A Normalized Fully Convolutional Approach to Head and Neck Cancer Outcome Prediction
In medical imaging, radiological scans of different modalities serve to enhance different sets of features for clinical diagnosis and treatment planning. This variety enriches the source information that could be used for outcome prediction. Deep learning methods are particularly well-suited for fea...
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Zusammenfassung: | In medical imaging, radiological scans of different modalities serve to
enhance different sets of features for clinical diagnosis and treatment
planning. This variety enriches the source information that could be used for
outcome prediction. Deep learning methods are particularly well-suited for
feature extraction from high-dimensional inputs such as images. In this work,
we apply a CNN classification network augmented with a FCN preprocessor
sub-network to a public TCIA head and neck cancer dataset. The training goal is
survival prediction of radiotherapy cases based on pre-treatment FDG PET-CT
scans, acquired across 4 different hospitals. We show that the preprocessor
sub-network in conjunction with aggregated residual connection leads to
improvements over state-of-the-art results when combining both CT and PET input
images. |
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DOI: | 10.48550/arxiv.2005.14017 |