Localization and Classification of Adrenal Masses in Multiphase Computed Tomography: Retrospective Study
Liuyang Yang, Xinzhang Zhang, Zhenhui Li, Jian Wang, Yiwen Zhang, Liyu Shan, Xin Shi, Yapeng Si, Shuailong Wang, Lin Li, Ping Wu, Ning Xu, Lizhu Liu, Junfeng Yang, Jinjun Leng, Maolin Yang, Zhuorui Zhang, Junfeng Wang, Xingxiang Dong, Guangjun Yang, Ruiying Yan, Wei Li

TL;DR
A deep learning model called MA-YOLO is developed to automatically detect and classify adrenal masses in CT scans, improving diagnostic accuracy and efficiency.
Contribution
The novel MA-YOLO model combines multi-attention mechanisms with YOLO for accurate localization and classification of adrenal masses in CT images.
Findings
MA-YOLO achieved intersection over union scores of 0.838–0.890 for mass localization in different CT phases.
Model assistance improved diagnostic performance of radiologists and clinicians for most adrenal mass types.
Significant improvements were observed in classifying adrenal adenoma and adrenal cortical carcinoma.
Abstract
The incidence of adrenal incidentalomas is increasing annually, and most types of adrenal masses require surgical intervention. Accurate classification of common adrenal masses based on tumor computed tomography (CT) images by radiologists or clinicians requires extensive experience and is often challenging, which increases the workload of radiologists and leads to unnecessary adrenal surgeries. There is an urgent need for a fully automated, noninvasive, and precise approach for the identification and accurate classification of common adrenal masses. This study aims to enhance diagnostic efficiency and transform the current clinical practice of preoperative diagnosis of adrenal masses. This study is a retrospective analysis that includes patients with adrenal masses who underwent adrenalectomy from January 1, 2021, to May 31, 2023, at Center 1 (internal dataset), and from January 1,…
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Taxonomy
TopicsAdrenal and Paraganglionic Tumors · Hormonal Regulation and Hypertension · Medical Imaging Techniques and Applications
