Abstract
Automated profiling of cell morphology is a powerful tool for inferring cell function. However, this technique retains a high barrier to entry. In particular, configuring image processing parameters for optimal cell profiling is susceptible to cognitive biases and dependent on user experience. Here, we use interactive machine learning to identify the optimum cell profiling configuration that maximises quality of the cell profiling outcome. The process is guided by the user, from whom a rating of the quality of a cell profiling configuration is obtained. We use Bayesian optimisation, an established machine learning algorithm, to learn from this information and automatically recommend the next configuration to examine with the aim of maximising the quality of the processing or analysis. Compared to existing interactive machine learning tools that require domain expertise for per-class or per-pixel annotations, we rely on users’ explicit assessment of output quality of the cell profiling task at hand. We validated our interactive approach against the standard human trial-and-error scheme to optimise an object segmentation task using the standard software CellProfiler. Our toolkit enabled rapid optimisation of an object segmentation pipeline, increasing the quality of object segmentation over a pipeline optimised through trial-and-error. Users also attested to the ease of use and reduced cognitive load enabled by our machine learning strategy over the standard approach. We envision that our interactive machine learning approach can enhance the quality and efficiency of pipeline optimisation to democratise image-based cell profiling.
Highlights
Image-based cell profiling is a powerful tool to capture the intricacies of cell phenotype
We compared the quality of resulting segmentation, ease of use, and speed of optimisation between our approach and the conventional method of pipeline optimisation
We propose a semi-automated approach that relies on machine learning with minimal user intervention to accelerate pipeline optimisation and enhance the quality of cell profiling
Summary
Image-based cell profiling is a powerful tool to capture the intricacies of cell phenotype. We present a new approach that integrates user input with machine learning to optimise the configuration of a cell profiling pipeline based on high-level quality assessments. The AutomatedEvaluation module automatically evaluates the quality of a pipeline configuration based on user-prescribed criteria that characterise an optimally segmented object (the target QS) (S1 Fig). The evaluation and BayesianOptimisation modules aim to minimise the quality gap between the current QS and target QS by automatically changing pipeline configuration. The BO process exploits the predictive distribution at any point in the optimisation process to sequentially choose the set of image processing parameters or pipeline configuration to evaluate It does so by trading-off the desire to optimise the current QS with the implicit need to learn the surrogate model. A summary of the BO process is given in (S4 Fig)
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