使用机器学习识别撒哈拉以南非洲宫颈癌筛查的预测因素:横断面研究。

IF 3.9 2区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Nebebe Demis Baykemagn, Mekuriaw Nibret Aweke, Amare Mesfin, Lemlem Daniel Baffa, Muluken Chanie Agimas, Habtamu Wagnew Abuhay, Dagnew Getnet Adugna, Tewodros Getaneh Alemu, Alemu Teshale Bicha, Gebrie Getu Alemu
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引用次数: 0

摘要

背景:宫颈癌已被列为影响妇女的第四大常见癌症,在全世界造成约66万例新诊断和35万例死亡。有效的早期筛检已显示可将子宫颈癌的发病率减少多达80%,并预防超过40%的新病例。目的:本研究旨在评估基于机器学习的预测模型,并确定影响撒哈拉以南非洲30-49岁女性宫颈癌筛查的关键预测因素。方法:在本研究中,使用了来自加纳、肯尼亚、莫桑比克和坦桑尼亚的2022年人口与健康调查的33,952个人的加权数据集。使用STATA version 17 (StataCorp)和Python 3.10 (Python Software Foundation)进行数据预处理和分析。采用最小最小和标准尺度法进行特征缩放,采用递归特征消去法进行特征选择。数据分割采用80:20的比例。使用随机过采样的Tomek链接来处理阶级不平衡。总共选择了7个模型,并使用平衡和非平衡数据集进行训练。模型的评估是使用接收器工作特征曲线下的面积、精度和混淆矩阵进行的。结果:撒哈拉以南非洲地区宫颈癌筛查比例为13%,低于以往研究报告。随机森林是表现最好的模型,准确率为78%,曲线下面积为86%,f1分数为79%,召回率为81%,精度为77%。瀑布图的Shapley加性解释分析显示,财富状况、对性传播感染的认识、艾滋病毒检测暴露、第一次性行为年龄、教育水平、居住地、智能手机拥有量、单一性伴侣和以前的健康状况是宫颈癌筛查的预测因素。结论:提高教育和意识,扩大筛查机会(特别是在农村地区),利用数字健康和社区外联,将筛查与其他卫生服务相结合,以及解决社会经济障碍是提高撒哈拉以南非洲宫颈癌筛查率的建议策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Identifying Predictors of Cervical Cancer Screening Uptake in Sub-Saharan Africa Using Machine Learning: Cross-Sectional Study.

Identifying Predictors of Cervical Cancer Screening Uptake in Sub-Saharan Africa Using Machine Learning: Cross-Sectional Study.

Identifying Predictors of Cervical Cancer Screening Uptake in Sub-Saharan Africa Using Machine Learning: Cross-Sectional Study.

Identifying Predictors of Cervical Cancer Screening Uptake in Sub-Saharan Africa Using Machine Learning: Cross-Sectional Study.

Background: Cervical cancer has been ranked as the fourth most common cancer affecting women, contributing to approximately 660,000 new diagnoses and 350,000 fatalities worldwide. Effective early screening has been shown to reduce cervical cancer incidence by up to 80% and prevent more than 40% of new cases.

Objective: This study aims to assess a machine learning-based prediction model and identify the key predictors influencing cervical cancer screening uptake among women aged 30-49 years in sub-Saharan Africa.

Methods: For this study, a weighted dataset of 33,952 individuals from the 2022 Demographic and Health Survey in Ghana, Kenya, Mozambique, and Tanzania was used. STATA version 17 (StataCorp) and Python 3.10 (Python Software Foundation) were used for data preprocessing and analysis. MinMax and standard scaler were applied for feature scaling, and recursive feature elimination was used for feature selection. An 80:20 ratio was applied for data splitting. Tomek links with random oversampling were used for handling class imbalance. A total of 7 models were selected and trained using both balanced and unbalanced datasets. Model evaluation was performed using area under the receiver operating characteristic curve, accuracy, and a confusion matrix.

Results: The proportion of cervical cancer screening in sub-Saharan Africa was 13%, which is lower than reported in previous studies. Random forest was the best-performing model, achieving an accuracy of 78%, an area under the curve of 86%, an F1-score of 79%, a recall of 81%, and a precision of 77%. The waterfall plot's Shapley Additive Explanations analysis showed that wealth status, awareness of sexually transmitted infections, HIV testing exposure, age at first sexual intercourse, educational level, residency, smartphone ownership, having a single sexual partner, and previous health status were predictors of cervical cancer screening.

Conclusions: Improving education and awareness, expanding access to screening (especially in rural areas), leveraging both digital health and community-based outreach, integrating screening with other health services, and addressing socioeconomic barriers are recommended strategies to increase cervical cancer screening rates in sub-Saharan Africa.

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来源期刊
CiteScore
13.70
自引率
2.40%
发文量
136
审稿时长
12 weeks
期刊介绍: JMIR Public Health & Surveillance (JPHS) is a renowned scholarly journal indexed on PubMed. It follows a rigorous peer-review process and covers a wide range of disciplines. The journal distinguishes itself by its unique focus on the intersection of technology and innovation in the field of public health. JPHS delves into diverse topics such as public health informatics, surveillance systems, rapid reports, participatory epidemiology, infodemiology, infoveillance, digital disease detection, digital epidemiology, electronic public health interventions, mass media and social media campaigns, health communication, and emerging population health analysis systems and tools.
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