Abstract

Cell segmentation plays a crucial role in understanding, diagnosing, and treating diseases. Despite the recent success of deep learning-based cell segmentation methods, it remains challenging to accurately segment densely packed cells in 3D cell membrane images. Existing approaches also require fine-tuning multiple manually selected hyperparameters on the new datasets. We develop a deep learning-based 3D cell segmentation pipeline, 3DCellSeg, to address these challenges. Compared to the existing methods, our approach carries the following novelties: (1) a robust two-stage pipeline, requiring only one hyperparameter; (2) a light-weight deep convolutional neural network (3DCellSegNet) to efficiently output voxel-wise masks; (3) a custom loss function (3DCellSeg Loss) to tackle the clumped cell problem; and (4) an efficient touching area-based clustering algorithm (TASCAN) to separate 3D cells from the foreground masks. Cell segmentation experiments conducted on four different cell datasets show that 3DCellSeg outperforms the baseline models on the ATAS (plant), HMS (animal), and LRP (plant) datasets with an overall accuracy of 95.6%, 76.4%, and 74.7%, respectively, while achieving an accuracy comparable to the baselines on the Ovules (plant) dataset with an overall accuracy of 82.2%. Ablation studies show that the individual improvements in accuracy is attributable to 3DCellSegNet, 3DCellSeg Loss, and TASCAN, with the 3DCellSeg demonstrating robustness across different datasets and cell shapes. Our results suggest that 3DCellSeg can serve a powerful biomedical and clinical tool, such as histo-pathological image analysis, for cancer diagnosis and grading.

Highlights

  • Cell segmentation plays a crucial role in understanding, diagnosing, and treating diseases

  • We evaluated 3DCellSeg and other baseline models with nine metrics: Adapted Rand Error (ARE), ­VOIsplit, ­VOImerge, Avg Jaccard Index (JI), Avg Dice Similarity Coefficient (DSC), JI > 70%, DSC > 70%, JI > 50%, and DSC > 50%

  • For all the results shown in this article, the models were re-trained on the same dataset they were tested on

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Summary

Introduction

Cell segmentation plays a crucial role in understanding, diagnosing, and treating diseases. We develop a deep learning-based 3D cell segmentation pipeline, 3DCellSeg, to address these challenges. Compared to the existing methods, our approach carries the following novelties: (1) a robust twostage pipeline, requiring only one hyperparameter; (2) a light-weight deep convolutional neural network (3DCellSegNet) to efficiently output voxel-wise masks; (3) a custom loss function (3DCellSeg Loss) to tackle the clumped cell problem; and (4) an efficient touching area-based clustering algorithm (TASCAN) to separate 3D cells from the foreground masks. Cell segmentation plays a key role in biological image processing. With regards to histo-pathological image analysis for cancer diagnosis and grading, the regularity of cell borders, shapes, and distributions provides an important insight into whether tissue regions are ­cancerous[5]. Performance is highly dependent on the manually selected parameters during the post-processing procedures Prone to fuse cells that are tightly adhered

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