An evaluation of computational learning-based methods for the segmentation of nuclei in cervical cancer cells from microscopic images

Archive ouverte : Article de revue

Maylaa, Tarek | Windal, Feryal | Benhabiles, Halim | Maubon, Gregory | Maubon, Nathalie | Vandenhaute, Elodie | Collard, Dominique

Edité par HAL CCSD ; Bentham Science Publishers

International audience. Background: Background: The manual segmentation of cellular structures on Z-stack microscopic images is time-consuming and often inaccurate, highlighting the need to develop auto-segmentation tools to facilitate this process. Objective: Objective: This study aimed to compare the performance of three different machine learning architectures, including random forest (RF), AdaBoost, and multi-layer perceptron (MLP), for the auto-segmentation of nuclei in proliferating cervical cancer cells on Z-Stack cellular microscopy proliferation images provided by HCS Pharma. The impact of using post-processing techniques such as the StarDist plugin and majority voting was also evaluated Methods: Methods: The RF, AdaBoost, and MLP algorithms were used to auto-segment the nuclei of cervical cancer cells on microscopic images at different Z-stack positions. Post-processing techniques were then applied to each algorithm. The performance of all algorithms was compared to an expert and globally generated ground truth by calculating the accuracy detection rate, the Dice coefficient, and the Jaccard index Results: Results: RF achieved the best accuracy, followed by the AdaBoost and then the MLP. All algorithms achieved good pixel classifications except in regions whereby the nuclei overlapped. The majority voting and StarDist plugin improved the accuracy of the segmentation but did not resolve the nuclei overlap issue. The Z-Stack analysis revealed similar segmentation results to the Z-stack layer used to train the image. However, a worse performance was noted for segmentations performed on different Z-stack positions, which were not used to train the algorithms. Conclusion: Conclusion: All machine learning architectures provided a good segmentation of nuclei in cervical cancer cells but did not resolve the problem of overlapping nuclei and Z-stack segmentation. Further research should therefore evaluate the role of combined segmentation techniques and deep learning architectures to resolve these issues.

Consulter en ligne

Suggestions

Du même auteur

Neurotrophins promotes brain metastasis of triple negative breast cancer th...

Archive ouverte: Communication dans un congrès

Cicero, Julien | 2022-11-02

ORAL. International audience. With nearly 2.3 million cases diagnosed worldwide each year and an estimated 685 000 deaths by 2020, breast cancer is the leading cause of cancer-related death in women. Brain metastase...

A CNN-Based Methodology for Cow Heat Analysis from Endoscopic Images

Archive ouverte: Article de revue

He, Ruiwen | 2022-06

International audience. In cattle farming, the artificial insemination technique is a biotechnology that brings to farmers a wide range of benefits namely health security, genetic gain and economic costs. The main c...

A Cervix Detection Driven Deep Learning Approach for Cow Heat Analysis from...

Archive ouverte: Communication dans un congrès

He, Ruiwen | 2022-10-16

International audience. In this article, we propose a new approach for the cow heat detection from endoscopic images. Our approach permits to identify on the fly the cow heat state through two successive stages, nam...

Du même sujet

Breaking (and Fixing) Channel-based Cryptographic Key Generation: A Machine...

Archive ouverte: Communication dans un congrès

Alouani, Ihsen | 2022-08-31

International audience. Several systems and application domains are under-going disruptive transformations due to the recent breakthroughs in computing paradigms such us Machine Learning and commu-nication technolog...

Essential math for data science : take control of your data with fundamenta...

Livre | Nield, Thomas. Auteur | 2022

To succeed in data science you need some math proficiency. But not just any math. This common-sense guide provides a clear, plain English survey of the math you'll need in data science, including probability, statistics, hypothesi...

Major Improvement in the Cycling Ability of Pseudocapacitive Vanadium Nitri...

Archive ouverte: Article de revue

Jrondi, Aiman | 2023

International audience. Vanadium nitride film made using a thin film deposition technique is a promising electrode material for micro-supercapacitor applications owing to its high electrical conductivity and high vo...

Phototunable chip-scale topological photonics: 160 Gbps waveguide and demul...

Archive ouverte: Article de revue

Kumar, Abhishek | 2022-12

The authors declare that all the data supporting the findings of thisstudy are openly available in NTU research data repository DR-NTU athttps://doi.org/10.21979/N9/5FK01V.. International audience. The revolutionary...

GDR HOWDI 2022 Meeting : GAP(111)B-SE Surface for TMD epitaxial growth

Archive ouverte: Poster de conférence

Chapuis, Niels | 2022-05-09

International audience. Over the past few years, 2D-Transition Metal Dichalcogenides (TMDs) have revealed great potential for optoelectronics and nanoelectronics devices, thanks to their exceptional properties, not ...

Tunable Topological Acoustic Tamm States in Comblike Structures Based on Ba...

Archive ouverte: Article de revue

Khattou, Soufyane | 2022-12

International audience. We investigate the existence of acoustic Tamm states at the interface between two one-dimensional (1D) comblike phononic crystals (PnCs) based on slender tubes and discuss their topological o...

Chargement des enrichissements...