Classification of anatomic structures in head and neck by CT-based radiomics
Yoichi Watanabe, A. Biswas, K. Rangarajan, G. Rath, and N. Gopishankar

TL;DR
This study demonstrates that CT-based radiomics features can effectively classify and distinguish various anatomical structures in the head and neck, revealing biological similarities and differences among them.
Contribution
The paper introduces a novel application of radiomics and unsupervised machine learning to classify head and neck anatomical structures based on CT images.
Findings
Radiomics features distinguish head and neck structures with over 90% accuracy.
Structures can be grouped into six subcategories with shared characteristics.
Distinct radiomics patterns differentiate tumors from healthy tissues.
Abstract
Background and Purpose: Radiomics features are used to identify disease types and predict therapy outcomes. However, how the radiomics features are different among different anatomical structures has never been investigated. Hence, we analyzed the radiomics features of 22 anatomical structures in the head and neck area in CT images. Furthermore, we studied whether CT radiomics can classify anatomical structures of the head and neck using unsupervised machine-learning techniques. Materials and methods: We obtained IMRT/VMAT treatment planning data from 36 patients treated for head and neck cancers in a single institution. There were 1357 contours of more than 22 anatomical structures drawn on planning CTs. We calculated 174 radiomics features using the SIBEX program. First, we tested whether the radiomics features of anatomical structures were unique enough to classify all contours into…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Artificial Intelligence in Healthcare and Education · AI in cancer detection
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