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Use of sentiment analysis for capturing hospitalized cancer patients' experience from free-text comments in the Persian language

Today, the Internet provides access to many patients' experiences, which is crucial in assessing the quality of healthcare services. This paper introduces a model for detecting cancer patients' opinions about healthcare services in the Persian language, both positive and negative. To achie...

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Published in:BMC medical informatics and decision making 2023-11, Vol.23 (1), p.275-275, Article 275
Main Authors: Yazdani, Azita, Shamloo, Mohammad, Khaki, Mina, Nahvijou, Azin
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Shamloo, Mohammad
Khaki, Mina
Nahvijou, Azin
description Today, the Internet provides access to many patients' experiences, which is crucial in assessing the quality of healthcare services. This paper introduces a model for detecting cancer patients' opinions about healthcare services in the Persian language, both positive and negative. To achieve the objectives of this study, a combination of sentiment analysis (SA) and topic modeling approaches was employed. All pertinent comments made by cancer patients were collected from the patient feedback form of the Tehran University of Medical Science (TUMS) Cancer Institute (CI) in Iran, from March to October 2021. Conventional evaluation metrics such as accuracy, precision, recall, and F-measure were utilized to assess the performance of the proposed model. The experimental findings revealed that the proposed SA model achieved accuracies of 89.3%, 92.6%, and 90.8% in detecting patients' sentiments towards general services, healthcare services, and life expectancy, respectively. Based on the topic modeling results, the topic "Metastasis" exhibited lower sentiment scores compared to other topics. Additionally, cancer patients expressed dissatisfaction with the current appointment booking service, while topics such as "Good experience," "Affable staff", and "Chemotherapy" garnered higher sentiment scores. The combined use of SA and topic modeling offers valuable insights into healthcare services. Policymakers can utilize the knowledge obtained from these topics and associated sentiments to enhance patient satisfaction with cancer institution services.
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subjects Artificial intelligence
Attitude
Breast cancer
Cancer
Cancer therapies
Chemotherapy
Customer feedback
Data mining
Datasets
Emotions
English language
Health care
Health services
Hospitals
Humans
Internet
Iran
Language
Life expectancy
Life span
Machine learning
Medical science
Metastases
Model accuracy
Modelling
Natural language processing
Neoplasms - therapy
Neural networks
Opinion mining
Patient feedback
Patients
Performance assessment
Persian language
Quality assessment
Sentiment Analysis
Social networks
Topic modeling
title Use of sentiment analysis for capturing hospitalized cancer patients' experience from free-text comments in the Persian language
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