Litcius/Paper detail

Text mining with sentiment analysis on seafarers’ medical documents

Nalini Chintalapudi, Gopi Battineni, Marzio Di Canio, Getu Gamo Sagaro, Francesco Amenta

2020International Journal of Information Management Data Insights117 citationsDOIOpen Access PDF

Abstract

Digital health systems contain large amounts of patient records, doctor notes, and prescriptions in text format. This information summarized over the electronic clinical information will lead to an improved quality of healthcare, the possibility of fewer medical errors, and low costs. Besides, seafarers are more vulnerable to have accidents, and prone to health hazards because of work culture, climatic changes, and personal habits. Therefore, text mining implementation in seafarers’ medical documents can generate better knowledge of medical issues that often happened onboard. Medical records are collected from digital health systems of Centro Internazionale Radio Medico (C.I.R.M.) which is an Italian Telemedical Maritime Assistance System (TMAS). Three years (2018–2020) patient data have been used for analysis. Adoption of both lexicon and Naïve Bayes’ algorithms was done to perform sentimental analysis and experiments were conducted over R statistical tool. Visualization of symptomatic information was done through word clouds and 96% of the correlation between medical problems and diagnosis outcome has been achieved. We validate the sentiment analysis with more than 80% accuracy and precision.

Topics & Concepts

LexiconTag cloudComputer scienceMedical recordNaive Bayes classifierHealth careMedical prescriptionData scienceVisualizationMedical emergencyData miningArtificial intelligenceMedicinePolitical scienceNursingRadiologySupport vector machineLawSentiment Analysis and Opinion MiningMaritime Navigation and SafetyTopic Modeling