基于多层感知器的糖尿病分类

Sivasankari S S, J. Surendiran, N. Yuvaraj, M. Ramkumar, C. Ravi, R. Vidhya
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引用次数: 25

摘要

公共医疗基础设施的突破导致大量高度敏感和关键的医疗信息涌入。复杂数据分析技术的应用有助于早期发现和预防各种致命疾病。糖尿病会导致心脏病、肾脏疾病和神经损伤,所有这些都是危及生命的并发症。这项工作的目标是通过使用机器学习技术和算法,在糖尿病的早期阶段识别、检测和预测糖尿病的出现。当涉及到糖尿病分类时,使用MLP。实验评估使用PIMA印度糖尿病数据集进行。根据研究结果,MLP在准确率方面优于竞争对手,准确率为86.08%。在此之后,将建议的技术与现有技术进行比较,证明了建议的方法在广泛的公共医疗保健应用中的灵活性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Diabetes using Multilayer Perceptron
The breakthroughs in public healthcare infrastructure have resulted in a large influx of highly sensitive and critical healthcare information. The application of sophisticated data analysis techniques can aid in the early detection and prevention of a variety of fatal diseases. Diabetes can cause heart disease, renal disease, and nerve damage, all of which are life-threatening complications of the disease. The goal of this work is to identify, detect, and forecast the emergence of diabetes in its earliest stages by employing machine learning techniques and algorithms. When it comes to diabetes classification, an MLP is used. The experimental evaluation was carried out using the PIMA Indian Diabetes dataset. According to the study findings, MLP outperforms the competition in terms of accuracy, with an accuracy rate of 86.08%. Following this, a comparison of the suggested technique with the existing state of the art is carried out, proving the flexibility of the proposed approach to a wide range of public healthcare applications.
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