Combiner and HyperCombiner Networks: Rules to Combine Multimodality MR Images for Prostate Cancer Localisation
Wen Yan, Bernard Chiu, Ziyi Shen, Qianye Yang, Tom Syer, Zhe Min,, Shonit Punwani, Mark Emberton, David Atkinson, Dean C. Barratt, Yipeng Hu

TL;DR
This paper introduces Combiner and HyperCombiner networks that model radiologist decision rules for prostate cancer localization from multi-parametric MRI, improving interpretability and efficiency over traditional end-to-end models.
Contribution
It demonstrates that simple parametric models can effectively capture PI-RADS decision rules and introduces a HyperCombiner network for efficient, interpretable prostate cancer segmentation.
Findings
Linear and nonlinear models effectively replicate PI-RADS decision rules
HyperCombiner improves efficiency by conditioning on hyperparameters
Modality importance quantification aids clinical decision-making
Abstract
One of the distinct characteristics in radiologists' reading of multiparametric prostate MR scans, using reporting systems such as PI-RADS v2.1, is to score individual types of MR modalities, T2-weighted, diffusion-weighted, and dynamic contrast-enhanced, and then combine these image-modality-specific scores using standardised decision rules to predict the likelihood of clinically significant cancer. This work aims to demonstrate that it is feasible for low-dimensional parametric models to model such decision rules in the proposed Combiner networks, without compromising the accuracy of predicting radiologic labels: First, it is shown that either a linear mixture model or a nonlinear stacking model is sufficient to model PI-RADS decision rules for localising prostate cancer. Second, parameters of these (generalised) linear models are proposed as hyperparameters, to weigh multiple…
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Taxonomy
TopicsProstate Cancer Diagnosis and Treatment · Radiomics and Machine Learning in Medical Imaging · Medical Imaging and Analysis
