用于犬肌瘤性二尖瓣疾病分类的机器学习技术:综合病史、生活质量调查和体格检查

Javier Engel-Manchado, J. A. Montoya-Alonso, Luis Doménech, Oscar Monge-Utrilla, Yamir Reina-Doreste, J. Matos, A. Caro-Vadillo, L. García-Guasch, J. I. Redondo
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摘要

肌瘤性二尖瓣病(MMVD)是一种常见的犬心脏疾病,通常使用超声心动图进行诊断和分类。然而,在初诊诊所中,这种技术的可及性可能有限。本研究旨在确定机器学习技术能否通过结构化的病史、生活质量调查和体格检查,根据 ACVIM 分级(B1、B2、C 和 D)对 MMVD 进行分类。本报告涵盖 23 家兽医院,使用 FETCH-Q 生活质量调查、临床病史、体格检查和基本超声心动图对 1011 只犬进行了 MMVD 评估。通过分类树和随机森林分析,复杂模型准确识别了 96.9% 的对照组犬只,49.8% 的 B1 级犬只,62.2% 的 B2 级犬只,77.2% 的 C 级犬只和 7.7% 的 D 级犬只。为了提高临床实用性,简化模型将 B1 和 B2 以及 C 和 D 分为 B 和 CD 两类,从而将 B 期的准确率提高到 90.8%,CD 期的准确率提高到 73.4%,对照组的准确率提高到 93.8%。总之,目前的机器学习技术能够利用生活质量调查、病史和体格检查将大多数健康犬和患有 MMVD 的犬分为 B 期和 CD 期。但是,该技术在区分 B1 期和 B2 期以及确定疾病晚期方面存在困难。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Techniques for Canine Myxomatous Mitral Valve Disease Classification: Integrating Anamnesis, Quality of Life Survey, and Physical Examination
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.
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