Department of Psychology and Neuroscience, College of Arts and Sciences, University of North Carolina at Chapel Hill, Chapel Hill, North Carolina, United States of America.
Department of Biostatistical Sciences, Wake Forest School of Medicine, Winston-Salem, North Carolina, United States of America.
PLoS One. 2018 Mar 14;13(3):e0191981. doi: 10.1371/journal.pone.0191981. eCollection 2018.
Symptoms of complex illnesses such as cancer often present with a high degree of heterogeneity between patients. At the same time, there are often core symptoms that act as common drivers for other symptoms, such as fatigue leading to depression and cognitive dysfunction. These symptoms are termed bridge symptoms and when combined with heterogeneity in symptom presentation, are difficult to detect using traditional unsupervised clustering techniques. This article develops a method for identifying patient communities based on bridge symptoms termed concordance network clustering. An empirical study of breast cancer symptomatology is presented, and demonstrates the applicability of this method for identifying bridge symptoms.
复杂疾病(如癌症)的症状在患者之间往往存在高度异质性。同时,通常存在一些核心症状,这些症状是其他症状的共同驱动因素,例如疲劳导致抑郁和认知功能障碍。这些症状被称为桥接症状,当它们与症状表现的异质性相结合时,使用传统的无监督聚类技术很难检测到。本文提出了一种基于桥接症状的识别患者群体的方法,称为一致性网络聚类。对乳腺癌症状学进行了实证研究,证明了该方法识别桥接症状的适用性。