Predicting sinonasal inverted papilloma attachment using machine learning: Current lessons and future directions

IF 1.8 4区 医学 Q2 OTORHINOLARYNGOLOGY American Journal of Otolaryngology Pub Date : 2025-01-01 DOI:10.1016/j.amjoto.2024.104549
Sean P. McKee , Xiaomin Liang , William C. Yao , Brady Anderson , Jumah G. Ahmad , David Z. Allen , Salman Hasan , Andy J. Chua , Chinmay Mokashi , Samia Islam , Amber U. Luong , Martin J. Citardi , Luca Giancardo
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Abstract

Background

Hyperostosis is a common radiographic feature of inverted papilloma (IP) tumor origin on computed tomography (CT). Herein, we developed a machine learning (ML) model capable of analyzing CT images and identifying IP attachment sites.

Methods

A retrospective review of patients treated for IP at our institution was performed. The tumor attachment site was manually segmented on CT scans by the operating surgeon. We used a nnU-Net model, a state-of-the-art deep learning-based segmentation algorithm that automatically configures image preprocessing, network architecture, training, and post-processing to identify the IP attachment site. The model was trained and evaluated using a 5-fold cross validation, where each iteration split the data into train/validation/test to avoid chances of overfitting. The attachment site was classified as either ‘identified or ‘not identified’ using the nnU-Net model output and the Sørensen–Dice coefficient (Dice) was used to further evaluate the segmentation performance of each subject.

Results

A total of 58 subjects met enrollment criteria. The algorithm identified the attachment site in 55.2 % (n = 32) of patients with an average dice score (+/-SD) of 0.34 (+/− 0.24). In the univariate analysis, the algorithm performed better for attachment sites within the maxillary sinus (OR 4.0; p < 0.05) and performed worse during revision surgery (OR 0.13; p < 0.05). Multivariate logistic regression analysis confirmed these associations for maxillary attachment site (OR 4.6; p < 0.05) and revision surgery (OR 0.11; p < 0.05).

Conclusion

A state-of-the-art ML model successfully identified the attachment site of IP with a high degree of fidelity in select cases, but requires larger sample sizes and more diverse datasets to become reliably integrated into clinical practice.
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使用机器学习预测鼻窦内翻性乳头状瘤附着:目前的经验教训和未来的方向。
背景:骨质增生是内翻性乳头状瘤(IP)肿瘤来源的常见影像学特征。在此,我们开发了一个机器学习(ML)模型,能够分析CT图像并识别IP附着位点。方法:对我院收治的IP患者进行回顾性分析。手术医生在CT扫描上手动分割肿瘤附着部位。我们使用了nnU-Net模型,这是一种最先进的基于深度学习的分割算法,可以自动配置图像预处理、网络架构、训练和后处理来识别IP附件站点。该模型使用5倍交叉验证进行训练和评估,其中每次迭代将数据分为训练/验证/测试,以避免过度拟合的机会。使用nnU-Net模型输出将依恋位点分为“已识别”和“未识别”,并使用Sørensen-Dice系数(Dice)进一步评估每个受试者的分割性能。结果:共有58名受试者符合入组标准。该算法在55.2% (n = 32)的患者中识别出附着位点,平均dice评分(+/- sd)为0.34(+/- 0.24)。在单变量分析中,该算法在上颌窦内附着部位表现较好(OR 4.0;结论:最先进的ML模型在某些情况下成功地识别了IP的附着部位,并具有高度的保真度,但需要更大的样本量和更多样化的数据集才能可靠地整合到临床实践中。
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来源期刊
American Journal of Otolaryngology
American Journal of Otolaryngology 医学-耳鼻喉科学
CiteScore
4.40
自引率
4.00%
发文量
378
审稿时长
41 days
期刊介绍: Be fully informed about developments in otology, neurotology, audiology, rhinology, allergy, laryngology, speech science, bronchoesophagology, facial plastic surgery, and head and neck surgery. Featured sections include original contributions, grand rounds, current reviews, case reports and socioeconomics.
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