The Advent of Artificial Intelligence in Diabetes Diagnosis: Current Practices and Building Blocks for Future Prospects

Mrinmoy Roy, Dr. Mohit Jamwal
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Abstract

India has the highest proportion of diabetes patients, and it is estimated that there will be 134 Million diabetics in India by 2045 as per IDF. Also, the disease burden is increasing to the young population between ages 25-40 as more of them are diagnosed positive according to JAMA recently. Moreover, there are only 4.8 Doctors per 10,000 population, and in villages, the ratio is the lowest possible in this country, according to the Indian Journal of Public Health. Therefore, screening & predicting Diabetes at an early stage remains a priority for clinicians. It reduces the risk of major complications and improves patients' quality of life with diabetes, and builds resilience and well-being amongst other citizens. With the advancement of Computer Science & Artificial Intelligence, it is now possible to predict diabetes and other such diseases through applying deep learning algorithms in high-quality data sets. This helps in a more accurate and faster diagnosis of Pre-diabetes, Diabetes & diabetes-related progressive eye diseases. In this study, a systematic review of the Pubmed repository for current practices to diagnose Diabetes based on AI intervention in the Indian context is carried out. Also, a critical analysis was done on various pioneered companies currently offering AI-based Diabetes diagnostic services in India. The study represents different concepts of AI tools used to predict the diseases currently available in India. Although most of the studies were carried out on Diabetic Retinopathy screening, future opportunities can be in several other areas such as Clinical Decision Support, Predictive Population Risk Stratification and Patient Self-Management Tools.
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人工智能在糖尿病诊断中的出现:当前的实践和未来前景的构建模块
印度的糖尿病患者比例最高,据IDF估计,到2045年,印度将有1.34亿糖尿病患者。另外,据《美国医学会杂志》(JAMA)报道,25岁至40岁的年轻人群中,被诊断为阳性的人越来越多,疾病负担也在增加。此外,根据《印度公共卫生杂志》(Indian Journal of Public Health)的数据,每1万人中只有4.8名医生,而在农村,这一比例可能是全国最低的。因此,在早期阶段筛查和预测糖尿病仍然是临床医生的优先事项。它降低了主要并发症的风险,改善了糖尿病患者的生活质量,并在其他公民中建立了适应能力和幸福感。随着计算机科学和人工智能的进步,现在可以通过在高质量数据集中应用深度学习算法来预测糖尿病和其他此类疾病。这有助于更准确和更快地诊断前驱糖尿病,糖尿病和糖尿病相关的进行性眼病。在本研究中,系统地回顾了Pubmed资料库中基于人工智能干预在印度诊断糖尿病的当前实践。此外,对目前在印度提供基于人工智能的糖尿病诊断服务的各种领先公司进行了批判性分析。该研究代表了用于预测印度目前可用疾病的人工智能工具的不同概念。虽然大多数研究都是关于糖尿病视网膜病变筛查的,但未来的机会可以在其他几个领域,如临床决策支持,预测人群风险分层和患者自我管理工具。
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