论文标题

一种基于生成的对抗网络的选择性合奏特征与表达合成(SE-CTES)方法及其在医疗保健中的应用

A Generative Adversarial Network-based Selective Ensemble Characteristic-to-Expression Synthesis (SE-CTES) Approach and Its Applications in Healthcare

论文作者

Li, Yuxuan, Lin, Ying, Liu, Chenang

论文摘要

研究特征和表达之间的因果关系在医疗保健分析中起着至关重要的作用。使用给定特征的表达式有效合成可以为健康风险管理和医疗决策做出巨大贡献。例如,从给定的治疗特征中预测患者的生理症状有助于预防疾病和个性化治疗策略设计。因此,这项研究的目的是根据给定特征有效合成表达式。但是,从特征到表达式的映射通常是从相对较低的尺寸空间到高维空间的映射,但是大多数现有方法(例如回归模型)无法有效地处理此类映射。此外,特征和表达之间的关系不仅包含确定性模式,还包含随机模式。为了应对这些挑战,本文提出了一种新型的选择性集合特性与表达合成(SE-CTES)方法,灵感来自生成对抗网络(GAN)。提出的方法的新颖性可以概括为三个方面:(1)基于GAN的深神经网络结构,以了解相对较低的维度映射到具有确定性和随机模式的高维映射的相对较低的尺寸映射; (2)认为基于GAN的架构中两个错误错误的权重有所不同,以减少培训过程中的学习偏见; (3)提出了一个选择性合奏学习框架,以减少预测偏差并改善合成稳定性。为了验证拟议方法的有效性,应用了广泛的数值模拟研究和现实世界中的医疗案例研究,结果表明该提出的方法非常有前途。

Investigating the causal relationships between characteristics and expressions plays a critical role in healthcare analytics. Effective synthesis for expressions using given characteristics can make great contributions to health risk management and medical decision-making. For example, predicting the resulting physiological symptoms on patients from given treatment characteristics is helpful for the disease prevention and personalized treatment strategy design. Therefore, the objective of this study is to effectively synthesize the expressions based on given characteristics. However, the mapping from characteristics to expressions is usually from a relatively low dimension space to a high dimension space, but most of the existing methods such as regression models could not effectively handle such mapping. Besides, the relationship between characteristics and expressions may contain not only deterministic patterns, but also stochastic patterns. To address these challenges, this paper proposed a novel selective ensemble characteristic-to-expression synthesis (SE-CTES) approach inspired by generative adversarial network (GAN). The novelty of the proposed method can be summarized into three aspects: (1) GAN-based architecture for deep neural networks are incorporated to learn the relatively low dimensional mapping to high dimensional mapping containing both deterministic and stochastic patterns; (2) the weights of the two mismatching errors in the GAN-based architecture are proposed to be different to reduce the learning bias in the training process; and (3) a selective ensemble learning framework is proposed to reduce the prediction bias and improve the synthesis stability. To validate the effectiveness of the proposed approach, extensive numerical simulation studies and a real-world healthcare case study were applied and the results demonstrated that the proposed method is very promising.

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