使用甲状腺软骨分割和放射学特征的预测建模:可行性研究。

IF 0.4 Q4 SURGERY
Nivea Roy, K Devaraja, Prakashini Koteshwara, Divya Rao, Alok Thakar, Rohit Singh, Praveen Shastry
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引用次数: 0

摘要

喉癌是头颈部三大癌症之一,需要及时诊断和分期,以有效管理和改善患者预后。甲状腺软骨穿透表明癌症晚期,对治疗计划至关重要。然而,由于年龄相关的变化,在CT图像上识别软骨异常是具有挑战性的,并且已经提出使用机器学习(ML)模型作为可能的前进方向。在这项可行性研究中,我们使用3D切片器对来自HaN-Seg数据集的39张CT图像中的甲状腺软骨进行了手工分割。使用Slicer Radiomics提取放射组学特征,并使用Jamovi和MATLAB进行统计学和ML分析。手工分割甲状腺软骨是成功的,得到107个放射学特征。发现了显著的性别和年龄相关差异。ML模型对性别和年龄组的分类准确率分别为100%和85.71%。回归模型在转换变量后显示出更高的准确性。甲状腺软骨放射组学分析有望对年龄相关变化进行分类。随后的研究可以帮助喉癌分期,区分正常软骨和肿瘤浸润软骨。补充信息:在线版本包含补充资料,提供地址为10.1007/s12070-025-05609-y。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive Modelling Using Thyroid Cartilage Segmentation and Radiomic Features: A Feasibility Study.

Laryngeal cancer, one of the top three head and neck cancers, requires timely diagnosis and staging for effective management and improved patient outcomes. Thyroid cartilage penetration indicates advanced cancer and is crucial for treatment planning. However, identifying cartilage abnormalities on CT images is challenging due to age-related changes, and use of machine learning (ML) models has been proposed as a possible way forward. In this feasibility study, we manually segmented thyroid cartilage in 39 CT images from the HaN-Seg dataset using 3D Slicer. Radiomic features were extracted with Slicer Radiomics, and statistical and ML analyses were conducted using Jamovi and MATLAB. Manual segmentation of thyroid cartilage was successful, yielding 107 radiomic features. Significant gender and age-related differences were identified. ML models classified gender with 100% accuracy and age group with 85.71% accuracy. Regression models showed improved accuracy with transformed variables. Radiomic analysis of thyroid cartilage is promising for classifying age-related change. Subsequent studies on this could aid in laryngeal cancer staging, distinguishing between normal and tumour-infiltrated cartilage.

Supplementary information: The online version contains supplementary material available at 10.1007/s12070-025-05609-y.

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来源期刊
CiteScore
0.80
自引率
0.00%
发文量
226
审稿时长
6-12 weeks
期刊介绍: Indian Journal of Otolaryngology and Head & Neck Surgery was founded as Indian Journal of Otolaryngology in 1949 as a scientific Journal published by the Association of Otolaryngologists of India and was later rechristened as IJOHNS to incorporate the changes and progress. IJOHNS, undoubtedly one of the oldest Journals in India, is the official publication of the Association of Otolaryngologists of India and is about to publish it is 67th Volume in 2015. The Journal published quarterly accepts articles in general Oto-Rhino-Laryngology and various subspecialities such as Otology, Rhinology, Laryngology and Phonosurgery, Neurotology, Head and Neck Surgery etc. The Journal acts as a window to showcase and project the clinical and research work done by Otolaryngologists community in India and around the world. It is a continued source of useful clinical information with peer review by eminent Otolaryngologists of repute in their respective fields. The Journal accepts articles pertaining to clinical reports, Clinical studies, Research articles in basic and applied Otolaryngology, short Communications, Clinical records reporting unusual presentations or lesions and new surgical techniques. The journal acts as a catalyst and mirrors the Indian Otolaryngologist’s active interests and pursuits. The Journal also invites articles from senior and experienced authors on interesting topics in Otolaryngology and allied sciences from all over the world. The print version is distributed free to about 4000 members of Association of Otolaryngologists of India and the e-Journal shortly going to make its appearance on the Springer Board can be accessed by all the members. Association of Otolaryngologists of India and M/s Springer India group have come together to co-publish IJOHNS from January 2007 and this bondage is going to provide an impetus to the Journal in terms of international presence and global exposure.
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