Performance Evaluation of Machine Learning Algorithms for Sarcopenia Diagnosis in Older Adults

Author:

Ozgur Su12ORCID,Altinok Yasemin Atik3ORCID,Bozkurt Devrim4ORCID,Saraç Zeliha Fulden5ORCID,Akçiçek Selahattin Fehmi5ORCID

Affiliation:

1. Department of Biostatistics and Medical Informatics, Faculty of Medicine, Ege University, 35040 Izmir, Turkey

2. Translational Pulmonary Research Center—EgeSAM, Ege University, 35040 Izmir, Turkey

3. Department of Pediatric Endocrinology, Faculty of Medicine, Ege University, 35040 Izmir, Turkey

4. Department of Internal Medicine, Faculty of Medicine, Ege University, 35040 Izmir, Turkey

5. Division of Geriatrics, Department of Internal Medicine, Faculty of Medicine, Ege University, 35040 Izmir, Turkey

Abstract

Background: Sarcopenia is a progressive and generalized skeletal muscle disorder. Early diagnosis is necessary to reduce the adverse effects and consequences of sarcopenia, which can help prevent and manage it in a timely manner. The aim of this study was to identify the important risk factors for sarcopenia diagnosis and compare the performance of machine learning (ML) algorithms in the early detection of potential sarcopenia. Methods: A cross-sectional design was employed for this study, involving 160 participants aged 65 years and over who resided in a community. ML algorithms were applied by selecting 11 features—sex, age, BMI, presence of hypertension, presence of diabetes mellitus, SARC-F score, MNA score, calf circumference (CC), gait speed, handgrip strength (HS), and mid-upper arm circumference (MUAC)—from a pool of 107 clinical variables. The results of the three best-performing algorithms were presented. Results: The highest accuracy values were achieved by the ALL (male + female) model using LightGBM (0.931), random forest (RF; 0.927), and XGBoost (0.922) algorithms. In the female model, the support vector machine (SVM; 0.939), RF (0.923), and k-nearest neighbors (KNN; 0.917) algorithms performed the best. Regarding variable importance in the ALL model, the last HS, sex, BMI, and MUAC variables had the highest values. In the female model, these variables were HS, age, MUAC, and BMI, respectively. Conclusions: Machine learning algorithms have the ability to extract valuable insights from data structures, enabling accurate predictions for the early detection of sarcopenia. These predictions can assist clinicians in the context of predictive, preventive, and personalized medicine (PPPM).

Funder

Ege University Office of Scientific Research Projects

Publisher

MDPI AG

Subject

Health Information Management,Health Informatics,Health Policy,Leadership and Management

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