Controlling False Positive/Negative Rates for Deep-Learning-Based
Prostate Cancer Detection on Multiparametric MR images
- URL: http://arxiv.org/abs/2106.02385v1
- Date: Fri, 4 Jun 2021 09:51:27 GMT
- Title: Controlling False Positive/Negative Rates for Deep-Learning-Based
Prostate Cancer Detection on Multiparametric MR images
- Authors: Zhe Min, Fernando J. Bianco, Qianye Yang, Rachael Rodell, Wen Yan,
Dean Barratt, Yipeng Hu
- Abstract summary: We propose a novel PCa detection network that incorporates a lesion-level cost-sensitive loss and an additional slice-level loss based on a lesion-to-slice mapping function.
Our experiments based on 290 clinical patients concludes that 1) The lesion-level FNR was effectively reduced from 0.19 to 0.10 and the lesion-level FPR was reduced from 1.03 to 0.66 by changing the lesion-level cost.
- Score: 58.85481248101611
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Prostate cancer (PCa) is one of the leading causes of death for men
worldwide. Multi-parametric magnetic resonance (mpMR) imaging has emerged as a
non-invasive diagnostic tool for detecting and localising prostate tumours by
specialised radiologists. These radiological examinations, for example, for
differentiating malignant lesions from benign prostatic hyperplasia in
transition zones and for defining the boundaries of clinically significant
cancer, remain challenging and highly skill-and-experience-dependent. We first
investigate experimental results in developing object detection neural networks
that are trained to predict the radiological assessment, using these
high-variance labels. We further argue that such a computer-assisted diagnosis
(CAD) system needs to have the ability to control the false-positive rate (FPR)
or false-negative rate (FNR), in order to be usefully deployed in a clinical
workflow, informing clinical decisions without further human intervention. This
work proposes a novel PCa detection network that incorporates a lesion-level
cost-sensitive loss and an additional slice-level loss based on a
lesion-to-slice mapping function, to manage the lesion- and slice-level costs,
respectively. Our experiments based on 290 clinical patients concludes that 1)
The lesion-level FNR was effectively reduced from 0.19 to 0.10 and the
lesion-level FPR was reduced from 1.03 to 0.66 by changing the lesion-level
cost; 2) The slice-level FNR was reduced from 0.19 to 0.00 by taking into
account the slice-level cost; (3) Both lesion-level and slice-level FNRs were
reduced with lower FP/FPR by changing the lesion-level or slice-level costs,
compared with post-training threshold adjustment using networks without the
proposed cost-aware training.
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