论文标题
早产儿的非参数预测中的计算挑战
Computational Challenges in Non-parametric Prediction of Bradycardia in Preterm Infants
论文作者
论文摘要
怀孕37周之前出生的婴儿被认为是早产。通常,必须严格监测早产儿,因为它们非常容易受到健康问题(低血氧水平),呼吸暂停,呼吸系统疾病,心脏问题,神经系统问题,以及长期健康问题的机会,例如大脑麻痹,哮喘和猝死死亡综合症。早产儿的主要健康并发症之一是心动过缓 - 定义为比预期的心率慢,通常比每分钟60次跳动。心动过缓通常伴有低氧气水平,并且可能在早产婴儿中引起其他长期健康问题。提出了一种非参数方法来预测心动过缓发作的方法。该方法没有对数据的先验知识,并使用内核密度估计来预测心动过缓事件的未来发作。预处理数据,然后分析以检测ECG信号中的峰,然后实现不同的内核以估计数据的共享基础分布。使用各种指标评估了算法的性能,还讨论了克服它们的计算挑战和方法。 It is observed that the performance of the algorithm with regards to the kernels used are consistent with the theoretical performance of the kernel as presented in a previous work.理论方法在这项工作中也已经自动化,并且已经解决了各种实施挑战。
Infants born before 37 weeks of pregnancy are considered to be preterm. Typically, preterm infants have to be strictly monitored since they are highly susceptible to health problems like hypoxemia (low blood oxygen level), apnea, respiratory issues, cardiac problems, neurological problems as well as an increased chance of long-term health issues such as cerebral palsy, asthma and sudden infant death syndrome. One of the leading health complications in preterm infants is bradycardia - which is defined as the slower than expected heart rate, generally beating lower than 60 beats per minute. Bradycardia is often accompanied by low oxygen levels and can cause additional long term health problems in the premature infant. The implementation of a non-parametric method to predict the onset of bradycardia is presented. This method assumes no prior knowledge of the data and uses kernel density estimation to predict the future onset of bradycardia events. The data is preprocessed, and then analyzed to detect the peaks in the ECG signals, following which different kernels are implemented to estimate the shared underlying distribution of the data. The performance of the algorithm is evaluated using various metrics and the computational challenges and methods to overcome them are also discussed. It is observed that the performance of the algorithm with regards to the kernels used are consistent with the theoretical performance of the kernel as presented in a previous work. The theoretical approach has also been automated in this work and the various implementation challenges have been addressed.