Exploration of machine learning for hyperuricemia prediction models based on basic health checkup tests

S Lee, EK Choe, B Park - Journal of clinical medicine, 2019 - mdpi.com
Background: Machine learning (ML) is a promising methodology for classification and
prediction applications in healthcare. However, this method has not been practically …

Ensemble machine learning prediction of hyperuricemia based on a prospective health checkup population

Y Zhang, L Zhang, H Lv, G Zhang - Frontiers in Physiology, 2024 - frontiersin.org
Objectives: An accurate prediction model for hyperuricemia (HUA) in adults remain
unavailable. This study aimed to develop a stacking ensemble prediction model for HUA to …

[HTML][HTML] How can machine-learning methods assist in virtual screening for hyperuricemia? A healthcare machine-learning approach

D Ichikawa, T Saito, W Ujita, H Oyama - Journal of biomedical informatics, 2016 - Elsevier
Object Our purpose was to develop a new machine-learning approach (a virtual health
check-up) toward identification of those at high risk of hyperuricemia. Applying the system to …

The development and validation of a non-invasive prediction model of hyperuricemia based on modifiable risk factors: baseline findings of a health examination …

S Chen, W Han, L Kong, Q Li, C Yu, J Zhang, H He - Food & Function, 2023 - pubs.rsc.org
This study aims to establish a simple and non-invasive risk prediction model for
hyperuricemia in Chinese adults based on modifiable risk factors. In 2020–2021, the …

A simple prediction model of hyperuricemia for use in a rural setting

JC Shi, XH Chen, Q Yang, CM Wang, Q Huang… - Scientific Reports, 2021 - nature.com
Currently, the most widely used screening methods for hyperuricemia (HUA) involves
invasive laboratory tests, which are lacking in many rural hospitals in China. This study …

Prediction model of random forest for the risk of hyperuricemia in a Chinese basic health checkup test

Y Gao, S Jia, D Li, C Huang, Z Meng, Y Wang… - Bioscience …, 2021 - portlandpress.com
Objectives: The present study aimed to develop a random forest (RF) based prediction
model for hyperuricemia (HUA) and compare its performance with the conventional logistic …

Prediction of hyperuricemia in people taking low-dose aspirin using a machine learning algorithm: a cross-sectional study of the National Health and Nutrition …

B Zhu, L Yang, M Wu, Q Wu, K Liu, Y Li… - Frontiers in …, 2024 - frontiersin.org
Background: Hyperuricemia is a serious health problem related to not only gout but also
cardiovascular diseases (CVDs). Low-dose aspirin was reported to inhibit uric acid …

[HTML][HTML] Blood uric acid prediction with machine learning: Model development and performance comparison

MB Sampa, MN Hossain, MR Hoque… - JMIR medical …, 2020 - medinform.jmir.org
Background Uric acid is associated with noncommunicable diseases such as cardiovascular
diseases, chronic kidney disease, coronary artery disease, stroke, diabetes, metabolic …

A predictive model for hyperuricemia among type 2 diabetes mellitus patients in Urumqi, China

P Abudureyimu, Y Pang, L Huang, Q Luo, X Zhang… - BMC Public Health, 2023 - Springer
Background Patients with type 2 diabetes Mellitus (T2DM) are more likely to suffer from a
higher uric acid level in blood—hyperuricemia (HUA). There are no conclusive studies done …

Multimodal Machine Learning‐Based Marker Enables Early Detection and Prognosis Prediction for Hyperuricemia

L Zeng, P Ma, Z Li, S Liang, C Wu, C Hong… - Advanced …, 2024 - Wiley Online Library
Hyperuricemia (HUA) has emerged as the second most prevalent metabolic disorder
characterized by prolonged and asymptomatic period, triggering gout and metabolism …