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A multimodal dataset for precision oncology in head and neck cancer

Marion Dörrich, Matthias Balk, Tatjana Heusinger, Sandra Beyer, Hamed Mirbagheri, David J. Fischer, Hassan Kanso, Christian Matek, Arndt Hartmann, Heinrich Iro, Markus Eckstein, Antoniu‐Oreste Gostian, Andreas M. Kist

2025Nature Communications14 citationsDOIOpen Access PDF

Abstract

Head and neck cancer is a common disease and is associated with a poor prognosis. A promising approach to improving patient outcomes is personalized treatment, which uses information from a variety of modalities. However, only little progress has been made due to the lack of large public datasets. We present a multimodal dataset, HANCOCK, that comprises monocentric, real-world data of 763 head and neck cancer patients. Our dataset contains demographical, pathological, and blood data as well as surgery reports and histologic images, that can be explored in a low-dimensional representation. We can show that combining these modalities using machine learning is superior to a single modality and the integration of imaging data using foundation models helps in endpoint prediction. We believe that HANCOCK will not only open new insights into head and neck cancer pathology but also serve as a major source for researching multimodal machine-learning methodologies in precision oncology.

Topics & Concepts

ModalitiesHead and neck cancerModality (human–computer interaction)Head and neckMedicinePrecision medicineComputer scienceArtificial intelligenceCancerMedical physicsMultimodal therapyMachine learningPathologyInternal medicineSurgerySociologySocial scienceHead and Neck Cancer StudiesRadiomics and Machine Learning in Medical ImagingLung Cancer Diagnosis and Treatment
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