肝脏流行病识别的分类算法

Q2 Computer Science
Koteswara Rao Makkena, Karthika Natarajan
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引用次数: 0

摘要

肝脏位于腹部右上方,横膈膜的下方,胃的上方。它是人体正常运作所必需的重要器官。主要任务是消除我们的器官产生的废物,消化食物,保存维生素和能量物质。它在体内发挥着许多重要的功能,它调节体内激素的平衡,过滤和清除血液中的细菌、病毒和其他有害物质。在某些可怕的情况下,结果可能不幸导致死亡。根据病因或特征,肝脏疾病有多种分类。一些常见的肝脏疾病包括病毒性肝炎、自身免疫性肝病、代谢性肝病、酒精相关肝病、非酒精性脂肪性肝病、遗传性肝病、药物性肝损伤、胆道疾病。机器学习算法可以帮助识别人类可能难以察觉的模式和风险因素。有了这个,临床医生就可以早期诊断疾病,从而获得更好的治疗效果,改善患者护理。在这项研究工作中,不同类型的机器学习方法被实现,并在性能指标方面进行比较,以确定一个人是否受到影响。这里用于预测肝脏患者的算法有Random Forest classifier, K-nearest neighbor, XGBoost, Decision tree, Logistic Regression, support vector machine, Extra Trees classifier。实验结果表明,采用合成少数派过采样技术后,各种机器学习模型的准确率分别为随机森林分类器67.4%、k近邻分类器54.8%、xgboost分类器72%、决策树分类器65.1%、Logistic回归分类器68.0%、支持向量机65.1%、额外树分类器70.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification Algorithms for Liver Epidemic Identification
Situated in the upper right region of the abdomen, beneath the diaphragm and above the stomach, lies the liver. It is a crucial organ essential for the proper functioning of the body. The principal tasks are to eliminate generated waste produced by our organs, and digestive food and preserve vitamins and energy materials. It performs many important functions in the body, it regulates the balance of hormones in the body filtering and removing bacteria, viruses, and other harmful substances from the blood. In certain dire circumstances, the outcome can unfortunately result in fatality. There exist numerous classifications of liver diseases, based on their causes or distinguishing characteristics. Some common categories of liver disease include Viral hepatitis, Autoimmune liver disease, Metabolic liver disease, Alcohol-related liver disease, Non-alcoholic fatty liver disease, Genetic liver disease, Drug-induced liver injury, Biliary tract disorders. Machine learning algorithms can help identify patterns and risk factors that may be difficult for humans to detect. With this clinicians can enable early diagnosis of diseases, leading to better treatment outcomes and improved patient care. In this research work, different types of machine learning methods are implemented and compared in terms of performance metrics to identify whether a person effected or not. The algorithms used here for predicting liver patients are Random Forest classifier, K-nearest neighbor, XGBoost, Decision tree, Logistic Regression, support vector machine, Extra Trees Classifier. The experimental results showed that the accuracy of various machine learning models-Random Forest classifier-67.4%, K-nearest neighbor-54.8%, XGBoost-72%, Decision tree-65.1%, Logistic Regression-68.0%, support vector machine-65.1%, Extra Trees Classifier-70.2% after applying Synthetic Minority Over-sampling technique.
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来源期刊
EAI Endorsed Transactions on Pervasive Health and Technology
EAI Endorsed Transactions on Pervasive Health and Technology Computer Science-Computer Science (miscellaneous)
CiteScore
3.50
自引率
0.00%
发文量
14
审稿时长
10 weeks
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