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Augment like there's no tomorrow: Consistently performing neural networks for medical imaging

30 June 2022
J. Pohjonen
Carolin Sturenberg
Atte Fohr
Reija Randén-Brady
L. Luomala
J. Lohi
Esa Pitkanen
A. Rannikko
T. Mirtti
    OOD
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Abstract

Deep neural networks have achieved impressive performance in a wide variety of medical imaging tasks. However, these models often fail on data not used during training, such as data originating from a different medical centre. How to recognize models suffering from this fragility, and how to design robust models are the main obstacles to clinical adoption. Here, we present general methods to identify causes for model generalisation failures and how to circumvent them. First, we use distribution-shifted datasets\textit{distribution-shifted datasets}distribution-shifted datasets to show that models trained with current state-of-the-art methods are highly fragile to variability encountered in clinical practice, and then develop a strong augmentation\textit{strong augmentation}strong augmentation strategy to address this fragility. Distribution-shifted datasets allow us to discover this fragility, which can otherwise remain undetected after validation against multiple external datasets. Strong augmentation allows us to train robust models achieving consistent performance under shifts from the training data distribution. Importantly, we demonstrate that strong augmentation yields biomedical imaging models which retain high performance when applied to real-world clinical data. Our results pave the way for the development and evaluation of reliable and robust neural networks in clinical practice.

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