Artificial Intelligence in Medicine for Chronic Disease Classification Using Machine Learning

M. Rakhimov, Ravshanjon Akhmadjonov, Shahzod Javliev
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引用次数: 1

Abstract

Artificial intelligence (AI) systems in medicine are one of the most important modern trends in global healthcare. Artificial intelligence technologies are fundamentally changing the global healthcare system, making it possible to radically rebuild the system of medical diagnostics while reducing healthcare costs. AI is actively used in research to develop methods for diagnosing coronary heart disease (CHD). There are different types of CHD. Before treating a disease, it is necessary to determine which class of diseases it belongs to. Based on the feature space of the disease, it is possible to classify the type of CHD. Machine learning algorithms can solve this problem. The k-nearest neighbors (KNN) algorithm is a simple, easy-to-implement supervised machine learning algorithm that can be used to solve classification problems. The dataset is the more important part of the supervised machine learning algorithm for training. Gathering data is the most important step in solving any supervised machine learning problem. But choosing more important part from the collected data is one of the tasks to be solved. The main purpose of this study is to select more useful parametric attributes from the dataset to obtain a high F1-score of CHD classification.
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使用机器学习进行慢性疾病分类的医学人工智能
医学中的人工智能(AI)系统是全球医疗保健领域最重要的现代趋势之一。人工智能技术正在从根本上改变全球医疗体系,使从根本上重建医疗诊断体系成为可能,同时降低医疗成本。人工智能被积极用于研究开发冠心病(CHD)的诊断方法。冠心病有不同的类型。在治疗疾病之前,有必要确定它属于哪一类疾病。根据疾病的特征空间,可以对冠心病的类型进行分类。机器学习算法可以解决这个问题。k近邻(KNN)算法是一种简单,易于实现的监督机器学习算法,可用于解决分类问题。数据集是监督机器学习算法中用于训练的更重要的部分。收集数据是解决任何监督机器学习问题最重要的一步。但是从收集到的数据中选择更重要的部分是需要解决的问题之一。本研究的主要目的是从数据集中选择更多有用的参数属性,以获得较高的冠心病分类f1分。
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