Evaluation of predictive performance of modeling hyperuricemia using medical big data: comparison of data preprocessing methods

被引:0
|
作者
Li, Luwei [1 ,4 ]
Huang, Xian [1 ]
Yan, Cijin [3 ]
He, Shuzhan [3 ]
Cheng, Sishuai [4 ]
Yang, WenJie [2 ,5 ]
机构
[1] Sun Yat Sen Univ, Guangxi Hosp Div, Dept Rheumatol & Immunol, Affiliated Hosp 1, Nanning, Guangxi, Peoples R China
[2] Sun Yat Sen Univ, Guangxi Hosp Div, Affiliated Hosp 1, Dept Hematol, Nanning, Guangxi, Peoples R China
[3] Sun Yat Sen Univ, Guangxi Hosp Div, Affiliated Hosp 1, Dept Endocrinol, Nanning, Guangxi, Peoples R China
[4] Guilin Med Univ, Guilin, Guangxi, Peoples R China
[5] Sun Yat Sen Univ, Guangxi Hosp Div, Affiliated Hosp 1, 3 FoZiLing Rd, Nanning, Guangxi, Peoples R China
关键词
Medical big data; Hyperuricemia; Data preprocessing; Continuous variables; Categorized variables; Assignment; Modeling;
D O I
10.1186/s40537-025-01142-5
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
BackgroundUsing medical big data from two large-scale populations, a prediction model for continuous variables of raw data and a prediction model for categorical variables after assignment were constructed to evaluate the performance of the two forms of data preprocessing models.MethodPartial population data from the physical examination center of Guilin Medical University Affiliated Hospital from 2017 to 2019 were selected as the modeling group, with a total of 22,124 population data included. Selecting population data from NHANES database from 1998 to 2018 as the control group, a total of 28,021 population data were included. Logistic regression, LightGBM model, and Deep Neural Network were used to predict hyperuricemia in the form of continuous variables in the raw data. Then, the continuous variables in the raw data were assigned values to become categorical variables, and statistical analysis was performed using the same algorithm to obtain the predicted values of the two models. ROC curve analysis, Calibration curve analysis, DCA curve analysis, and CIC curve analysis were performed to comprehensively evaluate the accuracy, discriminatory ability, and clinical practicality of the two models.ResultIn the Logistic regression analysis of the continuous variable modeling group after controlling for confounding factors, a total of 11 variables showed statistical significance in the incidence of hyperuricemia. After assigning values, the Logistic regression analysis of the categorical variable modeling group showed that 9 variables had statistical significance in the incidence of hyperuricemia.In the Logistic regression analysis of continuous variables in the validation set, a total of 8 variables showed statistical significance in the incidence of hyperuricemia. After assignment, Logistic regression analysis of categorical variables showed that 10 variables had statistical significance in the incidence of hyperuricemia. The AUC values of the ROC curves of Logistic models, LightGBM models, and Deep Neural Networks with continuous variable types are higher than those of categorical variables. The average deviation between the continuous variable calibration curve prediction curve and the standard curve of the modeling and validation groups is generally lower than that of the categorical variables. The DCA curve and CIC curve of the modeling and validation groups both show that the clinical practicality of the continuous variable model is higher than that of the categorical variable model group.ConclusionIn the statistical analysis of hyperuricemia medical big data, directly using the continuous variable form of raw data for statistical analysis may result in better model performance than using the categorical variable form after assignment. However, the relevant parameters such as OR value obtained through assignment may have greater statistical and clinical guidance significance.
引用
收藏
页数:17
相关论文
共 50 条
  • [31] Evidence for Proper Use of Medicines Using Medical Big Data: Formulary in a Clinical Setting Using Medical Big Data
    Momo, Kenji
    YAKUGAKU ZASSHI-JOURNAL OF THE PHARMACEUTICAL SOCIETY OF JAPAN, 2022, 142 (04): : 327 - 330
  • [32] Explaining Data Preprocessing Methods for Modeling and Forecasting with the Example of Product Drying
    Korkmaz, Cem
    Kacar, Ilyas
    JOURNAL OF TEKIRDAG AGRICULTURE FACULTY-TEKIRDAG ZIRAAT FAKULTESI DERGISI, 2024, 21 (02): : 482 - 500
  • [33] Big Data Analytics and Predictive Modeling Approaches for the Energy Sector
    Corizzo, Roberto
    Ceci, Michelangelo
    Malerba, Donato
    2019 IEEE INTERNATIONAL CONGRESS ON BIG DATA (IEEE BIGDATA CONGRESS 2019), 2019, : 55 - 63
  • [34] Data Mining, Machine Learning, and Statistical Modeling for Predictive Analytics with Behavioral Big Data
    Arunkumar, M.
    Rajkumar, K.
    Jeyaseelan, W. r. salem
    Natraj, N. A.
    TEHNICKI VJESNIK-TECHNICAL GAZETTE, 2025, 32 (01): : 72 - 77
  • [36] Unstructured medical frameworks using big data
    Banu, A. Arjuman
    Reshmy, A. K.
    RESEARCH JOURNAL OF PHARMACEUTICAL BIOLOGICAL AND CHEMICAL SCIENCES, 2016, 7 : 234 - 241
  • [37] Performance comparison and future estimation of time series data using predictive data mining techniques
    Tanwar, Harshita
    Kakkar, Misha
    2017 1ST IEEE INTERNATIONAL CONFERENCE ON DATA MANAGEMENT, ANALYTICS AND INNOVATION (ICDMAI), 2017, : 9 - 12
  • [38] Data requirements and performance evaluation of model predictive control in buildings: A modeling perspective
    Zhan, Sicheng
    Chong, Adrian
    RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2021, 142
  • [39] Evaluation of risk analysis process in medical big data using Machine Learning
    Rajeshkumar, K.
    Dhanasekaran, S.
    Vasudevan, V.
    2021 INTERNATIONAL CONFERENCE ON COMPUTER COMMUNICATION AND INFORMATICS (ICCCI), 2021,
  • [40] Performance Evaluation of HDFS in Big Data Management
    Dev, Dipayan
    Patgiri, Ripon
    2014 INTERNATIONAL CONFERENCE ON HIGH PERFORMANCE COMPUTING AND APPLICATIONS (ICHPCA), 2014,