Generalising uncertainty improves accuracy and safety of deep learning analytics applied to oncology

Author:

MacDonald Samual1,Foley Helena2,Yap Melvyn2,Johnston Rebecca3,Steven Kaiah2,Koufariotis Lambros3,Sharma Somwya4,Wood Scott3,Addala Venkateswar3,Pearson John3,Roosta Fred5,Waddell Nicola3,Kondrashova Olga3,Trzaskowski Maciej1

Affiliation:

1. Max Kelsen, ARC Training Centre for Information Resilience (CIRES), University of Queensland

2. Max Kelsen

3. QIMR Berghofer Medical Research Institute

4. QIMR Berghofer Medical Research Institute, Medlab Pathology

5. ARC Training Centre for Information Resilience (CIRES), University of Queensland

Abstract

Abstract Trust and transparency are critical for deploying deep learning (DL) models into the clinic. DL application poses generalisation obstacles since training/development datasets often have different data distributions to clinical/production datasets that can lead to incorrect predictions with underestimated uncertainty. To investigate this pitfall, we benchmarked one pointwise and three approximate Bayesian DL models used to predict cancer of unknown primary with three independent RNA-seq datasets covering 10,968 samples across 57 primary cancer types. Our results highlight simple and scalable Bayesian DL significantly improves the generalisation of uncertainty estimation (e.g., p-value = 0.0013 for calibration). Moreover, we demonstrate Bayesian DL substantially improves accuracy under data distributional shifts when utilising ‘uncertainty thresholding’ by designing a prototypical metric that evaluates the expected (accuracy) loss when deploying models from development to production, which we call the Area between Development and Production curve (ADP). In summary, Bayesian DL is a hopeful avenue of research for generalising uncertainty, which improves performance, transparency, and therefore safety of DL models for deployment in real-world.

Publisher

Research Square Platform LLC

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