Automation of Caenorhabditis elegans lifespan assay using a simplified domain synthetic image-based neural network training strategy

Performing lifespan assays with Caenorhabditis elegans (C. elegans) nematodes manually is a time consuming and laborious task. Therefore, automation is necessary to increase productivity. In this paper, we propose a method to automate the counting of live C. elegans using deep learning. The survival...

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Veröffentlicht in:Computational and structural biotechnology journal 2023-01, Vol.21, p.5049-5065
Hauptverfasser: García-Garví, Antonio, Layana-Castro, Pablo E., Puchalt, Joan Carles, Sánchez-Salmerón, Antonio-José
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Sprache:eng
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Zusammenfassung:Performing lifespan assays with Caenorhabditis elegans (C. elegans) nematodes manually is a time consuming and laborious task. Therefore, automation is necessary to increase productivity. In this paper, we propose a method to automate the counting of live C. elegans using deep learning. The survival curves of the experiment are obtained using a sequence formed by an image taken on each day of the assay. Solving this problem would require a very large labeled dataset; thus, to facilitate its generation, we propose a simplified image-based strategy. This simplification consists of transforming the real images of the nematodes in the Petri dish to a synthetic image, in which circular blobs are drawn on a constant background to mark the position of the C. elegans. To apply this simplification method, it is divided into two steps. First, a Faster R-CNN network detects the C. elegans, allowing its transformation into a synthetic image. Second, using the simplified image sequence as input, a regression neural network is in charge of predicting the count of live nematodes on each day of the experiment. In this way, the counting network was trained using a simple simulator, avoiding labeling a very large real dataset or developing a realistic simulator. Results showed that the differences between the curves obtained by the proposed method and the manual curves are not statistically significant for either short-lived N2 (p-value log rank test 0.45) or long-lived daf-2 (p-value log rank test 0.83) strains. •Proposal of a method using artificial neural networks to automate survival curve acquisition in C. elegans lifespan assays.•Proposal and evaluation of a training method based on a simplified domain counting model with fully synthetic images.•Neural network models for the detection of C. elegans have been compared with traditional image processing techniques.•The models trained with synthetic data were tested with real lifespan assay data.
ISSN:2001-0370
2001-0370
DOI:10.1016/j.csbj.2023.10.007