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Developing a non-invasive algorithm for the diagnosis of steatotic liver disease in primary healthcare: a retrospective cohort study

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Peer-reviewed

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Abstract

Objective: This study aims to develop an algorithm to detect steatotic liver disease (SLD) risk in low-resource settings without requiring imaging. Methods: This retrospective cohort study included 826 measurements from 444 participants aged 45–60 years who participated in the MAUCO+ study. Data included ultrasound, vibration-controlled transient elastography (VCTE), anthropometrics and biomarkers. Logistic multivariable regression was used to develop two predictive models for SLD risk, with and without ultrasound, using VCTE as gold standard. Missing data were minimal and retained in the analysis, as their proportion was not statistically relevant. Predictive performance (sensitivity, specificity, positive predictive value and negative predictive value) was compared with the clinically used Fatty Liver Index (FLI). Results: The algorithm without ultrasound achieved a sensitivity of 81.1% (95% CI 71.7% to 88.4%) and specificity of 71.4% (95% CI 57.9% to 80.4%). The model with ultrasound demonstrated a sensitivity of 91.5% (95% CI 84.1% to 95.6%) and specificity of 70% (95% CI 59.9% to 80.7%). FLI showed an area under the curve (AUC) of 0.762, while our models achieved higher AUCs: 0.878 (with ultrasound) and 0.794 (without ultrasound). Discussion: Our models offer screening tools for SLD in low-resource primary care. The model without ultrasound outperformed FLI, making it a feasible alternative where imaging is unavailable. The ultrasound-based model demonstrated higher performance, underscoring the value of ultrasound when it is accessible. Integrating these algorithms into preventive programmes could improve early diagnosis, especially in populations with a high burden of obesity and diabetes. Conclusions: We developed two predictive models for SLD screening in a Chilean cohort. Both showed strong performance and potential for implementation in primary care to support early detection and better disease management.

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Peer reviewed: True


Acknowledgements: The success of this investigation would not have been possible without the exceptional teamwork of the field staff who oversaw the recruitment, interviews and data collection. Special thanks to Ricardo Erazo, Cristian Herrera, Ian Reyes, Matias Pozo, Miguel Carrera, Carolina Riveros and Marjorie Barrera from the Santiago team; Pia Venegas and Jenifer Loyola for coordinating fieldwork; and Paola Correa, who obtained the ultrasound tests. Appreciation is also extended to all the participants who agreed to be part of the MAUCO cohort and have been involved in this initiative for the past few years.


Publication status: Published

Journal Title

BMJ Health & Care Informatics

Conference Name

Journal ISSN

2632-1009

Volume Title

32

Publisher

BMJ Publishing Group

Rights and licensing

Except where otherwised noted, this item's license is described as https://creativecommons.org/licenses/by-nc/4.0/
Sponsorship
Fondo de Financiamiento de Centros de Investigación en Áreas Prioritarias (15130011)
Agencia Nacional de Investigación y Desarrollo (1010246)
Fondo Nacional de Desarrollo Científico y Tecnológico (1211879, 1212066, 1241450)