Classification and counting of cells in brightfield microscopy images: an application of convolutional neural networks

Abstract Microscopy is integral to medical research, facilitating the exploration of various biological questions, notably cell quantification. However, this process's time-consuming and error-prone nature, attributed to human intervention or automated methods usually applied to fluorescent ima...

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Published in:Scientific Reports
Main Authors: E. K. G. D. Ferreira, G. F. Silveira
Format: Article
Language:English
Published: Nature Portfolio 2024-04-01
Subjects:
Online Access:https://doi.org/10.1038/s41598-024-59625-z
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author E. K. G. D. Ferreira
G. F. Silveira
author_facet E. K. G. D. Ferreira
G. F. Silveira
author_sort E. K. G. D. Ferreira
collection DOAJ
container_title Scientific Reports
description Abstract Microscopy is integral to medical research, facilitating the exploration of various biological questions, notably cell quantification. However, this process's time-consuming and error-prone nature, attributed to human intervention or automated methods usually applied to fluorescent images, presents challenges. In response, machine learning algorithms have been integrated into microscopy, automating tasks and constructing predictive models from vast datasets. These models adeptly learn representations for object detection, image segmentation, and target classification. An advantageous strategy involves utilizing unstained images, preserving cell integrity and enabling morphology-based classification—something hindered when fluorescent markers are used. The aim is to introduce a model proficient in classifying distinct cell lineages in digital contrast microscopy images. Additionally, the goal is to create a predictive model identifying lineage and determining optimal quantification of cell numbers. Employing a CNN machine learning algorithm, a classification model predicting cellular lineage achieved a remarkable accuracy of 93%, with ROC curve results nearing 1.0, showcasing robust performance. However, some lineages, namely SH-SY5Y (78%), HUH7_mayv (85%), and A549 (88%), exhibited slightly lower accuracies. These outcomes not only underscore the model's quality but also emphasize CNNs' potential in addressing the inherent complexities of microscopic images.
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spelling doaj-art-4b433fc63dbd4a7cbecadccff815f8342025-08-19T23:32:15ZengNature PortfolioScientific Reports2045-23222024-04-0114111010.1038/s41598-024-59625-zClassification and counting of cells in brightfield microscopy images: an application of convolutional neural networksE. K. G. D. Ferreira0G. F. Silveira1Carlos Chagas InstituteCarlos Chagas InstituteAbstract Microscopy is integral to medical research, facilitating the exploration of various biological questions, notably cell quantification. However, this process's time-consuming and error-prone nature, attributed to human intervention or automated methods usually applied to fluorescent images, presents challenges. In response, machine learning algorithms have been integrated into microscopy, automating tasks and constructing predictive models from vast datasets. These models adeptly learn representations for object detection, image segmentation, and target classification. An advantageous strategy involves utilizing unstained images, preserving cell integrity and enabling morphology-based classification—something hindered when fluorescent markers are used. The aim is to introduce a model proficient in classifying distinct cell lineages in digital contrast microscopy images. Additionally, the goal is to create a predictive model identifying lineage and determining optimal quantification of cell numbers. Employing a CNN machine learning algorithm, a classification model predicting cellular lineage achieved a remarkable accuracy of 93%, with ROC curve results nearing 1.0, showcasing robust performance. However, some lineages, namely SH-SY5Y (78%), HUH7_mayv (85%), and A549 (88%), exhibited slightly lower accuracies. These outcomes not only underscore the model's quality but also emphasize CNNs' potential in addressing the inherent complexities of microscopic images.https://doi.org/10.1038/s41598-024-59625-zCell lineagesCNNsMachine learningMicroscopic image
spellingShingle E. K. G. D. Ferreira
G. F. Silveira
Classification and counting of cells in brightfield microscopy images: an application of convolutional neural networks
Cell lineages
CNNs
Machine learning
Microscopic image
title Classification and counting of cells in brightfield microscopy images: an application of convolutional neural networks
title_full Classification and counting of cells in brightfield microscopy images: an application of convolutional neural networks
title_fullStr Classification and counting of cells in brightfield microscopy images: an application of convolutional neural networks
title_full_unstemmed Classification and counting of cells in brightfield microscopy images: an application of convolutional neural networks
title_short Classification and counting of cells in brightfield microscopy images: an application of convolutional neural networks
title_sort classification and counting of cells in brightfield microscopy images an application of convolutional neural networks
topic Cell lineages
CNNs
Machine learning
Microscopic image
url https://doi.org/10.1038/s41598-024-59625-z
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