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Evolutionary Multiobjective Clustering and Its Applications to Patient Stratification

机译:进化多目标聚类及其在患者分层中的应用

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Patient stratification has a major role in enabling efficient and personalized medicine. An important task in patient stratification is to discover disease subtypes for effective treatment. To achieve this goal, the research on clustering algorithms for patient stratification has brought attention from both academia and medical community over the past decades. However, existing clustering algorithms suffer from realistic restrictions such as experimental noises, high dimensionality, and poor interpretability. In particular, the existing clustering algorithms usually determine clustering quality using only one internal evaluation function. Unfortunately, it is obvious that one internal evaluation function is hard to be fitted and robust for all datasets. Therefore, in this paper, a novel multiobjective framework called multiobjective clustering algorithm by fast search and find of density peaks is proposed to address those limitations altogether. In the proposed framework, a parameter candidate population is evolved under multiple objectives to select features and evaluate clustering densities automatically. To guide the multiobjective evolution, five cluster validity indices including compactness, separation, Calinski-Harabasz index, Davies-Bouldin index, and Dunn index, are chosen as the objective functions, capturing multiple characteristics of the evolving clusters. Multiobjective differential evolution algorithm based on decomposition is adopted to optimize those five objective functions simultaneously. To demonstrate its effectiveness, extensive experiments have been conducted, comparing the proposed algorithm with 45 algorithms including nine state-of-the-art clustering algorithms, five multiobjective evolutionary algorithms, and 31 baseline algorithms under different objective subsets on 94 datasets featuring 35 real patient stratification datasets, 55 synthetic datasets based on a real human transcription regulation network model, and four other medical datasets. The numerical results reveal that the proposed algorithm can achieve better or competitive solutions than the others. Besides, time complexity analysis, convergence analysis, and parameter analysis are conducted to demonstrate the robustness of the proposed algorithm from different perspectives.
机译:患者分层在实现高效个性化医疗方面起着重要作用。患者分层的一项重要任务是发现有效治疗的疾病亚型。为了实现这一目标,过去几十年来,针对患者分层的聚类算法研究引起了学术界和医学界的关注。然而,现有的聚类算法受到现实的限制,例如实验噪声,高维数和可解释性差。特别地,现有的聚类算法通常仅使用一个内部评估函数来确定聚类质量。不幸的是,很明显,一个内部评估函数很难适用于所有数据集,并且很健壮。因此,本文提出了一种新的多目标框架,即通过快速搜索和发现密度峰值的多目标聚类算法来解决这些局限性。在提出的框架中,参数候选种群在多个目标下得到演化,以选择特征并自动评估聚类密度。为了指导多目标进化,选择了五个集群有效性指标,包括紧密度,分离度,Calinski-Harabasz指数,Davies-Bouldin指数和Dunn指数作为目标函数,捕获了不断发展的集群的多个特征。采用基于分解的多目标差分进化算法同时优化这五个目标函数。为了证明其有效性,已进行了广泛的实验,将所提出的算法与45种算法进行了比较,其中包括9种最新的聚类算法,5种多目标进化算法和31种基线算法,这些数据在94个具有35个真实患者的数据集的不同目标子集下分层数据集,基于真实人类转录调控网络模型的55个合成数据集以及其他四个医学数据集。数值结果表明,所提出的算法可以取得比其他算法更好的解决方案。此外,还进行了时间复杂度分析,收敛性分析和参数分析,从不同角度证明了该算法的鲁棒性。

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