作者
Maryam Saberi-Karimian, Zahra Khorasanchi, Hamideh Ghazizadeh, Maryam Tayefi, Sara Saffar, Gordon A Ferns, Majid Ghayour-Mobarhan
发表日期
2021/5/19
来源
Critical reviews in clinical laboratory sciences
卷号
58
期号
4
页码范围
275-296
出版商
Taylor & Francis
简介
Data mining involves the use of mathematical sciences, statistics, artificial intelligence, and machine learning to determine the relationships between variables from a large sample of data. It has previously been shown that data mining can improve the prediction and diagnostic precision of type 2 diabetes mellitus. A few studies have applied machine learning to assess hypertension and metabolic syndrome-related biomarkers, as well as refine the assessment of cardiovascular disease risk. Machine learning methods have also been applied to assess new biomarkers and survival outcomes in patients with renal diseases to predict the development of chronic kidney disease, disease progression, and renal graft survival. In the latter, random forest methods were found to be the best for the prediction of chronic kidney disease. Some studies have investigated the prognosis of nonalcoholic fatty liver disease and acute …
引用总数
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M Saberi-Karimian, Z Khorasanchi, H Ghazizadeh… - Critical reviews in clinical laboratory sciences, 2021