- Author:
Seoyeon KIM
1
;
Jihyun JUNG
;
Heiyoung KANG
;
Jeehye BAE
;
Kayoung SIM
;
Miyoung YOO
;
Eunyoung E. SUH
Author Information
- Publication Type:Original Articles
- From:Asian Oncology Nursing 2022;22(1):46-55
- CountryRepublic of Korea
- Language:English
-
Abstract:
Purpose:The purpose of this study was to analyze the frequency and relevance of frequent keywords using text mining analysis for symptom-related telephone counseling of patients undergoing chemotherapy, and to understand the current status and characteristics of the nursing intervention.
Methods:442 cases of telephone counseling of patients undergoing chemotherapy were collected. The symptoms were classified and separated according to the contents of the consultation between the nurse and the counseling participants. Using the python library, frequency words were extracted, and the generation of word co-occurrence matrices was analyzed through social network analysis.
Results:For the four cancers to be analyzed (breast, colorectum, stomach, lung), the common frequent words of nurse and counseling participants were ‘medical staff (uilyojin)’, ‘medical treatment (jinlyo)’, ‘treatment (chilyo)’, ‘other hospital (tabyeongwon)’, ‘prescription (cheobang)’. In the analysis of social networks, words with highly betweenness centrality, which appear in common, almost matched those of frequent words.
Conclusion:In this study, it was possible to extract the most frequent words by cancer type from the contents of telephone counseling with cancer patients and to understand the current status and context of the actual telephone counseling focusing on each keyword.