Accurate Prostate Cancer Detection and Segmentation on Biparametric MRI using Non-local Mask R-CNN with Histopathological Ground Truth
Zhenzhen Dai, Ivan Jambor, Pekka Taimen, Milan Pantelic, Mohamed, Elshaikh, Craig Rogers, Otto Ettala, Peter Bostr\"om, Hannu Aronen, Harri, Merisaari, Ning Wen

TL;DR
This study develops a deep learning model using non-local Mask R-CNN with transfer learning and self-training to improve prostate cancer detection and segmentation on biparametric MRI, leveraging histopathological ground truth for enhanced accuracy.
Contribution
Introduces a novel non-local Mask R-CNN approach combined with transfer learning and self-training for improved prostate cancer detection on bp-MRI using histopathology-based annotations.
Findings
Significant improvement in detection metrics with prostatectomy-based annotations.
Achieved 80.5% lesion detection rate with high segmentation accuracy.
Model performs well especially on higher Gleason Grade Group lesions.
Abstract
Purpose: We aimed to develop deep machine learning (DL) models to improve the detection and segmentation of intraprostatic lesions (IL) on bp-MRI by using whole amount prostatectomy specimen-based delineations. We also aimed to investigate whether transfer learning and self-training would improve results with small amount labelled data. Methods: 158 patients had suspicious lesions delineated on MRI based on bp-MRI, 64 patients had ILs delineated on MRI based on whole mount prostatectomy specimen sections, 40 patients were unlabelled. A non-local Mask R-CNN was proposed to improve the segmentation accuracy. Transfer learning was investigated by fine-tuning a model trained using MRI-based delineations with prostatectomy-based delineations. Two label selection strategies were investigated in self-training. The performance of models was evaluated by 3D detection rate, dice similarity…
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Taxonomy
TopicsProstate Cancer Diagnosis and Treatment · Advanced Neural Network Applications · AI in cancer detection
MethodsRegion Proposal Network · RoIAlign · Softmax · Convolution · Mask R-CNN
