利用深度学习对胸片上的犬气管塌陷进行自动分类和分级。

IF 1.3 2区 农林科学 Q2 VETERINARY SCIENCES Veterinary Radiology & Ultrasound Pub Date : 2024-11-01 Epub Date: 2024-07-16 DOI:10.1111/vru.13413
Hathaiphat Suksangvoravong, Nan Choisunirachon, Teerawat Tongloy, Santhad Chuwongin, Siridech Boonsang, Veerayuth Kittichai, Chutimon Thanaboonnipat
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引用次数: 0

摘要

气管塌陷是一种慢性、逐渐恶化的疾病;患者临床症状的严重程度取决于气管塌陷的程度。要在动物诊所和医院等各种兽医环境中使用射线照片进行现代化的疾病筛查,就必须使用最先进的自动化工具。这主要是由于兽医在解释不确定性时面临固有的挑战。在这项研究中,我们开发了一个人工智能模型,利用存档的颈胸椎侧位X光片筛查犬气管塌陷。该模型可区分正常气管和塌陷气管,塌陷程度从早期到严重不等。包括 YOLO v3、YOLO v4 和 YOLO v4 tiny 在内的只看一次(YOLO)模型被用于在内部 XXX 平台下训练和测试数据集。结果显示,YOLO v4 tiny-416 模型在正常气管、1-2 级气管塌陷和 3-4 级气管塌陷的筛查中表现令人满意,灵敏度为 98.30%,特异度为 99.20%,准确度为 98.90%。精确度-召回曲线的曲线下面积大于 0.8,显示了较高的诊断准确性。深度学习与放射科医生之间的观察内一致性为κ = 0.975(P 0.90),表现出极好的一致性。因此,深度学习模型可以作为一种有用而可靠的方法,根据常规颈胸侧位片对气管塌陷程度进行有效筛查和分类。
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Automatic classification and grading of canine tracheal collapse on thoracic radiographs by using deep learning.

Tracheal collapse is a chronic and progressively worsening disease; the severity of clinical symptoms experienced by affected individuals depends on the degree of airway collapse. Cutting-edge automated tools are necessary to modernize disease screening using radiographs across various veterinary settings, such as animal clinics and hospitals. This is primarily due to the inherent challenges associated with interpreting uncertainties among veterinarians. In this study, an artificial intelligence model was developed to screen canine tracheal collapse using archived lateral cervicothoracic radiographs. This model can differentiate between a normal and collapsed trachea, ranging from early to severe degrees. The you-only-look-once (YOLO) models, including YOLO v3, YOLO v4, and YOLO v4 tiny, were used to train and test data sets under the in-house XXX platform. The results showed that the YOLO v4 tiny-416 model had satisfactory performance in screening among the normal trachea, grade 1-2 tracheal collapse, and grade 3-4 tracheal collapse with 98.30% sensitivity, 99.20% specificity, and 98.90% accuracy. The area under the curve of the precision-recall curve was >0.8, which demonstrated high diagnostic accuracy. The intraobserver agreement between deep learning and radiologists was κ = 0.975 (P < .001), with all observers having excellent agreement (κ = 1.00, P < .001). The intraclass correlation coefficient between observers was >0.90, which represented excellent consistency. Therefore, the deep learning model can be a useful and reliable method for effective screening and classification of the degree of tracheal collapse based on routine lateral cervicothoracic radiographs.

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来源期刊
Veterinary Radiology & Ultrasound
Veterinary Radiology & Ultrasound 农林科学-兽医学
CiteScore
2.40
自引率
17.60%
发文量
133
审稿时长
8-16 weeks
期刊介绍: Veterinary Radiology & Ultrasound is a bimonthly, international, peer-reviewed, research journal devoted to the fields of veterinary diagnostic imaging and radiation oncology. Established in 1958, it is owned by the American College of Veterinary Radiology and is also the official journal for six affiliate veterinary organizations. Veterinary Radiology & Ultrasound is represented on the International Committee of Medical Journal Editors, World Association of Medical Editors, and Committee on Publication Ethics. The mission of Veterinary Radiology & Ultrasound is to serve as a leading resource for high quality articles that advance scientific knowledge and standards of clinical practice in the areas of veterinary diagnostic radiology, computed tomography, magnetic resonance imaging, ultrasonography, nuclear imaging, radiation oncology, and interventional radiology. Manuscript types include original investigations, imaging diagnosis reports, review articles, editorials and letters to the Editor. Acceptance criteria include originality, significance, quality, reader interest, composition and adherence to author guidelines.
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