2024
DOI: 10.21203/rs.3.rs-4250530/v1
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Transparency in Computer-Aided Breast Cancer Diagnosis Tool Development: A CBIS-DDSM Case Study

Ling Liao,
Eva Aagaard

Abstract: Accessible mammography datasets and innovative machine learning techniques are at the front line for computer-aided breast cancer diagnosis. However, the opacity surrounding private datasets and the unclear methodology behind the selection of subset images from publicly available databases for model training and testing, coupled with the arbitrary incompleteness or inaccessibility of code, markedly intensifies the obstacles in replicating and validating the model's efficacy. These challenges, in turn, erect ba… Show more

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