Sentiment Analysis and Text Mining of Questionnaires to Support Telemonitoring Programs

While several studies have shown how telemedicine and, in particular, home telemonitoring programs lead to an improvement in the patient’s quality of life, a reduction in hospitalizations, and lower healthcare costs, different variables may affect telemonitoring effectiveness and purposes. In the present paper, an integrated software system, based on Sentiment Analysis and Text Mining, to deliver, collect, and analyze questionnaire responses in telemonitoring programs is presented. The system was designed to be a complement to home telemonitoring programs with the objective of investigating the paired relationship between opinions and the adherence scores of patients and their changes through time. The novel contributions of the system are: (i) the design and software prototype for the management of online questionnaires over time; and (ii) an analysis pipeline that leverages a sentiment polarity score by using it as a numerical feature for the integration and the evaluation of open-ended questions in clinical questionnaires. The software pipeline was initially validated with a case-study application to discuss the plausibility of the existence of a directed relationship between a score representing the opinion polarity of patients about telemedicine, and their adherence score, which measures how well patients follow the telehomecare program. In this case-study, 169 online surveys sent by 38 patients enrolled in a home telemonitoring program provided by the Cystic Fibrosis Unit at the “Bambino Gesu” Children’s Hospital in Rome, Italy, were collected and analyzed. The experimental results show that, under a Granger-causality perspective, a predictive relationship may exist between the considered variables. If supported, these preliminary results may have many possible implications of practical relevance, for instance the early detection of poor adherence in patients to enable the application of personalized and targeted actions.

[1]  S. Bella,et al.  Telemonitoring in Cystic Fibrosis: A 4-year Assessment and Simulation for the Next 6 Years , 2016, Interactive journal of medical research.

[2]  W. Fuller,et al.  Distribution of the Estimators for Autoregressive Time Series with a Unit Root , 1979 .

[3]  W. Suter,et al.  Theory-based telehealth and patient empowerment. , 2011, Population health management.

[4]  C. Armitage,et al.  Home Telehealth Uptake and Continued Use Among Heart Failure and Chronic Obstructive Pulmonary Disease Patients: a Systematic Review , 2014, Annals of behavioral medicine : a publication of the Society of Behavioral Medicine.

[5]  Mario Cannataro,et al.  Predicting Abandonment in Telehomecare Programs Using Sentiment Analysis: A System Proposal , 2018, 2018 IEEE International Conference on Bioinformatics and Biomedicine (BIBM).

[6]  N. Schwarz Self-reports: How the questions shape the answers. , 1999 .

[7]  J. Arabloo,et al.  Telemedicine: A systematic review of economic evaluations , 2017, Medical journal of the Islamic Republic of Iran.

[8]  Mario Cannataro,et al.  Sentiment analysis for mining texts and social networks data: Methods and tools , 2019, WIREs Data Mining Knowl. Discov..

[9]  Oddgeir Friborg,et al.  A comparison of open-ended and closed questions in the prediction of mental health , 2013 .

[10]  M. Surette,et al.  Cystic fibrosis: a polymicrobial infectious disease. , 2006, Future microbiology.

[11]  Stanley Presser,et al.  The Open and Closed Question , 1979 .

[12]  V. Lucidi,et al.  Five years of Telemedicine in Cystic Fibrosis Disease. , 2009, La Clinica terapeutica.

[13]  J. Polisena,et al.  Home telehealth for diabetes management: a systematic review and meta‐analysis , 2009, Diabetes, obesity & metabolism.

[14]  Emir Veledar,et al.  Impact of Telemedicine on Mortality, Length of Stay, and Cost Among Patients in Progressive Care Units: Experience From a Large Healthcare System* , 2018, Critical care medicine.

[15]  L. Allery Design and use questionnaires for research in medical education. , 2016, Education for primary care : an official publication of the Association of Course Organisers, National Association of GP Tutors, World Organisation of Family Doctors.

[16]  H. Johannessen,et al.  Patient empowerment and involvement in telemedicine , 2019, Journal of Nursing Education and Practice.

[17]  Roel Popping,et al.  Analyzing Open-ended Questions by Means of Text Analysis Procedures , 2015 .

[18]  C. Granger Testing for causality: a personal viewpoint , 1980 .

[19]  Seewon Ryu Telemedicine: Opportunities and Developments in Member States: Report on the Second Global Survey on eHealth 2009 (Global Observatory for eHealth Series, Volume 2) , 2012, Healthcare Informatics Research.