Tuning a Cancer Patient Typology Based on Emergency Department Visits

There has been considerable research on developing symptom clusters for cancer patients but finding a consistent and replicable typology of patients in terms of the kinds of symptoms they experience remains elusive (e.g., [1]). One reason for lack of consensus may be that analyses are unfocused, and use different combinations of clustering variables. This paper identifies subgroups of similar cancer patients within a sample of 18,535 patients, based on the Edmonton Symptom Assessment System (ESAS) and also a set of inpatient and outpatient variables using linked administrative sources of Ontario healthcare data. K-means cluster analysis was performed on cancer patients having only one primary cancer type, and who had at least one emergency department (ED) visit. Only variables that had a Pearson correlation of at least 0.1 with the number of days until visiting an ED, after an assessment, were included in the cluster analysis. While information about next emergency department visit was not included as a clustering variable, the number of patient types was chosen so as to minimize the mean absolute error of predictions of next emergency department visits by cancer patients. The next emergency department visit, after the last assessment date of each patient, was predicted for each cluster solution. The cluster solution with maximum accuracy/minimum MAE was used to derive the final set of patient types. With the help of physicians, and guided by the results of these analyses, a description of each patient type was created. Based on our results we grouped cancer patients into four types that differ in terms of type of cancer, stage of cancer, and symptomology. Implications for symptom management and reduction of ED visits are discussed.

[1]  Andrea Barsevick,et al.  Defining the Symptom Cluster: How Far Have We Come? , 2016, Seminars in oncology nursing.

[2]  Eric Marcon,et al.  Early Index for Detection of Pediatric Emergency Department Crowding , 2015, IEEE Journal of Biomedical and Health Informatics.

[3]  Wenli Zhang,et al.  Predicting Asthma-Related Emergency Department Visits Using Big Data , 2015, IEEE Journal of Biomedical and Health Informatics.

[4]  B. Naliboff,et al.  Multidimensional subgroups in migraine: differential treatment outcome to a pain medicine program. , 2003, Pain medicine.

[5]  Jiayu Zhou,et al.  Multi-task Survival Analysis , 2017, 2017 IEEE International Conference on Data Mining (ICDM).

[6]  Eduardo Bruera,et al.  The Edmonton Symptom Assessment System (ESAS): A Simple Method for the Assessment of Palliative Care Patients , 1991, Journal of palliative care.

[7]  Mircea Cinteza,et al.  A multifaceted intervention to improve treatment with oral anticoagulants in atrial fibrillation (IMPACT-AF): an international, cluster-randomised trial , 2017, The Lancet.

[8]  Li Luo,et al.  Modeling the Length of Stay of Respiratory Patients in Emergency Department Using Coxian Phase-Type Distributions With Covariates , 2018, IEEE Journal of Biomedical and Health Informatics.

[9]  Lisa Barbera,et al.  Why do patients with cancer visit the emergency department near the end of life? , 2010, Canadian Medical Association Journal.

[10]  Yan Li,et al.  Poisson-Markov Mixture Model and Parallel Algorithm for Binning Massive and Heterogenous DNA Sequencing Reads , 2016, ISBRA.

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

[12]  Rocco Casagrande,et al.  Advancing Symptom Science Through Symptom Cluster Research: Expert Panel Proceedings and Recommendations , 2017, Journal of the National Cancer Institute.

[13]  O. Niemelä,et al.  Cluster Analysis on Longitudinal Data of Patients with Adult-Onset Asthma. , 2017, The journal of allergy and clinical immunology. In practice.

[14]  Aleksandra Jovicic,et al.  Can Cluster-Boosted Regression Improve Prediction of Death and Length of Stay in the ICU? , 2017, IEEE Journal of Biomedical and Health Informatics.

[15]  Lipi Acharya,et al.  Transcriptome assembly strategies for precision medicine , 2017, Quantitative Biology.

[16]  Bradley E Aouizerat,et al.  Subgroups of patients with cancer with different symptom experiences and quality-of-life outcomes: a cluster analysis. , 2006, Oncology nursing forum.

[17]  Dongxiao Zhu,et al.  Clustering over‐dispersed data with mixed feature types , 2018, Stat. Anal. Data Min..

[18]  Krishan L. Khatri,et al.  Early Detection of Peak Demand Days of Chronic Respiratory Diseases Emergency Department Visits Using Artificial Neural Networks , 2018, IEEE Journal of Biomedical and Health Informatics.

[19]  Jieping Ye,et al.  Transfer Learning for Survival Analysis via Efficient L2,1-Norm Regularized Cox Regression , 2016, 2016 IEEE 16th International Conference on Data Mining (ICDM).

[20]  Manfred Stommel,et al.  A Cluster of Symptoms Over Time in Patients With Lung Cancer , 2003, Nursing research.

[21]  Amna Husain,et al.  Symptom clusters in a population-based ambulatory cancer cohort validated using bootstrap methods. , 2012, European journal of cancer.

[22]  David A. Clifton,et al.  A Large-Scale Clinical Validation of an Integrated Monitoring System in the Emergency Department , 2013, IEEE Journal of Biomedical and Health Informatics.

[23]  Yan Li,et al.  Modeling Over-Dispersion for Network Data Clustering , 2017, 2017 16th IEEE International Conference on Machine Learning and Applications (ICMLA).

[24]  Anil K. Jain Data clustering: 50 years beyond K-means , 2008, Pattern Recognit. Lett..

[25]  Amna Husain,et al.  Do patient-reported symptoms predict emergency department visits in cancer patients? A population-based analysis. , 2013, Annals of emergency medicine.

[26]  Graham K. Rand,et al.  Quantitative Applications in the Social Sciences , 1983 .

[27]  Dongxiao Zhu,et al.  Obesity risk factors ranking using multi-task learning , 2018, 2018 IEEE EMBS International Conference on Biomedical & Health Informatics (BHI).