Interpretable Tile-Based Classification of Paclitaxel Exposure

arXiv — cs.CVThursday, November 6, 2025 at 5:00:00 AM
A recent study presents a novel approach to classify paclitaxel exposure in C6 glioma cells using a tile-based method. This technique enhances the accuracy of medical image analysis, which is crucial for drug discovery and preclinical evaluations. By focusing on local patches rather than full images, researchers can better identify subtle dose differences, potentially speeding up decision-making in treatment development. This advancement could significantly impact how new therapies are assessed and optimized.
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