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引用次数: 0
摘要
本文介绍了一种利用机器学习技术组合加强早期糖尿病检测的创新方法,鉴于糖尿病对全球的影响,这是至关重要的一步。现代饮食中糖和脂肪的普遍存在增加了糖尿病的风险,因此通过症状识别进行早期识别至关重要。所提出的方法整合了支持向量机(SVM)和人工神经网络(ANN)算法,对患者数据进行分析,将糖尿病诊断分为肯定和否定两种。研究使用的数据集分为 70% 的训练数据和 30% 的测试数据。SVM 和 ANN 模型的输出作为模糊逻辑系统的输入,然后由模糊逻辑系统做出最终诊断判断。该混合模型存储在云平台上,可用于访问,并使用病人的实时数据进行预测。与现有方法相比,混合机器学习模型在预测糖尿病方面表现出更高的准确性。
Diabetes Prediction with Machine Learning with Python
This article introduces an innovative approach leveraging a combination of machine learning techniques to enhance early diabetes detection, a crucial step given the disease's global impact. With the prevalence of sugar and fats in contemporary diets contributing to an increased diabetes risk, early identification through symptom recognition is key. The proposed method integrates Using Support Vector Machine (SVM) and Artificial Neural Network (ANN) algorithms, patient data is analyzed to classify diabetes diagnoses as either affirmative or negative. The study involves the utilization of a dataset that has been divided into 70% for training data and 30% for testing data. The outputs from the SVM and ANN models serve as inputs for a fuzzy logic system, which then makes the final diagnosis determination. This hybrid model is stored on a cloud platform for accessibility and uses real-time patient data for predictions. The combined machine learning model demonstrates superior accuracy in predicting diabetes compared to existing methods.