IVCVLGApr 14, 2023

Cross Attention Transformers for Multi-modal Unsupervised Whole-Body PET Anomaly Detection

arXiv:2304.07147v118 citationsh-index: 114
Originality Incremental advance
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This work addresses the problem of cancer detection in medical imaging for clinicians, offering a novel multi-modal approach that is incremental but enhances existing transformer-based methods.

The paper tackles the challenge of detecting heterogeneous cancer in whole-body PET scans by proposing a multi-modal unsupervised anomaly detection method using cross-attention transformers with CT anatomical reference, achieving robust and accurate cancer localization with 294 samples and showing statistically significant improvements over state-of-the-art methods.

Cancer is a highly heterogeneous condition that can occur almost anywhere in the human body. 18F-fluorodeoxyglucose is an imaging modality commonly used to detect cancer due to its high sensitivity and clear visualisation of the pattern of metabolic activity. Nonetheless, as cancer is highly heterogeneous, it is challenging to train general-purpose discriminative cancer detection models, with data availability and disease complexity often cited as a limiting factor. Unsupervised anomaly detection models have been suggested as a putative solution. These models learn a healthy representation of tissue and detect cancer by predicting deviations from the healthy norm, which requires models capable of accurately learning long-range interactions between organs and their imaging patterns with high levels of expressivity. Such characteristics are suitably satisfied by transformers, which have been shown to generate state-of-the-art results in unsupervised anomaly detection by training on normal data. This work expands upon such approaches by introducing multi-modal conditioning of the transformer via cross-attention i.e. supplying anatomical reference from paired CT. Using 294 whole-body PET/CT samples, we show that our anomaly detection method is robust and capable of achieving accurate cancer localization results even in cases where normal training data is unavailable. In addition, we show the efficacy of this approach on out-of-sample data showcasing the generalizability of this approach with limited training data. Lastly, we propose to combine model uncertainty with a new kernel density estimation approach, and show that it provides clinically and statistically significant improvements when compared to the classic residual-based anomaly maps. Overall, a superior performance is demonstrated against leading state-of-the-art alternatives, drawing attention to the potential of these approaches.

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