Detecting Factors Responsible for Diabetes Prevalence in Nigeria using Social Media and Machine Learning

O. Oyebode, Rita Orji
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引用次数: 16

Abstract

Diabetes is a non-communicable disease associated with increased level of glucose due to inadequate supply of insulin (known as Type 1 diabetes) or inability to use insulin efficiently (known as Type 2 diabetes). Though the exact cause of Type 1 diabetes is unknown, the probable causes are genetics and environmental factors (such as exposure to viruses). On the other hand, Type 2 diabetes is largely linked to unhealthy lifestyle choices. In Nigeria, many people are believed to be living with diabetes and the country’s diabetes prevalence rate is one of the highest in Africa. To determine the factors responsible for diabetes prevalence in Nigeria, we analyzed social media contents related to diabetes since billions of people, including diabetic patients and healthcare professionals, use social media platforms to freely share their experiences and discuss many health-related topics. None of the existing research targets the African audience who are also major users of social media platforms; hence our work aims to close this gap by leveraging an African social media platform targeted at Nigerians to gather diabetes-related data, and then applying machine learning technique to detect those factors responsible for diabetes prevalence in Nigeria. Based on our results, we discussed positive behavioural or lifestyle changes that are necessary to prevent and treat diabetes in Nigeria, as well as intervention designs required to bring about those changes. Future work will develop a diabetes intervention application implementing all the design features highlighted in Section V of this paper and making it generally accessible to Nigerians.
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利用社交媒体和机器学习检测尼日利亚糖尿病流行的因素
糖尿病是一种非传染性疾病,与由于胰岛素供应不足(称为1型糖尿病)或无法有效使用胰岛素(称为2型糖尿病)而导致的葡萄糖水平升高有关。虽然1型糖尿病的确切病因尚不清楚,但可能的原因是遗传和环境因素(如接触病毒)。另一方面,2型糖尿病很大程度上与不健康的生活方式有关。在尼日利亚,许多人被认为患有糖尿病,该国的糖尿病患病率是非洲最高的国家之一。为了确定导致尼日利亚糖尿病流行的因素,我们分析了与糖尿病相关的社交媒体内容,因为包括糖尿病患者和医疗保健专业人员在内的数十亿人使用社交媒体平台自由分享他们的经验并讨论许多与健康相关的话题。现有的研究都没有针对同时也是社交媒体平台主要用户的非洲受众;因此,我们的工作旨在通过利用针对尼日利亚人的非洲社交媒体平台来收集糖尿病相关数据,然后应用机器学习技术来检测导致尼日利亚糖尿病流行的因素,从而缩小这一差距。根据我们的结果,我们讨论了预防和治疗尼日利亚糖尿病所必需的积极的行为或生活方式改变,以及实现这些改变所需的干预设计。未来的工作将开发一个糖尿病干预应用程序,实现本文第五节中强调的所有设计功能,并使其普遍适用于尼日利亚人。
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