Diffusion-weighted signal attenuation pattern contains valuable information regarding diffusion properties of the underlying tissue microstructures. With their extraordinary pattern recognition capability, deep learning (DL) techniques have a great potential to analyze diffusion signal decay. In this study, we proposed a 3D residual convolutional neural network (R3D) to detect prostate cancer by embedding the diffusion signal decay into one of the convolutional dimensions. By combining R3D with multi-task learning (R3DMT), an excellent and stable prostate cancer detection performance was achieved in the peripheral zone (AUC of 0.990±0.008) and the transitional zone (AUC of 0.983±0.016).
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