Machine learning models including insulin resistance indexes for predicting liver stiffness in United States population: Data from NHANES

BackgroundPrevention and treatment of liver fibrosis at an early stage is of great prognostic importance, whereas changes in liver stiffness are often overlooked in patients before the onset of obvious clinical symptoms. Recognition of liver fibrosis at an early stage is therefore essential.Objectiv...

Full description

Saved in:
Bibliographic Details
Main Authors: Kexing Han (Author), Kexuan Tan (Author), Jiapei Shen (Author), Yuting Gu (Author), Zilong Wang (Author), Jiayu He (Author), Luyang Kang (Author), Weijie Sun (Author), Long Gao (Author), Yufeng Gao (Author)
Format: Book
Published: Frontiers Media S.A., 2022-09-01T00:00:00Z.
Subjects:
Online Access:Connect to this object online.
Tags: Add Tag
No Tags, Be the first to tag this record!

MARC

LEADER 00000 am a22000003u 4500
001 doaj_f74b17640d9d4efdbc1e0d15a3e14015
042 |a dc 
100 1 0 |a Kexing Han  |e author 
700 1 0 |a Kexuan Tan  |e author 
700 1 0 |a Jiapei Shen  |e author 
700 1 0 |a Yuting Gu  |e author 
700 1 0 |a Zilong Wang  |e author 
700 1 0 |a Jiayu He  |e author 
700 1 0 |a Luyang Kang  |e author 
700 1 0 |a Weijie Sun  |e author 
700 1 0 |a Long Gao  |e author 
700 1 0 |a Yufeng Gao  |e author 
245 0 0 |a Machine learning models including insulin resistance indexes for predicting liver stiffness in United States population: Data from NHANES 
260 |b Frontiers Media S.A.,   |c 2022-09-01T00:00:00Z. 
500 |a 2296-2565 
500 |a 10.3389/fpubh.2022.1008794 
520 |a BackgroundPrevention and treatment of liver fibrosis at an early stage is of great prognostic importance, whereas changes in liver stiffness are often overlooked in patients before the onset of obvious clinical symptoms. Recognition of liver fibrosis at an early stage is therefore essential.ObjectiveAn XGBoost machine learning model was constructed to predict participants' liver stiffness measures (LSM) from general characteristic information, blood test metrics and insulin resistance-related indexes, and to compare the fit efficacy of different datasets for LSM.MethodsAll data were obtained from the National Health and Nutrition Examination Survey (NHANES) for the time interval January 2017 to March 2020. Participants' general characteristics, Liver Ultrasound Transient Elastography (LUTE) information, indicators of blood tests and insulin resistance-related indexes were collected, including homeostasis model assessment of insulin resistance (HOMA-IR) and metabolic score for insulin resistance (METS-IR). Three datasets were generated based on the above information, respectively named dataset A (without the insulin resistance-related indexes as predictor variables), dataset B (with METS-IR as a predictor variable) and dataset C (with HOMA-IR as a predictor variable). XGBoost regression was used in the three datasets to construct machine learning models to predict LSM in participants. A random split was used to divide all participants included in the study into training and validation cohorts in a 3:1 ratio, and models were developed in the training cohort and validated with the validation cohort.ResultsA total of 3,564 participants were included in this study, 2,376 in the training cohort and 1,188 in the validation cohort, and all information was not statistically significantly different between the two cohorts (p > 0.05). In the training cohort, datasets A and B both had better predictive efficacy than dataset C for participants' LSM, with dataset B having the best fitting efficacy [±1.96 standard error (SD), (-1.49,1.48) kPa], which was similarly validated in the validation cohort [±1.96 SD, (-1.56,1.56) kPa].ConclusionsXGBoost machine learning models built from general characteristic information and clinically accessible blood test indicators are practicable for predicting LSM in participants, and a dataset that included METS-IR as a predictor variable would improve the accuracy and stability of the models. 
546 |a EN 
690 |a liver cirrhosis 
690 |a liver stiffness measurement (LSM) 
690 |a insulin resistance 
690 |a HOMA-IR 
690 |a METS-IR 
690 |a machine learning model 
690 |a Public aspects of medicine 
690 |a RA1-1270 
655 7 |a article  |2 local 
786 0 |n Frontiers in Public Health, Vol 10 (2022) 
787 0 |n https://www.frontiersin.org/articles/10.3389/fpubh.2022.1008794/full 
787 0 |n https://doaj.org/toc/2296-2565 
856 4 1 |u https://doaj.org/article/f74b17640d9d4efdbc1e0d15a3e14015  |z Connect to this object online.