Publication | Open Access
Automated detection of aggressive and indolent prostate cancer on magnetic resonance imaging
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Citations
30
References
2021
Year
Our SPCNet model accurately detected aggressive prostate cancer. Its performance approached that of radiologists, and it helped identify lesions otherwise missed by radiologists. Our model has the potential to assist physicians in specifically targeting the aggressive component of prostate cancers during biopsy or focal treatment.
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