Comprehensive Assessment of MRI-based Artificial Intelligence Frameworks Performance in the Detection, Segmentation, and Classification of Prostate Lesions Using Open-Source Databases

Lorenzo Storino Ramacciotti, Jacob S. Hershenhouse, Daniel Mokhtar, Divyangi Paralkar,Masatomo Kaneko,Michael Eppler,Karanvir Gill, Vasileios Mogoulianitis,Vinay Duddalwar,Andre L. Abreu,Inderbir Gill,Giovanni E. Cacciamani

Urologic Clinics of North America(2024)

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摘要
Numerous MRI-based artificial intelligence (AI) frameworks have been designed for prostate cancer lesion detection, segmentation, and classification via MRI as a result of intrareader and interreader variability that is inherent to traditional interpretation. Open-source data sets have been released with the intention of providing freely available MRIs for the testing of diverse AI frameworks in automated or semiautomated tasks. Here, an in-depth assessment of the performance of MRI-based AI frameworks for detecting, segmenting, and classifying prostate lesions using open-source databases was performed. Among 17 data sets, 12 were specific to prostate cancer detection/classification, with 52 studies meeting the inclusion criteria.
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