SpheroScan: a user-friendly deep learning tool for spheroid image analysis

Author:

Akshay Akshay12ORCID,Katoch Mitali3ORCID,Abedi Masoud4ORCID,Shekarchizadeh Navid45ORCID,Besic Mustafa16ORCID,Burkhard Fiona C16ORCID,Bigger-Allen Alex78910ORCID,Adam Rosalyn M8910ORCID,Monastyrskaya Katia16ORCID,Gheinani Ali Hashemi168910ORCID

Affiliation:

1. Functional Urology Research Group, Department for BioMedical Research DBMR, University of Bern , 3008 Bern , Switzerland

2. Graduate School for Cellular and Biomedical Sciences, University of Bern , 3012 Bern , Switzerland

3. Institute of Neuropathology, Universitätsklinikum Erlangen, Friedrich-Alexander-Universität Erlangen-Nürnberg (FAU) , 91054 Erlangen , Germany

4. Department of Medical Data Science, Leipzig University Medical Centre , 04107 Leipzig , Germany

5. Center for Scalable Data Analytics and Artificial Intelligence (ScaDS.AI) Dresden/Leipzig , 04105 Leipzig , Germany

6. Department of Urology, Inselspital University Hospital , 3010 Bern , Switzerland

7. Biological & Biomedical Sciences Program, Division of Medical Sciences, Harvard Medical School , 02115 Boston, MA, USA

8. Urological Diseases Research Center, Boston Children's Hospital , Boston, MA , USA

9. Department of Surgery, Harvard Medical School, Boston, MA , 02115 , USA

10. Broad Institute of MIT and Harvard , Cambridge, MA, 02142 , USA

Abstract

Abstract Background In recent years, 3-dimensional (3D) spheroid models have become increasingly popular in scientific research as they provide a more physiologically relevant microenvironment that mimics in vivo conditions. The use of 3D spheroid assays has proven to be advantageous as it offers a better understanding of the cellular behavior, drug efficacy, and toxicity as compared to traditional 2-dimensional cell culture methods. However, the use of 3D spheroid assays is impeded by the absence of automated and user-friendly tools for spheroid image analysis, which adversely affects the reproducibility and throughput of these assays. Results To address these issues, we have developed a fully automated, web-based tool called SpheroScan, which uses the deep learning framework called Mask Regions with Convolutional Neural Networks (R-CNN) for image detection and segmentation. To develop a deep learning model that could be applied to spheroid images from a range of experimental conditions, we trained the model using spheroid images captured using IncuCyte Live-Cell Analysis System and a conventional microscope. Performance evaluation of the trained model using validation and test datasets shows promising results. Conclusion SpheroScan allows for easy analysis of large numbers of images and provides interactive visualization features for a more in-depth understanding of the data. Our tool represents a significant advancement in the analysis of spheroid images and will facilitate the widespread adoption of 3D spheroid models in scientific research. The source code and a detailed tutorial for SpheroScan are available at https://github.com/FunctionalUrology/SpheroScan.

Funder

National Science Foundation

Publisher

Oxford University Press (OUP)

Subject

Computer Science Applications,Health Informatics

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