结直肠癌在高社会人口统计学地区的演变动态。

IF 2.5 4区 医学 Q3 ONCOLOGY
Laalithya Konduru, Simranjeet Singh Dahia, Claudia Szabo, Savio G Barreto
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引用次数: 0

摘要

背景:结直肠癌(CRC)是一个重大的全球健康挑战,不断变化的人口趋势强调了对准确预测模型的需求。现有的预测模型缺乏全面的覆盖。通过整合机器学习算法,本研究旨在提供更准确和精确的预测,填补了解CRC发病率、死亡和残疾调整生命年(DALY)率趋势的关键空白,特别是在高社会人口指数(SDI)地区。特别强调的是探索年龄,性别和国家的CRC趋势的具体变化。材料和方法:利用包含年龄、性别和国家特定CRC发病率、死亡率和DALY率的数据集,开发并验证了一种集成了简单线性回归、指数平滑和自回归综合移动平均的集成预测算法,该算法能够处理短时间序列。结果:我们的预测模型显示,在高SDI地区,15-49岁年龄组(年轻发病)的结直肠癌负担呈上升趋势,50-74岁年龄组(晚发病)的结直肠癌负担呈下降趋势,其发病率、死亡率和DALY率存在性别差异。早在未来5年内就确定了结直肠癌疾病负担人口变化的一些拐点,特别是死亡率。我们预测结直肠癌的负担将向女性转移,尤其是在老年人中。结论:建立了一个新的多因素模型,用于比较高SDI地区年轻和晚发型结直肠癌的发病率、死亡率和DALY率。在高SDI地区,年轻发病的CRC发病率不断上升,这凸显了采取积极健康战略的必要性。通过完善预测模型,调整筛查指南以瞄准年轻、高风险人群,并投资于公众意识和研究,我们可以促进早期发现并改善结果。本研究解决了结直肠癌预测方面的重大差距,并为预测结直肠癌负担的人口变化提供了一个强有力的框架,使其成为医疗保健规划不可或缺的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolving Dynamics of Colorectal Cancer in High Socio-Demographic Regions.

Background: Colorectal cancer (CRC) poses a significant global health challenge, with evolving demographic trends emphasizing the need for accurate forecasting models. Existing forecasting models lack comprehensive coverage. By integrating machine learning algorithms, this study aims to provide more accurate and precise predictions, filling critical gaps in understanding CRC incidence, death, and disability-adjusted life year (DALY) rate trends, especially in high socio-demographic index (SDI) regions. Specific emphasis is placed on exploring age-, sex-, and country-specific variations in CRC trends.

Materials and methods: An ensemble forecasting algorithm integrating Simple Linear Regression, Exponential Smoothing, and Autoregressive Integrated Moving Average, capable of handling a short time series was developed and validated, utilizing a dataset encompassing age-, sex-, and country-specific CRC incidence, mortality, and DALY rates.

Results: Our forecasting models reveal rising trends in CRC burden in the 15-49 years age group (young-onset) and decreasing trends in CRC burden in the 50-74 years age group (late-onset) in high SDI regions with sex-specific variations in incidence, mortality, and DALY rates. Some inflection points for demographic shifts in CRC disease burden, particularly death rates, were identified as early as within the next 5 years. We predict a shift in CRC burden towards females, particularly in older adults.

Conclusion: A novel multifactor model was developed for comparing the incidence, mortality, and DALY rates of young- and late-onset CRC in high SDI regions. The rising incidence of young-onset CRC in high SDI regions underscores the need for proactive health strategies. By refining predictive models, adjusting screening guidelines to target younger, high-risk populations, and investing in public awareness and research, we can facilitate early detection and improve outcomes. This study addresses a significant gap in CRC forecasting and provides a robust framework for anticipating demographic shifts in CRC burden, making it an indispensable tool for healthcare planning.

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来源期刊
Cancer Control
Cancer Control ONCOLOGY-
CiteScore
3.80
自引率
0.00%
发文量
148
审稿时长
>12 weeks
期刊介绍: Cancer Control is a JCR-ranked, peer-reviewed open access journal whose mission is to advance the prevention, detection, diagnosis, treatment, and palliative care of cancer by enabling researchers, doctors, policymakers, and other healthcare professionals to freely share research along the cancer control continuum. Our vision is a world where gold-standard cancer care is the norm, not the exception.
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