The Nested Structure of Cancer Symptoms

OBJECTIVE Although many cancer patients experience multiple concurrent symptoms, most studies have either focused on the analysis of single symptoms, or have used methods such as factor analysis that make a priori assumptions about how the data is structured. This article addresses both limitations by first visually exploring the data to identify patterns in the co-occurrence of multiple symptoms, and then using those insights to select and develop quantitative measures to analyze and validate the results. METHODS We used networks to visualize how 665 cancer patients reported 18 symptoms, and then quantitatively analyzed the observed patterns using degree of symptom overlap between patients, degree of symptom clustering using network modularity, clustering of symptoms based on agglomerative hierarchical clustering, and degree of nestedness of the symptoms based on the most frequently co-occurring symptoms for different sizes of symptom sets. These results were validated by assessing the statistical significance of the quantitative measures through comparison with random networks of the same size and distribution. RESULTS The cancer symptoms tended to co-occur in a nested structure, where there was a small set of symptoms that co-occurred in many patients, and progressively larger sets of symptoms that co-occurred among a few patients. CONCLUSIONS These results suggest that cancer symptoms co-occur in a nested pattern as opposed to distinct clusters, thereby demonstrating the value of exploratory network analyses to reveal complex relationships between patients and symptoms. The research also extends methods for exploring symptom co-occurrence, including methods for quantifying the degree of symptom overlap and for examining nested co-occurrence in co-occurrence data. Finally, the analysis also suggested implications for the design of systems that assist in symptom assessment and management. The main limitation of the study was that only one dataset was considered, and future studies should attempt to replicate the results in new data.

[1]  B. Given,et al.  Predictors of pain and fatigue in the year following diagnosis among elderly cancer patients. , 2001, Journal of pain and symptom management.

[2]  H. Thaler,et al.  The Memorial Symptom Assessment Scale Short Form (MSAS‐SF) , 2000, Cancer.

[3]  Mark E. J. Newman,et al.  The Structure and Function of Complex Networks , 2003, SIAM Rev..

[4]  D. Walsh,et al.  Cancer symptom clusters—a dynamic construct , 2007, Supportive Care in Cancer.

[5]  M. Dodd,et al.  Symptom clusters: the new frontier in symptom management research. , 2004, Journal of the National Cancer Institute. Monographs.

[6]  Daniela Raijman,et al.  Analysis of Biological Networks : Network Motifs , 2006 .

[7]  N. Christakis,et al.  The Spread of Obesity in a Large Social Network Over 32 Years , 2007, The New England journal of medicine.

[8]  Edward M. Reingold,et al.  Graph drawing by force‐directed placement , 1991, Softw. Pract. Exp..

[9]  M. Dodd,et al.  Mood states of oncology outpatients: does pain make a difference? , 1995, Journal of pain and symptom management.

[10]  J. de Haes,et al.  Measuring psychological and physical distress in cancer patients: structure and application of the Rotterdam Symptom Checklist. , 1990, British Journal of Cancer.

[11]  C. Cleeland,et al.  Assessing symptom distress in cancer patients: the M.D. Anderson Symptom Inventory. , 2000, Cancer.

[12]  Manfred Stommel,et al.  Symptom clusters in elderly patients with lung cancer. , 2004, Oncology nursing forum.

[13]  L. Tulman,et al.  Symptom Clusters: Concept Analysis and Clinical Implications for Cancer Nursing , 2005, Cancer nursing.

[14]  D. Walsh,et al.  The symptoms of advanced cancer: relationship to age, gender, and performance status in 1,000 patients , 2000, Supportive Care in Cancer.

[15]  Roger Guimerà,et al.  Module identification in bipartite and directed networks. , 2007, Physical review. E, Statistical, nonlinear, and soft matter physics.

[16]  D. Walsh,et al.  Symptoms and prognosis in advanced cancer , 2002, Supportive Care in Cancer.

[17]  Lada A. Adamic,et al.  Scatter Networks: A New Approach for Analyzing Information Scatter on the Web , 2006, ArXiv.

[18]  C. Cleeland,et al.  Assessing symptom distress in cancer patients , 2000 .

[19]  M. Wallhagen,et al.  Differences in mood states, health status, and caregiver strain between family caregivers of oncology outpatients with and without cancer-related pain. , 1997, Journal of pain and symptom management.

[20]  Trevor Hastie,et al.  The Elements of Statistical Learning , 2001 .

[21]  Mei-Ling Chen,et al.  Symptom clusters in cancer patients. , 2006, Supportive Care in Cancer.

[22]  B. Thürlimann,et al.  Fatigue and menopausal symptoms in women with breast cancer undergoing hormonal cancer treatment. , 2006, Annals of oncology : official journal of the European Society for Medical Oncology.

[23]  L. Nail,et al.  Symptom cluster research: conceptual, design, measurement, and analysis issues. , 2006, Journal of pain and symptom management.

[24]  E. Chow,et al.  Symptom clusters in cancer patients: a review of the literature , 2007, Current oncology.

[25]  S. Paul,et al.  Symptom clusters and their effect on the functional status of patients with cancer. , 2001, Oncology nursing forum.

[26]  Alla Sikorskii,et al.  Symptom management for cancer patients: a trial comparing two multimodal interventions. , 2007, Journal of pain and symptom management.

[27]  C. Miaskowski Gender differences in pain, fatigue, and depression in patients with cancer. , 2004, Journal of the National Cancer Institute. Monographs.

[28]  Vladimir Batagelj,et al.  Pajek - Analysis and Visualization of Large Networks , 2001, Graph Drawing Software.

[29]  Declan Walsh,et al.  Symptom clustering in advanced cancer , 2006, Supportive Care in Cancer.

[30]  J. Piette Interactive voice response systems in the diagnosis and management of chronic disease. , 2000, The American journal of managed care.

[31]  J. Piette Enhancing support via interactive technologies , 2002, Current diabetes reports.

[32]  D. Battistutta,et al.  Multivariate methods to identify cancer-related symptom clusters. , 2009, Research in nursing & health.

[33]  David A. Williams,et al.  Subgrouping of fibromyalgia patients on the basis of pressure-pain thresholds and psychological factors. , 2003, Arthritis and rheumatism.