首页> 外文会议>Computing in Cardiology 2012.;vol. 39. >A machine learning approach for LQT1 vs LQT2 discrimination
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A machine learning approach for LQT1 vs LQT2 discrimination

机译:LQT1与LQT2判别的机器学习方法

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摘要

Long QT syndrome (LQT) is a congenital disease caused by a mutation of genes that leads to a distortion and a prolongation of the T-wave on standard ECG. The present study proposes an algorithm to automatically discriminate between patients with type 1 or type 2 LQT syndrom. The core of the method is the modeling of the T-wave recomputed on its principal lead by a single parameterized function named Bi-Gaussian Function (BGF). From all the features computed from this model, a statistical analysis was performed to select only the most relevant ones for the discrimination. A classifier was then designed through a Linear Discriminant Analysis (LDA). A database composed of 410 LQTS patients whose genotype is known was used to train the classifier and evaluate its performances.
机译:长QT综合征(LQT)是由基因突变引起的先天性疾病,该基因突变导致标准ECG的T波扭曲和延长。本研究提出了一种算法,可自动区分1型或2型LQT综合征患者。该方法的核心是通过名为Bi-Gaussian Function(BGF)的单个参数化函数对在其主要导联上重新计算的T波进行建模。从此模型计算出的所有特征中,进行统计分析以仅选择最相关的特征进行区分。然后通过线性判别分析(LDA)设计分类器。数据库由410名基因型已知的LQTS患者组成,用于训练分类器并评估其性能。

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