Machine Learning Techniques for Canine Myxomatous Mitral Valve Disease Classification: Integrating Anamnesis, Quality of Life Survey, and Physical Examination

Author:

Engel-Manchado Javier1234,Montoya-Alonso José Alberto1ORCID,Doménech Luis5,Monge-Utrilla Oscar6ORCID,Reina-Doreste Yamir7,Matos Jorge Isidoro1ORCID,Caro-Vadillo Alicia8,García-Guasch Laín1910ORCID,Redondo José Ignacio11ORCID

Affiliation:

1. Internal Medicine, Veterinary Medicine and Therapeutic Research Group, Faculty of Veterinary Science, Research Institute of Biomedical and Health Sciences (IUIBS), University of Las Palmas de Gran Canaria, 35017 Las Palmas de Gran Canaria, Spain

2. Cardiology Service, AniCura Benipeixcar Veterinary Hospital, 46009 Valencia, Spain

3. Cardiology Service, AniCura San Vicente Veterinary Hospital, 03690 Alicante, Spain

4. Cardiology Service, AniCura San Francisco Veterinary Hospital, 12500 Vinaròs, Spain

5. Department of Mathematics, Physics and Technological Sciences, Higher School of Technical Education, Cardenal Herrera-CEU University, 46115 Valencia, Spain

6. Cardiology Service, Mediterráneo Veterinary Hospital, Evidensia IVC, 28007 Madrid, Spain

7. Cardiology Service, IVC Evidensia, Los Tarahales Veterinary Hospital, 35019 Las Palmas de Gran Canaria, Spain

8. Department of Animal Medicine and Surgery, Faculty of Veterinary Medicine, Complutense University, 28040 Madrid, Spain

9. Cardiology & Respiratory Service, IVC Evidensia Molins Veterinary Hospital, 08620 Barcelona, Spain

10. Cardiology Service, IVC Evidensia del Mar Veterinary Hospital, 08005 Barcelona, Spain

11. Department of Animal Medicine and Surgery, Faculty of Veterinary Medicine, Cardenal Herrera-CEU University, 46115 Valencia, Spain

Abstract

Myxomatous mitral valve disease (MMVD) is a prevalent canine cardiac disease typically diagnosed and classified using echocardiography. However, accessibility to this technique can be limited in first-opinion clinics. This study aimed to determine if machine learning techniques can classify MMVD according to the ACVIM classification (B1, B2, C, and D) through a structured anamnesis, quality of life survey, and physical examination. This report encompassed 23 veterinary hospitals and assessed 1011 dogs for MMVD using the FETCH-Q quality of life survey, clinical history, physical examination, and basic echocardiography. Employing a classification tree and a random forest analysis, the complex model accurately identified 96.9% of control group dogs, 49.8% of B1, 62.2% of B2, 77.2% of C, and 7.7% of D cases. To enhance clinical utility, a simplified model grouping B1 and B2 and C and D into categories B and CD improved accuracy rates to 90.8% for stage B, 73.4% for stages CD, and 93.8% for the control group. In conclusion, the current machine-learning technique was able to stage healthy dogs and dogs with MMVD classified into stages B and CD in the majority of dogs using quality of life surveys, medical history, and physical examinations. However, the technique faces difficulties differentiating between stages B1 and B2 and determining between advanced stages of the disease.

Funder

Research Institute of Biomedical and Health Sciences

Universidad de Las Palmas de Gran Canaria

Publisher

MDPI AG

Reference65 articles.

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