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Development and multicenter validation of deep convolutional neural network-based detection of colorectal cancer on abdominal CT.

Yeo Eun HanYongwon ChoBeom Jin ParkMin Ju KimKi Choon SimDeuk Jae SungNa Yeon HanJongmee LeeYang Shin ParkSuk Keu YeomJin KimHyonggin AnKyuhyup Oh
Published in: European radiology (2024)
• Customized 3D U-Net of nnU-Net (CUNET) can be applied to the opportunistic detection of colorectal cancer (CRC) in abdominal CT, helping radiologists detect unexpected CRC. • CUNET showed the best performance at false-positive rates ≥ 3.0, and 30.1% of false-positives were in the colorectum. CUNET detected 69.2% (9/13) of CRCs missed by radiologists and 87.3% (48/55) of asymptomatic CRCs. • CUNET detected CRCs in multiple validation sets composed of varying clinical situations and from different institutions, and CUNET detected 89.7% (252/281) of CRCs from all validation sets.
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