ML-UrineQuant: A machine learning program for identifying and quantifying mouse urine on absorbent paper.

Hill WG, MacIver B, Churchill GA, DeOliveira MG, Zeidel ML, Cicconet M. ML-UrineQuant: A machine learning program for identifying and quantifying mouse urine on absorbent paper.. Physiological Reports. 2025;13(6):e70243.

Abstract

The void spot assay has gained popularity as a way of assessing functional bladder voiding parameters in mice, but analyzing the size and distribution of urine spot patterns on filter paper with software remains problematic due to inter-laboratory differences in image contrast and resolution quality and non-void artifacts. We have developed a machine learning algorithm based on Region-based Convolutional Neural Networks (Mask-RCNN) that was trained in object recognition to detect and quantitate urine spots across a broad range of sizes-ML-UrineQuant. The model proved extremely accurate at identifying urine spots in a wide variety of illumination and contrast settings. The overwhelming advantage it offers over current algorithms will be to allow individual labs to fine-tune the model on their specific images regardless of the image characteristics. This should be a valuable tool for anyone performing lower urinary tract research using mouse models.

Last updated on 03/19/2025
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