1. Identifying Lymph Nodes and Their Statuses from Pretreatment Computer Tomography Images of Patients with Head and Neck Cancer Using a Clinical-Data-Driven Deep Learning Algorithm.
- Author
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Huang, Sheng-Yao, Hsu, Wen-Lin, Liu, Dai-Wei, Wu, Edzer L., Peng, Yu-Shao, Liao, Zhe-Ting, and Hsu, Ren-Jun
- Subjects
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PREOPERATIVE care , *DEEP learning , *DIGITAL image processing , *HEAD & neck cancer , *LYMPH nodes , *RETROSPECTIVE studies , *ACQUISITION of data , *MEDICAL records , *LATENT semantic analysis , *DESCRIPTIVE statistics , *INTERPROFESSIONAL relations , *RESEARCH funding , *COMPUTED tomography , *ALGORITHMS - Abstract
Simple Summary: We proposed a deep learning algorithm to detect lymph nodes and classify them in the head and neck region on computed tomography. We further analyzed the inference result from the model and found that the size of the lymph nodes may be a characteristic for the model to classify them. This finding is consistent with current clinical aspects. We will deploy the model in clinical practice and hope to assist clinicians in finding out the lesions more correctly and efficiently. Background: Head and neck cancer is highly prevalent in Taiwan. Its treatment mainly relies on clinical staging, usually diagnosed from images. A major part of the diagnosis is whether lymph nodes are involved in the tumor. We present an algorithm for analyzing clinical images that integrates a deep learning model with image processing and attempt to analyze the features it uses to classify lymph nodes. Methods: We retrospectively collected pretreatment computed tomography images and surgery pathological reports for 271 patients diagnosed with, and subsequently treated for, naïve oral cavity, oropharynx, hypopharynx, and larynx cancer between 2008 and 2018. We chose a 3D UNet model trained for semantic segmentation, which was evaluated for inference in a test dataset of 29 patients. Results: We annotated 2527 lymph nodes. The detection rate of all lymph nodes was 80%, and Dice score was 0.71. The model has a better detection rate at larger lymph nodes. For those identified lymph nodes, we found a trend where the shorter the short axis, the more negative the lymph nodes. This is consistent with clinical observations. Conclusions: The model showed a convincible lymph node detection on clinical images. We will evaluate and further improve the model in collaboration with clinical physicians. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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