血管性眩晕数据驱动的T2-SMOTE-GBDT预测模型的构建与分析

Dengqin Song, Tongqiang Yi, Hongci Chen, Xiong Zhang, Huiyun Pu, Shuangli Peng
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引用次数: 0

摘要

目前,血管性眩晕已成为一种高发疾病。但传统的诊疗方式对医务工作者的临床经验依赖程度高,容易出现误诊、漏诊、过度诊疗等现象,造成医疗资源的浪费。本文以目前流行的人工智能算法为基础,构建了基于数据驱动和机器学习的血管性眩晕临床预测模型。本文首先对数据样本中的缺失值和离群值进行处理和归一化。然后使用皮埃尔系数和随机森林两种不同的算法进行特征选择。然后采用Smote算法生成数据,解决数据不平衡问题。最后,我们使用hyperopt算法对GBDT模型的参数进行优化。与其他模型相比,本文提出的预测模型优于其他模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Construction and Analysis of a Data-Driven T2-SMOTE-GBDT Prediction Model for Vascular Vertigo
At present, vascular vertigo has become a high incidence. Still, traditional diagnosis and treatment methods are highly dependent on the clinical experience of medical workers, and are prone to misdiagnosis, missed diagnosis, and excessive diagnosis and treatment, resulting in a waste of medical resources. Based on the popular artificial intelligence algorithm, this paper constructs a clinical prediction model of vascular vertigo based on data-driven and machine learning. In this paper, the missing values and outliers in the data samples are first processed and normalized. Then two different algorithms, Pierre coefficient and random forest, are used for feature selection. Then Smote algorithm is used to generate data to solve the data imbalance problem. Finally, we use the hyperopt algorithm to optimize the parameters of the GBDT model. Compared with other models, the prediction model proposed in this paper is better than other models.
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