2023
DOI: 10.1101/2023.09.07.555360
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MetFinder: a neural network-based tool for automated quantitation of metastatic burden in histological sections from animal models

Alcida Karz,
Nicolas Coudray,
Erol Bayraktar
et al.

Abstract: Diagnosis of most diseases relies on expert histopathological evaluation of tissue sections by an experienced pathologist. By using standardized staining techniques and an expanding repertoire of markers, a trained eye is able to recognize disease-specific patterns with high accuracy and determine a diagnosis. As efforts to study mechanisms of metastasis and novel therapeutic approaches multiply, researchers need accurate, high-throughput methods to evaluate effects on tumor burden resulting from specific inte… Show more

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