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Evaluating Patients' Experiences with Healthcare Services: Extracting Domain and Language-Specific Information from Free-Text Narratives. | LitMetric

AI Article Synopsis

  • The study focuses on improving the evaluation of patient experiences in Poland's healthcare by using free-text narratives from international students.
  • Researchers developed algorithms to extract relevant information from these narratives while also conducting linguistic analysis to create a lexicon and syntactic structures.
  • The findings revealed that the algorithm's classifications closely matched those done by human readers, indicating that such automated methods are effective and cost-efficient for assessing patient satisfaction in health services.

Article Abstract

Evaluating patients’ experience and satisfaction often calls for analyses of free-text data. Language and domain-specific information extraction can reduce costly manual preprocessing and enable the analysis of extensive collections of experience-based narratives. The research aims were to (1) elicit free-text narratives about experiences with health services of international students in Poland, (2) develop domain- and language-specific algorithms for the extraction of information relevant for the evaluation of quality and safety of health services, and (3) test the performance of information extraction algorithms’ on questions about the patients’ experiences with health services. The materials were free-text narratives about health clinic encounters produced by English-speaking foreigners recalling their experiences (n = 104) in healthcare facilities in Poland. A linguistic analysis of the text collection led to constructing a semantic−syntactic lexicon and a set of lexical-syntactic frames. These were further used to develop rule-based information extraction algorithms in the form of Python scripts. The extraction algorithms generated text classifications according to predefined queries. In addition, the narratives were classified by human readers. The algorithm-based and the human readers’ classifications were highly correlated and significant (p < 0.01), indicating an excellent performance of the automatic query algorithms. The study results demonstrate that domain-specific and language-specific information extraction from free-text narratives can be used as an efficient and low-cost method for evaluating patient experiences and satisfaction with health services and built into software solutions for the quality evaluation in health care.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9408527PMC
http://dx.doi.org/10.3390/ijerph191610182DOI Listing

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