Department of Cardiology, General Hospital "Prim. Dr. Abdulah Nakas", 71000 Sarajevo, Bosnia and Herzegovina,
Psychiatr Danub. 2021 Dec;33(Suppl 13):236-246.
The most common clinical sign in pediatric cardiology is heart murmur, which can often be uncharacteristic. The aim of this research was to present the results of development of a classifier based on machine learning algorithms whose purpose is to classify organic murmur that occur in congenital heart defect (CHD). The study is based on the data collected at Pediatric Clinic, Clinical Center University of Sarajevo during three-year period. Totally, 116 children aged from 1 to 15 years were enrolled in the study. Input parameters for classification are parameters obtained during basic physical examination and assessment of patient. First, analysis of relevance of the feature for classification was done using InfoGain, GainRatio, Relief and Correlation method. In the second step, classifiers based on Naive Bayes, Logistic Regression, Decision Tree, Random Forest and Support Vector Machine were developed and compared by performance. The results of this research suggest that high accuracy (>90%) classifier for detection of CHD based on 16 parameters can be developed. Such classifier with appropriate user interface would be valuable diagnostic aid to doctors and pediatricians at primary healthcare level for diagnostic of heart murmurs.
儿科心脏病学中最常见的临床征象是心脏杂音,其通常无特征性。本研究旨在介绍基于机器学习算法的分类器的开发结果,该分类器的目的是对先天性心脏病(CHD)中发生的器质性杂音进行分类。该研究基于在萨拉热窝大学临床中心儿科诊所收集的三年数据。共有 116 名年龄在 1 至 15 岁的儿童参加了这项研究。分类的输入参数是在基本体检和患者评估期间获得的参数。首先,使用 InfoGain、GainRatio、Relief 和 Correlation 方法对特征的相关性进行分析。在第二步中,基于朴素贝叶斯、逻辑回归、决策树、随机森林和支持向量机开发了分类器,并通过性能进行了比较。这项研究的结果表明,可以开发出一种基于 16 个参数的用于检测 CHD 的高精度(>90%)分类器。这样的分类器,如果有适当的用户界面,将成为初级保健水平的医生和儿科医生在诊断心脏杂音方面有价值的诊断辅助工具。