Comparison of conventional mathematical model and machine learning model based on recent advances in mathematical models for predicting diabetic kidney disease

被引:3
作者
Sheng, Yingda [1 ,2 ]
Zhang, Caimei [1 ,2 ]
Huang, Jing [1 ,2 ]
Wang, Dan [1 ,2 ]
Xiao, Qian [1 ,2 ]
Zhang, Haocheng [3 ]
Ha, Xiaoqin [2 ,4 ]
机构
[1] Gansu Univ Chinese Med, Lanzhou, Gansu, Peoples R China
[2] Chinese Peoples Liberat Army, 940th Hosp Joint Logist Support Force, Lanzhou, Gansu, Peoples R China
[3] Lanzhou Univ, Hosp 2, Lanzhou, Gansu, Peoples R China
[4] Chinese Peoples Liberat Army, 940th Hosp Joint Logist Support Force, Qilihe Dist, Lanzhou 730000, Gansu, Peoples R China
关键词
Mathematical model; machine learning model; diabetic kidney disease; ‌conventional model; RENAL OUTCOMES; RISK; VALIDATION; NEPHROPATHY; MELLITUS; HORMONE; PATIENT;
D O I
10.1177/20552076241238093
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Previous research suggests that mathematical models could serve as valuable tools for diagnosing or predicting diseases like diabetic kidney disease, which often necessitate invasive examinations for conclusive diagnosis. In the big-data era, there are several mathematical modeling methods, but generally, two types are recognized: conventional mathematical model and machine learning model. Each modeling method has its advantages and disadvantages, but a thorough comparison of the two models is lacking. In this article, we describe and briefly compare the conventional mathematical model and machine learning model, and provide research prospects in this field.
引用
收藏
页数:10
相关论文
共 44 条
[1]   Prediction of diabetic kidney disease with machine learning algorithms, upon the initial diagnosis of type 2 diabetes mellitus [J].
Allen, Angier ;
Iqbal, Zohora ;
Green-Saxena, Abigail ;
Hurtado, Myrna ;
Hoffman, Jana ;
Mao, Qingqing ;
Das, Ritankar .
BMJ OPEN DIABETES RESEARCH & CARE, 2022, 10 (01)
[2]  
Atlas D., 2015, IDF Diabetes Atlas, V33
[3]   Machine-learning-based early prediction of end-stage renal disease in patients with diabetic kidney disease using clinical trials data [J].
Belur Nagaraj, Sunil ;
Pena, Michelle J. ;
Ju, Wenjun ;
Heerspink, Hiddo L. .
DIABETES OBESITY & METABOLISM, 2020, 22 (12) :2479-2486
[4]   Fibroblast Growth Factor 21 Levels Exhibit the Association With Renal Outcomes in Subjects With Type 2 Diabetes Mellitus [J].
Chang, Li-Hsin ;
Chu, Chia-Huei ;
Huang, Chin-Chou ;
Lin, Liang-Yu .
FRONTIERS IN ENDOCRINOLOGY, 2022, 13
[5]   Introduction to Machine Learning, Neural Networks, and Deep Learning [J].
Choi, Rene Y. ;
Coyner, Aaron S. ;
Kalpathy-Cramer, Jayashree ;
Chiang, Michael F. ;
Campbell, J. Peter .
TRANSLATIONAL VISION SCIENCE & TECHNOLOGY, 2020, 9 (02)
[6]   Analytical validation of a multi-biomarker algorithmic test for prediction of progressive kidney function decline in patients with early-stage kidney disease [J].
Connolly, Patricia ;
Stapleton, Sharon ;
Mosoyan, Gohar ;
Fligelman, Ilya ;
Tonar, Ya-Chen ;
Fleming, Fergus ;
Donovan, Michael J. .
CLINICAL PROTEOMICS, 2021, 18 (01)
[7]   Machine Learning in Medicine [J].
Deo, Rahul C. .
CIRCULATION, 2015, 132 (20) :1920-1930
[8]   Machine Learning Approaches to Predict Risks of Diabetic Complications and Poor Glycemic Control in Nonadherent Type 2 Diabetes [J].
Fan, Yuting ;
Long, Enwu ;
Cai, Lulu ;
Cao, Qiyuan ;
Wu, Xingwei ;
Tong, Rongsheng .
FRONTIERS IN PHARMACOLOGY, 2021, 12
[9]   Thermal Perception Abnormalities Can Predict Diabetic Kidney Disease in Type 2 Diabetes Mellitus Patients [J].
Fang, Wei-Ching ;
Chou, Kuei-Mei ;
Sun, Chiao-Yin ;
Lee, Chin-Chan ;
Wu, I-Wen ;
Chen, Yung-Chang ;
Pan, Heng-Chih .
KIDNEY & BLOOD PRESSURE RESEARCH, 2020, 45 (06) :926-938
[10]   Thyroid stimulating hormone and free triiodothyronine are valuable predictors for diabetic nephropathy in patient with type 2 diabetes mellitus [J].
Fei, Xianming ;
Xing, Mingfen ;
Wo, Mingyi ;
Wang, Huan ;
Yuan, Wufeng ;
Huang, Qinghua .
ANNALS OF TRANSLATIONAL MEDICINE, 2018, 6 (15)