Assessment and risk prediction of frailty using texture-based muscle ultrasound image analysis and machine learning techniques.

Mech Ageing Dev

Department of Physiology, Universitat de València/INCLIVA, Avda. Blasco Ibáñez, 15, 46010 Valencia, Spain; INCLIVA Health Research Institute, Av/ de Menéndez y Pelayo, 4, 46010 Valencia, Spain; Center for Biomedical Network Research on Frailty and Healthy Aging (CIBERFES), CIBER-ISCIII, Valencia, Spain. Electronic address:

Published: October 2023

AI Article Synopsis

  • - The study assessed the effectiveness of texture-based analysis from muscle ultrasound images in identifying frailty and predicting related health risks over a two-year period in 101 participants.
  • - Researchers categorized participants based on frailty phenotype and applied statistical methods to extract and analyze 43 texture features from their thigh muscles.
  • - Results indicated that the models developed had moderate to good accuracy in predicting frailty and were able to identify increased comorbidity and mortality risks among pre-frail and frail individuals.

Article Abstract

The purpose of this study was to evaluate texture-based muscle ultrasound image analysis for the assessment and risk prediction of frailty phenotype. This retrospective study of prospectively acquired data included 101 participants who underwent ultrasound scanning of the anterior thigh. Participants were subdivided according to frailty phenotype and were followed up for two years. Primary and secondary outcome measures were death and comorbidity, respectively. Forty-three texture features were computed from the rectus femoris and the vastus intermedius muscles using statistical methods. Model performance was evaluated by computing the area under the receiver operating characteristic curve (AUC) while outcome prediction was evaluated using regression analysis. Models developed achieved a moderate to good AUC (0.67 ≤ AUC ≤ 0.79) for categorizing frailty. The stepwise multiple logistic regression analysis demonstrated that they correctly classified 70-87% of the cases. The models were associated with increased comorbidity (0.01 ≤ p ≤ 0.18) and were predictive of death for pre-frail and frail participants (0.001 ≤ p ≤ 0.016). In conclusion, texture analysis can be useful to identify frailty and assess risk prediction (i.e. mortality) using texture features extracted from muscle ultrasound images in combination with a machine learning approach.

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Source
http://dx.doi.org/10.1016/j.mad.2023.111860DOI Listing

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