Predicting Asthma Outcome Using Partial Least Square Regression and Artificial Neural Networks

E. Chatzimichail, E. Paraskakis, A. Rigas
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引用次数: 19

Abstract

The long-termsolution to the asthma epidemic is believed to be prevention and not treatment of the established disease. Most cases of asthma begin during the first years of life; thus the early determination of which young children will have asthma later in their life counts as an important priority. Artificial neural networks (ANN) have been already utilized in medicine in order to improve the performance of the clinical decision-making tools. In this study, a new computational intelligence technique for the prediction of persistent asthma in children is presented. By employing partial least square regression, 9 out of 48 prognostic factors correlated to the persistent asthma have been chosen. Multilayer perceptron and probabilistic neural networks topologies have been investigated in order to obtain the best prediction accuracy. Based on the results, it is shown that the proposed system is able to predict the asthma outcome with a success of 96.77%. The ANN, with which these high rates of reliability were obtained, will help the doctors to identify which of the young patients are at a high risk of asthma disease progression. Moreover, thismay lead to better treatment opportunities and hopefully better disease outcomes in adulthood.
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用偏最小二乘回归和人工神经网络预测哮喘预后
哮喘流行的长期解决方案被认为是预防而不是治疗既定疾病。大多数哮喘病例开始于生命的最初几年;因此,早期确定哪些幼儿在以后的生活中会患哮喘是一个重要的优先事项。为了提高临床决策工具的性能,人工神经网络(ANN)已被应用于医学领域。在这项研究中,提出了一种新的计算智能技术来预测儿童持续性哮喘。通过偏最小二乘回归,从48个与持续性哮喘相关的预后因素中选择了9个。为了获得最佳的预测精度,研究了多层感知器和概率神经网络拓扑结构。结果表明,该系统预测哮喘预后的成功率为96.77%。获得高可靠性的人工神经网络将帮助医生确定哪些年轻患者有哮喘疾病进展的高风险。此外,这可能会带来更好的治疗机会,并有望在成年后带来更好的疾病结局。
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