2022
DOI: 10.48550/arxiv.2203.04107
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Comparing representations of biological data learned with different AI paradigms, augmenting and cropping strategies

Abstract: Recent advances in computer vision and robotics enabled automated large-scale biological image analysis. Various machine learning approaches have been successfully applied to phenotypic profiling. However, it remains unclear how they compare in terms of biological feature extraction. In this study, we propose a simple CNN architecture and implement 4 different representation learning approaches. We train 16 deep learning setups on the 770k cancer cell images dataset under identical conditions, using different … Show more

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“…Efforts to investigate and compare published approaches on benchmark or reference datasets are invaluable to navigate these available options. 56…”
Section: Quantifying Morphologymentioning
confidence: 99%
“…Efforts to investigate and compare published approaches on benchmark or reference datasets are invaluable to navigate these available options. 56…”
Section: Quantifying Morphologymentioning
confidence: 99%