Machine learning of endoscopy images to identify, classify, and segment sinonasal masses.

IF 7.2 2区 医学 Q1 OTORHINOLARYNGOLOGY
Lirit Levi, Kenan Ye, Maxime Fieux, Axel Renteria, Steven Lin, Lei Xing, Noel F Ayoub, Zara M Patel, Jayakar V Nayak, Peter H Hwang, Michael T Chang
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引用次数: 0

Abstract

Background: We developed and assessed the performance of a machine learning model (MLM) to identify, classify, and segment sinonasal masses based on endoscopic appearance.

Methods: A convolutional neural network-based model was constructed from nasal endoscopy images from patients evaluated at an otolaryngology center between 2013 and 2024. Images were classified into four groups: normal endoscopy, nasal polyps, benign, and malignant tumors. Polyps and tumors were confirmed with histopathological diagnosis. Images were annotated by an otolaryngologist and independently verified by two other otolaryngologists. We used high- and low-quality images to mirror real-world conditions. The models used for classification (EfficientNet-B2) and segmentation (nnUNet) were trained, validated, and tested at an 8:1:1 ratio. The performance accuracy was averaged across a 10-fold cross-validation assessment. Segmentation accuracy was assessed via Dice similarity coefficients.

Results: A total of 1242 images from 311 patients were used. The MLM was trained, validated, and tested on 663 normal, 276 polyps, 157 benign, and 146 malignant tumors images. Overall, the model performed at 84.1 ± 4.3% accuracy in the validation set and 80.4 ± 1.7% in the test set. The model correctly identified the presence of a sinonasal mass at 90.5 ± 1.2% accuracy rate. The MLM accuracy performance rates were 86.2 ± 1.0% for polyps and 84.1 ± 1.8% for tumors. Benign and malignant tumor subclassification achieved 87.8 ± 2.1% and 94.0 ± 2.4% accuracy, respectively. Segmentation accuracies for polyps were 72.3% and 72.8% for tumors.

Conclusions: An MLM for nasal endoscopy images can perform with moderate to high accuracy in identifying, classifying, and segmenting sinonasal masses. Performance in future iterations may improve with larger and more diverse training datasets.

内窥镜图像的机器学习识别、分类和分割鼻窦肿块。
背景:我们开发并评估了机器学习模型(MLM)的性能,以根据内窥镜外观识别、分类和分割鼻窦肿块。方法:利用2013年至2024年在某耳鼻喉科中心接受评估的患者的鼻内窥镜图像构建基于卷积神经网络的模型。图像分为正常内镜、鼻息肉、良性、恶性肿瘤四组。息肉和肿瘤经组织病理学诊断证实。图像由一名耳鼻喉科医生注释,并由另外两名耳鼻喉科医生独立验证。我们使用高质量和低质量的图像来反映现实世界的情况。用于分类(EfficientNet-B2)和分割(nnUNet)的模型以8:1:1的比例进行训练、验证和测试。性能准确性在10倍交叉验证评估中平均。通过Dice相似系数评估分割精度。结果:共使用311例患者的1242张图像。该MLM在663个正常、276个息肉、157个良性和146个恶性肿瘤图像上进行了训练、验证和测试。总体而言,该模型在验证集中的准确率为84.1±4.3%,在测试集中的准确率为80.4±1.7%。该模型正确识别鼻窦肿块的准确率为90.5±1.2%。MLM对息肉的准确率为86.2±1.0%,对肿瘤的准确率为84.1±1.8%。良、恶性肿瘤亚分类准确率分别为87.8±2.1%和94.0±2.4%。息肉和肿瘤的分割准确率分别为72.3%和72.8%。结论:用于鼻内窥镜图像的MLM在识别、分类和分割鼻窦肿块方面具有中等到较高的准确性。未来迭代的性能可能会随着更大、更多样化的训练数据集而提高。
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来源期刊
CiteScore
11.70
自引率
10.90%
发文量
185
审稿时长
6-12 weeks
期刊介绍: International Forum of Allergy & Rhinologyis a peer-reviewed scientific journal, and the Official Journal of the American Rhinologic Society and the American Academy of Otolaryngic Allergy. International Forum of Allergy Rhinology provides a forum for clinical researchers, basic scientists, clinicians, and others to publish original research and explore controversies in the medical and surgical treatment of patients with otolaryngic allergy, rhinologic, and skull base conditions. The application of current research to the management of otolaryngic allergy, rhinologic, and skull base diseases and the need for further investigation will be highlighted.
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