Distinguishing between aldosterone-producing adenomas and non-functional adrenocortical adenomas using the YOLOv5 network.

IF 1.1 4区 医学 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Acta radiologica Pub Date : 2024-08-01 Epub Date: 2024-05-20 DOI:10.1177/02841851241251446
Zeyu Piao, Mingzhu Meng, Huijie Yang, Tongqing Xue, Zhongzhi Jia, Wei Liu
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Abstract

Background: You Only Look Once version 5 (YOLOv5), a one-stage deep-learning (DL) algorithm for object detection and classification, offers high speed and accuracy for identifying targets.

Purpose: To investigate the feasibility of using the YOLOv5 algorithm to non-invasively distinguish between aldosterone-producing adenomas (APAs) and non-functional adrenocortical adenomas (NF-ACAs) on computed tomography (CT) images.

Material and methods: A total of 235 patients who were diagnosed with ACAs between January 2011 and July 2022 were included in this study. Of the 215 patients, 81 (37.7%) had APAs and 134 (62.3%) had NF-ACAs' they were randomly divided into either the training set or the validation set at a ratio of 9:1. Another 20 patients, including 8 (40.0%) with APA and 12 (60.0%) with NF-ACA, were collected for the testing set. Five submodels (YOLOv5n, YOLOv5s, YOLOv5m, YOLOv5l, and YOLOv5x) of YOLOv5 were trained and evaluated on the datasets.

Results: In the testing set, the mAP_0.5 value for YOLOv5x (0.988) was higher than the values for YOLOv5n (0.969), YOLOv5s (0.965), YOLOv5m (0.974), and YOLOv5l (0.983). The mAP_0.5:0.95 value for YOLOv5x (0.711) was also higher than the values for YOLOv5n (0.587), YOLOv5s (0.674), YOLOv5m (0.671), and YOLOv5l (0.698) in the testing set. The inference speed of YOLOv5n was 2.4 ms in the testing set, which was the fastest among the five submodels.

Conclusion: The YOLOv5 algorithm can accurately and efficiently distinguish between APAs and NF-ACAs on CT images, especially YOLOv5x has the best identification performance.

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利用 YOLOv5 网络区分醛固酮分泌腺瘤和非功能性肾上腺皮质腺瘤。
背景:目的:研究在计算机断层扫描(CT)图像上使用YOLOv5算法无创区分醛固酮腺瘤(APA)和非功能性肾上腺皮质腺瘤(NF-ACA)的可行性:本研究共纳入2011年1月至2022年7月期间确诊的235例ACA患者。在这 215 名患者中,81 人(37.7%)患有 APA,134 人(62.3%)患有 NF-ACA,他们按 9:1 的比例被随机分为训练集或验证集。另外收集了 20 名患者作为测试集,其中包括 8 名(40.0%)APA 患者和 12 名(60.0%)NF-ACA 患者。在数据集上对 YOLOv5 的五个子模型(YOLOv5n、YOLOv5s、YOLOv5m、YOLOv5l 和 YOLOv5x)进行了训练和评估:在测试集中,YOLOv5x 的 mAP_0.5 值(0.988)高于 YOLOv5n 的 mAP_0.5 值(0.969)、YOLOv5s 的 mAP_0.5 值(0.965)、YOLOv5m 的 mAP_0.5 值(0.974)和 YOLOv5l 的 mAP_0.5 值(0.983)。在测试集中,YOLOv5x 的 mAP_0.5:0.95 值(0.711)也高于 YOLOv5n (0.587)、YOLOv5s (0.674)、YOLOv5m (0.671) 和 YOLOv5l (0.698)。在测试集中,YOLOv5n 的推理速度为 2.4 毫秒,是五个子模型中最快的:结论:YOLOv5 算法能准确、高效地区分 CT 图像上的 APA 和 NF-ACA,尤其是 YOLOv5x 的识别性能最好。
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来源期刊
Acta radiologica
Acta radiologica 医学-核医学
CiteScore
2.70
自引率
0.00%
发文量
170
审稿时长
3-8 weeks
期刊介绍: Acta Radiologica publishes articles on all aspects of radiology, from clinical radiology to experimental work. It is known for articles based on experimental work and contrast media research, giving priority to scientific original papers. The distinguished international editorial board also invite review articles, short communications and technical and instrumental notes.
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