促进法对糖尿病的诊断

Hilal Koçak, Gürcan Çetin
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引用次数: 0

摘要

除了对各种器官造成损害外,糖尿病(DM)还会增加一个人患上其他严重健康状况的风险。这些疾病包括心脏病、中风和神经损伤。此外,糖尿病是失明和肾衰竭的主要原因。然而,通过适当的管理和治疗,可以预防或延迟糖尿病的许多并发症。因此,早期发现和治疗糖尿病是至关重要的。随着机器学习技术的进步,医学领域出现了新的机遇。许多疾病检测研究依赖于机器学习技术,特别强调提高算法。增强算法用于提高其他弱模型(如决策树)所做预测的准确性。本研究使用知识发现方法,在糖尿病数据集上对增强算法进行了检验和比较。通过生成ROC曲线和比较平均精度值来评价增强算法的性能。当研究结果在精度方面进行评估时,Gradient Boosting、AdaBoost、CatBoost、LightGBM和XGBoost算法的成功率分别为% 85%、% 83%、% 88%、%86和%87。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Diagnosis of Diabetes Mellitus with Boosting Methods
In addition to the damage it can cause to various organs, diabetes mellitus (DM) also increases a person's risk of developing other serious health conditions. These can include heart disease, stroke, and nerve damage. Furthermore, DM is a leading cause of blindness and kidney failure. However, with proper management and treatment, many of the complications of DM can be prevented or delayed. Thus, early detection and treatment of DM are crucial. With the advancement of machine learning technology, new opportunities have emerged in the field of medicine. Many disease detection research rely on machine learning techniques, with a particular emphasis on boosting algorithms. Boosting algorithms are used to improve the accuracy of predictions made by other weak models such as decision trees. Using knowledge discovery methods, boosting algorithms are examined and compared on a diabetes dataset in this study. The performance of the boosting algorithms is evaluated by generating ROC curves and comparing average accuracy values. When the study's results were evaluated in terms of precision, Gradient Boosting, AdaBoost, CatBoost, LightGBM, and XGBoost algorithms gives success rates of %85, %83, %88, %86, and %87, respectively.
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