PhenoProfiler: Advancing Phenotypic Learning for Image-based Drug Discovery
Bo Li, Bob Zhang, Chengyang Zhang, Minghao Zhou, Weiliang Huang,, Shihang Wang, Qing Wang, Mengran Li, Yong Zhang, Qianqian Song

TL;DR
PhenoProfiler is a novel end-to-end model that efficiently extracts morphological representations from images, improving accuracy and robustness in phenotypic drug discovery while reducing computational complexity.
Contribution
It introduces an end-to-end framework with multi-objective learning for phenotypic representation, outperforming existing methods in large-scale image-based drug discovery datasets.
Findings
Outperforms state-of-the-art methods by up to 20% in accuracy.
Effectively clusters treatments with similar biological annotations.
Demonstrates robustness and scalability on large datasets.
Abstract
In the field of image-based drug discovery, capturing the phenotypic response of cells to various drug treatments and perturbations is a crucial step. However, existing methods require computationally extensive and complex multi-step procedures, which can introduce inefficiencies, limit generalizability, and increase potential errors. To address these challenges, we present PhenoProfiler, an innovative model designed to efficiently and effectively extract morphological representations, enabling the elucidation of phenotypic changes induced by treatments. PhenoProfiler is designed as an end-to-end tool that processes whole-slide multi-channel images directly into low-dimensional quantitative representations, eliminating the extensive computational steps required by existing methods. It also includes a multi-objective learning module to enhance robustness, accuracy, and generalization in…
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Taxonomy
TopicsCell Image Analysis Techniques · Single-cell and spatial transcriptomics · Zebrafish Biomedical Research Applications
