of the number of microglial cells trainable in small and heterogeneous datasets
- Authors: L. Martino, M. M. Garcia, P. S. Paradas, E. Curbelo,
- Abstract summary: We tackle the problem of counting microglial cells in lumbar spinal cord cross-sections of rats by omitting cell detection.<n>We design an automatic kernel counter that is a non-parametric and non-linear method.<n>Different numerical experiments with artificial and real datasets show very promising results.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Counting immunopositive cells on biological tissues generally requires either manual annotation or (when available) automatic rough systems, for scanning signal surface and intensity in whole slide imaging. In this work, we tackle the problem of counting microglial cells in lumbar spinal cord cross-sections of rats by omitting cell detection and focusing only on the counting task. Manual cell counting is, however, a time-consuming task and additionally entails extensive personnel training. The classic automatic color-based methods roughly inform about the total labeled area and intensity (protein quantification) but do not specifically provide information on cell number. Since the images to be analyzed have a high resolution but a huge amount of pixels contain just noise or artifacts, we first perform a pre-processing generating several filtered images {(providing a tailored, efficient feature extraction)}. Then, we design an automatic kernel counter that is a non-parametric and non-linear method. The proposed scheme can be easily trained in small datasets since, in its basic version, it relies only on one hyper-parameter. However, being non-parametric and non-linear, the proposed algorithm is flexible enough to express all the information contained in rich and heterogeneous datasets as well (providing the maximum overfit if required). Furthermore, the proposed kernel counter also provides uncertainty estimation of the given prediction, and can directly tackle the case of receiving several expert opinions over the same image. Different numerical experiments with artificial and real datasets show very promising results. Related Matlab code is also provided.
Related papers
- Unsupervised cell segmentation by fast Gaussian Processes [6.709057867802485]
We develop a novel unsupervised cell segmentation algorithm based on fast Gaussian processes for noisy microscopy images.<n>We derived robust thresholding criteria adaptive for heterogeneous images containing distinct brightness at different parts to separate objects from the background.
arXiv Detail & Related papers (2025-05-24T23:28:14Z) - IDCIA: Immunocytochemistry Dataset for Cellular Image Analysis [0.5057850174013127]
We present a new annotated microscopic cellular image dataset to improve the effectiveness of machine learning methods for cellular image analysis.
Our dataset includes microscopic images of cells, and for each image, the cell count and the location of individual cells.
arXiv Detail & Related papers (2024-11-13T19:33:08Z) - Interpretable Embeddings for Segmentation-Free Single-Cell Analysis in Multiplex Imaging [1.8687965482996822]
Multiplex Imaging (MI) enables the simultaneous visualization of multiple biological markers in separate imaging channels at subcellular resolution.
We propose a segmentation-free deep learning approach that leverages grouped convolutions to learn interpretable embedded features from each imaging channel.
arXiv Detail & Related papers (2024-11-02T11:21:33Z) - Learning Multimodal Volumetric Features for Large-Scale Neuron Tracing [72.45257414889478]
We aim to reduce human workload by predicting connectivity between over-segmented neuron pieces.
We first construct a dataset, named FlyTracing, that contains millions of pairwise connections of segments expanding the whole fly brain.
We propose a novel connectivity-aware contrastive learning method to generate dense volumetric EM image embedding.
arXiv Detail & Related papers (2024-01-05T19:45:12Z) - Machine Learning for Flow Cytometry Data Analysis [0.0]
Flow cytometers can rapidly analyse tens of thousands of cells at the same time while also measuring multiple parameters from a single cell.
Researchers need to be able to distinguish interesting-looking cell populations manually in multi-dimensional data collected from millions of cells.
Three representative automated clustering algorithms are selected to be applied, compared and evaluated by completely and partially automated gating.
arXiv Detail & Related papers (2023-03-16T00:43:46Z) - Active Learning Enhances Classification of Histopathology Whole Slide
Images with Attention-based Multiple Instance Learning [48.02011627390706]
We train an attention-based MIL and calculate a confidence metric for every image in the dataset to select the most uncertain WSIs for expert annotation.
With a novel attention guiding loss, this leads to an accuracy boost of the trained models with few regions annotated for each class.
It may in the future serve as an important contribution to train MIL models in the clinically relevant context of cancer classification in histopathology.
arXiv Detail & Related papers (2023-03-02T15:18:58Z) - A kinetic approach to consensus-based segmentation of biomedical images [39.58317527488534]
We apply a kinetic version of a bounded confidence consensus model to biomedical segmentation problems.
The large time behavior of the system is then computed with the aid of a surrogate Fokker-Planck approach.
We minimize the introduced segmentation metric for a relevant set of 2D gray-scale images.
arXiv Detail & Related papers (2022-11-08T09:54:34Z) - Self-Supervised Learning as a Means To Reduce the Need for Labeled Data
in Medical Image Analysis [64.4093648042484]
We use a dataset of chest X-ray images with bounding box labels for 13 different classes of anomalies.
We show that it is possible to achieve similar performance to a fully supervised model in terms of mean average precision and accuracy with only 60% of the labeled data.
arXiv Detail & Related papers (2022-06-01T09:20:30Z) - Image-to-Image Regression with Distribution-Free Uncertainty
Quantification and Applications in Imaging [88.20869695803631]
We show how to derive uncertainty intervals around each pixel that are guaranteed to contain the true value.
We evaluate our procedure on three image-to-image regression tasks.
arXiv Detail & Related papers (2022-02-10T18:59:56Z) - Cherry-Picking Gradients: Learning Low-Rank Embeddings of Visual Data
via Differentiable Cross-Approximation [53.95297550117153]
We propose an end-to-end trainable framework that processes large-scale visual data tensors by looking emphat a fraction of their entries only.
The proposed approach is particularly useful for large-scale multidimensional grid data, and for tasks that require context over a large receptive field.
arXiv Detail & Related papers (2021-05-29T08:39:57Z) - A parameter refinement method for Ptychography based on Deep Learning
concepts [55.41644538483948]
coarse parametrisation in propagation distance, position errors and partial coherence frequently menaces the experiment viability.
A modern Deep Learning framework is used to correct autonomously the setup incoherences, thus improving the quality of a ptychography reconstruction.
We tested our system on both synthetic datasets and also on real data acquired at the TwinMic beamline of the Elettra synchrotron facility.
arXiv Detail & Related papers (2021-05-18T10:15:17Z) - Towards an Automatic Analysis of CHO-K1 Suspension Growth in
Microfluidic Single-cell Cultivation [63.94623495501023]
We propose a novel Machine Learning architecture, which allows us to infuse a neural deep network with human-powered abstraction on the level of data.
Specifically, we train a generative model simultaneously on natural and synthetic data, so that it learns a shared representation, from which a target variable, such as the cell count, can be reliably estimated.
arXiv Detail & Related papers (2020-10-20T08:36:51Z)
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.