Abstract

This paper presents a study based on data analysis of the sarcopenia level in older adults. Sarcopenia is a prevalent pathology in adults of around 50 years of age, whereby the muscle mass decreases by 1 to 2% a year, and muscle strength experiences an annual decrease of 1.5% between 50 and 60 years of age, subsequently increasing by 3% each year. The World Health Organisation estimates that 5–13% of individuals of between 60 and 70 years of age and 11–50% of persons of 80 years of age or over have sarcopenia. This study was conducted with 166 patients and 99 variables. Demographic data was compiled including age, gender, place of residence, schooling, marital status, level of education, income, profession, and financial support from the State of Baja California, and biochemical parameters such as glycemia, cholesterolemia, and triglyceridemia were determined. A total of 166 patients took part in the study, with an average age of 77.24 years. The purpose of the study was to provide an automatic classifier of sarcopenia level in older adults using artificial intelligence in addition to identifying the weight of each variable used in the study. We used machine learning techniques in this work, in which 10 classifiers were employed to assess the variables and determine which would provide the best results, namely, Nearest Neighbors (3), Linear SVM (Support Vector Machines) (C = 0.025), RBF (Radial Basis Function) SVM (gamma = 2, C = 1), Gaussian Process (RBF (1.0)), Decision Tree (max_depth = 3), Random Forest (max_depth=3, n_estimators = 10), MPL (Multilayer Perceptron) (alpha = 1), AdaBoost, Gaussian Naive Bayes, and QDA (Quadratic Discriminant Analysis). Feature selection determined by the mean for the variable ranking suggests that Age, Systolic Arterial Hypertension (HAS), Mini Nutritional Assessment (MNA), Number of chronic diseases (ECNumber), and Sodium are the five most important variables in determining the sarcopenia level, and are thus of great importance prior to establishing any treatment or preventive measure. Analysis of the relationships existing between the presence of the variables and classifiers used in moderate and severe sarcopenia revealed that the sarcopenia level using the RBF SVM classifier with Age, HAS, MNA, ECNumber, and Sodium variables has 82′5 accuracy, a 90′2 F1, and 82′8 precision.

Highlights

  • Sarcopenia is a process that is directly related to age, tends to occur frequently, and entails major personal and financial costs

  • We have created an algorithm that is used with machine learning to determine the variables deemed significant for ascertaining whether an individual has moderate or severe sarcopenia

  • The following classifiers were used for diagnostic purposes in our study: Nearest Neighbors, Linear Support Vector Machine (SVM), RBF

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Summary

Introduction

Sarcopenia is a process that is directly related to age, tends to occur frequently, and entails major personal and financial costs. It causes a reduction in muscle tissue, loss of strength and performance, and replacement of muscle fibres with fat tissue. It may give rise to disorders in terms of mobility, a greater risk of falls and fractures, deterioration in the capacity to carry out day-to-day activities, disability, loss of independence, and greater risk of death [1]. Some indicators used to determine what sarcopenia entails are calves with a circumference of less than 31 cm and loss of hand grip—this needs. Res. Public Health 2019, 16, 3275; doi:10.3390/ijerph16183275 www.mdpi.com/journal/ijerph

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