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头颈癌的全球负担及未来趋势:基于深度学习的分析(1980 - 2030年)

Global burden and future trends of head and neck cancer: a deep learning-based analysis (1980-2030).

作者信息

Hu Qiongyuan, Lv Shuai, Wang Xinyu, Pan Peng, Gong Wei, Mei Jinyu

机构信息

Department of Otorhinolaryngology Head and Neck Surgery, The Second Affiliated Hospital of Anhui Medical University, Hefei, Anhui, China.

School of Artificial Intelligence and Data Science, University of Science and Technology of China, Hefei, Anhui, China.

出版信息

PLoS One. 2025 Apr 9;20(4):e0320184. doi: 10.1371/journal.pone.0320184. eCollection 2025.

Abstract

BACKGROUND

Head and neck cancer (HNC) becomes a vital global health burden. Accurate assessment of the disease burden plays an essential role in setting health priorities and guiding decision-making.

METHODS

This study explores data from the Global Burden of Disease (GBD) 2021 study, involving totally 204 countries during the period from 1980 to 2021. The analysis focuses on age-standardized incidence, mortality, and disability-adjusted life years (DALYs) for HNC. A Transformer-based model, HNCP-T, is used for the prediction of future trends from 2022 to 2030, quantified based on the estimated annual percentage change (EAPC).

RESULTS

The global age-standardized incidence rate (ASIR) for HNC has escalated between 1980 and 2021, with men bearing a higher burden than women. In addition, the burden rises with age and exhibits regional disparities, with the greatest impact on low-to-middle sociodemographic index (SDI) regions. Additionally, the model predicts a continued rise in ASIR (EAPC = 0.22), while the age-standardized death rate (ASDR) is shown to decrease more sharply for women (EAPC = -0.92) than men (EAPC = -0.54). The most rapid increase in ASIR is projected for low-to-middle SDI countries, while ASDR and DALY rates are found to decrease in different degrees across regions.

CONCLUSIONS

The current work offers a detailed analysis of the global burden of HNC based on the GBD 2021 dataset and demonstrates the accuracy of the HNCP-T model in predicting future trends. Significant regional and gender-based differences are found, with incidence rates rising, especially among women and in low-middle SDI regions. Furthermore, the results underscore the value of deep learning models in disease burden prediction, which can outperform traditional methods.

摘要

背景

头颈癌(HNC)成为一项重大的全球健康负担。准确评估疾病负担对于确定卫生工作重点和指导决策起着至关重要的作用。

方法

本研究探讨了来自全球疾病负担(GBD)2021研究的数据,涉及1980年至2021年期间的204个国家。分析重点是头颈癌的年龄标准化发病率、死亡率和伤残调整生命年(DALYs)。基于Transformer的模型HNCP-T用于预测2022年至2030年的未来趋势,根据估计的年度百分比变化(EAPC)进行量化。

结果

1980年至2021年期间,全球头颈癌年龄标准化发病率(ASIR)有所上升,男性的负担高于女性。此外,负担随年龄增长而增加,并存在地区差异,对社会人口指数(SDI)较低至中等的地区影响最大。此外,该模型预测ASIR将持续上升(EAPC = 0.22),而年龄标准化死亡率(ASDR)显示女性(EAPC = -0.92)比男性(EAPC = -0.54)下降得更急剧。预计SDI较低至中等的国家ASIR增长最为迅速,而各地区的ASDR和DALY率不同程度下降。

结论

当前工作基于GBD 2021数据集对头颈癌的全球负担进行了详细分析,并证明了HNCP-T模型在预测未来趋势方面的准确性。发现了显著的地区和性别差异,发病率上升,尤其是在女性和SDI较低至中等的地区。此外,结果强调了深度学习模型在疾病负担预测中的价值,其性能优于传统方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1556/11981659/4c42f4265f26/pone.0320184.g001.jpg

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